Computational anatomy
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Computational anatomy is an interdisciplinary field of
biology Biology is the scientific study of life. It is a natural science with a broad scope but has several unifying themes that tie it together as a single, coherent field. For instance, all organisms are made up of cells that process hereditary i ...
focused on quantitative investigation and modelling of anatomical shapes variability. It involves the development and application of mathematical, statistical and data-analytical methods for modelling and simulation of biological structures. The field is broadly defined and includes foundations in
anatomy Anatomy () is the branch of biology concerned with the study of the structure of organisms and their parts. Anatomy is a branch of natural science that deals with the structural organization of living things. It is an old science, having its ...
,
applied mathematics Applied mathematics is the application of mathematical methods by different fields such as physics, engineering, medicine, biology, finance, business, computer science, and industry. Thus, applied mathematics is a combination of mathematical s ...
and
pure mathematics Pure mathematics is the study of mathematical concepts independently of any application outside mathematics. These concepts may originate in real-world concerns, and the results obtained may later turn out to be useful for practical applications, ...
,
machine learning Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence. Machine ...
,
computational mechanics Computational mechanics is the discipline concerned with the use of computational methods to study phenomena governed by the principles of mechanics. Before the emergence of computational science (also called scientific computing) as a "third w ...
,
computational science Computational science, also known as scientific computing or scientific computation (SC), is a field in mathematics that uses advanced computing capabilities to understand and solve complex problems. It is an area of science that spans many disc ...
,
biological imaging Biological imaging may refer to any imaging technique used in biology. Typical examples include: * Bioluminescence imaging, a technique for studying laboratory animals using luminescent protein * Calcium imaging, determining the calcium status of a ...
,
neuroscience Neuroscience is the scientific study of the nervous system (the brain, spinal cord, and peripheral nervous system), its functions and disorders. It is a multidisciplinary science that combines physiology, anatomy, molecular biology, development ...
,
physics Physics is the natural science that studies matter, its fundamental constituents, its motion and behavior through space and time, and the related entities of energy and force. "Physical science is that department of knowledge which r ...
,
probability Probability is the branch of mathematics concerning numerical descriptions of how likely an Event (probability theory), event is to occur, or how likely it is that a proposition is true. The probability of an event is a number between 0 and ...
, and
statistics Statistics (from German language, German: ''wikt:Statistik#German, Statistik'', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of ...
; it also has strong connections with
fluid mechanics Fluid mechanics is the branch of physics concerned with the mechanics of fluids ( liquids, gases, and plasmas) and the forces on them. It has applications in a wide range of disciplines, including mechanical, aerospace, civil, chemical and bio ...
and
geometric mechanics Geometric mechanics is a branch of mathematics applying particular geometric methods to many areas of mechanics, from mechanics of particles and rigid bodies to fluid mechanics to control theory. Geometric mechanics applies principally to systems f ...
. Additionally, it complements newer, interdisciplinary fields like
bioinformatics Bioinformatics () is an interdisciplinary field that develops methods and software tools for understanding biological data, in particular when the data sets are large and complex. As an interdisciplinary field of science, bioinformatics combi ...
and
neuroinformatics Neuroinformatics is the field that combines informatics and neuroscience. Neuroinformatics is related with neuroscience data and information processing by artificial neural networks. There are three main directions where neuroinformatics has to be ...
in the sense that its interpretation uses metadata derived from the original sensor imaging modalities (of which
magnetic resonance imaging Magnetic resonance imaging (MRI) is a medical imaging technique used in radiology to form pictures of the anatomy and the physiological processes of the body. MRI scanners use strong magnetic fields, magnetic field gradients, and radio wave ...
is one example). It focuses on the anatomical structures being imaged, rather than the medical imaging devices. It is similar in spirit to the history of
computational linguistics Computational linguistics is an Interdisciplinarity, interdisciplinary field concerned with the computational modelling of natural language, as well as the study of appropriate computational approaches to linguistic questions. In general, comput ...
, a discipline that focuses on the linguistic structures rather than the
sensor A sensor is a device that produces an output signal for the purpose of sensing a physical phenomenon. In the broadest definition, a sensor is a device, module, machine, or subsystem that detects events or changes in its environment and sends ...
acting as the
transmission Transmission may refer to: Medicine, science and technology * Power transmission ** Electric power transmission ** Propulsion transmission, technology allowing controlled application of power *** Automatic transmission *** Manual transmission *** ...
and communication media. In computational anatomy, the
diffeomorphism In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two m ...
group is used to study different coordinate systems via
coordinate transformations In geometry, a coordinate system is a system that uses one or more numbers, or coordinates, to uniquely determine the position of the points or other geometric elements on a manifold such as Euclidean space. The order of the coordinates is sign ...
as generated via the Lagrangian and Eulerian velocities of flow in ^3. The flows between coordinates in computational anatomy are constrained to be geodesic flows satisfying the principle of least action for the Kinetic energy of the flow. The kinetic energy is defined through a Sobolev smoothness norm with strictly more than two generalized,
square-integrable In mathematics, a square-integrable function, also called a quadratically integrable function or L^2 function or square-summable function, is a real number, real- or complex number, complex-valued measurable function for which the integral of the s ...
derivatives for each component of the flow velocity, which guarantees that the flows in \mathbb^3 are diffeomorphisms. It also implies that the diffeomorphic shape momentum taken pointwise satisfying the Euler-Lagrange equation for geodesics is determined by its neighbors through spatial derivatives on the velocity field. This separates the discipline from the case of incompressible fluids for which momentum is a pointwise function of velocity. Computational anatomy intersects the study of
Riemannian manifolds In differential geometry, a Riemannian manifold or Riemannian space , so called after the German mathematician Bernhard Riemann, is a real, smooth manifold ''M'' equipped with a positive-definite inner product ''g'p'' on the tangent space ''T ...
and nonlinear
global analysis In mathematics, global analysis, also called analysis on manifolds, is the study of the global and topological properties of differential equations on manifolds and vector bundles. Global analysis uses techniques in infinite-dimensional manifold th ...
, where groups of diffeomorphisms are the central focus. Emerging high-dimensional theories of shape are central to many studies in computational anatomy, as are questions emerging from the fledgling field of shape statistics. The metric structures in computational anatomy are related in spirit to
morphometrics Morphometrics (from Greek μορϕή ''morphe'', "shape, form", and -μετρία ''metria'', "measurement") or morphometry refers to the quantitative analysis of ''form'', a concept that encompasses size and shape. Morphometric analyses are co ...
, with the distinction that Computational anatomy focuses on an infinite-dimensional space of
coordinate system In geometry, a coordinate system is a system that uses one or more numbers, or coordinates, to uniquely determine the position of the points or other geometric elements on a manifold such as Euclidean space. The order of the coordinates is sig ...
s transformed by a
diffeomorphism In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two m ...
, hence the central use of the terminology diffeomorphometry, the metric space study of coordinate systems via diffeomorphisms.


Genesis

At computational anatomy's heart is the comparison of shape by recognizing in one shape the other. This connects it to
D'Arcy Wentworth Thompson Sir D'Arcy Wentworth Thompson CB FRS FRSE (2 May 1860 – 21 June 1948) was a Scottish biologist, mathematician and classics scholar. He was a pioneer of mathematical and theoretical biology, travelled on expeditions to the Bering Strait an ...
's developments
On Growth and Form ''On Growth and Form'' is a book by the Scottish mathematical biologist D'Arcy Wentworth Thompson (1860–1948). The book is long – 793 pages in the first edition of 1917, 1116 pages in the second edition of 1942. The book covers many topi ...
which has led to scientific explanations of
morphogenesis Morphogenesis (from the Greek ''morphê'' shape and ''genesis'' creation, literally "the generation of form") is the biological process that causes a cell, tissue or organism to develop its shape. It is one of three fundamental aspects of devel ...
, the process by which
patterns A pattern is a regularity in the world, in human-made design, or in abstract ideas. As such, the elements of a pattern repeat in a predictable manner. A geometric pattern is a kind of pattern formed of geometric shapes and typically repeated l ...
are formed in
biology Biology is the scientific study of life. It is a natural science with a broad scope but has several unifying themes that tie it together as a single, coherent field. For instance, all organisms are made up of cells that process hereditary i ...
. Albrecht Durer's Four Books on Human Proportion were arguably the earliest works on computational anatomy. The efforts of
Noam Chomsky Avram Noam Chomsky (born December 7, 1928) is an American public intellectual: a linguist, philosopher, cognitive scientist, historian, social critic, and political activist. Sometimes called "the father of modern linguistics", Chomsky is ...
in his pioneering of
computational linguistics Computational linguistics is an Interdisciplinarity, interdisciplinary field concerned with the computational modelling of natural language, as well as the study of appropriate computational approaches to linguistic questions. In general, comput ...
inspired the original formulation of computational anatomy as a generative model of shape and form from exemplars acted upon via transformations. Due to the availability of dense 3D measurements via technologies such as
magnetic resonance imaging Magnetic resonance imaging (MRI) is a medical imaging technique used in radiology to form pictures of the anatomy and the physiological processes of the body. MRI scanners use strong magnetic fields, magnetic field gradients, and radio wave ...
(MRI), computational anatomy has emerged as a subfield of
medical imaging Medical imaging is the technique and process of imaging the interior of a body for clinical analysis and medical intervention, as well as visual representation of the function of some organs or tissues (physiology). Medical imaging seeks to rev ...
and
bioengineering Biological engineering or bioengineering is the application of principles of biology and the tools of engineering to create usable, tangible, economically-viable products. Biological engineering employs knowledge and expertise from a number o ...
for extracting anatomical coordinate systems at the morphome scale in 3D. The spirit of this discipline shares strong overlap with areas such as
computer vision Computer vision is an interdisciplinary scientific field that deals with how computers can gain high-level understanding from digital images or videos. From the perspective of engineering, it seeks to understand and automate tasks that the hum ...
and
kinematics Kinematics is a subfield of physics, developed in classical mechanics, that describes the Motion (physics), motion of points, Physical object, bodies (objects), and systems of bodies (groups of objects) without considering the forces that cause ...
of
rigid bodies In physics, a rigid body (also known as a rigid object) is a solid body in which deformation is zero or so small it can be neglected. The distance between any two given points on a rigid body remains constant in time regardless of external force ...
, where objects are studied by analysing the
groups A group is a number of persons or things that are located, gathered, or classed together. Groups of people * Cultural group, a group whose members share the same cultural identity * Ethnic group, a group whose members share the same ethnic iden ...
responsible for the movement in question. Computational anatomy departs from computer vision with its focus on rigid motions, as the infinite-dimensional diffeomorphism group is central to the analysis of Biological shapes. It is a branch of the image analysis and pattern theory school at Brown University pioneered by
Ulf Grenander Ulf Grenander (23 July 1923 – 12 May 2016) was a Swedish statistician and professor of applied mathematics at Brown University. His early research was in probability theory, stochastic processes, time series analysis, and statistical theory (p ...
. In Grenander's general metric pattern theory, making spaces of patterns into a
metric space In mathematics, a metric space is a set together with a notion of ''distance'' between its elements, usually called points. The distance is measured by a function called a metric or distance function. Metric spaces are the most general settin ...
is one of the fundamental operations since being able to cluster and recognize anatomical configurations often requires a metric of close and far between shapes. The diffeomorphometry metric of computational anatomy measures how far two diffeomorphic changes of coordinates are from each other, which in turn induces a metric on the shapes and images indexed to them. The models of metric pattern theory, in particular group action on the orbit of shapes and forms is a central tool to the formal definitions in computational anatomy.


History

Computational anatomy is the study of shape and form at the
morphome Morphome is one of the omes in biology to map and classify all the morphological features of species. Morphome is different from phenome in that it is the totality of morphological variants while phenome includes non-morphological variants. See ...
or
gross anatomy Gross anatomy is the study of anatomy at the visible or macroscopic level. The counterpart to gross anatomy is the field of histology, which studies microscopic anatomy. Gross anatomy of the human body or other animals seeks to understand the rel ...
millimeter, or
morphology Morphology, from the Greek and meaning "study of shape", may refer to: Disciplines * Morphology (archaeology), study of the shapes or forms of artifacts * Morphology (astronomy), study of the shape of astronomical objects such as nebulae, galaxies ...
scale, focusing on the study of sub-
manifolds In mathematics, a manifold is a topological space that locally resembles Euclidean space near each point. More precisely, an n-dimensional manifold, or ''n-manifold'' for short, is a topological space with the property that each point has a Ne ...
of ^3, points, curves surfaces and subvolumes of human anatomy. An early modern computational neuro-anatomist was David Van Essen performing some of the early physical unfoldings of the human brain based on printing of a human cortex and cutting. Jean Talairach's publication of
Talairach coordinates Talairach coordinates, also known as Talairach space, is a 3-dimensional coordinate system (known as an 'atlas') of the human brain, which is used to brain mapping, map the location of brain structures independent from individual differences in the ...
is an important milestone at the morphome scale demonstrating the fundamental basis of local coordinate systems in studying neuroanatomy and therefore the clear link to charts of differential geometry. Concurrently, virtual mapping in computational anatomy across high resolution dense image coordinates was already happening in Ruzena Bajcy's and Fred Bookstein's earliest developments based on computed axial tomography and magnetic resonance imagery. The earliest introduction of the use of flows of diffeomorphisms for transformation of coordinate systems in image analysis and medical imaging was by Christensen, Joshi, Miller, and Rabbitt. The first formalization of computational anatomy as an orbit of exemplar templates under
diffeomorphism In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two m ...
group action In mathematics, a group action on a space is a group homomorphism of a given group into the group of transformations of the space. Similarly, a group action on a mathematical structure is a group homomorphism of a group into the automorphism ...
was in the original lecture given by Grenander and Miller with that title in May 1997 at the 50th Anniversary of the Division of Applied Mathematics at Brown University, and subsequent publication. This was the basis for the strong departure from much of the previous work on advanced methods for
spatial normalization In neuroimaging, spatial normalization is an image processing step, more specifically an image registration method. Human brains differ in size and shape, and one goal of spatial normalization is to deform human brain scans so one location in ...
and
image registration Image registration is the process of transforming different sets of data into one coordinate system. Data may be multiple photographs, data from different sensors, times, depths, or viewpoints. It is used in computer vision, medical imaging, milit ...
which were historically built on notions of addition and basis expansion. The structure preserving transformations central to the modern field of Computational Anatomy,
homeomorphism In the mathematical field of topology, a homeomorphism, topological isomorphism, or bicontinuous function is a bijective and continuous function between topological spaces that has a continuous inverse function. Homeomorphisms are the isomorphi ...
s and
diffeomorphism In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two m ...
s carry smooth submanifolds smoothly. They are generated via Lagrangian and Eulerian flows which satisfy a law of composition of functions forming the group property, but are not additive. The original model of computational anatomy was as the triple, (\mathcal, \mathcal, \mathcal) \ , the group g \in \mathcal , the orbit of shapes and forms m \in \mathcal , and the probability laws P which encode the variations of the objects in the orbit. The template or collection of templates are elements in the orbit m_\mathrm \in \mathcal of shapes. The Lagrangian and Hamiltonian formulations of the equations of motion of computational anatomy took off post 1997 with several pivotal meetings including the 1997 Luminy meeting organized by the Azencott school at Ecole-Normale Cachan on the "Mathematics of Shape Recognition" and the 1998 Trimestre at Institute Henri Poincaré organized by
David Mumford David Bryant Mumford (born 11 June 1937) is an American mathematician known for his work in algebraic geometry and then for research into vision and pattern theory. He won the Fields Medal and was a MacArthur Fellow. In 2010 he was awarded t ...
"Questions Mathématiques en Traitement du Signal et de l'Image" which catalyzed the Hopkins-Brown-ENS Cachan groups and subsequent developments and connections of computational anatomy to developments in global analysis. The developments in computational anatomy included the establishment of the Sobolev smoothness conditions on the diffeomorphometry metric to insure existence of solutions of variational problems in the space of diffeomorphisms, the derivation of the Euler-Lagrange equations characterizing geodesics through the group and associated conservation laws, the demonstration of the metric properties of the right invariant metric, the demonstration that the Euler-Lagrange equations have a well-posed initial value problem with unique solutions for all time, and with the first results on sectional curvatures for the diffeomorphometry metric in landmarked spaces. Following the Los Alamos meeting in 2002, Joshi's original large deformation singular ''Landmark'' solutions in computational anatomy were connected to peaked ''solitons'' or ''peakons'' as solutions for the Camassa-Holm equation. Subsequently, connections were made between computational anatomy's Euler-Lagrange equations for momentum densities for the right-invariant metric satisfying Sobolev smoothness to Vladimir Arnold's characterization of the
Euler equation 200px, Leonhard Euler (1707–1783) In mathematics and physics, many topics are named in honor of Swiss mathematician Leonhard Euler (1707–1783), who made many important discoveries and innovations. Many of these items named after Euler include ...
for incompressible flows as describing geodesics in the group of volume preserving diffeomorphisms. The first algorithms, generally termed LDDMM for large deformation diffeomorphic mapping for computing connections between landmarks in volumes and spherical manifolds, curves, currents and surfaces, volumes, tensors, varifolds, and time-series have followed. These contributions of computational anatomy to the global analysis associated to the infinite dimensional manifolds of subgroups of the diffeomorphism group is far from trivial. The original idea of doing differential geometry, curvature and geodesics on infinite dimensional manifolds goes back to
Bernhard Riemann Georg Friedrich Bernhard Riemann (; 17 September 1826 – 20 July 1866) was a German mathematician who made contributions to analysis, number theory, and differential geometry. In the field of real analysis, he is mostly known for the first rig ...
's
Habilitation Habilitation is the highest university degree, or the procedure by which it is achieved, in many European countries. The candidate fulfills a university's set criteria of excellence in research, teaching and further education, usually including a ...
(Ueber die Hypothesen, welche der Geometrie zu Grunde liegen); the key modern book laying the foundations of such ideas in global analysis are from Michor. The applications within medical imaging of computational anatomy continued to flourish after two organized meetings at the
Institute for Pure and Applied Mathematics The Institute for Pure and Applied Mathematics (IPAM) is an American mathematics institute funded by the National Science Foundation. The initial funding for the institute was approved in May 1999 and it was inaugurated in August, 2000. IPAM ...
conferences at
University of California, Los Angeles The University of California, Los Angeles (UCLA) is a public land-grant research university in Los Angeles, California. UCLA's academic roots were established in 1881 as a teachers college then known as the southern branch of the California St ...
. Computational anatomy has been useful in creating accurate models of the atrophy of the human brain at the morphome scale, as well as Cardiac templates, as well as in modeling biological systems. Since the late 1990s, computational anatomy has become an important part of developing emerging technologies for the field of medical imaging. Digital atlases are a fundamental part of modern Medical-school education and in neuroimaging research at the morphome scale. Atlas based methods and virtual textbooks which accommodate variations as in deformable templates are at the center of many neuro-image analysis platforms including Freesurfer, FSL, MRIStudio, SPM. Diffeomorphic registration, introduced in the 1990s, is now an important player with existing codes bases organized around ANTS, DARTEL, DEMONS, LDDMM, StationaryLDDMM, FastLDDMM, are examples of actively used computational codes for constructing correspondences between coordinate systems based on sparse features and dense images.
Voxel-based morphometry Voxel-based morphometry is a computational approach to neuroanatomy that measures differences in local concentrations of brain tissue, through a voxel-wise comparison of multiple brain images. In traditional morphometry, volume of the whole brai ...
is an important technology built on many of these principles.


The deformable template orbit model of computational anatomy

The model of human anatomy is a deformable template, an orbit of exemplars under group action. Deformable template models have been central to Grenander's metric pattern theory, accounting for typicality via templates, and accounting for variability via transformation of the template. An orbit under group action as the representation of the deformable template is a classic formulation from differential geometry. The space of shapes are denoted m \in \mathcal , with the
group A group is a number of persons or things that are located, gathered, or classed together. Groups of people * Cultural group, a group whose members share the same cultural identity * Ethnic group, a group whose members share the same ethnic iden ...
(\mathcal, \circ ) with law of composition \circ; the action of the group on shapes is denoted g \cdot m, where the action of the group g \cdot m \in \mathcal, m \in \mathcal is defined to satisfy : (g \circ g^\prime) \cdot m=g \cdot (g^\prime \cdot m)\in \mathcal . The orbit \mathcal of the template becomes the space of all shapes, \mathcal \doteq \, being homogenous under the action of the elements of \mathcal. The orbit model of computational anatomy is an abstract algebra - to be compared to
linear algebra Linear algebra is the branch of mathematics concerning linear equations such as: :a_1x_1+\cdots +a_nx_n=b, linear maps such as: :(x_1, \ldots, x_n) \mapsto a_1x_1+\cdots +a_nx_n, and their representations in vector spaces and through matrices. ...
- since the groups act nonlinearly on the shapes. This is a generalization of the classical models of linear algebra, in which the set of finite dimensional ^n vectors are replaced by the finite-dimensional anatomical submanifolds (points, curves, surfaces and volumes) and images of them, and the n \times n matrices of linear algebra are replaced by coordinate transformations based on linear and affine groups and the more general high-dimensional diffeomorphism groups.


Shapes and forms

The central objects are shapes or forms in computational anatomy, one set of examples being the 0,1,2,3-dimensional submanifolds of ^3 , a second set of examples being images generated via
medical imaging Medical imaging is the technique and process of imaging the interior of a body for clinical analysis and medical intervention, as well as visual representation of the function of some organs or tissues (physiology). Medical imaging seeks to rev ...
such as via
magnetic resonance imaging Magnetic resonance imaging (MRI) is a medical imaging technique used in radiology to form pictures of the anatomy and the physiological processes of the body. MRI scanners use strong magnetic fields, magnetic field gradients, and radio wave ...
(MRI) and
functional magnetic resonance imaging Functional magnetic resonance imaging or functional MRI (fMRI) measures brain activity by detecting changes associated with blood flow. This technique relies on the fact that cerebral blood flow and neuronal activation are coupled. When an area o ...
. The 0-dimensional manifolds are landmarks or fiducial points; 1-dimensional manifolds are curves such as sulcul and gyral curves in the brain; 2-dimensional manifolds correspond to boundaries of substructures in anatomy such as the subcortical structures of the
midbrain The midbrain or mesencephalon is the forward-most portion of the brainstem and is associated with vision, hearing, motor control, sleep and wakefulness, arousal (alertness), and temperature regulation. The name comes from the Greek ''mesos'', " ...
or the gyral surface of the
neocortex The neocortex, also called the neopallium, isocortex, or the six-layered cortex, is a set of layers of the mammalian cerebral cortex involved in higher-order brain functions such as sensory perception, cognition, generation of motor commands, sp ...
; subvolumes correspond to subregions of the human body, the
heart The heart is a muscular organ in most animals. This organ pumps blood through the blood vessels of the circulatory system. The pumped blood carries oxygen and nutrients to the body, while carrying metabolic waste such as carbon dioxide t ...
, the
thalamus The thalamus (from Greek θάλαμος, "chamber") is a large mass of gray matter located in the dorsal part of the diencephalon (a division of the forebrain). Nerve fibers project out of the thalamus to the cerebral cortex in all directions, ...
, the kidney. The landmarks X \doteq \ \subset ^3 \in \mathcal are a collections of points with no other structure, delineating important fiducials within human shape and form (see associated landmarked image). The sub-
manifold In mathematics, a manifold is a topological space that locally resembles Euclidean space near each point. More precisely, an n-dimensional manifold, or ''n-manifold'' for short, is a topological space with the property that each point has a n ...
shapes such as surfaces X \subset ^3 \in \mathcal are collections of points modeled as parametrized by a local chart or
immersion Immersion may refer to: The arts * "Immersion", a 2012 story by Aliette de Bodard * ''Immersion'', a French comic book series by Léo Quievreux#Immersion, Léo Quievreux * Immersion (album), ''Immersion'' (album), the third album by Australian gro ...
m:U \subset ^ \rightarrow ^3 , m(u), u \in U (see Figure showing shapes as mesh surfaces). The images such as MR images or DTI images I \in \mathcal, and are dense functions I(x), x \in X \subset ^ are scalars, vectors, and matrices (see Figure showing scalar image).


Groups and group actions

Group A group is a number of persons or things that are located, gathered, or classed together. Groups of people * Cultural group, a group whose members share the same cultural identity * Ethnic group, a group whose members share the same ethnic iden ...
s and
group actions In mathematics, a group action on a space is a group homomorphism of a given group into the group of transformations of the space. Similarly, a group action on a mathematical structure is a group homomorphism of a group into the automorphism ...
are familiar to the Engineering community with the universal popularization and standardization of
linear algebra Linear algebra is the branch of mathematics concerning linear equations such as: :a_1x_1+\cdots +a_nx_n=b, linear maps such as: :(x_1, \ldots, x_n) \mapsto a_1x_1+\cdots +a_nx_n, and their representations in vector spaces and through matrices. ...
as a basic model for analyzing signals and systems in
mechanical engineering Mechanical engineering is the study of physical machines that may involve force and movement. It is an engineering branch that combines engineering physics and mathematics principles with materials science, to design, analyze, manufacture, and ...
,
electrical engineering Electrical engineering is an engineering discipline concerned with the study, design, and application of equipment, devices, and systems which use electricity, electronics, and electromagnetism. It emerged as an identifiable occupation in the l ...
and
applied mathematics Applied mathematics is the application of mathematical methods by different fields such as physics, engineering, medicine, biology, finance, business, computer science, and industry. Thus, applied mathematics is a combination of mathematical s ...
. In linear algebra the matrix groups (matrices with inverses) are the central structure, with group action defined by the usual definition of A as an n\times n matrix, acting on x \in ^n as n \times 1 vectors; the orbit in linear-algebra is the set of n-vectors given by y=A \cdot x \in ^n, which is a group action of the matrices through the orbit of ^n. The central group in computational anatomy defined on volumes in ^3 are the
diffeomorphisms In mathematics, a diffeomorphism is an isomorphism of smooth manifolds. It is an invertible function that maps one differentiable manifold to another such that both the function and its inverse are differentiable. Definition Given two ma ...
\mathcal \doteq Diff which are mappings with 3-components \phi(\cdot)=(\phi_1(\cdot),\phi_2 (\cdot),\phi_3 (\cdot)), law of composition of functions \phi \circ \phi^\prime (\cdot)\doteq \phi (\phi^\prime(\cdot)) , with inverse \phi \circ \phi^(\cdot)=\phi ( \phi^(\cdot))=id. Most popular are scalar images, I(x),x \in ^3, with action on the right via the inverse. : \phi \cdot I(x)=I \circ \phi^ (x), x \in ^3 . For sub-
manifold In mathematics, a manifold is a topological space that locally resembles Euclidean space near each point. More precisely, an n-dimensional manifold, or ''n-manifold'' for short, is a topological space with the property that each point has a n ...
s X \subset ^3 \in \mathcal , parametrized by a chart or
immersion Immersion may refer to: The arts * "Immersion", a 2012 story by Aliette de Bodard * ''Immersion'', a French comic book series by Léo Quievreux#Immersion, Léo Quievreux * Immersion (album), ''Immersion'' (album), the third album by Australian gro ...
m(u), u \in U , the diffeomorphic action the flow of the position : \phi \cdot m(u) \doteq \phi\circ m(u), u \in U . Several
group actions in computational anatomy Group actions are central to Riemannian geometry and defining orbits (control theory). The orbits of computational anatomy consist of anatomical shapes and medical images; the anatomical shapes are submanifolds of differential geometry consi ...
have been defined.


Lagrangian and Eulerian flows for generating diffeomorphisms

For the study of
rigid body In physics, a rigid body (also known as a rigid object) is a solid body in which deformation is zero or so small it can be neglected. The distance between any two given points on a rigid body remains constant in time regardless of external force ...
kinematics Kinematics is a subfield of physics, developed in classical mechanics, that describes the Motion (physics), motion of points, Physical object, bodies (objects), and systems of bodies (groups of objects) without considering the forces that cause ...
, the low-dimensional matrix
Lie groups In mathematics, a Lie group (pronounced ) is a group that is also a differentiable manifold. A manifold is a space that locally resembles Euclidean space, whereas groups define the abstract concept of a binary operation along with the additio ...
have been the central focus. The matrix groups are low-dimensional mappings, which are diffeomorphisms that provide one-to-one correspondences between coordinate systems, with a smooth inverse. The
matrix group In mathematics, a matrix group is a group ''G'' consisting of invertible matrices over a specified field ''K'', with the operation of matrix multiplication. A linear group is a group that is isomorphic to a matrix group (that is, admitting a fait ...
of rotations and scales can be generated via a closed form finite-dimensional matrices which are solution of simple ordinary differential equations with solutions given by the matrix exponential. For the study of deformable shape in computational anatomy, a more general diffeomorphism group has been the group of choice, which is the infinite dimensional analogue. The high-dimensional differeomorphism groups used in Computational Anatomy are generated via smooth flows \phi_t, t \in ,1 which satisfy the
Lagrangian and Eulerian specification of the flow field __NOTOC__ In classical field theories, the Lagrangian specification of the flow field is a way of looking at fluid motion where the observer follows an individual fluid parcel as it moves through space and time. Plotting the position of an indi ...
s as first introduced in., satisfying the ordinary differential equation: with v \doteq (v_1,v_2,v_3) the vector fields on ^3 termed the Eulerian velocity of the particles at position \phi of the flow. The vector fields are functions in a function space, modelled as a smooth
Hilbert David Hilbert (; ; 23 January 1862 – 14 February 1943) was a German mathematician, one of the most influential mathematicians of the 19th and early 20th centuries. Hilbert discovered and developed a broad range of fundamental ideas in many a ...
space of high-dimension, with the Jacobian of the flow \ D\phi \doteq (\frac) a high-dimensional field in a function space as well, rather than a low-dimensional matrix as in the matrix groups. Flows were first introduced for large deformations in image matching; \dot \phi_t(x) is the instantaneous velocity of particle x at time t . The inverse \phi_t^, t \in ,1 required for the group is defined on the Eulerian vector-field with advective inverse flow


The diffeomorphism group of computational anatomy

The group of diffeomorphisms is very big. To ensure smooth flows of diffeomorphisms avoiding shock-like solutions for the inverse, the vector fields must be at least 1-time continuously differentiable in space.P. Dupuis, U. Grenander, M.I. Miller, Existence of Solutions on Flows of Diffeomorphisms, Quarterly of Applied Math, 1997. A. Trouvé. Action de groupe de dimension infinie et reconnaissance de formes. C R Acad Sci Paris Sér I Math, 321(8):1031– 1034, 1995. For diffeomorphisms on ^3 , vector fields are modelled as elements of the Hilbert space (V, \, \cdot \, _V ) using the Sobolev embedding theorems so that each element has strictly greater than 2 generalized square-integrable spatial derivatives (thus v_i \in H_0^3, i=1,2,3, is sufficient), yielding 1-time continuously differentiable functions. The diffeomorphism group are flows with vector fields absolutely integrable in Sobolev norm: where \, v\, _V^2 \doteq \int_X Av\cdot v dx, \ v \in V \ , with the linear operator A mapping to the dual space A: V \mapsto V^*, with the integral calculated by integration by parts when Av \in V^* is a generalized function in the dual space.


Diffeomorphometry: The metric space of shapes and forms

The study of metrics on groups of diffeomorphisms and the study of metrics between manifolds and surfaces has been an area of significant investigation. The diffeomorphometry metric measures how close and far two shapes or images are from each other; the metric length is the shortest length of the flow which carries one coordinate system into the other. Oftentimes, the familiar Euclidean metric is not directly applicable because the patterns of shapes and images don't form a vector space. In the Riemannian orbit model of computational anatomy, diffeomorphisms acting on the forms \phi \cdot m \in \mathcal , \phi \in Diff_V, m \in \mathcal don't act linearly. There are many ways to define metrics, and for the sets associated to shapes the
Hausdorff metric In mathematics, the Hausdorff distance, or Hausdorff metric, also called Pompeiu–Hausdorff distance, measures how far two subsets of a metric space are from each other. It turns the set of non-empty compact subsets of a metric space into a metri ...
is another. The method we use to induce the
Riemannian metric In differential geometry, a Riemannian manifold or Riemannian space , so called after the German mathematician Bernhard Riemann, is a real, smooth manifold ''M'' equipped with a positive-definite inner product ''g'p'' on the tangent space ''T ...
is used to induce the metric on the orbit of shapes by defining it in terms of the metric length between diffeomorphic coordinate system transformations of the flows. Measuring the lengths of the geodesic flow between coordinates systems in the orbit of shapes is called diffeomorphometry.


The right-invariant metric on diffeomorphisms

Define the distance on the group of diffeomorphisms this is the right-invariant metric of diffeomorphometry, invariant to reparameterization of space since for all \phi \in Diff_V , : d_(\psi, \varphi)=d_(\psi \circ \phi, \varphi \circ \phi).


The metric on shapes and forms

The distance on shapes and forms, d_:\mathcal \times \mathcal\rightarrow \R^+ , the images are denoted with the orbit as I \in \mathcal and metric , d_ .


The action integral for Hamilton's principle on diffeomorphic flows

In classical mechanics the evolution of physical systems is described by solutions to the Euler–Lagrange equations associated to the Least-action principle of
Hamilton Hamilton may refer to: People * Hamilton (name), a common British surname and occasional given name, usually of Scottish origin, including a list of persons with the surname ** The Duke of Hamilton, the premier peer of Scotland ** Lord Hamilt ...
. This is a standard way, for example of obtaining
Newton's laws of motion Newton's laws of motion are three basic laws of classical mechanics that describe the relationship between the motion of an object and the forces acting on it. These laws can be paraphrased as follows: # A body remains at rest, or in moti ...
of free particles. More generally, the Euler-Lagrange equations can be derived for systems of
generalized coordinates In analytical mechanics, generalized coordinates are a set of parameters used to represent the state of a system in a configuration space. These parameters must uniquely define the configuration of the system relative to a reference state.,p. 3 ...
. The Euler-Lagrange equation in computational anatomy describes the geodesic shortest path flows between coordinate systems of the diffeomorphism metric. In computational anatomy the generalized coordinates are the flow of the diffeomorphism and its Lagrangian velocity \phi, \dot, the two related via the Eulerian velocity v \doteq \dot \circ \phi^.
Hamilton's principle In physics, Hamilton's principle is William Rowan Hamilton's formulation of the principle of stationary action. It states that the dynamics of a physical system are determined by a variational problem for a functional based on a single function ...
for generating the Euler-Lagrange equation requires the action integral on the Lagrangian given by the Lagrangian is given by the kinetic energy:


Diffeomorphic or Eulerian shape momentum

In computational anatomy, Av was first called the Eulerian or diffeomorphic shape momentum since when integrated against Eulerian velocity v gives energy density, and since there is a conservation of diffeomorphic shape momentum which holds. The operator A is the generalized
moment of inertia The moment of inertia, otherwise known as the mass moment of inertia, angular mass, second moment of mass, or most accurately, rotational inertia, of a rigid body is a quantity that determines the torque needed for a desired angular acceler ...
or inertial operator.


The Euler–Lagrange equation on shape momentum for geodesics on the group of diffeomorphisms

Classical calculation of the Euler-Lagrange equation from
Hamilton's principle In physics, Hamilton's principle is William Rowan Hamilton's formulation of the principle of stationary action. It states that the dynamics of a physical system are determined by a variational problem for a functional based on a single function ...
requires the perturbation of the Lagrangian on the vector field in the kinetic energy with respect to first order perturbation of the flow. This requires adjustment by the Lie bracket of vector field, given by operator ad_v: w \in V \mapsto V which involves the Jacobian given by : ad_v doteq ,wdoteq (Dv)w-(Dw)v \in V . Defining the adjoint ad_v^*: V^* \rightarrow V^*, then the first order variation gives the Eulerian shape momentum Av \in V^* satisfying the generalized equation: meaning for all smooth w \in V , : \int_X \left( \frac Av_t + ad_^* (Av_t) \right) \cdot w dx=\int_X \frac Av_t \cdot w dx + \int_X Av_t \cdot ((Dv_t)w-(Dw)v_t) dx=0 . Computational anatomy is the study of the motions of submanifolds, points, curves, surfaces and volumes. Momentum associated to points, curves and surfaces are all singular, implying the momentum is concentrated on subsets of ^3 which are dimension \leq 2 in
Lebesgue measure In measure theory, a branch of mathematics, the Lebesgue measure, named after French mathematician Henri Lebesgue, is the standard way of assigning a measure to subsets of ''n''-dimensional Euclidean space. For ''n'' = 1, 2, or 3, it coincides wit ...
. In such cases, the energy is still well defined (Av_t\mid v_t) since although Av_t is a generalized function, the vector fields are smooth and the Eulerian momentum is understood via its action on smooth functions. The perfect illustration of this is even when it is a superposition of delta-diracs, the velocity of the coordinates in the entire volume move smoothly. The Euler-Lagrange equation () on diffeomorphisms for generalized functions Av \in V^* was derived in.M.I. Miller, A. Trouve, L. Younes, Geodesic Shooting in Computational Anatomy, IJCV, 2006. In Riemannian Metric and Lie-Bracket Interpretation of the Euler-Lagrange Equation on Geodesics derivations are provided in terms of the adjoint operator and the Lie bracket for the group of diffeomorphisms. It has come to be called EPDiff equation for diffeomorphisms connecting to the Euler-Poincare method having been studied in the context of the inertial operator A=identity for incompressible, divergence free, fluids.


Diffeomorphic shape momentum: a classical vector function

For the momentum density case (Av_t \mid w)=\int_X \mu_t \cdot w \, dx , then Euler–Lagrange equation has a classical solution:The Euler-Lagrange equation on diffeomorphisms, classically defined for momentum densities first appeared in for medical image analysis.


Riemannian exponential (geodesic positioning) and Riemannian logarithm (geodesic coordinates)

In medical imaging and computational anatomy, positioning and coordinatizing shapes are fundamental operations; the system for positioning anatomical coordinates and shapes built on the metric and the Euler-Lagrange equation a geodesic positioning system as first explicated in Miller Trouve and Younes. Solving the geodesic from the initial condition v_0 is termed the Riemannian-exponential, a mapping Exp_(\cdot): V \to Diff_V at identity to the group. The Riemannian exponential satisfies Exp_ (v_0)=\phi_1 for initial condition \dot \phi_0=v_0, vector field dynamics \dot \phi_t=v_t \circ \phi_t, t \in ,1 , * for classical equation diffeomorphic shape momentum \int_X Av_t \cdot w \, dx , Av \in V, then : \ \ \ \frac Av_t + (Dv_t)^T Av_t +(DAv_t)v_t + ( \nabla \cdot v) Av_t=0 \ ; * for generalized equation, then Av \in V^* , w \in V , : \ \ \ \int_X \frac Av_t \cdot w dx + \int_X Av_t \cdot ((Dv_t)w-(Dw)v_t)dx=0 . Computing the flow v_0 onto coordinates Riemannian logarithm, mapping Log_(\cdot): Diff_V \to V at identity from \varphi to vector field v_0 \in V; Log_( \varphi)=v_0 \ \text \dot \phi_0=v_0, \phi_0=id, \phi_1=\varphi \ . Extended to the entire group they become \phi=Exp_\varphi(v_0\circ \varphi) \doteq Exp_ (v_0) \circ \varphi ; Log_\varphi(\phi)\doteq Log_( \phi \circ\varphi^) \circ \varphi . These are inverses of each other for unique solutions of Logarithm; the first is called geodesic positioning, the latter geodesic coordinates (see exponential map, Riemannian geometry for the finite dimensional version).The geodesic metric is a local flattening of the Riemannian coordinate system (see figure).


Hamiltonian formulation of computational anatomy

In computational anatomy the diffeomorphisms are used to push the coordinate systems, and the vector fields are used as the control within the anatomical orbit or morphological space. The model is that of a dynamical system, the flow of coordinates t \mapsto \phi_t \in \operatorname_V and the control the vector field t \mapsto v_t \in V related via \dot \phi_t=v_t \cdot \phi_t,\phi_0=id . The Hamiltonian view reparameterizes the momentum distribution Av \in V^* in terms of the ''conjugate momentum or'' ''canonical momentum, i''ntroduced as a Lagrange multiplier p: \dot \phi \mapsto (p\mid\dot \phi) constraining the Lagrangian velocity \dot \phi_t=v_t \circ \phi_t.accordingly: : H(\phi_t,p_t,v_t)=\int_X p_t \cdot (v_t \circ \phi_t) dx-\frac\int_X Av_t \cdot v_t dx . This function is the extended Hamiltonian. The Pontryagin maximum principle gives the optimizing vector field which determines the geodesic flow satisfying \dot \phi_t=v_t \circ \phi_t , \phi_0=id, as well as the reduced Hamiltonian : H(\phi_t,p_t) \doteq \max_v H( \phi_t, p_t,v) \ . The Lagrange multiplier in its action as a linear form has its own inner product of the canonical momentum acting on the velocity of the flow which is dependent on the shape, e.g. for landmarks a sum, for surfaces a surface integral, and. for volumes it is a volume integral with respect to dx on ^3. In all cases the Greens kernels carry weights which are the canonical momentum evolving according to an ordinary differential equation which corresponds to EL but is the geodesic reparameterization in canonical momentum. The optimizing vector field is given by :v_t \doteq \arg max_ H(\phi_t,p_t,v) with dynamics of canonical momentum reparameterizing the vector field along the geodesic


Stationarity of the Hamiltonian and kinetic energy along Euler–Lagrange

Whereas the vector fields are extended across the entire background space of ^3, the geodesic flows associated to the submanifolds has Eulerian shape momentum which evolves as a generalized function Av_t \in V^* concentrated to the submanifolds. For landmarksV. Camion, L. Younes: Geodesic Interpolating Splines (EMMCVPR 2001) J Glaunès, M Vaillant, MI Miller. Landmark matching via large deformation diffeomorphisms on the sphere Journal of mathematical imaging and vision, 2004. the geodesics have Eulerian shape momentum which are a superposition of delta distributions travelling with the finite numbers of particles; the diffeomorphic flow of coordinates have velocities in the range of weighted Green's Kernels. For surfaces, the momentum is a surface integral of delta distributions travelling with the surface. The geodesics connecting coordinate systems satisfying have stationarity of the Lagrangian. The Hamiltonian is given by the extremum along the path t \in ,1/math>, H(\phi,p)=\max_v H(\phi,p,v) , equalling the and is stationary along . Defining the geodesic velocity at the identity v_0=\arg \max_v H(\phi_0,p_0,v) , then along the geodesic The stationarity of the Hamiltonian demonstrates the interpretation of the Lagrange multiplier as momentum; integrated against velocity \dot \phi gives energy density. The canonical momentum has many names. In
optimal control Optimal control theory is a branch of mathematical optimization that deals with finding a control for a dynamical system over a period of time such that an objective function is optimized. It has numerous applications in science, engineering and ...
, the flows \phi is interpreted as the state, and p is interpreted as conjugate state, or conjugate momentum. The geodesi of EL implies specification of the vector fields v_0 or Eulerian momentum Av_0 at t=0, or specification of canonical momentum p_0 determines the flow.


The metric on geodesic flows of landmarks, surfaces, and volumes within the orbit

In computational anatomy the submanifolds are pointsets, curves, surfaces and subvolumes which are the basic primitives. The geodesic flows between the submanifolds determine the distance, and form the basic measuring and transporting tools of diffeomorphometry. At t=0 the geodesic has vector field v_0=K p_0 determined by the conjugate momentum and the Green's kernel of the inertial operator defining the Eulerian momentum K=A^. The metric distance between coordinate systems connected via the geodesic determined by the induced distance between identity and group element: :d_(id,\varphi)=\, Log_(\varphi)\, _V=\, v_0 \, _V=\sqrt


Conservation law In physics, a conservation law states that a particular measurable property of an isolated physical system does not change as the system evolves over time. Exact conservation laws include conservation of energy, conservation of linear momentum, c ...
s on diffeomorphic shape momentum for computational anatomy

Given the least-action there is a natural definition of momentum associated to generalized coordinates; the quantity acting against velocity gives energy. The field has studied two forms, the momentum associated to the Eulerian vector field termed Eulerian diffeomorphic shape momentum, and the momentum associated to the initial coordinates or canonical coordinates termed canonical diffeomorphic shape momentum. Each has a conservation law. The conservation of momentum goes hand in hand with the . In computational anatomy, Av is the Eulerian
Momentum In Newtonian mechanics, momentum (more specifically linear momentum or translational momentum) is the product of the mass and velocity of an object. It is a vector quantity, possessing a magnitude and a direction. If is an object's mass an ...
since when integrated against Eulerian velocity v gives energy density; operator A the generalized
moment of inertia The moment of inertia, otherwise known as the mass moment of inertia, angular mass, second moment of mass, or most accurately, rotational inertia, of a rigid body is a quantity that determines the torque needed for a desired angular acceler ...
or inertial operator which acting on the Eulerian velocity gives momentum which is conserved along the geodesic: Conservation of Eulerian shape momentum was shown in and follows from ; conservation of canonical momentum was shown in


Geodesic interpolation of information between coordinate systems via variational problems

Construction of diffeomorphic correspondences between shapes calculates the initial vector field coordinates v_0 \in V and associated weights on the Greens kernels p_0. These initial coordinates are determined by matching of shapes, called Large Deformation Diffeomorphic Metric Mapping (LDDMM). LDDMM has been solved for landmarks with and without correspondence and for dense image matchings. curves, surfaces, dense vector and tensor imagery, and varifolds removing orientation. LDDMM calculates geodesic flows of the onto target coordinates, adding to the action integral \frac \int_0^1 \int_X Av_t\cdot v_t dx dt an endpoint matching condition E: \phi_1 \rightarrow R^+ measuring the correspondence of elements in the orbit under coordinate system transformation. Existence of solutions were examined for image matching. The solution of the variational problem satisfies the for t \in [0,1) with boundary condition.


Matching based on minimizing kinetic energy action with endpoint condition

\text_ C(\phi) \doteq \frac \int_0^1 \int_X Av_t \cdot v_t dx dt +E( \phi_1) \begin \text \ \ \ \ \ \ \ \ & \ \ \ \frac Av_t + ad_^* (Av_t)=0 , \ t \in [0,1) \ , \\ \text & \ \ \ \phi_0=id, Av_1=- \frac, _ \ . \end Conservation from extends the B.C. at t=1 to the rest of the path t \in [0,1) . The inexact matching problem with the endpoint matching term E(\phi_1) has several alternative forms. One of the key ideas of the stationarity of the Hamiltonian along the geodesic solution is the integrated running cost reduces to initial cost at t=0, geodesics of the are determined by their initial condition v_0. The running cost is reduced to the initial cost determined by v_0=Kp_0 of .


Matching based on geodesic shooting

:\min_ C(v_0) \doteq \frac \int_X Av_0 \cdot v_0 dx +E(\mathrm_\mathrm(v_0) \cdot I_0) \ ; :\min_ C(p_0)= \frac\int_X p_0 \cdot Kp_0 dx+ E(\mathrm_\text(Kp_0) \cdot I_0) The matching problem explicitly indexed to initial condition v_0 is called shooting, which can also be reparamerized via the conjugate momentum p_0.


Dense image matching in computational anatomy

Dense image matching has a long history now with the earliest efforts exploiting a small deformation framework. Large deformations began in the early 1990s, with the first existence to solutions to the variational problem for flows of diffeomorphisms for dense image matching established in. Beg solved via one of the earliest LDDMM algorithms based on solving the variational matching with endpoint defined by the dense imagery with respect to the vector fields, taking variations with respect to the vector fields. Another solution for dense image matching reparameterizes the optimization problem in terms of the state q_t \doteq I \circ \phi_t^, q_0=I giving the solution in terms of the infinitesimal action defined by the advection equation.


LDDMM dense image matching

For Beg's LDDMM, denote the Image I(x), x \in X with group action \phi \cdot I \doteq I \circ \phi^ . Viewing this as an optimal control problem, the state of the system is the diffeomorphic flow of coordinates \phi_t, t \in ,1, with the dynamics relating the control v_t, t \in ,1/math> to the state given by \dot \phi=v \circ \phi. The endpoint matching condition E(\phi_1) \doteq \, I\circ \phi_1^ -I^\prime\, ^2 gives the variational problem : \begin & \text \ \ \ \ \ \ Av_1=\mu_1 dx, \mu_1=(I\circ \phi_1^-I^\prime ) \nabla (I \circ \phi_1^) \ ,\\ &\text \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ Av_t=\mu_t \, dx, \ \mu_t=(D \phi_t^)^T \mu_0 \circ \phi_t^, D \phi_t^, \ . \\ & \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \mu_0=(I - I^\prime \circ \phi_1) \nabla I, D \phi_1, \ . \\ \end Beg's iterative LDDMM algorithm has fixed points which satisfy the necessary optimizer conditions. The iterative algorithm is given in Beg's LDDMM algorithm for dense image matching.


Hamiltonian LDDMM in the reduced advected state

Denote the Image I(x), x \in X , with state q_t \doteq I \circ \phi_t^ and the dynamics related state and control given by the advective term \dot q_t=- \nabla q_t \cdot v_t. The endpoint E(q_1) \doteq \, q_1-I^\prime\, ^2 gives the variational problem Viallard's iterative Hamiltonian LDDMM has fixed points which satisfy the necessary optimizer conditions.


Diffusion tensor image matching in computational anatomy

Dense LDDMM tensor matching takes the images as 3x1 vectors and 3x3 tensors solving the variational problem matching between coordinate system based on the principle eigenvectors of the diffusion tensor MRI image (DTI) denoted M(x), x \in ^3 consisting of the 3 \times 3-tensor at every voxel. Several of the group actions defined based on the Frobenius
matrix norm In mathematics, a matrix norm is a vector norm in a vector space whose elements (vectors) are matrices (of given dimensions). Preliminaries Given a field K of either real or complex numbers, let K^ be the -vector space of matrices with m rows ...
between square matrices \, A \, _F^2 \doteq trace A^T A. Shown in the accompanying figure is a DTI image illustrated via its color map depicting the eigenvector orientations of the DTI matrix at each voxel with color determined by the orientation of the directions. Denote the 3 \times 3 tensor image M(x), x \in ^3 with eigen-elements \, \lambda_1 \geq \lambda_2 \geq \lambda_3 . Coordinate system transformation based on DTI imaging has exploited two actions one based on the principle eigen-vector or entire matrix. LDDMM matching based on the principal eigenvector of the diffusion tensor matrix takes the image I(x), x \in ^3 as a unit vector field defined by the first eigenvector. The group action becomes : \varphi \cdot I= \begin \frac & I\circ \varphi \neq 0; \\ 0 & \text \end LDDMM matching based on the entire tensor matrix has group action becomes \varphi \cdot M=(\lambda_1 \hat_1 \hat_1^+\lambda_2 \hat_2 \hat_2^ +\lambda_3 \hat_3 \hat_3^) \circ \varphi^ , transformed eigenvectors :\begin \hat_1 &=\frac \ , \ \ \ \hat_2=\frac\ , \ \ \ \hat_3=\hat_1 \times \hat_2 \end. The variational problem matching onto the principal eigenvector or the matrix is described LDDMM Tensor Image Matching.


High Angular Resolution Diffusion Image (HARDI) matching in computational anatomy

High angular resolution diffusion imaging (HARDI) addresses the well-known limitation of DTI, that is, DTI can only reveal one dominant fiber orientation at each location. HARDI measures diffusion along n uniformly distributed directions on the sphere and can characterize more complex fiber geometries. HARDI can be used to reconstruct an
orientation distribution function In physical chemistry and materials science, texture is the distribution of crystallographic orientations of a polycrystalline sample (it is also part of the geological fabric). A sample in which these orientations are fully random is said to hav ...
(ODF) that characterizes the angular profile of the diffusion probability density function of water molecules. The ODF is a function defined on a unit sphere, ^2 . Dense LDDMM ODF matching takes the HARDI data as ODF at each voxel and solves the LDDMM variational problem in the space of ODF. In the field of
information geometry Information geometry is an interdisciplinary field that applies the techniques of differential geometry to study probability theory and statistics. It studies statistical manifolds, which are Riemannian manifolds whose points correspond to prob ...
, the space of ODF forms a Riemannian manifold with the Fisher-Rao metric. For the purpose of LDDMM ODF mapping, the square-root representation is chosen because it is one of the most efficient representations found to date as the various Riemannian operations, such as geodesics, exponential maps, and logarithm maps, are available in closed form. In the following, denote square-root ODF ( ) as \psi() , where \psi() is non-negative to ensure uniqueness and \int_ \psi^2() d=1. The variational problem for matching assumes that two ODF volumes can be generated from one to another via flows of diffeomorphisms \phi_t , which are solutions of ordinary differential equations \dot \phi_t=v_t (\phi_t), t \in ,1 starting from the identity map \phi_0= . Denote the action of the diffeomorphism on template as \phi_1 \cdot \psi_(,x), \in , x \in X are respectively the coordinates of the unit sphere, and the image domain, with the target indexed similarly, \psi_(, x), \in , x \in X . The group action of the diffeomorphism on the template is given according to :\phi_1 \cdot \psi (x)\doteq (D\phi_1) \psi \circ \phi_1^(x), x \in X , where (D\phi_1) is the Jacobian of the affined transformed ODF and is defined as \begin (D \phi_1) \psi\circ \phi_1^(x)=\sqrt \quad \psi \left( \frac, \phi_1^(x) \right) . \end This group action of diffeomorphisms on ODF reorients the ODF and reflects changes in both the magnitude of \psi and the sampling directions of \bf s due to affine transformation. It guarantees that the volume fraction of fibers oriented toward a small patch must remain the same after the patch is transformed. The LDDMM variational problem is defined as : \begin C(v)=\inf_\int_0^1 \int_X Av_t \cdot v_t dx \ dt +\lambda \int_\, \log_(\psi_(x))\, ^2_dx \end . where the logarithm of \psi_1, \psi_2 \in \Psi is defined as : \begin \, \log_(\psi_2)\, _ =\cos^ \langle \psi_1, \psi_2 \rangle= \cos^\left(\int_ \psi_1() \psi_2()d\right), \end where \langle \cdot, \cdot \rangle is the normal dot product between points in the sphere under the \mathrm^2 metric. This LDDMM-ODF mapping algorithm has been widely used to study brain white matter degeneration in aging, Alzheimer's disease, and vascular dementia. The brain white matter atlas generated based on ODF is constructed via Bayesian estimation. Regression analysis on ODF is developed in the ODF manifold space in.


Metamorphosis

The principle mode of variation represented by the orbit model is change of coordinates. For setting in which pairs of images are not related by diffeomorphisms but have photometric variation or image variation not represented by the template,
active appearance model An active appearance model (AAM) is a computer vision algorithm for matching a statistical model of object shape and appearance to a new image. They are built during a training phase. A set of images, together with coordinates of landmarks that ap ...
ling has been introduced, originally by Edwards-Cootes-Taylor and in 3D medical imaging in. In the context of computational anatomy in which metrics on the anatomical orbit has been studied, metamorphosis for modelling structures such as tumors and photometric changes which are not resident in the template was introduced in for Magnetic Resonance image models, with many subsequent developments extending the metamorphosis framework. For image matching the image metamorphosis framework enlarges the action so that t \mapsto (\phi_t,I_t) with action \phi_t \cdot I_t \doteq I_t \circ \phi_t^ . In this setting metamorphosis combines both the diffeomorphic coordinate system transformation of computational anatomy as well as the early
morphing Morphing is a special effect in motion pictures and animations that changes (or morphs) one image or shape into another through a seamless transition. Traditionally such a depiction would be achieved through dissolving techniques on film. Since ...
technologies which only faded or modified the photometric or image intensity alone. Then the matching problem takes a form with equality boundary conditions: : \min_ \frac \int_0^1 \left( \int_X A v_t \cdot v_t dx + \, \dot I_t \circ \phi_t^ \, ^2 / \sigma^2 \right) \, dt \text \ \phi_0=id, I_0=\text, I_1=\text


Matching landmarks, curves, surfaces

Transforming coordinate systems based on
Landmark point In morphometrics, landmark point or shortly landmark is a point in a shape object in which correspondences between and within the populations of the object are preserved. In other disciplines, landmarks may be known as vertices, anchor points, co ...
or
fiducial marker A fiducial marker or fiducial is an object placed in the field of view of an imaging system that appears in the image produced, for use as a point of reference or a measure. It may be either something placed into or on the imaging subject, or a m ...
features dates back to Bookstein's early work on small deformation spline methods for interpolating correspondences defined by fiducial points to the two-dimensional or three-dimensional background space in which the fiducials are defined. Large deformation landmark methods came on in the late 1990s. The above Figure depicts a series of landmarks associated three brain structures, the amygdala, entorhinal cortex, and hippocampus. Matching geometrical objects like unlabelled point distributions, curves or surfaces is another common problem in computational anatomy. Even in the discrete setting where these are commonly given as vertices with meshes, there are no predetermined correspondences between points as opposed to the situation of landmarks described above. From the theoretical point of view, while any submanifold X in ^3 , d=1,2,3 can be parameterized in local charts m: u \in U \subset ^ \rightarrow ^3 , all reparametrizations of these charts give geometrically the same manifold. Therefore, early on in computational anatomy, investigators have identified the necessity of parametrization invariant representations. One indispensable requirement is that the end-point matching term between two submanifolds is itself independent of their parametrizations. This can be achieved via concepts and methods borrowed from
Geometric measure theory In mathematics, geometric measure theory (GMT) is the study of geometric properties of sets (typically in Euclidean space) through measure theory. It allows mathematicians to extend tools from differential geometry to a much larger class of surfa ...
, in particular
currents Currents, Current or The Current may refer to: Science and technology * Current (fluid), the flow of a liquid or a gas ** Air current, a flow of air ** Ocean current, a current in the ocean *** Rip current, a kind of water current ** Current (stre ...
and
varifold In mathematics, a varifold is, loosely speaking, a measure-theoretic generalization of the concept of a differentiable manifold, by replacing differentiability requirements with those provided by rectifiable sets, while maintaining the general a ...
s which have been used extensively for curve and surface matching.


Landmark or point matching with correspondence

Denoted the landmarked shape X\doteq \ \subset ^3 with endpoint E(\phi_1) \doteq \textstyle \sum_i \displaystyle \, \phi_1(x_i)-x_i^\prime \, ^2 , the variational problem becomes The geodesic Eulerian momentum is a generalized function \displaystyle Av_t \in V^*\textstyle, t \in ,1 , supported on the landmarked set in the variational problem. The endpoint condition with conservation implies the initial momentum at the identity of the group: : \begin & \text \ \ \ \ \ Av_1=\sum_^n p_1(i)\delta_, p_1(i)=(x_i^\prime-\phi_1(x_i)) \ , \\ & \text \ \ \ \ \ \ \ \ \ \ \ \ \ \ Av_t=\sum_^n p_t(i) \delta_ , \ p_t(i)=(D\phi_)_^T p_1(i) \ , \ \phi_ \doteq \phi_1 \circ \phi_t^ \ , \\ & \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ Av_0=\sum_i \delta_ (\cdot) p_0(i) \ \text \ \ p_0(i)=(D\phi_1)^T_(x_i^\prime-\phi_1(x_i)) \end The iterative algorithm for large deformation diffeomorphic metric mapping for landmarks is given.


Measure matching: unregistered landmarks

Glaunes and co-workers first introduced diffeomorphic matching of pointsets in the general setting of matching distributions. As opposed to landmarks, this includes in particular the situation of weighted point clouds with no predefined correspondences and possibly different cardinalities. The template and target discrete point clouds are represented as two weighted sums of Diracs \mu_=\sum_^ \rho_i \delta_ and \mu_=\sum_^ \rho^_ \delta_ living in the space of
signed measure In mathematics, signed measure is a generalization of the concept of (positive) measure by allowing the set function to take negative values. Definition There are two slightly different concepts of a signed measure, depending on whether or not o ...
s of \mathbb^3 . The space is equipped with a Hilbert metric obtained from a real positive kernel k(x,y) on \mathbb^3 , giving the following norm: : \, \mu_ \, _\mathrm^2=\sum_^ \rho_i \rho_j k(x_i,x_j) The matching problem between a template and target point cloud may be then formulated using this kernel metric for the endpoint matching term: : \min_ C(\phi) \doteq \frac \int (Av_t\mid v_t) \, dt +\frac \, \mu_ - \mu_ \, _\mathrm^2 where \mu_=\sum_^ \rho_i \delta_ is the distribution transported by the deformation.


Curve matching

In the one dimensional case, a curve in 3D can be represented by an embedding m: u \in ,1\rightarrow ^3 , and the group action of ''Diff'' becomes \phi \cdot m=\phi \circ m. However, the correspondence between curves and embeddings is not one to one as the any reparametrization m \circ \gamma, for \gamma a diffeomorphism of the interval ,1 represents geometrically the same curve. In order to preserve this invariance in the end-point matching term, several extensions of the previous 0-dimensional measure matching approach can be considered. * Curve matching with currents In the situation of oriented curves, currents give an efficient setting to construct invariant matching terms. In such representation, curves are interpreted as elements of a functional space dual to the space vector fields, and compared through kernel norms on these spaces. Matching of two curves m and m^\prime writes eventually as the variational problem : \min_ C(\phi) \doteq \frac \int (Av_t\mid v_t) \, dt +\frac \, \mathcal_ - \mathcal_ \, _\mathrm^2 with the endpoint term E(\phi_1)=\, \mathcal_ - \mathcal_ \, _\mathrm^2/2 is obtained from the norm : \, \mathcal_ \, _\mathrm^2=\int_0^1 \int_0^1 K_C(m(u),m(v)) \partial m(u) \cdot \partial m(v) \, du \, dv the derivative \partial m(u) being the tangent vector to the curve and K_ a given matrix kernel of ^3 . Such expressions are invariant to any positive reparametrizations of m and m', and thus still depend on the orientation of the two curves. * Curve matching with varifolds Varifold is an alternative to currents when orientation becomes an issue as for instance in situations involving multiple bundles of curves for which no "consistent" orientation may be defined. Varifolds directly extend 0-dimensional measures by adding an extra tangent space direction to the position of points, leading to represent curves as measures on the product of ^3 and the
Grassmannian In mathematics, the Grassmannian is a space that parameterizes all -Dimension, dimensional linear subspaces of the -dimensional vector space . For example, the Grassmannian is the space of lines through the origin in , so it is the same as the ...
of all straight lines in ^3 . The matching problem between two curves then consists in replacing the endpoint matching term by E(\phi_1)=\, \mathcal_ - \mathcal_ \, _^2/2 with varifold norms of the form: : \, \mathcal_m \, _^2=\int_^1 \int_^1 k_(m(u),m(v)) k_\left( partial m(u) partial m(v)\right) \partial m(u) \partial m(v) \, du \, dv where partial m(u)/math> is the non-oriented line directed by tangent vector \partial m(u) and k_, k_ two scalar kernels respectively on \mathbb^3 and the Grassmannian. Due to the inherent non-oriented nature of the Grassmannian representation, such expressions are invariant to positive and negative reparametrizations.


Surface matching

Surface matching share many similarities with the case of curves. Surfaces in ^3 are parametrized in local charts by embeddings m: u \in U \subset ^ \rightarrow ^3 , with all reparametrizations m\circ \gamma with \gamma a diffeomorphism of U being equivalent geometrically. Currents and varifolds can be also used to formalize surface matching. * Surface matching with currents Oriented surfaces can be represented as 2-currents which are dual to differential 2-forms. In ^3 , one can further identify 2-forms with vector fields through the standard wedge product of 3D vectors. In that setting, surface matching writes again: : \min_ C(\phi) \doteq \frac \int (Av_t\mid v_t) \, dt +\frac \, \mathcal_ - \mathcal_ \, _\mathrm^2 with the endpoint term E(\phi_1)=\, \mathcal_ - \mathcal_ \, _\mathrm^2/2 given through the norm : \, \mathcal_ \, _\mathrm^2=\iint_ K_C(m(u),m(v)) \vec(u) \cdot \vec(v) \, du \, dv with \vec=\partial_ m \wedge \partial_ m the normal vector to the surface parametrized by m . This surface mapping algorithm has been validated for brain cortical surfaces against CARET and FreeSurfer. LDDMM mapping for multiscale surfaces is discussed in. * Surface matching with varifolds For non-orientable or non-oriented surfaces, the varifold framework is often more adequate. Identifying the parametric surface m with a varifold \mathcal_m in the space of measures on the product of ^3 and the Grassmannian, one simply replaces the previous current metric \, \mathcal_ \, _\mathrm^2 by: : \, \mathcal_ \, _\mathrm^2=\iint_ k_(m(u),m(v)) k_\left( vec(u) vec(v)\right) \vec(u) \vec(v) \, du \, dv where vec(u) is the (non-oriented) line directed by the normal vector to the surface.


Growth and atrophy from longitudinal time-series

There are many settings in which there are a series of measurements, a time-series to which the underlying coordinate systems will be matched and flowed onto. This occurs for example in the dynamic growth and atrophy models and motion tracking such as have been explored in An observed time sequence is given and the goal is to infer the time flow of geometric change of coordinates carrying the exemplars or templars through the period of observations. The generic time-series matching problem considers the series of times is 0 < t_1 < \dots t_K=1. The flow optimizes at the series of costs E(t_k), k=1, \dots, K giving optimization problems of the form : \min_ C(\phi) \doteq \frac \int_0^1 (Av_t\mid v_t) \, dt +\sum_^K E( \phi_) . There have been at least three solutions offered thus far, piecewise geodesic, principal geodesic and splines.


The random orbit model of computational anatomy

The random orbit model of computational anatomy first appeared in modelling the change in coordinates associated to the randomness of the group acting on the templates, which induces the randomness on the source of images in the anatomical orbit of shapes and forms and resulting observations through the medical imaging devices. Such a random orbit model in which randomness on the group induces randomness on the images was examined for the Special Euclidean Group for object recognition in. Depicted in the figure is a depiction of the random orbits around each exemplar, m_0 \in \mathcal, generated by randomizing the flow by generating the initial tangent space vector field at the identity v_0 \in V, and then generating random object n \doteq Exp_(v_0) \cdot m_0 \in \mathcal. The random orbit model induces the prior on shapes and images I \in \mathcal conditioned on a particular atlas I_a \in \mathcal . For this the generative model generates the mean field I as a random change in coordinates of the template according to I \doteq \phi \cdot I_a , where the diffeomorphic change in coordinates is generated randomly via the geodesic flows. The prior on random transformations \pi_ (d\phi) on Diff_V is induced by the flow Exp_(v) , with v \in V constructed as a Gaussian random field prior \pi_V(dv) . The density on the random observables at the output of the sensor I^D \in \mathcal^D are given by p(I^D, I_a)=\int_V p(I^D, Exp_(v) \cdot I_a ) \pi_V (dv) \ . Shown in the Figure on the right the cartoon orbit, are a random spray of the subcortical manifolds generated by randomizing the vector fields v_0 supported over the submanifolds.


The Bayesian model of computational anatomy

The central statistical model of computational anatomy in the context of
medical imaging Medical imaging is the technique and process of imaging the interior of a body for clinical analysis and medical intervention, as well as visual representation of the function of some organs or tissues (physiology). Medical imaging seeks to rev ...
has been the source-channel model of Shannon theory; the source is the deformable template of images I \in \mathcal , the channel outputs are the imaging sensors with observables I^D \in ^ (see Figure). See The Bayesian model of computational anatomy for discussions (i) MAP estimation with multiple atlases, (ii) MAP segmentation with multiple atlases, MAP estimation of templates from populations.


Statistical shape theory in computational anatomy

Shape A shape or figure is a graphics, graphical representation of an object or its external boundary, outline, or external Surface (mathematics), surface, as opposed to other properties such as color, Surface texture, texture, or material type. A pl ...
in computational anatomy is a local theory, indexing shapes and structures to templates to which they are bijectively mapped. Statistical shape in computational anatomy is the empirical study of diffeomorphic correspondences between populations and common template coordinate systems. This is a strong departure from Procrustes Analyses and shape theories pioneered by David G. Kendall in that the central group of Kendall's theories are the finite-dimensional Lie groups, whereas the theories of shape in computational anatomy have focused on the diffeomorphism group, which to first order via the Jacobian can be thought of as a field–thus infinite dimensional–of low-dimensional Lie groups of scale and rotations. The random orbit model provides the natural setting to understand empirical shape and shape statistics within computational anatomy since the non-linearity of the induced probability law on anatomical shapes and forms m \in \mathcal is induced via the reduction to the vector fields v_0 \in V at the tangent space at the identity of the diffeomorphism group. The successive flow of the Euler equation induces the random space of shapes and forms Exp_(v_0) \cdot m \in \mathcal. Performing empirical statistics on this tangent space at the identity is the natural way for inducing probability laws on the statistics of shape. Since both the vector fields and the Eulerian momentum Av_0 are in a Hilbert space the natural model is one of a Gaussian random field, so that given test function w \in V, then the inner-products with the test functions are Gaussian distributed with mean and covariance. This is depicted in the accompanying figure where sub-cortical brain structures are depicted in a two-dimensional coordinate system based on inner products of their initial vector fields that generate them from the template is shown in a 2-dimensional span of the Hilbert space.


Template estimation from populations

The study of shape and statistics in populations are local theories, indexing shapes and structures to templates to which they are bijectively mapped. Statistical shape is then the study of diffeomorphic correspondences relative to the template. A core operation is the generation of templates from populations, estimating a shape that is matched to the population. There are several important methods for generating templates including methods based on Frechet averaging, and statistical approaches based on the expectation-maximization algorithm and the Bayes Random orbit models of computational anatomy. Shown in the accompanying figure is a subcortical template reconstruction from the population of MRI subjects.


Software for diffeomorphic mapping

Software suite A software suite (also known as an application suite) is a collection of computer programs (application software, or programming software) of related functionality, sharing a similar user interface and the ability to easily exchange data with each ...
s containing a variety of diffeomorphic mapping algorithms include the following: * ANTS * DARTEL
Voxel-based morphometry Voxel-based morphometry is a computational approach to neuroanatomy that measures differences in local concentrations of brain tissue, through a voxel-wise comparison of multiple brain images. In traditional morphometry, volume of the whole brai ...
* DEFORMETRICA * DEMONS * LDDMM
Large deformation diffeomorphic metric mapping Large deformation diffeomorphic metric mapping (LDDMM) is a specific suite of algorithms used for diffeomorphic mapping and manipulating dense imagery based on diffeomorphic metric mapping within the academic discipline of computational anatomy, ...
* LDDMM based on frame-based kernel * StationaryLDDMM


Cloud software

* MRICloud


See also

* Bayesian estimation of templates in computational anatomy *
Computational neuroanatomy Neuroanatomy is the study of the structure and organization of the nervous system. In contrast to animals with radial symmetry, whose nervous system consists of a distributed network of cells, animals with bilateral symmetry have segregated, defin ...
*
Geometric data analysis Geometric data analysis comprises geometric aspects of image analysis, pattern analysis, and shape analysis, and the approach of multivariate statistics, which treat arbitrary data sets as ''clouds of points'' in a space that is ''n''-dimensional ...
*
Large deformation diffeomorphic metric mapping Large deformation diffeomorphic metric mapping (LDDMM) is a specific suite of algorithms used for diffeomorphic mapping and manipulating dense imagery based on diffeomorphic metric mapping within the academic discipline of computational anatomy, ...
*
Procrustes analysis In statistics, Procrustes analysis is a form of statistical shape analysis used to analyse the distribution of a set of shapes. The name ''Procrustes'' ( el, Προκρούστης) refers to a bandit from Greek mythology who made his victims fi ...
* Riemannian metric and Lie-bracket in computational anatomy *
Shape analysis (disambiguation) Shape analysis may refer to: * Shape analysis (digital geometry) * Shape analysis (program analysis), a type of method to analyze computer programs without actually executing the programs * Statistical shape analysis * Computational anatomy#Stati ...
*
Statistical shape analysis Statistical shape analysis is an analysis of the geometrical properties of some given set of shapes by statistical methods. For instance, it could be used to quantify differences between male and female gorilla skull shapes, normal and pathological ...


References

{{Reflist Geometry Fluid mechanics Bayesian estimation Neuroscience Neural engineering Biomedical engineering Computational science