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In the theory of
evolution Evolution is the change in the heritable Phenotypic trait, characteristics of biological populations over successive generations. It occurs when evolutionary processes such as natural selection and genetic drift act on genetic variation, re ...
and
natural selection Natural selection is the differential survival and reproduction of individuals due to differences in phenotype. It is a key mechanism of evolution, the change in the Heredity, heritable traits characteristic of a population over generation ...
, the Price equation (also known as Price's equation or Price's theorem) describes how a trait or
allele An allele is a variant of the sequence of nucleotides at a particular location, or Locus (genetics), locus, on a DNA molecule. Alleles can differ at a single position through Single-nucleotide polymorphism, single nucleotide polymorphisms (SNP), ...
changes in frequency over time. The equation uses a
covariance In probability theory and statistics, covariance is a measure of the joint variability of two random variables. The sign of the covariance, therefore, shows the tendency in the linear relationship between the variables. If greater values of one ...
between a trait and fitness, to give a mathematical description of evolution and natural selection. It provides a way to understand the effects that gene transmission and natural selection have on the frequency of alleles within each new generation of a population. The Price equation was derived by George R. Price, working in London to re-derive W.D. Hamilton's work on
kin selection Kin selection is a process whereby natural selection favours a trait due to its positive effects on the reproductive success of an organism's relatives, even when at a cost to the organism's own survival and reproduction. Kin selection can lead ...
. Examples of the Price equation have been constructed for various evolutionary cases. The Price equation also has applications in
economics Economics () is a behavioral science that studies the Production (economics), production, distribution (economics), distribution, and Consumption (economics), consumption of goods and services. Economics focuses on the behaviour and interac ...
. The Price equation is a mathematical relationship between various statistical descriptors of population dynamics, rather than a physical or biological law, and as such is not subject to experimental verification. In simple terms, it is a mathematical statement of the expression "
survival of the fittest "Survival of the fittest" is a phrase that originated from Darwinian evolutionary theory as a way of describing the mechanism of natural selection. The biological concept of fitness is defined as reproductive success. In Darwinian terms, th ...
".


Statement

The Price equation shows that a change in the average amount z of a trait in a population from one generation to the next (\Delta z) is determined by the
covariance In probability theory and statistics, covariance is a measure of the joint variability of two random variables. The sign of the covariance, therefore, shows the tendency in the linear relationship between the variables. If greater values of one ...
between the amounts z_i of the trait for subpopulation i and the fitnesses w_i of the subpopulations, together with the expected change in the amount of the trait value due to fitness, namely \mathrm(w_i \Delta z_i): :\Delta = \frac\operatorname(w_i, z_i) + \frac\operatorname(w_i\,\Delta z_i). Here w is the average fitness over the population, and \operatorname and \operatorname represent the population mean and covariance respectively. 'Fitness' w is the ratio of the average number of offspring for the whole population per the number of adult individuals in the population, and w_i is that same ratio only for subpopulation i. If the covariance between fitness (w_i) and trait value (z_i) is positive, the trait value is expected to rise on average across population i. If the covariance is negative, the characteristic is harmful, and its frequency is expected to drop. The second term, \mathrm(w_i \Delta z_i), represents the portion of \Delta z due to all factors other than direct selection which can affect trait evolution. This term can encompass
genetic drift Genetic drift, also known as random genetic drift, allelic drift or the Wright effect, is the change in the Allele frequency, frequency of an existing gene variant (allele) in a population due to random chance. Genetic drift may cause gene va ...
,
mutation In biology, a mutation is an alteration in the nucleic acid sequence of the genome of an organism, virus, or extrachromosomal DNA. Viral genomes contain either DNA or RNA. Mutations result from errors during DNA or viral replication, ...
bias, or meiotic drive. Additionally, this term can encompass the effects of multi-level selection or
group selection Group selection is a proposed mechanism of evolution in which natural selection acts at the level of the group, instead of at the level of the individual or gene. Early authors such as V. C. Wynne-Edwards and Konrad Lorenz argued that the beha ...
. Price (1972) referred to this as the "environment change" term, and denoted both terms using partial derivative notation (∂NS and ∂EC). This concept of environment includes interspecies and ecological effects. Price describes this as follows:


Proof

Suppose we are given four equal-length lists of real numbers n_i, z_i, n_i', z_i' from which we may define w_i=n_i'/n_i. n_i and z_i will be called the parent population numbers and characteristics associated with each index ''i''. Likewise n_i' and z_i' will be called the child population numbers and characteristics, and w_i' will be called the fitness associated with index ''i''. (Equivalently, we could have been given n_i, z_i, w_i, z_i' with n_i'=w_i n_i.) Define the parent and child population totals: : and the probabilities (or frequencies): : Note that these are of the form of probability mass functions in that \sum_i q_i = \sum_i q_i' = 1 and are in fact the probabilities that a random individual drawn from the parent or child population has a characteristic z_i. Define the fitnesses: :w_i\;\stackrel\;n_i'/n_i The average of any list x_i is given by: :E(x_i)=\sum_i q_i x_i so the average characteristics are defined as: : and the average fitness is: :w\;\stackrel\;\sum_i q_i w_i A simple theorem can be proved: q_i w_i = \left(\frac\right)\left(\frac\right) = \left(\frac\right) \left(\frac\right)=q_i'\left(\frac\right) so that: :w=\frac\sum_i q_i' = \frac and :q_i w_i = w\,q_i' The covariance of w_i and z_i is defined by: :\operatorname(w_i,z_i)\;\stackrel\;E(w_i z_i)-E(w_i)E(z_i) = \sum_i q_i w_i z_i - w z Defining \Delta z_i \;\stackrel\; z_i'-z_i, the expectation value of w_i \Delta z_i is :E(w_i \Delta z_i) = \sum q_i w_i (z_i'-z_i) = \sum_i q_i w_i z_i' - \sum_i q_i w_i z_i The sum of the two terms is: :\operatorname(w_i,z_i)+E(w_i \Delta z_i) = \sum_i q_i w_i z_i - w z + \sum_i q_i w_i z_i' - \sum_i q_i w_i z_i = \sum_i q_i w_i z_i' - w z Using the above mentioned simple theorem, the sum becomes :\operatorname(w_i,z_i)+E(w_i \Delta z_i) = w\sum_i q_i' z_i' - w z = w z'-wz = w\Delta z where \Delta z\;\stackrel\;z'-z.


Derivation of the continuous-time Price equation

Consider a set of groups with i = 1,...,n that are characterized by a particular trait, denoted by x_. The number n_ of individuals belonging to group i experiences exponential growth: = f_n_where f_ corresponds to the fitness of the group. We want to derive an equation describing the time-evolution of the expected value of the trait:\mathbb(x) = \sum_p_x_ \equiv \mu, \quad p_ = Based on the
chain rule In calculus, the chain rule is a formula that expresses the derivative of the Function composition, composition of two differentiable functions and in terms of the derivatives of and . More precisely, if h=f\circ g is the function such that h ...
, we may derive an
ordinary differential equation In mathematics, an ordinary differential equation (ODE) is a differential equation (DE) dependent on only a single independent variable (mathematics), variable. As with any other DE, its unknown(s) consists of one (or more) Function (mathematic ...
:\begin &= \sum_ + \sum_ \\ &= \sum_ x_ + \sum_ p_ \\ &= \sum_ x_ + \mathbb\left( \right) \endA further application of the chain rule for dp_/dt gives us: = \sum_, \quad = \begin -p_/N, \quad &i\neq j \\ (1-p_)/N, \quad &i=j \endSumming up the components gives us that:\begin &= p_\left(f_ - \sum_p_f_\right) \\ &= p_\left _ - \mathbb(f)\right\end which is also known as the replicator equation. Now, note that: \begin \sum_ x_ &= \sum_ p_x_\left _ - \mathbb(f)\right\\ &= \mathbb\left\ \\ &= \text(x,f) \endTherefore, putting all of these components together, we arrive at the continuous-time Price equation:\mathbb(x) = \underbrace_ + \underbrace_


Simple Price equation

When the characteristic values z_i do not change from the parent to the child generation, the second term in the Price equation becomes zero resulting in a simplified version of the Price equation: :w\,\Delta z = \operatorname\left(w_i, z_i\right) which can be restated as: :\Delta z = \operatorname\left(v_i, z_i\right) where v_i is the fractional fitness: v_i=w_i/w. This simple Price equation can be proven using the definition in Equation (2) above. It makes this fundamental statement about evolution: "If a certain inheritable characteristic is correlated with an increase in fractional fitness, the average value of that characteristic in the child population will be increased over that in the parent population."


Applications

The Price equation can describe any system that changes over time, but is most often applied in evolutionary biology. The evolution of sight provides an example of simple directional selection. The evolution of sickle cell anemia shows how a
heterozygote advantage A heterozygote advantage describes the case in which the heterozygous genotype has a higher relative fitness (biology), fitness than either the homozygous Dominance (genetics), dominant or homozygous recessive gene, recessive genotype. Loci exhib ...
can affect trait evolution. The Price equation can also be applied to population context dependent traits such as the evolution of sex ratios. Additionally, the Price equation is flexible enough to model second order traits such as the evolution of mutability. The Price equation also provides an extension to Founder effect which shows change in population traits in different settlements


Dynamical sufficiency and the simple Price equation

Sometimes the genetic model being used encodes enough information into the parameters used by the Price equation to allow the calculation of the parameters for all subsequent generations. This property is referred to as dynamical sufficiency. For simplicity, the following looks at dynamical sufficiency for the simple Price equation, but is also valid for the full Price equation. Referring to the definition in Equation (2), the simple Price equation for the character z can be written: :w(z' - z) = \langle w_i z_i \rangle - wz For the second generation: :w'(z'' - z') = \langle w'_i z'_i \rangle - w'z' The simple Price equation for z only gives us the value of z' for the first generation, but does not give us the value of w' and \langle w_iz_i\rangle, which are needed to calculate z'' for the second generation. The variables w_i and \langle w_iz_i\rangle can both be thought of as characteristics of the first generation, so the Price equation can be used to calculate them as well: :\begin w(w' - w) &= \langle w_i^2\rangle - w^2 \\ w\left(\langle w'_i z'_i\rangle - \langle w_i z_i\rangle\right) &= \langle w_i ^2 z_i\rangle - w\langle w_i z_i\rangle \end The five 0-generation variables w, z, \langle w_iz_i\rangle, \langle w_i^2\rangle, and \langle w_i^2z_i must be known before proceeding to calculate the three first generation variables w', z', and \langle w'_iz'_i\rangle, which are needed to calculate z'' for the second generation. It can be seen that in general the Price equation cannot be used to propagate forward in time unless there is a way of calculating the higher moments \langle w_i^n\rangle and \langle w_i^nz_i\rangle from the lower moments in a way that is independent of the generation. Dynamical sufficiency means that such equations can be found in the genetic model, allowing the Price equation to be used alone as a propagator of the dynamics of the model forward in time.


Full Price equation

The simple Price equation was based on the assumption that the characters z_i do not change over one generation. If it is assumed that they do change, with z_i being the value of the character in the child population, then the full Price equation must be used. A change in character can come about in a number of ways. The following two examples illustrate two such possibilities, each of which introduces new insight into the Price equation.


Genotype fitness

We focus on the idea of the fitness of the genotype. The index i indicates the genotype and the number of type i genotypes in the child population is: :n'_i = \sum_j w_n_j\, which gives fitness: :w_i = \frac Since the individual mutability z_i does not change, the average mutabilities will be: :\begin z &= \frac\sum_i z_i n_i \\ z' &= \frac\sum_i z_i n'_i \end with these definitions, the simple Price equation now applies.


Lineage fitness

In this case we want to look at the idea that fitness is measured by the number of children an organism has, regardless of their genotype. Note that we now have two methods of grouping, by lineage, and by genotype. It is this complication that will introduce the need for the full Price equation. The number of children an i-type organism has is: :n'_i = n_i\sum_j w_\, which gives fitness: :w_i = \frac = \sum_j w_ We now have characters in the child population which are the average character of the i-th parent. :z'_j = \frac with global characters: :\begin z &= \frac\sum_i z_i n_i \\ z' &= \frac\sum_i z_i n'_i \end with these definitions, the full Price equation now applies.


Criticism

The use of the change in average characteristic (z'-z) per generation as a measure of evolutionary progress is not always appropriate. There may be cases where the average remains unchanged (and the covariance between fitness and characteristic is zero) while evolution is nevertheless in progress. For example, if we have z_i=(1,2,3), n_i=(1,1,1), and w_i=(1,4,1), then for the child population, n_i'=(1,4,1) showing that the peak fitness at w_2=4 is in fact fractionally increasing the population of individuals with z_i=2. However, the average characteristics are ''z=2'' and ''z'=2'' so that \Delta z=0. The covariance \mathrm(z_i,w_i) is also zero. The simple Price equation is required here, and it yields ''0=0''. In other words, it yields no information regarding the progress of evolution in this system. A critical discussion of the use of the Price equation can be found in van Veelen (2005), van Veelen ''et al''. (2012), and van Veelen (2020). Frank (2012) discusses the criticism in van Veelen ''et al''. (2012).


Cultural references

Price's equation features in the plot and title of the 2008 thriller film '' WΔZ''. The Price equation also features in posters in the computer game '' BioShock 2'', in which a consumer of a "Brain Boost" tonic is seen deriving the Price equation while simultaneously reading a book. The game is set in the 1950s, substantially before Price's work.


See also

* The breeder's equation, which is a special case of the Price equation.


References


Further reading

* * * * * * * * * * * * * {{Population genetics Equations Evolutionary dynamics Evolutionary biology Population genetics