
In
bioinformatics
Bioinformatics () is an interdisciplinary field of science that develops methods and Bioinformatics software, software tools for understanding biological data, especially when the data sets are large and complex. Bioinformatics uses biology, ...
, ''k''-mers are
substrings of length
contained within a biological sequence. Primarily used within the context of
computational genomics and
sequence analysis
In bioinformatics, sequence analysis is the process of subjecting a DNA, RNA or peptide sequence to any of a wide range of analytical methods to understand its features, function, structure, or evolution. It can be performed on the entire genome ...
, in which ''k''-mers are composed of
nucleotide
Nucleotides are Organic compound, organic molecules composed of a nitrogenous base, a pentose sugar and a phosphate. They serve as monomeric units of the nucleic acid polymers – deoxyribonucleic acid (DNA) and ribonucleic acid (RNA), both o ...
s (''i.e''. A, T, G, and C), ''k''-mers are capitalized upon to
assemble DNA sequences, improve
heterologous gene expression,
identify species in metagenomic samples,
and create
attenuated vaccines. Usually, the term ''k''-mer refers to all of a sequence's subsequences of length
, such that the sequence AGAT would have four
monomer
A monomer ( ; ''mono-'', "one" + '' -mer'', "part") is a molecule that can react together with other monomer molecules to form a larger polymer chain or two- or three-dimensional network in a process called polymerization.
Classification
Chemis ...
s (A, G, A, and T), three 2-mers (AG, GA, AT), two 3-mers (AGA and GAT) and one 4-mer (AGAT). More generally, a sequence of length
will have
''k''-mers and there exist
total possible ''k''-mers, where
is number of possible monomers (e.g. four in the case of
DNA).
Introduction
''k''-mers are simply length
subsequences. For example, all the possible ''k''-mers of a DNA sequence are shown below:

A method of visualizing ''k''-mers, the ''k''-mer spectrum, shows the multiplicity of each ''k''-mer in a sequence versus the number of ''k''-mers with that multiplicity.
The number of modes in a ''k''-mer spectrum for a species's genome varies, with most species having a unimodal distribution.
However, all
mammal
A mammal () is a vertebrate animal of the Class (biology), class Mammalia (). Mammals are characterised by the presence of milk-producing mammary glands for feeding their young, a broad neocortex region of the brain, fur or hair, and three ...
s have a multimodal distribution. The number of modes within a ''k''-mer spectrum can vary between regions of genomes as well: humans have unimodal ''k''-mer spectra in
5' UTRs and
exon
An exon is any part of a gene that will form a part of the final mature RNA produced by that gene after introns have been removed by RNA splicing. The term ''exon'' refers to both the DNA sequence within a gene and to the corresponding sequence ...
s but multimodal spectra in
3' UTRs and
intron
An intron is any nucleotide sequence within a gene that is not expressed or operative in the final RNA product. The word ''intron'' is derived from the term ''intragenic region'', i.e., a region inside a gene."The notion of the cistron .e., gen ...
s.
Forces affecting DNA ''k''-mer frequency
The frequency of ''k''-mer usage is affected by numerous forces, working at multiple levels, which are often in conflict. It is important to note that ''k''-mers for higher values of ''k'' are affected by the forces affecting lower values of ''k'' as well. For example, if the 1-mer A does not occur in a sequence, none of the 2-mers containing A (AA, AT, AG, and AC) will occur either, thereby linking the effects of the different forces.
''k'' = 1
When ''k'' = 1, there are four DNA ''k''-mers, ''i.e.'', A, T, G, and C. At the molecular level, there are three
hydrogen bond
In chemistry, a hydrogen bond (H-bond) is a specific type of molecular interaction that exhibits partial covalent character and cannot be described as a purely electrostatic force. It occurs when a hydrogen (H) atom, Covalent bond, covalently b ...
s between G and C, whereas there are only two between A and T. GC bonds, as a result of the extra hydrogen bond (and stronger stacking interactions), are more thermally stable than AT bonds. Mammals and birds have a higher ratio of Gs and Cs to As and Ts (
GC-content), which led to the hypothesis that thermal stability was a driving factor of GC-content variation. However, while promising, this hypothesis did not hold up under scrutiny: analysis among a variety of prokaryotes showed no evidence of GC-content correlating with temperature as the thermal adaptation hypothesis would predict. Indeed, if natural selection were to be the driving force behind GC-content variation, that would require that
single nucleotide changes, which are often
silent, to alter the fitness of an organism.
Rather, current evidence suggests that
GC‐biased gene conversion (gBGC) is a driving factor behind variation in GC content.
gBGC is a process that occurs during
recombination which replaces As and Ts with Gs and Cs. This process, though distinct from natural selection, can nevertheless exert selective pressure on DNA biased towards GC replacements being fixed in the genome. gBGC can therefore be seen as an "impostor" of natural selection. As would be expected, GC content is greater at sites experiencing greater recombination. Furthermore, organisms with higher rates of recombination exhibit higher GC content, in keeping with the gBGC hypothesis's predicted effects. Interestingly, gBGC does not appear to be limited to
eukaryotes
The eukaryotes ( ) constitute the domain of Eukaryota or Eukarya, organisms whose cells have a membrane-bound nucleus. All animals, plants, fungi, seaweeds, and many unicellular organisms are eukaryotes. They constitute a major group of ...
. Asexual organisms such as bacteria and archaea also experience recombination by means of gene conversion, a process of homologous sequence replacement resulting in multiple identical sequences throughout the genome. That recombination is able to drive up GC content in all domains of life suggests that gBGC is universally conserved. Whether gBGC is a (mostly) neutral byproduct of the molecular machinery of life or is itself under selection remains to be determined. The exact mechanism and evolutionary advantage or disadvantage of gBGC is currently unknown.
''k'' = 2
Despite the comparatively large body of literature discussing GC-content biases, relatively little has been written about dinucleotide biases. What is known is that these dinucleotide biases are relatively constant throughout the genome, unlike GC-content, which, as seen above, can vary considerably.
This is an important insight that must not be overlooked. If dinucleotide bias were subject to pressures resulting from
translation
Translation is the communication of the semantics, meaning of a #Source and target languages, source-language text by means of an Dynamic and formal equivalence, equivalent #Source and target languages, target-language text. The English la ...
, then there would be differing patterns of dinucleotide bias in
coding and
noncoding regions driven by some dinucelotides' reduced translational efficiency. Because there is not, it can therefore be inferred that the forces modulating dinucleotide bias are independent of translation. Further evidence against translational pressures affecting dinucleotide bias is the fact that the dinucleotide biases of viruses, which rely heavily on translational efficiency, are shaped by their viral family more than by their hosts, whose translational machinery the viruses hijack.
Counter to gBGC's increasing GC-content is
CG suppression, which reduces the frequency of
CG 2-mers due to
deamination
Deamination is the removal of an amino group from a molecule. Enzymes that catalysis, catalyse this reaction are called deaminases.
In the human body, deamination takes place primarily in the liver; however, it can also occur in the kidney. In s ...
of
methylated CG dinucleotides, resulting in substitutions of CGs with TGs, thereby reducing the GC-content. This interaction highlights the interrelationship between the forces affecting ''k''-mers for varying values of ''k.''
One interesting fact about dinucleotide bias is that it can serve as a "distance" measurement between phylogenetically similar genomes. The genomes of pairs of organisms that are closely related share more similar dinucleotide biases than between pairs of more distantly related organisms.
''k'' = 3
There are twenty natural
amino acid
Amino acids are organic compounds that contain both amino and carboxylic acid functional groups. Although over 500 amino acids exist in nature, by far the most important are the 22 α-amino acids incorporated into proteins. Only these 22 a ...
s that are used to build the proteins that DNA encodes. However, there are only four nucleotides. Therefore, there cannot be a one-to-one correspondence between nucleotides and amino acids. Similarly, there are 16 2-mers, which is also not enough to unambiguously represent every amino acid. However, there are 64 distinct 3-mers in DNA, which is enough to uniquely represent each amino acid. These non-overlapping 3-mers are called
codons. While each codon only maps to one amino acid, each amino acid can be
represented by multiple codons. Thus, the same amino acid sequence can have multiple DNA representations. Interestingly, each codon for an amino acid is not used in equal proportions.
This is called
codon-usage bias (CUB). When ''k'' = 3, a distinction must be made between true 3-mer frequency and CUB. For example, the sequence ATGGCA has four 3-mer words within it (ATG, TGG, GGC, and GCA) while only containing two codons (ATG and GCA). However, CUB is a major driving factor of 3-mer usage bias (accounting for up to ⅓ of it, since ⅓ of the ''k''-mers in a coding region are codons) and will be the main focus of this section.
The exact cause of variation between the frequencies of various codons is not fully understood. It is known that codon preference is correlated with tRNA abundances, with codons matching more abundant tRNAs being correspondingly more frequent
and that more highly expressed proteins exhibit greater CUB. This suggests that selection for translational efficiency or accuracy is the driving force behind CUB variation.
''k'' = 4
Similar to the effect seen in dinucleotide bias, the tetranucleotide biases of phylogenetically similar organisms are more similar than between less closely related organisms.
The exact cause of variation in tetranucleotide bias is not well understood, but it has been hypothesized to be the result of the maintenance of genetic stability at the molecular level.
Applications
The frequency of a set of ''k''-mers in a species's genome, in a genomic region, or in a class of sequences can be used as a "signature" of the underlying sequence. Comparing these frequencies is computationally easier than
sequence alignment
In bioinformatics, a sequence alignment is a way of arranging the sequences of DNA, RNA, or protein to identify regions of similarity that may be a consequence of functional, structural biology, structural, or evolutionary relationships between ...
and is an important method in
alignment-free sequence analysis. It can also be used as a first stage analysis before an alignment.
Sequence assembly
In sequence assembly, ''k''-mers are used during the construction of
De Bruijn graphs.
In order to create a De Bruijn Graph, the ''k''-mers stored in each edge with length
must overlap another string in another edge by
in order to create a
vertex. Reads generated from
next-generation sequencing will typically have different read lengths being generated. For example, reads by
Illumina's sequencing technology capture reads of 100-mers. However, the problem with the sequencing is that only small fractions out of all the possible 100-mers that are present in the genome are actually generated. This is due to read errors, but more importantly, just simple coverage holes that occur during sequencing. The problem is that these small fractions of the possible ''k''-mers violate the key assumption of De Bruijn graphs that all the ''k''-mer reads must overlap its adjoining ''k''-mer in the genome by
(which cannot occur when all the possible ''k''-mers are not present).
The solution to this problem is to break these ''k''-mer sized reads into smaller ''k''-mers, such that the resulting smaller ''k''-mers will represent all the possible ''k''-mers of that smaller size that are present in the genome.
Furthermore, splitting the ''k''-mers into smaller sizes also helps alleviate the problem of different initial read lengths. In this example, the five reads do not account for all the possible 7-mers of the genome, and as such, a De Bruijn graph cannot be created. But, when they are split into 4-mers, the resultant subsequences are enough to reconstruct the genome using a De Bruijn graph.
Beyond being used directly for sequence assembly, ''k''-mers can also be used to detect genome mis-assembly by identifying ''k''-mers that are overrepresented which suggest the presence of
repeated DNA sequences that have been combined.
In addition, ''k''-mers are also used to detect bacterial contamination during eukaryotic genome assembly, an approach borrowed from the field of metagenomics.
Choice of ''k''-mer size
The choice of the ''k''-mer size has many different effects on the sequence assembly. These effects vary greatly between lower sized and larger sized ''k''-mers. Therefore, an understanding of the different ''k''-mer sizes must be achieved in order to choose a suitable size that balances the effects. The effects of the sizes are outlined below.
=Lower ''k''-mer sizes
=
*A lower ''k''-mer size will decrease the amount of edges stored in the graph, and as such, will help decrease the amount of space required to store DNA sequence.
*Having smaller sizes will increase the chance for all the ''k''-mers to overlap, and as such, have the required subsequences in order to construct the De Bruijn graph.
*However, by having smaller sized ''k''-mers, you also risk having many vertices in the graph leading into a single k-mer. Therefore, this will make the reconstruction of the genome more difficult as there is a higher level of path ambiguities due to the larger amount of vertices that will need to be traversed.
*Information is lost as the ''k''-mers become smaller.
**''E.g. '' The possibility of AGTCGTAGATGCTG is lower than ACGT, and as such, holds a greater amount of information (refer to
entropy (information theory)
In information theory, the entropy of a random variable quantifies the average level of uncertainty or information associated with the variable's potential states or possible outcomes. This measures the expected amount of information needed ...
for more information).
*Smaller ''k''-mers also have the problem of not being able to resolve areas in the DNA where small
microsatellite
A microsatellite is a tract of repetitive DNA in which certain Sequence motif, DNA motifs (ranging in length from one to six or more base pairs) are repeated, typically 5–50 times. Microsatellites occur at thousands of locations within an organ ...
s or repeats occur. This is because smaller ''k''-mers will tend to sit entirely within the repeat region and is therefore hard to determine the amount of repetition that has actually taken place.
**''E.g. '' For the subsequence ATGTGTGTGTGTGTACG, the amount of repetitions of TG will be lost if a ''k''-mer size less than 16 is chosen. This is because most of the ''k''-mers will sit in the repeated region and may just be discarded as repeats of the same ''k''-mer instead of referring the amount of repeats.
=Higher ''k''-mer sizes
=
*Having larger sized ''k''-mers will increase the number of edges in the graph, which in turn, will increase the amount of memory needed to store the DNA sequence.
*By increasing the size of the ''k''-mers, the number of vertices will also decrease. This will help with the construction of the genome as there will be fewer paths to traverse in the graph.
*Larger ''k''-mers also run a higher risk of not having outward vertices from every k-mer. This is due to larger ''k''-mers increasing the risk that it will not overlap with another ''k''-mer by
. Therefore, this can lead to disjoints in the reads, and as such, can lead to a higher amount of smaller
contigs.
*Larger ''k''-mer sizes help alleviate the problem of small repeat regions. This is due to the fact that the ''k''-mer will contain a balance of the repeat region and the adjoining DNA sequences (given it are a large enough size) that can help to resolve the amount of repetition in that particular area.
Genetics and Genomics
With respect to disease, dinucleotide bias has been applied to the detection of genetic islands associated with pathogenicity.
Prior work has also shown that tetranucleotide biases are able to effectively detect
horizontal gene transfer
Horizontal gene transfer (HGT) or lateral gene transfer (LGT) is the movement of genetic material between organisms other than by the ("vertical") transmission of DNA from parent to offspring (reproduction). HGT is an important factor in the e ...
in both prokaryotes and eukaryotes.
Another application of ''k''-mers is in genomics-based taxonomy. For example, GC-content has been used to distinguish between species of ''
Erwinia
''Erwinia'' is a genus of Enterobacterales bacteria containing mostly plant pathogenic species which was named for the famous plant pathologist, Erwin Frink Smith. It contains Gram-negative bacteria related to ''Escherichia coli'', '' Shigella ...
'' with moderate success. Similar to the direct use of GC-content for taxonomic purposes is the use of T
m, the melting temperature of DNA. Because GC bonds are more thermally stable, sequences with higher GC content exhibit a higher T
m. In 1987, the Ad Hoc Committee on Reconciliation of Approaches to Bacterial Systematics proposed the use of ΔT
m as factor in determining species boundaries as part of the
phylogenetic species concept, though this proposal does not appear to have gained traction within the scientific community.
Other applications within genetics and genomics include:
*
RNA isoform quantification from
RNA-seq data
* Classification of human mitochondrial
haplogroup
* Detection of recombination sites in genomes
* Estimation of
genome size using ''k''-mer frequency vs ''k''-mer depth
* Characterization of
CpG islands by flanking regions
*''De novo'' detection of
repeated sequence such as
transposable element
*
DNA barcoding of species.
*Characterization of protein-binding
sequence motifs
*Identification of
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, ...
or
polymorphism using next generation
sequencing data
Metagenomics
''k''-mer frequency and spectrum variation is heavily used in metagenomics for both analysis and binning. In binning, the challenge is to separate sequencing reads into "bins" of reads for each organism (or
operational taxonomic unit
An operational taxonomic unit (OTU) is an operational definition used to classify groups of closely related individuals. The term was originally introduced in 1963 by Robert R. Sokal and Peter H. A. Sneath in the context of numerical taxonomy, wh ...
), which will then be assembled. TETRA is a notable tool that takes metagenomic samples and bins them into organisms based on their tetranucleotide (''k'' = 4) frequencies. Other tools that similarly rely on ''k''-mer frequency for metagenomic binning are CompostBin (''k'' = 6), PCAHIER, PhyloPythia (5 ≤ ''k'' ≤ 6), CLARK (''k'' ≥ 20), and TACOA (2 ≤ ''k'' ≤ 6). Recent developments have also applied
deep learning to metagenomic binning using ''k''-mers.
Other applications within metagenomics include:
* Recovery of reading frames from raw reads
* Estimation of
species abundance in metagenomic samples
* Determination of which species are present in samples
* Identification of
biomarkers for diseases from samples
Biotechnology
Modifying ''k''-mer frequencies in DNA sequences has been used extensively in biotechnological applications to control translational efficiency. Specifically, it has been used to both up- and down-regulate protein production rates.
With respect to increasing protein production, reducing unfavorable dinucleotide frequency has been used yield higher rates of protein synthesis. In addition, codon usage bias has been modified to create synonymous sequences with greater protein expression rates.
Similarly, codon pair optimization, a combination of dinucelotide and codon optimization, has also been successfully used to increase expression.
The most studied application of ''k''-mers for decreasing translational efficiency is codon-pair manipulation for attenuating viruses in order to create vaccines. Researchers were able to recode
dengue virus, the virus that causes
dengue fever, such that its codon-pair bias was more different to mammalian codon-usage preference than the wild type. Though containing an identical amino-acid sequence, the recoded virus demonstrated significantly weakened
pathogen
In biology, a pathogen (, "suffering", "passion" and , "producer of"), in the oldest and broadest sense, is any organism or agent that can produce disease. A pathogen may also be referred to as an infectious agent, or simply a Germ theory of d ...
icity while eliciting a strong immune response. This approach has also been used effectively to create an influenza vaccine as well a vaccine for
Marek's disease herpesvirus (MDV). Notably, the codon-pair bias manipulation employed to attenuate MDV did not effectively reduce the
oncogenicity of the virus, highlighting a potential weakness in the biotechnology applications of this approach. To date, no codon-pair deoptimized vaccine has been approved for use.
Two later articles help explain the actual mechanism underlying codon-pair deoptimization: codon-pair bias is the result of dinucleotide bias. By studying viruses and their hosts, both sets of authors were able to conclude that the molecular mechanism that results in the attenuation of viruses is an increase in dinucleotides poorly suited for translation.
GC-content, due to its effect on
DNA melting point, is used to predict annealing temperature in
PCR, another important biotechnology tool.
Implementation
Pseudocode
Determining the possible ''k''-mers of a read can be done by simply cycling over the string length by one and taking out each substring of length
. The pseudocode to achieve this is as follows:
procedure k-mers(string seq, integer k) is
L ←
arr ← new array of L − k + 1 empty strings
''// iterate over the number of k-mers in seq,''
''// storing the nth k-mer in the output array''
for n ← 0 to L − k + 1 exclusive do
arr
← subsequence of seq from letter n inclusive to letter n + k exclusive
return arr
In bioinformatics pipelines
Because the number of ''k''-mers grows exponentially for values of ''k'', counting ''k''-mers for large values of ''k'' (usually >10) is a computationally difficult task. While simple implementations such as the above pseudocode work for small values of ''k'', they need to be adapted for high-throughput applications or when ''k'' is large. To solve this problem, various tools have been developed:
Jellyfishuses a multithreaded, lock-free
hash table
In computer science, a hash table is a data structure that implements an associative array, also called a dictionary or simply map; an associative array is an abstract data type that maps Unique key, keys to Value (computer science), values. ...
for ''k''-mer counting and has
Python,
Ruby
Ruby is a pinkish-red-to-blood-red-colored gemstone, a variety of the mineral corundum ( aluminium oxide). Ruby is one of the most popular traditional jewelry gems and is very durable. Other varieties of gem-quality corundum are called sapph ...
, and
Perl
Perl is a high-level, general-purpose, interpreted, dynamic programming language. Though Perl is not officially an acronym, there are various backronyms in use, including "Practical Extraction and Reporting Language".
Perl was developed ...
bindings
KMCis a tool for ''k''-mer counting that uses a multidisk architecture for optimized speed
Gerbiluses a hash table approach but with added support for GPU acceleration
K-mer Analysis Toolkit (KAT)uses a modified version of Jellyfish to analyze ''k''-mer counts
See also
*
Oligonucleotide
Oligonucleotides are short DNA or RNA molecules, oligomers, that have a wide range of applications in genetic testing, Recombinant DNA, research, and Forensic DNA, forensics. Commonly made in the laboratory by Oligonucleotide synthesis, solid-phase ...
*
Genomic signature
References
* Some of the content in this article was copied fro
K-merat the PLOS wiki, which is available under
Creative Commons Attribution 2.5 Generic (CC BY 2.5) license
{{Reflist
External links
bioXriv:k-merarXiv: k-mer
Nucleic acids
Applied mathematics
Biophysics
Computational biology
Bioinformatics
Amino acids