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Measures[edit]

Population structure is a complex phenomenon and no single measure captures it entirely. Understanding a population's structure requires a combination of methods and measures.[1][2]

Heterozygosity[edit]

A population bottleneck can result in a loss of heterozygosity. In this hypothetical population, an allele has become fixed after the population repeatedly dropped from 10 to 3.

One of the results of population structure is a reduction in heterozygosity. When populations split, alleles have a higher chance of reaching fixation within subpopulations, especially if the subpopulations are small or have been isolated for long periods. This reduction in heterozygosity can be thought of as an extension of inbreeding, with individuals in subpopulations being more likely to share a recent common ancestor.[3] The scale is important — an individual with both parents born in the United Kingdom is not inbred relative to that country's population, but is more inbred than two humans selected from the entire world. This motivates the derivation of Wright's F-statistics (also called "fixation indices"), which measure inbreeding through observed versus expected heterozygosity.[4] For example, measures the inbreeding coefficient at a single locus for an individual relative to some subpopulation :[5]

Here, is the fraction of individuals in subpopulation that are heterozygous. Assuming there are two alleles, that occur at respective frequencies , it is expected that under random mating the subpopulation will have a heterozygosity rate of . Then:

Similarly, for the total population , we can define allowing us to compute the expected heterozygosity of subpopulation and the value as:[5]


If F is 0, then the allele frequencies between populations are identical, suggesting no structure. The theoretical maximum value of 1 is attained when an allele reaches total fixation, but most observed maximum values are far lower.[3] FST is one of the most common measures of population structure and there are several different formulations depending on the number of populations and the alleles of interest. Although it is sometimes used as a genetic distance between populations, it does not always satisfy the triangle inequality and thus is not a metric.[6] It also depends on within-population diversity, which makes interpretation and comparison difficult.[2]

Admixture inference[edit]

An individual's genotype can be modelled as an admixture between K discrete clusters of populations.[5] Each cluster is defined by the frequencies of its genotypes, and the contribution of a cluster to an individual's genotypes is measured via an estimator. In 2000, Jonathan K. Pritchard introduced the STRUCTURE algorithm to estimate these proportions via Markov chain Monte Carlo.[7] Since then, algorithms (such as ADMIXTURE) have been developed using other estimation techniques.[8][9] Estimated proportions can be visualized using bar plots — each bar represents an individual, and is subdivided to represent the proportion of an individual's genetic ancestry from one of the K populations.[5]

A study of population structure of humans in Northern Africa and neighboring populations modelled using ADMIXTURE and assuming K=2,4,6,8 populations (Figure B, top to bottom). Varying K changes the scale of clustering. At K=2, 80% of the inferred ancestry for most North Africans is assigned to cluster that is common to Basque, Tuscan, and Qatari Arab individuals (in purple). At K=4, clines of North African ancestry appear (in light blue). At K=6, opposite clines of Near Eastern (Qatari) ancestry appear (in green). At K=8, Tunisian Berbers appear as a cluster (in dark blue).[10]

Varying K can illustrate different scales of population structure; using a small K for the entire human population will subdivide people roughly by continent, while using large K will partition populations into finer subgroups.[5] Though clustering methods are popular, they are open to misinterpretation: for non-simulated data, there is never a true value of K, but rather an approximation considered useful for a given question.[1] They are sensitive to sampling strategies, sample size, and close relatives in data sets; there may be no discrete populations at all; and there may be hierarchical structure where subpopulations are nested.[1] Clusters may be admixed themselves,[5] and may not have a useful interpretation as source populations.[11]

Dimensionality reduction[edit]

A map of the locations of genetic samples of several African populations (left) and principal components 1 and 2 of the data superimposed on the map (right). The principal coordinate plane has been rotated 16.11° to align with the map. It corresponds to the east-west and north-south distributions of the populations.[12]

Genetic data are high dimensional and dimensionality reduction techniques can capture population structure. Principal component analysis (PCA) was first applied in population genetics in 1978 by Cavalli-Sforza and colleagues and resurged with high-throughput sequencing.[5][13]

Initially PCA was used on allele frequencies at known genetic markers for populations, though later it was found that by coding SNPs as integers (for example, as the number of non-reference alleles) and normalizing the values, PCA could be applied at the level of individuals.[9] One formulation considers individuals and bi-allelic SNPs. For each individual , the value at locus is is the number of non-reference alleles (one of ). If the allele frequency at is , then the resulting matrix of normalized genotypes has entries:[5]

PCA transforms data to maximize variance; given enough data, when each individual is visualized as point on a plot, discrete clusters can form.[9] Individuals with admixed ancestries will tend to fall between clusters, and when there is homogenous isolation by distance in the data, the top PC vectors will reflect geographic variation.[9][14] The eigenvectors generated by PCA can be explicitly written in terms of the mean coalescent times for pairs of individuals, making PCA useful for interpretting population histories of groups in a given sample. PCA cannot, however, distinguish between different processes that lead to the same mean coalescent times.[15]

Multidimensional scaling and discriminant analysis have been used to study differentiation, population assignment, and to analyze genetic distances.[16] Neighborhood graph approaches like t-distributed stochastic neighbor embedding (t-SNE) and uniform manifold approximation and projection (UMAP) can visualize continental and subcontinental structure in human data.[17][18] With larger datasets, UMAP better captures multiple scales of population structure — fine-scale patterns are hidden or split with other methods, and these are of interest when there are many diverse or admixed populations, or when examining relationships between genotypes, phenotypes, and/or geography.[18][19] Variational autoencoders can generate artificial genotypes with structure representative of the input data.[20]

In humans[edit]

  • Analysis of structure can re-construct the histories of populations
  • History has been shaped by migrations, population bottlenecks, admixture. Models that re-create the structure from such events are useful.
  • Commercial testing and genetic ancestry?

[21] Cite error: A <ref> tag is missing the closing </ref> (see the help page). Also, actual genetic findings may be overlooked if the locus is less prevalent in the population where the case subjects are chosen. For this reason, it was common in the 1990s to use family-based data where the effect of population structure can easily be controlled for using methods such as the transmission disequilibrium test (TDT).[22]

Phenotypes (measurable traits), such as height or risk for heart disease, are the product of some combination of genes and environment. These traits can be predicted using polygenic scores, which seek to isolate and estimate the contribution of genetics to a trait by summing the effects of many individual genetic variants. To construct a score, researchers first enrol participants in an association study to estimate the contribution of each genetic variant. Then, they can use the estimated contributions of each genetic variant to calculate a score for the trait for an individual who was not in the original association study. If structure in the study population is correlated with environmental variation, then the polygenic score is no longer measuring the genetic component alone.[23]

Several methods can at least partially control for this confounding effect. The genomic control method was introduced in 1999 and is a relatively nonparametric method for controlling the inflation of test statistics.[24] It is also possible to use unlinked genetic markers to estimate each individual's ancestry proportions from some K subpopulations, which are assumed to be unstructured.[25] More recent approaches make use of principal component analysis (PCA), as demonstrated by Alkes Price and colleagues,[26] or by deriving a genetic relationship matrix (also called a kinship matrix) and including it in a linear mixed model (LMM).[27][28]

PCA and LMMs have become the most common methods to control for confounding from population structure. Though they are likely sufficient for avoiding false positives in association studies, they are still vulnerable to overestimating effect sizes of marginally associated variants and can substantially bias estimates of polygenic scores and trait heritability.[29][30] If environmental effects are related to a variant that exists in only one specific region (for example, a pollutant is found in only one city), it may not be possible to correct for this population structure effect at all.[23] For many traits, the role of structure is complex and not fully understood, and incorporating it into genetic studies remains a challenge and is an active area of research.[31]

In other organisms[edit]

In non-human organisms, population structure is used to study diversity in crops, which can identify potential weaknesses to disease, or be used to trace human population histories by tracing the genetic history of cultivars. It can also be used to examine the evolution of microscopic organisms and pathogens. In animals, population structure is a useful tool for tracing the origins of disease vectors like mosquitos, or to study the origins and distributions of endangered animals.

  • In non-human animals, plants, bacteria, etc
  • Conservation
  • Fighting disease (pests, vectors, agriculture)
  • Becquet C, Patterson N, Stone AC, Przeworski M, Reich D (April 2007). "Genetic structure of chimpanzee populations". PLoS Genet. 3 (4): e66. doi:10.1371/journal.pgen.0030066. PMC 1853122. PMID 17447846.{{cite journal}}: CS1 maint: unflagged free DOI (link)
  • Gur L, Reuveni M, Cohen Y, Cadle-Davidson L, Kisselstein B, Ovadia S, Frenkel O (January 2021). "Population structure of Erysiphe necator on domesticated and wild vines in the Middle East raises questions on the origin of the grapevine powdery mildew pathogen". Environ Microbiol. doi:10.1111/1462-2920.15401. PMID 33459475.
  • Cornwell BH, Hernández L (March 2021). "Genetic structure in the endosymbiont Breviolum 'muscatinei' is correlated with geographical location, environment and host species". Proc Biol Sci. 288 (1946): 20202896. doi:10.1098/rspb.2020.2896. PMID 33715441.
  • Henry P, Miquelle D, Sugimoto T, McCullough DR, Caccone A, Russello MA (August 2009). "In situ population structure and ex situ representation of the endangered Amur tiger". Mol Ecol. 18 (15): 3173–84. doi:10.1111/j.1365-294X.2009.04266.x. PMID 19555412.
  • Dalén L, Kvaløy K, Linnell JD, Elmhagen B, Strand O, Tannerfeldt M, Henttonen H, Fuglei E, Landa A, Angerbjörn A (September 2006). "Population structure in a critically endangered arctic fox population: does genetics matter?". Mol Ecol. 15 (10): 2809–19. doi:10.1111/j.1365-294X.2006.02983.x. PMID 16911202.
  • Barr KR, Lindsay DL, Athrey G, Lance RF, Hayden TJ, Tweddale SA, Leberg PL (August 2008). "Population structure in an endangered songbird: maintenance of genetic differentiation despite high vagility and significant population recovery". Mol Ecol. 17 (16): 3628–39. doi:10.1111/j.1365-294X.2008.03868.x. PMID 18643883.
  • Richmond JQ, Wood DA, Westphal MF, Vandergast AG, Leaché AD, Saslaw LR, Butterfield HS, Fisher RN (July 2017). "Persistence of historical population structure in an endangered species despite near-complete biome conversion in California's San Joaquin Desert". Mol Ecol. 26 (14): 3618–3635. doi:10.1111/mec.14125. PMID 28370723.

Refs[edit]

Abandoned refs[edit]

Might be useful:

actual refs[edit]

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