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Wikipedia

Heritability

Heritability is a statistic used in the fields of breeding and genetics that estimates the degree of variation in a phenotypic trait in a population that is due to genetic variation between individuals in that population.[1] The concept of heritability can be expressed in the form of the following question: "What is the proportion of the variation in a given trait within a population that is not explained by the environment or random chance?"[2]

Studies of heritability ask questions such as to what extent do genetic factors influence differences in height between people. This is not the same as asking to what extent do genetic factors influence height in any one person.

Other causes of measured variation in a trait are characterized as environmental factors, including observational error. In human studies of heritability these are often apportioned into factors from "shared environment" and "non-shared environment" based on whether they tend to result in persons brought up in the same household being more or less similar to persons who were not.

Heritability is estimated by comparing individual phenotypic variation among related individuals in a population, by examining the association between individual phenotype and genotype data,[3][4] or even by modeling summary-level data from genome-wide association studies (GWAS).[5] Heritability is an important concept in quantitative genetics, particularly in selective breeding and behavior genetics (for instance, twin studies). It is the source of much confusion due to the fact that its technical definition is different from its commonly-understood folk definition. Therefore, its use conveys the incorrect impression that behavioral traits are "inherited" or specifically passed down through the genes.[6] Behavioral geneticists also conduct heritability analyses based on the assumption that genes and environments contribute in a separate, additive manner to behavioral traits.[7]

Overview edit

Heritability measures the fraction of phenotype variability that can be attributed to genetic variation. This is not the same as saying that this fraction of an individual phenotype is caused by genetics. For example, it is incorrect to say that since the heritability of personality traits is about 0.6, that means that 60% of your personality is inherited from your parents and 40% comes from the environment. In addition, heritability can change without any genetic change occurring, such as when the environment starts contributing to more variation. As a case in point, consider that both genes and environment have the potential to influence intelligence. Heritability could increase if genetic variation increases, causing individuals to show more phenotypic variation, like showing different levels of intelligence. On the other hand, heritability might also increase if the environmental variation decreases, causing individuals to show less phenotypic variation, like showing more similar levels of intelligence. Heritability increases when genetics are contributing more variation or because non-genetic factors are contributing less variation; what matters is the relative contribution. Heritability is specific to a particular population in a particular environment. High heritability of a trait, consequently, does not necessarily mean that the trait is not very susceptible to environmental influences.[8] Heritability can also change as a result of changes in the environment, migration, inbreeding, or the way in which heritability itself is measured in the population under study.[9] The heritability of a trait should not be interpreted as a measure of the extent to which said trait is genetically determined in an individual.[10][11]

The extent of dependence of phenotype on environment can also be a function of the genes involved. Matters of heritability are complicated because genes may canalize a phenotype, making its expression almost inevitable in all occurring environments. Individuals with the same genotype can also exhibit different phenotypes through a mechanism called phenotypic plasticity, which makes heritability difficult to measure in some cases. Recent insights in molecular biology have identified changes in transcriptional activity of individual genes associated with environmental changes. However, there are a large number of genes whose transcription is not affected by the environment.[12]

Estimates of heritability use statistical analyses to help to identify the causes of differences between individuals. Since heritability is concerned with variance, it is necessarily an account of the differences between individuals in a population. Heritability can be univariate – examining a single trait – or multivariate – examining the genetic and environmental associations between multiple traits at once. This allows a test of the genetic overlap between different phenotypes: for instance hair color and eye color. Environment and genetics may also interact, and heritability analyses can test for and examine these interactions (GxE models).

A prerequisite for heritability analyses is that there is some population variation to account for. This last point highlights the fact that heritability cannot take into account the effect of factors which are invariant in the population. Factors may be invariant if they are absent and do not exist in the population, such as no one having access to a particular antibiotic, or because they are omni-present, like if everyone is drinking coffee. In practice, all human behavioral traits vary and almost all traits show some heritability.[13]

Definition edit

Any particular phenotype can be modeled as the sum of genetic and environmental effects:[14]

Phenotype (P) = Genotype (G) + Environment (E).

Likewise the phenotypic variance in the trait – Var (P) – is the sum of effects as follows:

Var(P) = Var(G) + Var(E) + 2 Cov(G,E).

In a planned experiment Cov(G,E) can be controlled and held at 0. In this case, heritability,   is defined as[15]

 

H2 is the broad-sense heritability. This reflects all the genetic contributions to a population's phenotypic variance including additive, dominant, and epistatic (multi-genic interactions), as well as maternal and paternal effects, where individuals are directly affected by their parents' phenotype, such as with milk production in mammals.

A particularly important component of the genetic variance is the additive variance, Var(A), which is the variance due to the average effects (additive effects) of the alleles. Since each parent passes a single allele per locus to each offspring, parent-offspring resemblance depends upon the average effect of single alleles. Additive variance represents, therefore, the genetic component of variance responsible for parent-offspring resemblance. The additive genetic portion of the phenotypic variance is known as Narrow-sense heritability and is defined as

 

An upper case H2 is used to denote broad sense, and lower case h2 for narrow sense.

For traits which are not continuous but dichotomous such as an additional toe or certain diseases, the contribution of the various alleles can be considered to be a sum, which past a threshold, manifests itself as the trait, giving the liability threshold model in which heritability can be estimated and selection modeled.

Additive variance is important for selection. If a selective pressure such as improving livestock is exerted, the response of the trait is directly related to narrow-sense heritability. The mean of the trait will increase in the next generation as a function of how much the mean of the selected parents differs from the mean of the population from which the selected parents were chosen. The observed response to selection leads to an estimate of the narrow-sense heritability (called realized heritability). This is the principle underlying artificial selection or breeding.

Example edit

 
Figure 1. Relationship of phenotypic values to additive and dominance effects using a completely dominant locus.

The simplest genetic model involves a single locus with two alleles (b and B) affecting one quantitative phenotype.

The number of B alleles can be 0, 1, or 2. For any genotype, (Bi,Bj), where Bi and Bj are either 0 or 1, the expected phenotype can then be written as the sum of the overall mean, a linear effect, and a dominance deviation (one can think of the dominance term as an interaction between Bi and Bj):

 

The additive genetic variance at this locus is the weighted average of the squares of the additive effects:

 

where  

There is a similar relationship for the variance of dominance deviations:

 

where  

The linear regression of phenotype on genotype is shown in Figure 1.

Assumptions edit

Estimates of the total heritability of human traits assume the absence of epistasis, which has been called the "assumption of additivity". Although some researchers have cited such estimates in support of the existence of "missing heritability" unaccounted for by known genetic loci, the assumption of additivity may render these estimates invalid.[16] There is also some empirical evidence that the additivity assumption is frequently violated in behavior genetic studies of adolescent intelligence and academic achievement.[17]

Estimating heritability edit

Since only P can be observed or measured directly, heritability must be estimated from the similarities observed in subjects varying in their level of genetic or environmental similarity. The statistical analyses required to estimate the genetic and environmental components of variance depend on the sample characteristics. Briefly, better estimates are obtained using data from individuals with widely varying levels of genetic relationship - such as twins, siblings, parents and offspring, rather than from more distantly related (and therefore less similar) subjects. The standard error for heritability estimates is improved with large sample sizes.

In non-human populations it is often possible to collect information in a controlled way. For example, among farm animals it is easy to arrange for a bull to produce offspring from a large number of cows and to control environments. Such experimental control is generally not possible when gathering human data, relying on naturally occurring relationships and environments.

In classical quantitative genetics, there were two schools of thought regarding estimation of heritability.

One school of thought was developed by Sewall Wright at The University of Chicago, and further popularized by C. C. Li (University of Chicago) and J. L. Lush (Iowa State University). It is based on the analysis of correlations and, by extension, regression. Path Analysis was developed by Sewall Wright as a way of estimating heritability.

The second was originally developed by R. A. Fisher and expanded at The University of Edinburgh, Iowa State University, and North Carolina State University, as well as other schools. It is based on the analysis of variance of breeding studies, using the intraclass correlation of relatives. Various methods of estimating components of variance (and, hence, heritability) from ANOVA are used in these analyses.

Today, heritability can be estimated from general pedigrees using linear mixed models and from genomic relatedness estimated from genetic markers.

Studies of human heritability often utilize adoption study designs, often with identical twins who have been separated early in life and raised in different environments. Such individuals have identical genotypes and can be used to separate the effects of genotype and environment. A limit of this design is the common prenatal environment and the relatively low numbers of twins reared apart. A second and more common design is the twin study in which the similarity of identical and fraternal twins is used to estimate heritability. These studies can be limited by the fact that identical twins are not completely genetically identical, potentially resulting in an underestimation of heritability.

In observational studies, or because of evocative effects (where a genome evokes environments by its effect on them), G and E may covary: gene environment correlation. Depending on the methods used to estimate heritability, correlations between genetic factors and shared or non-shared environments may or may not be confounded with heritability.[18]

Regression/correlation methods of estimation edit

The first school of estimation uses regression and correlation to estimate heritability.

Comparison of close relatives edit

In the comparison of relatives, we find that in general,

 

where r can be thought of as the coefficient of relatedness, b is the coefficient of regression and t is the coefficient of correlation.

Parent-offspring regression edit
 
Figure 2. Francis Galton's (1889) data showing the relationship between offspring height (928 individuals) as a function of mean parent height (205 sets of parents).

Heritability may be estimated by comparing parent and offspring traits (as in Fig. 2). The slope of the line (0.57) approximates the heritability of the trait when offspring values are regressed against the average trait in the parents. If only one parent's value is used then heritability is twice the slope. (This is the source of the term "regression," since the offspring values always tend to regress to the mean value for the population, i.e., the slope is always less than one). This regression effect also underlies the DeFries–Fulker method for analyzing twins selected for one member being affected.[19]

Sibling comparison edit

A basic approach to heritability can be taken using full-Sib designs: comparing similarity between siblings who share both a biological mother and a father.[20] When there is only additive gene action, this sibling phenotypic correlation is an index of familiarity – the sum of half the additive genetic variance plus full effect of the common environment. It thus places an upper limit on additive heritability of twice the full-Sib phenotypic correlation. Half-Sib designs compare phenotypic traits of siblings that share one parent with other sibling groups.

Twin studies edit
 
Figure 3. Twin concordances for seven psychological traits (sample size shown inside bars), with DZ being fraternal and MZ being identical twins.

Heritability for traits in humans is most frequently estimated by comparing resemblances between twins. "The advantage of twin studies, is that the total variance can be split up into genetic, shared or common environmental, and unique environmental components, enabling an accurate estimation of heritability".[21] Fraternal or dizygotic (DZ) twins on average share half their genes (assuming there is no assortative mating for the trait), and so identical or monozygotic (MZ) twins on average are twice as genetically similar as DZ twins. A crude estimate of heritability, then, is approximately twice the difference in correlation between MZ and DZ twins, i.e. Falconer's formula H2=2(r(MZ)-r(DZ)).

The effect of shared environment, c2, contributes to similarity between siblings due to the commonality of the environment they are raised in. Shared environment is approximated by the DZ correlation minus half heritability, which is the degree to which DZ twins share the same genes, c2=DZ-1/2h2. Unique environmental variance, e2, reflects the degree to which identical twins raised together are dissimilar, e2=1-r(MZ).

Analysis of variance methods of estimation edit

The second set of methods of estimation of heritability involves ANOVA and estimation of variance components.

Basic model edit

We use the basic discussion of Kempthorne.[14] Considering only the most basic of genetic models, we can look at the quantitative contribution of a single locus with genotype Gi as

 

where   is the effect of genotype Gi and   is the environmental effect.

Consider an experiment with a group of sires and their progeny from random dams. Since the progeny get half of their genes from the father and half from their (random) mother, the progeny equation is

 
Intraclass correlations edit

Consider the experiment above. We have two groups of progeny we can compare. The first is comparing the various progeny for an individual sire (called within sire group). The variance will include terms for genetic variance (since they did not all get the same genotype) and environmental variance. This is thought of as an error term.

The second group of progeny are comparisons of means of half sibs with each other (called among sire group). In addition to the error term as in the within sire groups, we have an addition term due to the differences among different means of half sibs. The intraclass correlation is

  ,

since environmental effects are independent of each other.

The ANOVA edit

In an experiment with   sires and   progeny per sire, we can calculate the following ANOVA, using   as the genetic variance and   as the environmental variance:

Table 1: ANOVA for Sire experiment
Source d.f. Mean Square Expected Mean Square
Between sire groups      
Within sire groups      

The   term is the intraclass correlation between half sibs. We can easily calculate  . The expected mean square is calculated from the relationship of the individuals (progeny within a sire are all half-sibs, for example), and an understanding of intraclass correlations.

The use of ANOVA to calculate heritability often fails to account for the presence of gene–-environment interactions, because ANOVA has a much lower statistical power for testing for interaction effects than for direct effects.[22]

Model with additive and dominance terms edit

For a model with additive and dominance terms, but not others, the equation for a single locus is

 

where

  is the additive effect of the ith allele,   is the additive effect of the jth allele,   is the dominance deviation for the ijth genotype, and   is the environment.

Experiments can be run with a similar setup to the one given in Table 1. Using different relationship groups, we can evaluate different intraclass correlations. Using   as the additive genetic variance and   as the dominance deviation variance, intraclass correlations become linear functions of these parameters. In general,

Intraclass correlation 

where   and   are found as

 P[ alleles drawn at random from the relationship pair are identical by descent], and

 P[ genotypes drawn at random from the relationship pair are identical by descent].

Some common relationships and their coefficients are given in Table 2.

Table 2: Coefficients for calculating variance components
Relationship    
Identical Twins    
Parent-Offspring    
Half Siblings    
Full Siblings    
First Cousins    
Double First Cousins    

Linear mixed models edit

A wide variety of approaches using linear mixed models have been reported in literature. Via these methods, phenotypic variance is partitioned into genetic, environmental and experimental design variances to estimate heritability. Environmental variance can be explicitly modeled by studying individuals across a broad range of environments, although inference of genetic variance from phenotypic and environmental variance may lead to underestimation of heritability due to the challenge of capturing the full range of environmental influence affecting a trait. Other methods for calculating heritability use data from genome-wide association studies to estimate the influence on a trait by genetic factors, which is reflected by the rate and influence of putatively associated genetic loci (usually single-nucleotide polymorphisms) on the trait. This can lead to underestimation of heritability, however. This discrepancy is referred to as "missing heritability" and reflects the challenge of accurately modeling both genetic and environmental variance in heritability models.[23]

When a large, complex pedigree or another aforementioned type of data is available, heritability and other quantitative genetic parameters can be estimated by restricted maximum likelihood (REML) or Bayesian methods. The raw data will usually have three or more data points for each individual: a code for the sire, a code for the dam and one or several trait values. Different trait values may be for different traits or for different time points of measurement.

The currently popular methodology relies on high degrees of certainty over the identities of the sire and dam; it is not common to treat the sire identity probabilistically. This is not usually a problem, since the methodology is rarely applied to wild populations (although it has been used for several wild ungulate and bird populations), and sires are invariably known with a very high degree of certainty in breeding programmes. There are also algorithms that account for uncertain paternity.

The pedigrees can be viewed using programs such as Pedigree Viewer [1], and analyzed with programs such as ASReml, VCE , WOMBAT , MCMCglmm within the R environment [4] or the BLUPF90 family of programs [5].

Pedigree models are helpful for untangling confounds such as reverse causality, maternal effects such as the prenatal environment, and confounding of genetic dominance, shared environment, and maternal gene effects.[24][9]

Genomic heritability edit

When genome-wide genotype data and phenotypes from large population samples are available, one can estimate the relationships between individuals based on their genotypes and use a linear mixed model to estimate the variance explained by the genetic markers. This gives a genomic heritability estimate based on the variance captured by common genetic variants.[4] There are multiple methods that make different adjustments for allele frequency and linkage disequilibrium. Particularly, the method called High-Definition Likelihood (HDL) can estimate genomic heritability using only GWAS summary statistics,[5] making it easier to incorporate large sample size available in various GWAS meta-analysis.

Response to selection edit

 
Figure 4. Strength of selection (S) and response to selection (R) in an artificial selection experiment, h2=R/S.

In selective breeding of plants and animals, the expected response to selection of a trait with known narrow-sense heritability   can be estimated using the breeder's equation:[25]

 

In this equation, the Response to Selection (R) is defined as the realized average difference between the parent generation and the next generation, and the Selection Differential (S) is defined as the average difference between the parent generation and the selected parents.[14]: 1957 [26]

For example, imagine that a plant breeder is involved in a selective breeding project with the aim of increasing the number of kernels per ear of corn. For the sake of argument, let us assume that the average ear of corn in the parent generation has 100 kernels. Let us also assume that the selected parents produce corn with an average of 120 kernels per ear. If h2 equals 0.5, then the next generation will produce corn with an average of 0.5(120-100) = 10 additional kernels per ear. Therefore, the total number of kernels per ear of corn will equal, on average, 110.

Observing the response to selection in an artificial selection experiment will allow calculation of realized heritability as in Fig. 4.

Heritability in the above equation is equal to the ratio   only if the genotype and the environmental noise follow Gaussian distributions.

Controversies edit

Heritability estimates' prominent critics, such as Steven Rose,[27] Jay Joseph,[28] and Richard Bentall, focus largely on heritability estimates in behavioral sciences and social sciences. Bentall has claimed that such heritability scores are typically calculated counterintuitively to derive numerically high scores, that heritability is misinterpreted as genetic determination, and that this alleged bias distracts from other factors that researches have found more causally important, such as childhood abuse causing later psychosis.[29][30] Heritability estimates are also inherently limited because they do not convey any information regarding whether genes or environment play a larger role in the development of the trait under study. For this reason, David Moore and David Shenk describe the term "heritability" in the context of behavior genetics as "...one of the most misleading in the history of science" and argue that it has no value except in very rare cases.[31] When studying complex human traits, it is impossible to use heritability analysis to determine the relative contributions of genes and environment, as such traits result from multiple causes interacting.[32] In particular, Feldman and Lewontin emphasize that heritability is itself a function of environmental variation.[33] However, some researchers argue that it is possible to disentangle the two.[34]

The controversy over heritability estimates is largely via their basis in twin studies. The scarce success of molecular-genetic studies to corroborate such population-genetic studies' conclusions is the missing heritability problem.[35] Eric Turkheimer has argued that newer molecular methods have vindicated the conventional interpretation of twin studies,[35] although it remains mostly unclear how to explain the relations between genes and behaviors.[36] According to Turkheimer, both genes and environment are heritable, genetic contribution varies by environment, and a focus on heritability distracts from other important factors.[37] Overall, however, heritability is a concept widely applicable.[9]

See also edit

References edit

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  35. ^ a b Turkheimer E (2011). "Still missing". Research in Human Development. 8 (3–4): 227–241. doi:10.1080/15427609.2011.625321. S2CID 14737438.
  36. ^ Turkheimer E (2015). "Genetic Prediction". The Hastings Center Report. 45 (5 Suppl): S32–8. doi:10.1002/hast.496. PMID 26413946.
  37. ^ Joseph J (2014). The Trouble with Twin Studies: A Reassessment of Twin Research in the Social and Behavioral Sciences (PDF). New York: Routledge. p. 81. ISBN 978-1-317-60590-4. (PDF) from the original on 2016-04-04. Retrieved 2016-04-02.

Further reading edit

  • Lynch M, Walsh B (1998). Genetics and analysis of quantitative traits. Sunderland, Mass.: Sinauer Assoc. ISBN 978-0-87893-481-2.
  • Johnson W, Penke L, Spinath FM (2011). "Understanding Heritability: What it is and What it is Not". European Journal of Personality. 25 (4): 287–294. doi:10.1002/per.835. ISSN 0890-2070. S2CID 41842465.

External links edit

  • Stanford Encyclopedia of Philosophy entry on Heredity and Heritability
  • Quantitative Genetics Resources website, including the two volume book by Lynch and Walsh. Free access 2006-02-06 at the Wayback Machine

heritability, confused, with, heredity, statistic, used, fields, breeding, genetics, that, estimates, degree, variation, phenotypic, trait, population, that, genetic, variation, between, individuals, that, population, concept, heritability, expressed, form, fo. Not to be confused with heredity Heritability is a statistic used in the fields of breeding and genetics that estimates the degree of variation in a phenotypic trait in a population that is due to genetic variation between individuals in that population 1 The concept of heritability can be expressed in the form of the following question What is the proportion of the variation in a given trait within a population that is not explained by the environment or random chance 2 Studies of heritability ask questions such as to what extent do genetic factors influence differences in height between people This is not the same as asking to what extent do genetic factors influence height in any one person Other causes of measured variation in a trait are characterized as environmental factors including observational error In human studies of heritability these are often apportioned into factors from shared environment and non shared environment based on whether they tend to result in persons brought up in the same household being more or less similar to persons who were not Heritability is estimated by comparing individual phenotypic variation among related individuals in a population by examining the association between individual phenotype and genotype data 3 4 or even by modeling summary level data from genome wide association studies GWAS 5 Heritability is an important concept in quantitative genetics particularly in selective breeding and behavior genetics for instance twin studies It is the source of much confusion due to the fact that its technical definition is different from its commonly understood folk definition Therefore its use conveys the incorrect impression that behavioral traits are inherited or specifically passed down through the genes 6 Behavioral geneticists also conduct heritability analyses based on the assumption that genes and environments contribute in a separate additive manner to behavioral traits 7 Contents 1 Overview 2 Definition 2 1 Example 2 2 Assumptions 3 Estimating heritability 3 1 Regression correlation methods of estimation 3 1 1 Comparison of close relatives 3 1 1 1 Parent offspring regression 3 1 1 2 Sibling comparison 3 1 1 3 Twin studies 3 2 Analysis of variance methods of estimation 3 2 1 Basic model 3 2 1 1 Intraclass correlations 3 2 1 2 The ANOVA 3 2 2 Model with additive and dominance terms 3 3 Linear mixed models 3 4 Genomic heritability 4 Response to selection 5 Controversies 6 See also 7 References 8 Further reading 9 External linksOverview editHeritability measures the fraction of phenotype variability that can be attributed to genetic variation This is not the same as saying that this fraction of an individual phenotype is caused by genetics For example it is incorrect to say that since the heritability of personality traits is about 0 6 that means that 60 of your personality is inherited from your parents and 40 comes from the environment In addition heritability can change without any genetic change occurring such as when the environment starts contributing to more variation As a case in point consider that both genes and environment have the potential to influence intelligence Heritability could increase if genetic variation increases causing individuals to show more phenotypic variation like showing different levels of intelligence On the other hand heritability might also increase if the environmental variation decreases causing individuals to show less phenotypic variation like showing more similar levels of intelligence Heritability increases when genetics are contributing more variation or because non genetic factors are contributing less variation what matters is the relative contribution Heritability is specific to a particular population in a particular environment High heritability of a trait consequently does not necessarily mean that the trait is not very susceptible to environmental influences 8 Heritability can also change as a result of changes in the environment migration inbreeding or the way in which heritability itself is measured in the population under study 9 The heritability of a trait should not be interpreted as a measure of the extent to which said trait is genetically determined in an individual 10 11 The extent of dependence of phenotype on environment can also be a function of the genes involved Matters of heritability are complicated because genes may canalize a phenotype making its expression almost inevitable in all occurring environments Individuals with the same genotype can also exhibit different phenotypes through a mechanism called phenotypic plasticity which makes heritability difficult to measure in some cases Recent insights in molecular biology have identified changes in transcriptional activity of individual genes associated with environmental changes However there are a large number of genes whose transcription is not affected by the environment 12 Estimates of heritability use statistical analyses to help to identify the causes of differences between individuals Since heritability is concerned with variance it is necessarily an account of the differences between individuals in a population Heritability can be univariate examining a single trait or multivariate examining the genetic and environmental associations between multiple traits at once This allows a test of the genetic overlap between different phenotypes for instance hair color and eye color Environment and genetics may also interact and heritability analyses can test for and examine these interactions GxE models A prerequisite for heritability analyses is that there is some population variation to account for This last point highlights the fact that heritability cannot take into account the effect of factors which are invariant in the population Factors may be invariant if they are absent and do not exist in the population such as no one having access to a particular antibiotic or because they are omni present like if everyone is drinking coffee In practice all human behavioral traits vary and almost all traits show some heritability 13 Definition editAny particular phenotype can be modeled as the sum of genetic and environmental effects 14 Phenotype P Genotype G Environment E Likewise the phenotypic variance in the trait Var P is the sum of effects as follows Var P Var G Var E 2 Cov G E In a planned experiment Cov G E can be controlled and held at 0 In this case heritability H 2 displaystyle H 2 nbsp is defined as 15 H 2 V a r G V a r P displaystyle H 2 frac mathrm Var G mathrm Var P nbsp H2 is the broad sense heritability This reflects all the genetic contributions to a population s phenotypic variance including additive dominant and epistatic multi genic interactions as well as maternal and paternal effects where individuals are directly affected by their parents phenotype such as with milk production in mammals A particularly important component of the genetic variance is the additive variance Var A which is the variance due to the average effects additive effects of the alleles Since each parent passes a single allele per locus to each offspring parent offspring resemblance depends upon the average effect of single alleles Additive variance represents therefore the genetic component of variance responsible for parent offspring resemblance The additive genetic portion of the phenotypic variance is known as Narrow sense heritability and is defined as h 2 V a r A V a r P displaystyle h 2 frac mathrm Var A mathrm Var P nbsp An upper case H2 is used to denote broad sense and lower case h2 for narrow sense For traits which are not continuous but dichotomous such as an additional toe or certain diseases the contribution of the various alleles can be considered to be a sum which past a threshold manifests itself as the trait giving the liability threshold model in which heritability can be estimated and selection modeled Additive variance is important for selection If a selective pressure such as improving livestock is exerted the response of the trait is directly related to narrow sense heritability The mean of the trait will increase in the next generation as a function of how much the mean of the selected parents differs from the mean of the population from which the selected parents were chosen The observed response to selection leads to an estimate of the narrow sense heritability called realized heritability This is the principle underlying artificial selection or breeding Example edit nbsp Figure 1 Relationship of phenotypic values to additive and dominance effects using a completely dominant locus The simplest genetic model involves a single locus with two alleles b and B affecting one quantitative phenotype The number of B alleles can be 0 1 or 2 For any genotype Bi Bj where Bi and Bj are either 0 or 1 the expected phenotype can then be written as the sum of the overall mean a linear effect and a dominance deviation one can think of the dominance term as an interaction between Bi and Bj P i j m a B i B j d B i B j Population mean Additive Effect a i j a B i B j Dominance Deviation d i j d B i B j displaystyle begin aligned P ij amp mu alpha B i B j delta B i B j amp text Population mean text Additive Effect a ij alpha B i B j text Dominance Deviation d ij delta B i B j end aligned nbsp The additive genetic variance at this locus is the weighted average of the squares of the additive effects V a r A f b b a b b 2 f B b a B b 2 f B B a B B 2 displaystyle mathrm Var A f bb a bb 2 f Bb a Bb 2 f BB a BB 2 nbsp where f b b a b b f B b a B b f B B a B B 0 displaystyle f bb a bb f Bb a Bb f BB a BB 0 nbsp There is a similar relationship for the variance of dominance deviations V a r D f b b d b b 2 f B b d B b 2 f B B d B B 2 displaystyle mathrm Var D f bb d bb 2 f Bb d Bb 2 f BB d BB 2 nbsp where f b b d b b f B b d B b f B B d B B 0 displaystyle f bb d bb f Bb d Bb f BB d BB 0 nbsp The linear regression of phenotype on genotype is shown in Figure 1 Assumptions edit Estimates of the total heritability of human traits assume the absence of epistasis which has been called the assumption of additivity Although some researchers have cited such estimates in support of the existence of missing heritability unaccounted for by known genetic loci the assumption of additivity may render these estimates invalid 16 There is also some empirical evidence that the additivity assumption is frequently violated in behavior genetic studies of adolescent intelligence and academic achievement 17 Estimating heritability editSince only P can be observed or measured directly heritability must be estimated from the similarities observed in subjects varying in their level of genetic or environmental similarity The statistical analyses required to estimate the genetic and environmental components of variance depend on the sample characteristics Briefly better estimates are obtained using data from individuals with widely varying levels of genetic relationship such as twins siblings parents and offspring rather than from more distantly related and therefore less similar subjects The standard error for heritability estimates is improved with large sample sizes In non human populations it is often possible to collect information in a controlled way For example among farm animals it is easy to arrange for a bull to produce offspring from a large number of cows and to control environments Such experimental control is generally not possible when gathering human data relying on naturally occurring relationships and environments In classical quantitative genetics there were two schools of thought regarding estimation of heritability One school of thought was developed by Sewall Wright at The University of Chicago and further popularized by C C Li University of Chicago and J L Lush Iowa State University It is based on the analysis of correlations and by extension regression Path Analysis was developed by Sewall Wright as a way of estimating heritability The second was originally developed by R A Fisher and expanded at The University of Edinburgh Iowa State University and North Carolina State University as well as other schools It is based on the analysis of variance of breeding studies using the intraclass correlation of relatives Various methods of estimating components of variance and hence heritability from ANOVA are used in these analyses Today heritability can be estimated from general pedigrees using linear mixed models and from genomic relatedness estimated from genetic markers Studies of human heritability often utilize adoption study designs often with identical twins who have been separated early in life and raised in different environments Such individuals have identical genotypes and can be used to separate the effects of genotype and environment A limit of this design is the common prenatal environment and the relatively low numbers of twins reared apart A second and more common design is the twin study in which the similarity of identical and fraternal twins is used to estimate heritability These studies can be limited by the fact that identical twins are not completely genetically identical potentially resulting in an underestimation of heritability In observational studies or because of evocative effects where a genome evokes environments by its effect on them G and E may covary gene environment correlation Depending on the methods used to estimate heritability correlations between genetic factors and shared or non shared environments may or may not be confounded with heritability 18 Regression correlation methods of estimation edit The first school of estimation uses regression and correlation to estimate heritability Comparison of close relatives edit In the comparison of relatives we find that in general h 2 b r t r displaystyle h 2 frac b r frac t r nbsp where r can be thought of as the coefficient of relatedness b is the coefficient of regression and t is the coefficient of correlation Parent offspring regression edit nbsp Figure 2 Francis Galton s 1889 data showing the relationship between offspring height 928 individuals as a function of mean parent height 205 sets of parents Heritability may be estimated by comparing parent and offspring traits as in Fig 2 The slope of the line 0 57 approximates the heritability of the trait when offspring values are regressed against the average trait in the parents If only one parent s value is used then heritability is twice the slope This is the source of the term regression since the offspring values always tend to regress to the mean value for the population i e the slope is always less than one This regression effect also underlies the DeFries Fulker method for analyzing twins selected for one member being affected 19 Sibling comparison edit A basic approach to heritability can be taken using full Sib designs comparing similarity between siblings who share both a biological mother and a father 20 When there is only additive gene action this sibling phenotypic correlation is an index of familiarity the sum of half the additive genetic variance plus full effect of the common environment It thus places an upper limit on additive heritability of twice the full Sib phenotypic correlation Half Sib designs compare phenotypic traits of siblings that share one parent with other sibling groups Twin studies edit Main article Twin study nbsp Figure 3 Twin concordances for seven psychological traits sample size shown inside bars with DZ being fraternal and MZ being identical twins Heritability for traits in humans is most frequently estimated by comparing resemblances between twins The advantage of twin studies is that the total variance can be split up into genetic shared or common environmental and unique environmental components enabling an accurate estimation of heritability 21 Fraternal or dizygotic DZ twins on average share half their genes assuming there is no assortative mating for the trait and so identical or monozygotic MZ twins on average are twice as genetically similar as DZ twins A crude estimate of heritability then is approximately twice the difference in correlation between MZ and DZ twins i e Falconer s formula H2 2 r MZ r DZ The effect of shared environment c2 contributes to similarity between siblings due to the commonality of the environment they are raised in Shared environment is approximated by the DZ correlation minus half heritability which is the degree to which DZ twins share the same genes c2 DZ 1 2h2 Unique environmental variance e2 reflects the degree to which identical twins raised together are dissimilar e2 1 r MZ Analysis of variance methods of estimation edit The second set of methods of estimation of heritability involves ANOVA and estimation of variance components Basic model edit We use the basic discussion of Kempthorne 14 Considering only the most basic of genetic models we can look at the quantitative contribution of a single locus with genotype Gi as y i m g i e displaystyle y i mu g i e nbsp where g i displaystyle g i nbsp is the effect of genotype Gi and e displaystyle e nbsp is the environmental effect Consider an experiment with a group of sires and their progeny from random dams Since the progeny get half of their genes from the father and half from their random mother the progeny equation is z i m 1 2 g i e displaystyle z i mu frac 1 2 g i e nbsp Intraclass correlations edit Consider the experiment above We have two groups of progeny we can compare The first is comparing the various progeny for an individual sire called within sire group The variance will include terms for genetic variance since they did not all get the same genotype and environmental variance This is thought of as an error term The second group of progeny are comparisons of means of half sibs with each other called among sire group In addition to the error term as in the within sire groups we have an addition term due to the differences among different means of half sibs The intraclass correlation is c o r r z z c o r r m 1 2 g e m 1 2 g e 1 4 V g displaystyle mathrm corr z z mathrm corr mu frac 1 2 g e mu frac 1 2 g e frac 1 4 V g nbsp since environmental effects are independent of each other The ANOVA edit In an experiment with n displaystyle n nbsp sires and r displaystyle r nbsp progeny per sire we can calculate the following ANOVA using V g displaystyle V g nbsp as the genetic variance and V e displaystyle V e nbsp as the environmental variance Table 1 ANOVA for Sire experiment Source d f Mean Square Expected Mean SquareBetween sire groups n 1 displaystyle n 1 nbsp S displaystyle S nbsp 3 4 V g V e r 1 4 V g displaystyle frac 3 4 V g V e r frac 1 4 V g nbsp Within sire groups n r 1 displaystyle n r 1 nbsp W displaystyle W nbsp 3 4 V g V e displaystyle frac 3 4 V g V e nbsp The 1 4 V g displaystyle frac 1 4 V g nbsp term is the intraclass correlation between half sibs We can easily calculate H 2 V g V g V e 4 S W S r 1 W displaystyle H 2 frac V g V g V e frac 4 S W S r 1 W nbsp The expected mean square is calculated from the relationship of the individuals progeny within a sire are all half sibs for example and an understanding of intraclass correlations The use of ANOVA to calculate heritability often fails to account for the presence of gene environment interactions because ANOVA has a much lower statistical power for testing for interaction effects than for direct effects 22 Model with additive and dominance terms edit For a model with additive and dominance terms but not others the equation for a single locus is y i j m a i a j d i j e displaystyle y ij mu alpha i alpha j d ij e nbsp wherea i displaystyle alpha i nbsp is the additive effect of the ith allele a j displaystyle alpha j nbsp is the additive effect of the jth allele d i j displaystyle d ij nbsp is the dominance deviation for the ijth genotype and e displaystyle e nbsp is the environment Experiments can be run with a similar setup to the one given in Table 1 Using different relationship groups we can evaluate different intraclass correlations Using V a displaystyle V a nbsp as the additive genetic variance and V d displaystyle V d nbsp as the dominance deviation variance intraclass correlations become linear functions of these parameters In general Intraclass correlation r V a 8 V d displaystyle rV a theta V d nbsp where r displaystyle r nbsp and 8 displaystyle theta nbsp are found asr displaystyle r nbsp P alleles drawn at random from the relationship pair are identical by descent and8 displaystyle theta nbsp P genotypes drawn at random from the relationship pair are identical by descent Some common relationships and their coefficients are given in Table 2 Table 2 Coefficients for calculating variance components Relationship r displaystyle r nbsp 8 displaystyle theta nbsp Identical Twins 1 displaystyle 1 nbsp 1 displaystyle 1 nbsp Parent Offspring 1 2 displaystyle frac 1 2 nbsp 0 displaystyle 0 nbsp Half Siblings 1 4 displaystyle frac 1 4 nbsp 0 displaystyle 0 nbsp Full Siblings 1 2 displaystyle frac 1 2 nbsp 1 4 displaystyle frac 1 4 nbsp First Cousins 1 8 displaystyle frac 1 8 nbsp 0 displaystyle 0 nbsp Double First Cousins 1 4 displaystyle frac 1 4 nbsp 1 16 displaystyle frac 1 16 nbsp Linear mixed models edit A wide variety of approaches using linear mixed models have been reported in literature Via these methods phenotypic variance is partitioned into genetic environmental and experimental design variances to estimate heritability Environmental variance can be explicitly modeled by studying individuals across a broad range of environments although inference of genetic variance from phenotypic and environmental variance may lead to underestimation of heritability due to the challenge of capturing the full range of environmental influence affecting a trait Other methods for calculating heritability use data from genome wide association studies to estimate the influence on a trait by genetic factors which is reflected by the rate and influence of putatively associated genetic loci usually single nucleotide polymorphisms on the trait This can lead to underestimation of heritability however This discrepancy is referred to as missing heritability and reflects the challenge of accurately modeling both genetic and environmental variance in heritability models 23 When a large complex pedigree or another aforementioned type of data is available heritability and other quantitative genetic parameters can be estimated by restricted maximum likelihood REML or Bayesian methods The raw data will usually have three or more data points for each individual a code for the sire a code for the dam and one or several trait values Different trait values may be for different traits or for different time points of measurement The currently popular methodology relies on high degrees of certainty over the identities of the sire and dam it is not common to treat the sire identity probabilistically This is not usually a problem since the methodology is rarely applied to wild populations although it has been used for several wild ungulate and bird populations and sires are invariably known with a very high degree of certainty in breeding programmes There are also algorithms that account for uncertain paternity The pedigrees can be viewed using programs such as Pedigree Viewer 1 and analyzed with programs such as ASReml VCE 2 WOMBAT 3 MCMCglmm within the R environment 4 or the BLUPF90 family of programs 5 Pedigree models are helpful for untangling confounds such as reverse causality maternal effects such as the prenatal environment and confounding of genetic dominance shared environment and maternal gene effects 24 9 Genomic heritability edit When genome wide genotype data and phenotypes from large population samples are available one can estimate the relationships between individuals based on their genotypes and use a linear mixed model to estimate the variance explained by the genetic markers This gives a genomic heritability estimate based on the variance captured by common genetic variants 4 There are multiple methods that make different adjustments for allele frequency and linkage disequilibrium Particularly the method called High Definition Likelihood HDL can estimate genomic heritability using only GWAS summary statistics 5 making it easier to incorporate large sample size available in various GWAS meta analysis Response to selection edit nbsp Figure 4 Strength of selection S and response to selection R in an artificial selection experiment h2 R S In selective breeding of plants and animals the expected response to selection of a trait with known narrow sense heritability h 2 displaystyle h 2 nbsp can be estimated using the breeder s equation 25 R h 2 S displaystyle R h 2 S nbsp In this equation the Response to Selection R is defined as the realized average difference between the parent generation and the next generation and the Selection Differential S is defined as the average difference between the parent generation and the selected parents 14 1957 26 For example imagine that a plant breeder is involved in a selective breeding project with the aim of increasing the number of kernels per ear of corn For the sake of argument let us assume that the average ear of corn in the parent generation has 100 kernels Let us also assume that the selected parents produce corn with an average of 120 kernels per ear If h2 equals 0 5 then the next generation will produce corn with an average of 0 5 120 100 10 additional kernels per ear Therefore the total number of kernels per ear of corn will equal on average 110 Observing the response to selection in an artificial selection experiment will allow calculation of realized heritability as in Fig 4 Heritability in the above equation is equal to the ratio V a r A V a r P displaystyle mathrm Var A mathrm Var P nbsp only if the genotype and the environmental noise follow Gaussian distributions Controversies editThis section may be unbalanced towards certain viewpoints Please improve the article or discuss the issue on the talk page August 2016 Heritability estimates prominent critics such as Steven Rose 27 Jay Joseph 28 and Richard Bentall focus largely on heritability estimates in behavioral sciences and social sciences Bentall has claimed that such heritability scores are typically calculated counterintuitively to derive numerically high scores that heritability is misinterpreted as genetic determination and that this alleged bias distracts from other factors that researches have found more causally important such as childhood abuse causing later psychosis 29 30 Heritability estimates are also inherently limited because they do not convey any information regarding whether genes or environment play a larger role in the development of the trait under study For this reason David Moore and David Shenk describe the term heritability in the context of behavior genetics as one of the most misleading in the history of science and argue that it has no value except in very rare cases 31 When studying complex human traits it is impossible to use heritability analysis to determine the relative contributions of genes and environment as such traits result from multiple causes interacting 32 In particular Feldman and Lewontin emphasize that heritability is itself a function of environmental variation 33 However some researchers argue that it is possible to disentangle the two 34 The controversy over heritability estimates is largely via their basis in twin studies The scarce success of molecular genetic studies to corroborate such population genetic studies conclusions is the missing heritability problem 35 Eric Turkheimer has argued that newer molecular methods have vindicated the conventional interpretation of twin studies 35 although it remains mostly unclear how to explain the relations between genes and behaviors 36 According to Turkheimer both genes and environment are heritable genetic contribution varies by environment and a focus on heritability distracts from other important factors 37 Overall however heritability is a concept widely applicable 9 See also editBehavioral genetics Heredity Heritability of IQReferences edit Wray N Visscher P 2008 Estimating Trait Heritability Nature Education 1 1 29 Archived from the original on 2 August 2015 Retrieved 24 July 2015 Gazzaniga MS Heatherton TF Halpern DF February 2015 Psychological science 5th ed New York ISBN 978 0 393 26313 8 OCLC 908409996 a href Template Cite book html title Template Cite book cite book a CS1 maint location missing publisher link Yang J Lee SH Goddard ME Visscher PM January 2011 GCTA a tool for genome wide complex trait analysis American Journal of Human Genetics 88 1 76 82 doi 10 1016 j ajhg 2010 11 011 PMC 3014363 PMID 21167468 a b Yang J Zeng J Goddard ME Wray NR Visscher PM August 2017 Concepts estimation and interpretation of SNP based heritability PDF Nature 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What They Mean PDF Current Directions in Psychological Science 9 5 160 164 doi 10 1111 1467 8721 00084 ISSN 0963 7214 S2CID 2861437 Archived PDF from the original on 19 October 2013 Retrieved 29 October 2013 a b c Kempthorne O 1957 An introduction to genetic statistics 1st ed Ames Iowa Iowa State Univ Press OCLC 422371269 Stephen Downes and Lucas Matthews Heritability Stanford Encyclopedia of Philosophy Stanford University Archived from the original on 2020 02 25 Retrieved 2020 02 20 Zuk O Hechter E Sunyaev SR Lander ES January 2012 The mystery of missing heritability Genetic interactions create phantom heritability Proceedings of the National Academy of Sciences of the United States of America 109 4 1193 8 Bibcode 2012PNAS 109 1193Z doi 10 1073 pnas 1119675109 PMC 3268279 PMID 22223662 Daw J Guo G Harris KM July 2015 Nurture net of nature Re evaluating the role of shared environments in academic achievement and verbal intelligence Social Science Research 52 422 39 doi 10 1016 j ssresearch 2015 02 011 PMC 4888873 PMID 26004471 Cattell RB November 1960 The multiple abstract variance analysis equations and solutions for nature nurture research on continuous variables Psychological Review 67 6 353 72 doi 10 1037 h0043487 PMID 13691636 DeFries JC Fulker DW September 1985 Multiple regression analysis of twin data Behavior Genetics 15 5 467 73 doi 10 1007 BF01066239 PMID 4074272 S2CID 1172312 Falconer DS Mackay TF December 1995 Introduction to Quantitative Genetics 4th ed Longman ISBN 978 0582243026 Gielen M Lindsey PJ Derom C Smeets HJ Souren NY Paulussen AD Derom R Nijhuis JG January 2008 Modeling genetic and environmental factors to increase heritability and ease the identification of candidate genes for birth weight a twin study Behavior Genetics 38 1 44 54 doi 10 1007 s10519 007 9170 3 PMC 2226023 PMID 18157630 Wahlsten Douglas March 1990 Insensitivity of the analysis of variance to heredity environment interaction PDF Behavioral and Brain Sciences 13 1 109 120 doi 10 1017 S0140525X00077797 ISSN 1469 1825 S2CID 143217984 Archived PDF from the original on 2020 10 05 Retrieved 2020 09 06 Heckerman D Gurdasani D Kadie C Pomilla C Carstensen T Martin H Ekoru K Nsubuga RN Ssenyomo G Kamali A Kaleebu P Widmer C Sandhu MS July 2016 Linear mixed model for heritability estimation that explicitly addresses environmental variation Proceedings of the National Academy of Sciences of the United States of America 113 27 7377 82 Bibcode 2016PNAS 113 7377H doi 10 1073 pnas 1510497113 PMC 4941438 PMID 27382152 Hill WG Goddard ME Visscher PM February 2008 MacKay TF Goddard ME eds Data and theory point to mainly additive genetic variance for complex traits PLOS Genetics 4 2 e1000008 doi 10 1371 journal pgen 1000008 PMC 2265475 PMID 18454194 nbsp Plomin R DeFries JC McClearn GE McGuffin P 2017 Behavioral Genetics A Primer 2nd ed New York W H Freeman ISBN 978 0 7167 2056 0 Falconer DS Mackay TF 1998 Introduction to quantitative genetics 4th ed Essex Longman ISBN 978 0 582 24302 6 Rose SP June 2006 Commentary heritability estimates long past their sell by date International Journal of Epidemiology 35 3 525 7 doi 10 1093 ije dyl064 PMID 16645027 Joseph J 2004 Chapter 5 The Gene Illusion New York Algora p 141 ISBN 978 1 898059 47 9 Archived from the original on 2017 07 19 Retrieved 2016 04 02 Bentall RP 2009 Doctoring the Mind Is Our Current Treatment of Mental Illness Really Any Good New York New York University Press pp 123 127 ISBN 978 0 8147 8723 6 Archived from the original on 2020 10 05 Retrieved 2016 04 02 McGrath M 5 July 2009 Doctoring the Mind Review The Telegraph Archived from the original on 28 September 2011 Retrieved 4 April 2018 Moore DS Shenk D January 2017 The heritability fallacy Wiley Interdisciplinary Reviews Cognitive Science 8 1 2 e1400 doi 10 1002 wcs 1400 PMID 27906501 Feldman MW Ramachandran S April 2018 Missing compared to what Revisiting heritability genes and culture Philosophical Transactions of the Royal Society of London Series B Biological Sciences 373 1743 20170064 doi 10 1098 rstb 2017 0064 PMC 5812976 PMID 29440529 all complex human traits result from a combination of causes If these causes interact it is impossible to assign quantitative values to the fraction of a trait due to each just as we cannot say how much of the area of a rectangle is due separately to each of its two dimensions Thus in the analyses of complex human phenotypes we cannot actually find the relative importance of genes and environment in the determination of phenotype Marcus W Feldman Richard C Lewontin 1975 The Heritability Hang Up Science 190 4220 1163 1168 Bibcode 1975Sci 190 1163F doi 10 1126 science 1198102 PMID 1198102 S2CID 6797128 Archived from the original on 20 May 2021 Retrieved 20 May 2021 Tredoux Gavan The Nature and Nurture of Rectangles 2019 a b Turkheimer E 2011 Still missing Research in Human Development 8 3 4 227 241 doi 10 1080 15427609 2011 625321 S2CID 14737438 Turkheimer E 2015 Genetic Prediction The Hastings Center Report 45 5 Suppl S32 8 doi 10 1002 hast 496 PMID 26413946 Joseph J 2014 The Trouble with Twin Studies A Reassessment of Twin Research in the Social and Behavioral Sciences PDF New York Routledge p 81 ISBN 978 1 317 60590 4 Archived PDF from the original on 2016 04 04 Retrieved 2016 04 02 Further reading editLynch M Walsh B 1998 Genetics and analysis of quantitative traits Sunderland Mass Sinauer Assoc ISBN 978 0 87893 481 2 Johnson W Penke L Spinath FM 2011 Understanding Heritability What it is and What it is Not European Journal of Personality 25 4 287 294 doi 10 1002 per 835 ISSN 0890 2070 S2CID 41842465 External links editStanford Encyclopedia of Philosophy entry on Heredity and Heritability Quantitative Genetics Resources website including the two volume book by Lynch and Walsh Free access Archived 2006 02 06 at the Wayback Machine Retrieved from https en wikipedia org w index php title Heritability amp oldid 1203900017, wikipedia, wiki, book, books, library,

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