Visscher Peter M, Medland Sarah E, Ferreira Manuel A R, Morley Katherine I, Zhu Gu, Cornes Belinda K, Montgomery Grant W, Martin Nicholas G
Genetic Epidemiology Group, Queensland Institute of Medical Research, Brisbane, Australia.
PLoS Genet. 2006 Mar;2(3):e41. doi: 10.1371/journal.pgen.0020041. Epub 2006 Mar 24.
The study of continuously varying, quantitative traits is important in evolutionary biology, agriculture, and medicine. Variation in such traits is attributable to many, possibly interacting, genes whose expression may be sensitive to the environment, which makes their dissection into underlying causative factors difficult. An important population parameter for quantitative traits is heritability, the proportion of total variance that is due to genetic factors. Response to artificial and natural selection and the degree of resemblance between relatives are all a function of this parameter. Following the classic paper by R. A. Fisher in 1918, the estimation of additive and dominance genetic variance and heritability in populations is based upon the expected proportion of genes shared between different types of relatives, and explicit, often controversial and untestable models of genetic and non-genetic causes of family resemblance. With genome-wide coverage of genetic markers it is now possible to estimate such parameters solely within families using the actual degree of identity-by-descent sharing between relatives. Using genome scans on 4,401 quasi-independent sib pairs of which 3,375 pairs had phenotypes, we estimated the heritability of height from empirical genome-wide identity-by-descent sharing, which varied from 0.374 to 0.617 (mean 0.498, standard deviation 0.036). The variance in identity-by-descent sharing per chromosome and per genome was consistent with theory. The maximum likelihood estimate of the heritability for height was 0.80 with no evidence for non-genetic causes of sib resemblance, consistent with results from independent twin and family studies but using an entirely separate source of information. Our application shows that it is feasible to estimate genetic variance solely from within-family segregation and provides an independent validation of previously untestable assumptions. Given sufficient data, our new paradigm will allow the estimation of genetic variation for disease susceptibility and quantitative traits that is free from confounding with non-genetic factors and will allow partitioning of genetic variation into additive and non-additive components.
对连续变化的数量性状的研究在进化生物学、农业和医学中都很重要。此类性状的变异可归因于许多可能相互作用的基因,这些基因的表达可能对环境敏感,这使得将其分解为潜在的致病因素变得困难。数量性状的一个重要群体参数是遗传力,即总方差中由遗传因素导致的比例。对人工选择和自然选择的响应以及亲属之间的相似程度都是这个参数的函数。继1918年R. A. 费希尔的经典论文之后,群体中加性和显性遗传方差以及遗传力的估计是基于不同类型亲属之间共享基因的预期比例,以及关于家族相似性的遗传和非遗传原因的明确、往往有争议且无法检验的模型。随着遗传标记的全基因组覆盖,现在可以仅利用亲属之间实际的同源性共享程度在家族内部估计此类参数。对4401对近似独立的同胞对进行全基因组扫描,其中3375对有表型,我们根据全基因组经验性同源性共享估计了身高的遗传力,其范围从0.374到0.617(均值0.498,标准差0.036)。每条染色体和每个基因组的同源性共享方差与理论一致。身高遗传力的最大似然估计值为0.80,没有证据表明同胞相似性存在非遗传原因,这与独立双胞胎和家族研究的结果一致,但使用的是完全独立的信息来源。我们的应用表明,仅从家族内部分离估计遗传方差是可行的,并为以前无法检验的假设提供了独立验证。如果有足够的数据,我们的新范式将允许估计疾病易感性和数量性状的遗传变异,而不会与非遗传因素混淆,并且将允许将遗传变异划分为加性和非加性成分。