Institute for Behavioral Genetics, University of Colorado, Boulder, CO, USA.
Department of Psychology, University of Minnesota, Minneapolis, MN, USA.
Nat Genet. 2018 May;50(5):737-745. doi: 10.1038/s41588-018-0108-x. Epub 2018 Apr 26.
Multiple methods have been developed to estimate narrow-sense heritability, h, using single nucleotide polymorphisms (SNPs) in unrelated individuals. However, a comprehensive evaluation of these methods has not yet been performed, leading to confusion and discrepancy in the literature. We present the most thorough and realistic comparison of these methods to date. We used thousands of real whole-genome sequences to simulate phenotypes under varying genetic architectures and confounding variables, and we used array, imputed, or whole genome sequence SNPs to obtain 'SNP-heritability' estimates. We show that SNP-heritability can be highly sensitive to assumptions about the frequencies, effect sizes, and levels of linkage disequilibrium of underlying causal variants, but that methods that bin SNPs according to minor allele frequency and linkage disequilibrium are less sensitive to these assumptions across a wide range of genetic architectures and possible confounding factors. These findings provide guidance for best practices and proper interpretation of published estimates.
已经开发出多种方法来使用无关个体中的单核苷酸多态性 (SNP) 估计狭义遗传率 h。然而,这些方法尚未进行全面评估,导致文献中存在混淆和差异。我们目前对这些方法进行了最全面和现实的比较。我们使用数千个真实的全基因组序列在不同的遗传结构和混杂变量下模拟表型,并使用阵列、推断或全基因组序列 SNP 获得“SNP 遗传率”估计值。我们表明,SNP 遗传率对潜在因果变异的频率、效应大小和连锁不平衡水平的假设非常敏感,但根据次要等位基因频率和连锁不平衡对 SNP 进行分组的方法在广泛的遗传结构和可能的混杂因素下对这些假设的敏感性较低。这些发现为最佳实践和对已发表估计值的正确解释提供了指导。