Allison D B, Heo M, Schork N J, Wong S L, Elston R C
Obesity Research Center, St. Luke's/Roosevelt Hospital, Columbia University College of Physicians and Surgeons, New York, N.Y., USA.
Hum Hered. 1998 Mar-Apr;48(2):97-107. doi: 10.1159/000022788.
It is well known that obtaining adequate statistical power to detect linkage to or association with genes for complex quantitative traits can be very difficult. In response, investigators have developed a number of power-enhancing strategies that consider restraints such as genotyping (and/or phenotyping) costs. In the context of both association and sib pair linkage studies of quantitative traits, one of the most widely discussed techniques is the selective sampling of phenotypically extreme individuals. Several papers have demonstrated that such extreme sampling can markedly increase power (under certain circumstances). However, the parenthetical phrase in the previous sentence has generally not been made explicit and it appears to be implied that the more phenotypically extreme the individuals, the more power one has. In this paper, we show by simulation that this is not true under all circumstances. In particular, we show that under oligogenic models, where some biallelic quantitative trait loci (QTLs) have markedly asymmetric allele frequencies and large mean displacement among genotypes, and others have less asymmetric allele frequencies and smaller mean displacement among genotypes, power to detect linkage to or association with the latter QTL can actually decrease by sampling more extreme sib pairs. This suggests that more extreme sampling is not always better. The 'optimal' sampling scheme may depend on both what one suspects the underlying genetic architecture to be and which of the oligogenic QTL one has greatest interest in detecting.
众所周知,要获得足够的统计效力来检测复杂数量性状与基因的连锁或关联可能非常困难。对此,研究人员已经开发了许多提高效力的策略,这些策略考虑了诸如基因分型(和/或表型分型)成本等限制因素。在数量性状的关联研究和同胞对连锁研究中,最广泛讨论的技术之一是对表型极端个体进行选择性抽样。几篇论文已经证明,这种极端抽样可以显著提高效力(在某些情况下)。然而,前一句中的插入语通常没有明确说明,似乎暗示个体的表型越极端,统计效力就越高。在本文中,我们通过模拟表明,并非在所有情况下都是如此。特别是,我们表明,在寡基因模型下,一些双等位基因数量性状基因座(QTL)的等位基因频率明显不对称,基因型间的平均位移较大,而其他QTL的等位基因频率不对称性较小,基因型间的平均位移较小,通过抽样更多极端同胞对来检测与后一种QTL的连锁或关联的效力实际上可能会降低。这表明,更极端的抽样并不总是更好。“最优”抽样方案可能既取决于人们对潜在遗传结构的怀疑,也取决于人们最感兴趣检测的寡基因QTL中的哪一个。