Feenstra Bjarke, Skovgaard Ib M
Department of Natural Sciences, Royal Veterinary and Agricultural University, DK-1871 Frederiksberg C, Denmark.
Genetics. 2004 Jun;167(2):959-65. doi: 10.1534/genetics.103.025437.
In standard interval mapping of quantitative trait loci (QTL), the QTL effect is described by a normal mixture model. At any given location in the genome, the evidence of a putative QTL is measured by the likelihood ratio of the mixture model compared to a single normal distribution (the LOD score). This approach can occasionally produce spurious LOD score peaks in regions of low genotype information (e.g., widely spaced markers), especially if the phenotype distribution deviates markedly from a normal distribution. Such peaks are not indicative of a QTL effect; rather, they are caused by the fact that a mixture of normals always produces a better fit than a single normal distribution. In this study, a mixture model for QTL mapping that avoids the problems of such spurious LOD score peaks is presented.
在数量性状基因座(QTL)的标准区间定位中,QTL效应由正态混合模型描述。在基因组的任何给定位置,假定QTL的证据通过混合模型与单一正态分布相比的似然比来衡量(LOD分数)。这种方法偶尔会在低基因型信息区域(例如,标记间隔较宽)产生虚假的LOD分数峰值,特别是当表型分布明显偏离正态分布时。这些峰值并不表示QTL效应;相反,它们是由正态混合总是比单一正态分布产生更好的拟合这一事实引起的。在本研究中,提出了一种用于QTL定位的混合模型,该模型避免了此类虚假LOD分数峰值的问题。