Thaller G, Dempfle L, Hoeschele I
Institut für Tierwissenschaften, Technischa Universitat München-Weihenstephan, Germany.
Genetics. 1996 Aug;143(4):1819-29. doi: 10.1093/genetics/143.4.1819.
Maximum likelihood methodology was applied to determine the mode of inheritance of rare binary traits with data structures typical for swine populations. The genetic models considered included a monogenic, a digenic, a polygenic, and three mixed polygenic and major gene models. The main emphasis was on the detection of major genes acting on a polygenic background. Deterministic algorithms were employed to integrate and maximize likelihoods. A simulation study was conducted to evaluate model selection and parameter estimation. Three designs were simulated that differed in the number of sires/number of dams within sires (10/10, 30/30, 100/30). Major gene effects of at least one SD of the liability were detected with satisfactory power under the mixed model of inheritance, except for the smallest design. Parameter estimates were empirically unbiased with acceptable standard errors, except for the smallest design, and allowed to distinguish clearly between the genetic models. Distributions of the likelihood ratio statistic were evaluated empirically, because asymptotic theory did not hold. For each simulation model, the Average Information Criterion was computed for all models of analysis. The model with the smallest value was chosen as the best model and was equal to the true model in almost every case studied.
应用最大似然法,利用猪群典型的数据结构来确定罕见二元性状的遗传模式。所考虑的遗传模型包括单基因模型、双基因模型、多基因模型以及三种多基因与主基因混合模型。主要重点在于检测在多基因背景下起作用的主基因。采用确定性算法来整合并最大化似然值。进行了一项模拟研究以评估模型选择和参数估计。模拟了三种设计,它们在公猪数量/公猪内母猪数量方面存在差异(10/10、30/30、100/30)。在混合遗传模型下,除了最小的设计外,以令人满意的检验效能检测到了至少一个标准差遗传负荷的主基因效应。除了最小的设计外,参数估计在经验上是无偏的,且具有可接受的标准误差,并能够清晰地区分遗传模型。由于渐近理论不成立,则通过经验评估似然比统计量的分布。对于每个模拟模型,计算所有分析模型的平均信息准则。选择值最小的模型作为最佳模型,并且在几乎所有研究案例中该模型都等同于真实模型。