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Allele frequency misspecification: effect on power and Type I error of model-dependent linkage analysis of quantitative traits under random ascertainment

机译:等位基因频率筛选:在随机确定下对数量性状的模型依赖性连杆分析的功率和I型错误影响

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Background Studies of model-based linkage analysis show that trait or marker model misspecification leads to decreasing power or increasing Type I error rate. An increase in Type I error rate is seen when marker related parameters (e.g., allele frequencies) are misspecified and ascertainment is through the trait, but lod-score methods are expected to be robust when ascertainment is random (as is often the case in linkage studies of quantitative traits). In previous studies, the power of lod-score linkage analysis using the "correct" generating model for the trait was found to increase when the marker allele frequencies were misspecified and parental data were missing. An investigation of Type I error rates, conducted in the absence of parental genotype data and with misspecification of marker allele frequencies, showed that an inflation in Type I error rate was the cause of at least part of this apparent increased power. To investigate whether the observed inflation in Type I error rate in model-based LOD score linkage was due to sampling variation, the trait model was estimated from each sample using REGCHUNT, an automated segregation analysis program used to fit models by maximum likelihood using many different sets of initial parameter estimates. Results The Type I error rates observed using the trait models generated by REGCHUNT were usually closer to the nominal levels than those obtained when assuming the generating trait model. Conclusion This suggests that the observed inflation of Type I error upon misspecification of marker allele frequencies is at least partially due to sampling variation. Thus, with missing parental genotype data, lod-score linkage is not as robust to misspecification of marker allele frequencies as has been commonly thought.
机译:基于模型的连杆分析的背景研究表明,特征或标记模型误操作导致电力降低或增加I型错误率。当标记相关参数(例如,等位基因频率)被遗漏并确定通过特征时,可以看到I型错误率的增加,但是当确定是随机的时,LOD评分方法预计将是强劲的(如连锁中的情况)定量特征的研究)。在先前的研究中,当标记等位基因频率被遗漏并且丢失父母数据时,发现使用“正确”产生模型的LOD评分连杆分析的力量增加。在没有父母基因型数据的情况下进行的I误差率和标记等位基因频率的误操作进行的I型错误率的研究表明,I型误差率的通胀是至少部分显而易见的功率的原因。为了研究模型的LOD评分连锁中的I型错误率的观察到的通胀是否是由于采样变化,使用regchunt从每个样品估计特征模型,用于通过使用许多不同的最大可能性来适应模型的自动分离分析程序初始参数估计集。结果使用Regchunt生成的特征模型观察到的I型错误率通常比假设产生特征模型所获得的误差率更接近标称水平。结论这表明,在错下标记等位基因频率的错误误解时,I型错误的通胀至少部分地由采样变化部分。因此,对于缺少的父母基因型数据,LOD-Score Linkagage不像普遍认为的标记等位基因频率的误解错误那样稳健。

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