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Using disease symptoms to improve detection of linkage under genetic heterogeneity.

机译:利用疾病症状改善遗传异质性下连锁的检测。

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摘要

A major reason for the slow progress in identifying susceptibility genes for complex diseases may be that the clinical diagnoses used as phenotypes are genetically heterogeneous. This has led researchers to collect various phenotypes related to the diagnosis, such as detailed symptoms, in the hope that these measurements define more homogeneous disease sub-types, influenced by a smaller number of genes that will thus be more easily detectable. Latent class analysis can be used to define disease sub-types from multivariate symptoms under the assumption that the subjects are independent, an assumption that does not hold between members of the same family. We have recently developed a latent class model allowing dependence between the latent disease class status of relatives within nuclear families. In this paper, we propose approaches to use the resulting latent class probabilities in linkage analysis. We present results from a simulation study showing that the latent class approach can provide a substantial gain in power to detect disease genes over the standard heterogeneity approach of Smith and identity-by-descent sharing methods applied to the disease diagnosis. Taking into account familial dependence in the latent class model generally provides greater power than assuming independence. In an analysis of autism symptoms in families from the Autism Genetics Research Exchange, linkage signals obtained with latent class-derived phenotypes were stronger than those obtained using the original autism spectrum disorder diagnosis.
机译:鉴定复杂疾病易感基因进展缓慢的主要原因可能是用作表型的临床诊断在遗传上是异质的。这导致研究人员收集了各种与诊断有关的表型,例如详细的症状,希望这些测量结果能够定义出更多的均一的疾病亚型,并受较少数量的基因影响,从而更易于检测。在受试者独立的假设下,潜在类别分析可用于根据多元症状定义疾病亚型,该假设在同一家庭成员之间不成立。我们最近开发了一个潜在类别模型,允许在核心家庭中亲属的潜在疾病类别状态之间产生依赖性。在本文中,我们提出了在链接分析中使用所得潜在类概率的方法。我们从模拟研究中得出的结果表明,潜在类别方法可以提供大量的能力来检测超过史密斯(Smith)标准异质性方法和逐个身份共享方法应用于疾病诊断的疾病基因。与潜在的独立性相比,在潜在阶级模型中考虑家族的依赖通常提供更大的力量。在对自闭症遗传学研究交流中心的家庭中的自闭症症状进行的分析中,以潜在类别衍生表型获得的连锁信号比使用原始自闭症谱系障碍诊断获得的连锁信号更强。

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