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Regression Models for Linkage Heterogeneity Applied to Familial Prostate Cancer

机译:连锁异质性回归模型应用于家族性前列腺癌

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摘要

Linkage heterogeneity frequently occurs for complex genetic diseases, and statistical methods must account for it to avoid severe loss in power to discover susceptibility genes. A common method to allow for only a fraction of linked pedigrees is to fit a mixture likelihood and then to test for linkage homogeneity, given linkage (admixture test), or to test for linkage while allowing for heterogeneity, using the heterogeneity LOD (HLOD) score. Furthermore, features of the families, such as mean age at diagnosis, may help to discriminate families that demonstrate linkage from those that do not. Pedigree features are often used to create homogeneous subsets, and LOD or HLOD scores are then computed within the subsets. However, this practice introduces several problems, including reduced power (which results from multiple testing and small sample sizes within subsets) and difficulty in interpretation of results. To address some of these limitations, we present a regression-based extension of the mixture likelihood for which pedigree features are used as covariates that determine the probability that a family is the linked type. Some advantages of this approach are that multiple covariates can be used (including quantitative covariates), covariates can be adjusted for each other, and interactions among covariates can be assessed. This new regression method is applied to linkage data for familial prostate cancer and provides new insights into the understanding of prostate cancer linkage heterogeneity.
机译:连锁异质性通常发生在复杂的遗传疾病中,必须采用统计方法加以解决,以避免发现易感基因的能力严重丧失。通常只允许一小部分链接的家谱的方法是拟合混合可能性,然后使用异质性LOD(HLOD)测试给定的链接的同质性(混合测试),或在允许异质性的同时测试链接得分了。此外,家庭的特征,例如诊断时的平均年龄,可能有助于区分显示出有关联的家庭与没有关联的家庭。谱系特征通常用于创建同类子集,然后在子集内计算LOD或HLOD分数。但是,这种做法带来了一些问题,包括功耗降低(这是由多次测试和子集中的小样本量导致的)和难以解释结果。为了解决其中的一些局限性,我们提出了基于混合可能性的回归回归扩展,对于这种混合可能性,系谱特征被用作协变量,从而确定一个家庭是链接类型的概率。这种方法的一些优点是可以使用多个协变量(包括定量协变量),可以相互调整协变量,并且可以评估协变量之间的相互作用。这种新的回归方法适用于家族性前列腺癌的连锁数据,并为了解前列腺癌连锁异质性提供了新的见解。

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