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The use of hierarchical models for estimating relative risks of individual genetic variants: an application to a study of melanoma.

机译:层次模型用于估计个体遗传变异的相对风险:在黑色素瘤研究中的应用。

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摘要

For major genes known to influence the risk of cancer, an important task is to determine the risks conferred by individual variants, so that one can appropriately counsel carriers of these mutations. This is a challenging task, since new mutations are continually being identified, and there is typically relatively little empirical evidence available about each individual mutation. Hierarchical modeling offers a natural strategy to leverage the collective evidence from these rare variants with sparse data. This can be accomplished when there are available higher-level covariates that characterize the variants in terms of attributes that could distinguish their association with disease. In this article, we explore the use of hierarchical modeling for this purpose using data from a large population-based study of the risks of melanoma conferred by variants in the CDKN2A gene. We employ both a pseudo-likelihood approach and a Bayesian approach using Gibbs sampling. The results indicate that relative risk estimates tend to be primarily influenced by the individual case-control frequencies when several cases and/or controls are observed with the variant under study, but that relative risk estimates for variants with very sparse data are more influenced by the higher-level covariate values, as one would expect. The analysis offers encouragement that we can draw strength from the aggregating power of hierarchical models to provide guidance to medical geneticists when they offer counseling to patients with rare or even hitherto unobserved variants. However, further research is needed to validate the application of asymptotic methods to such sparse data.
机译:对于已知影响癌症风险的主要基因,一项重要任务是确定各个变异带来的风险,以便人们可以适当地向这些变异的携带者提供咨询。这是一项具有挑战性的任务,因为不断地识别出新的突变,而且通常没有足够的关于每个突变的经验证据。分层建模提供了一种自然策略,可以利用稀疏数据中这些罕见变体的集体证据。当有可用的更高级别的协变量来表征这些变体的属性时,就可以实现此目的,这些属性可以区分它们与疾病的关联。在本文中,我们使用基于大型人群的CDKN2A基因变异所致黑色素瘤风险研究的数据,探索了为此目的使用分层建模的方法。我们同时使用伪似然法和使用吉布斯采样的贝叶斯方法。结果表明,当研究中的变体观察到多个病例和/或对照时,相对风险估计数往往主要受个体病例对照频率的影响,但是数据非常稀疏的变体的相对风险估计数则受到更大的影响。正如人们所期望的那样,可以使用更高级别的协变量值。该分析令人鼓舞,我们可以从分层模型的聚合功能中汲取力量,为医学遗传学家在为罕见或迄今尚未发现的变体患者提供咨询时提供指导。但是,需要进一步的研究来验证渐近方法在此类稀疏数据中的应用。

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