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Joint analysis of multiple phenotypes: summary of results and discussions from the Genetic Analysis Workshop 19

机译:多种表型的联合分析:结果总结和遗传分析研讨会的讨论19

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For Genetic Analysis Workshop 19, 2 extensive data sets were provided, including whole genome and whole exome sequence data, gene expression data, and longitudinal blood pressure outcomes, together with nongenetic covariates. These data sets gave researchers the chance to investigate different aspects of more complex relationships within the data, and the contributions in our working group focused on statistical methods for the joint analysis of multiple phenotypes, which is part of the research field of data integration. The analysis of data from different sources poses challenges to researchers but provides the opportunity to model the real-life situation more realistically. Our 4 contributions all used the provided real data to identify genetic predictors for blood pressure. In the contributions, novel multivariate rare variant tests, copula models, structural equation models and a sparse matrix representation variable selection approach were applied. Each of these statistical models can be used to investigate specific hypothesized relationships, which are described together with their biological assumptions. The results showed that all methods are ready for application on a genome-wide scale and can be used or extended to include multiple omics data sets. The results provide potentially interesting genetic targets for future investigation and replication. Furthermore, all contributions demonstrated that the analysis of complex data sets could benefit from modeling correlated phenotypes jointly as well as by adding further bioinformatics information.
机译:对于遗传分析研讨会19,提供了2个广泛的数据集,包括全基因组和整个外显子组序列数据,基因表达数据和纵向血压结果,以及非遗传协变量。这些数据集为研究人员提供了研究数据中更复杂关系的不同方面的机会,并且我们工作组的工作集中在对多种表型进行联合分析的统计方法上,这是数据集成研究领域的一部分。来自不同来源的数据分析给研究人员带来了挑战,但提供了更现实地模拟现实情况的机会。我们的4篇论文均使用所提供的真实数据来确定血压的遗传预测因子。在研究成果中,采用了新颖的多变量稀有变异检验,copula模型,结构方程模型和稀疏矩阵表示变量选择方法。这些统计模型中的每一个都可用于调查特定的假设关系,并与它们的生物学假设一起进行描述。结果表明,所有方法都准备在全基因组范围内应用,并且可以使用或扩展为包括多个组学数据集。结果为将来的研究和复制提供了潜在的有趣遗传目标。此外,所有贡献都表明,复杂数据集的分析可以从联合建模相关表型以及添加更多生物信息学信息中受益。

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