首页> 外文期刊>The Annals of applied statistics >CAUSAL GRAPHICAL MODELS IN SYSTEMS GENETICS: A UNIFIED FRAMEWORK FOR JOINT INFERENCE OF CAUSAL NETWORK AND GENETIC ARCHITECTURE FOR CORRELATED PHENOTYPES
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CAUSAL GRAPHICAL MODELS IN SYSTEMS GENETICS: A UNIFIED FRAMEWORK FOR JOINT INFERENCE OF CAUSAL NETWORK AND GENETIC ARCHITECTURE FOR CORRELATED PHENOTYPES

机译:系统遗传学中的因果图模型:因果网络和相关表型的遗传架构的联合推论的统一框架

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摘要

Causal inference approaches in systems genetics exploit quantitative trait loci (QTL) genotypes to infer causal relationships among phenotypes. The genetic architecture of each phenotype may be complex, and poorly estimated genetic architectures may compromise the inference of causal relationships among phenotypes. Existing methods assume QTLs are known or inferred without regard to the phenotype network structure. In this paper we develop a QTL-driven phenotype network method (QTLnet) to jointly infer a causal phenotype network and associated genetic architecture for sets of correlated phenotypes. Randomization of alleles during meiosis and the unidirectional influence of genotype on phenotype allow the inference of QTLs causal to phenotypes. Causal relationships among phenotypes can be inferred using these QTL nodes, enabling us to distinguish among phenotype networks that would otherwise be distribution equivalent. We jointly model phenotypes and QTLs using homogeneous conditional Gaussian regression models, and we derive a graphical criterion for distribution equivalence. We validate the QTLnet approach in a simulation study. Finally, we illustrate with simulated data and a real example how QTLnet can be used to infer both direct and indirect effects of QTLs and phenotypes that co-map to a genomic region.
机译:系统遗传学中的因果推断方法利用数量性状基因座(QTL)基因型来推断表型之间的因果关系。每种表型的遗传结构可能很复杂,而估算不佳的遗传结构可能会损害表型之间因果关系的推论。现有方法假定QTL是已知的或推断的,而不考虑表型网络结构。在本文中,我们开发了一种QTL驱动的表型网络方法(QTLnet),以共同推断因果表型网络和相关遗传结构的相关表型集。减数分裂过程中等位基因的随机化以及基因型对表型的单向影响使得可以推断QTL归因于表型。可以使用这些QTL节点来推断表型之间的因果关系,使我们能够区分表型网络,否则这些表型网络将是分布等效的。我们使用均质条件高斯回归模型联合对表型和QTL进行建模,并得出分布等价的图形标准。我们在模拟研究中验证了QTLnet方法。最后,我们以模拟数据和一个真实示例进行说明,说明如何使用QTLnet来推断QTL和共同映射到基因组区域的表型的直接和间接影响。

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