Using gene expression data to identify causal pathways between genotype and phenotype in a complex disease: Application to Genetic Analysis Workshop 19

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Abstract

We explore causal relationships between genotype, gene expression and phenotype in the Genetic Analysis Workshop 19 data. We compare the use of structural equation modeling and a Bayesian unified framework approach to infer the most likely causal models that gave rise to the data. Testing an exhaustive set of causal relationships between each single-nucleotide polymorphism, gene expression probe, and phenotype would be computationally infeasible, thus a filtering step is required. In addition to filtering based on pairwise associations, we consider weighted gene correlation network analysis as a method of clustering genes with similar function into a small number of modules. These modules capture the key functional mechanisms of genes while greatly reducing the number of relationships to test for in causal modeling.

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Ainsworth, H. F., & Cordell, H. J. (2016). Using gene expression data to identify causal pathways between genotype and phenotype in a complex disease: Application to Genetic Analysis Workshop 19. In BMC Proceedings (Vol. 10). BioMed Central Ltd. https://doi.org/10.1186/s12919-016-0009-x

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