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

被引:1
作者
Holly F. Ainsworth
Heather J. Cordell
机构
[1] Newcastle University,Institute of Genetic Medicine
[2] International Centre for Life,undefined
关键词
Structural Equation Modeling; Causal Model; Causal Analysis; Gene Expression Measurement; Genetic Analysis Workshop;
D O I
10.1186/s12919-016-0009-x
中图分类号
学科分类号
摘要
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.
引用
收藏
相关论文
共 68 条
[1]  
Stephens M(2013)A unified framework for association analysis with multiple related phenotypes PLoS One 8 e65245-1573
[2]  
Blangero J(2015)Omics squared: human genomic, transcriptomic, and phenotypic data for Genetic Analysis Workshop 19 BMC Proc 9 S2-1216
[3]  
Teslovich TM(2010)Data quality control in genetic case-control association studies Nat Protoc 5 1564-147
[4]  
Sim X(2007)Discovery of expression QTLs using large-scale transcriptional profiling in human lymphocytes Nat Genet 39 1208-835
[5]  
Almeida MA(2014)Accounting for relatedness in family based association studies: application to genetic analysis workshop 18 data BMC Proc 8 S79-undefined
[6]  
Jun G(2013)Epigenome-wide association data implicate dna methylation as an intermediary of genetic risk in rheumatoid arthritis Nat Biotechnol 31 142-undefined
[7]  
Dyer TD(2014)Interrogating causal pathways linking genetic variants, small molecule metabolites, and circulating lipids Genome Med 6 25-undefined
[8]  
Johnson M(2011)Fast linear mixed models for genome-wide association studies Nat Methods 8 833-undefined
[9]  
Peralta JM(2008)WGCNA: an R package for weighted correlation network analysis BMC Bioinformatics 9 559-undefined
[10]  
Manning AK(2006)Integrating genetic and network analysis to characterize genes related to mouse weight PLoS Genet 2 undefined-undefined