SEPARATING THE CAUSES AND CONSEQUENCES IN DISEASE TRANSCRIPTOME

  • Posted on: 23 March 2016
  • By: fcoldren
TitleSEPARATING THE CAUSES AND CONSEQUENCES IN DISEASE TRANSCRIPTOME
Publication TypeJournal Article
Year of Publication2016
AuthorsLi YFuga, Xin F, Altman RB
JournalPac Symp Biocomput
Volume21
Pagination381-92
Date Published2016
ISSN2335-6936
Abstract

The causes of complex diseases are multifactorial and the phenotypes of complex diseases are typically heterogeneous, posting significant challenges for both the experiment design and statistical inference in the study of such diseases. Transcriptome profiling can potentially provide key insights on the pathogenesis of diseases, but the signals from the disease causes and consequences are intertwined, leaving it to speculations what are likely causal. Genome-wide association study on the other hand provides direct evidences on the potential genetic causes of diseases, but it does not provide a comprehensive view of disease pathogenesis, and it has difficulties in detecting the weak signals from individual genes. Here we propose an approach diseaseExPatho that combines transcriptome data, regulome knowledge, and GWAS results if available, for separating the causes and consequences in the disease transcriptome. DiseaseExPatho computationally deconvolutes the expression data into gene expression modules, hierarchically ranks the modules based on regulome using a novel algorithm, and given GWAS data, it directly labels the potential causal gene modules based on their correlations with genome-wide gene-disease associations. Strikingly, we observed that the putative causal modules are not necessarily differentially expressed in disease, while the other modules can show strong differential expression without enrichment of top GWAS variations. On the other hand, we showed that the regulatory network based module ranking prioritized the putative causal modules consistently in 6 diseases. We suggest that the approach is applicable to other common and rare complex diseases to prioritize causal pathways with or without genome-wide association studies.

Alternate JournalPac Symp Biocomput
PubMed ID26776202
PubMed Central IDPMC4722949
Grant ListR01 GM102365 / GM / NIGMS NIH HHS / United States