1. Cross-species data integration to prioritize causal genes in lipid metabolism
- Author
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James A Votava and Brian W. Parks
- Subjects
0301 basic medicine ,Prioritization ,Endocrinology, Diabetes and Metabolism ,Genome-wide association study ,Computational biology ,030204 cardiovascular system & hematology ,Biology ,computer.software_genre ,Article ,Mice ,03 medical and health sciences ,0302 clinical medicine ,Genetics ,Animals ,Humans ,Molecular Biology ,Gene ,Genetic association ,Nutrition and Dietetics ,Human studies ,Lipid metabolism ,Cell Biology ,Lipid Metabolism ,Lipids ,Causal gene ,030104 developmental biology ,Models, Animal ,Cardiology and Cardiovascular Medicine ,computer ,Genome-Wide Association Study ,Data integration - Abstract
Purpose of review More than one hundred loci have been identified from human genome-wide association studies (GWAS) for blood lipids. Despite the success of GWAS in identifying loci, subsequent prioritization of causal genes related to these loci remains a challenge. To address this challenge, recent work suggests that candidate causal genes within loci can be prioritized through cross-species integration using genome-wide data from the mouse. Recent findings Mouse model systems provide unparalleled access to primary tissues, like the liver, that are not readily available for human studies. Given the key role the liver plays in controlling blood lipid levels and the wealth of liver genome-wide transcript and protein data available in the mouse, these data can be leveraged. Using coexpression network analysis approaches with mouse genome-wide data, coupled with cross-species analysis of human lipid GWAS, causal genes within lipid loci can be prioritized. Prioritization through both mouse and human along with biochemical validation provide a systematic and valuable method to discover lipid metabolism genes. Summary The prioritization of causal lipid genes within GWAS loci is a challenging process requiring a multidisciplinary approach. Integration of data types across species, such as the mouse, can aid in causal gene prioritization.
- Published
- 2021
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