During the present cycle of our PPG, we have developed a novel approach, which we term """"""""integrative genetics"""""""", to help identify genes and pathways associated with the Metabolic Syndrome (MetSyn). We have also developed a new mapping tool in mice, which we term a """"""""mouse diversity panel"""""""" (MDP), which allows high resolution mapping of traits such as gene-by-environment interactions. In the present proposal, we will apply these tools to two basic questions concerning the metabolic syndrome. The first question has to do with the nature ofthe molecular networks underlying human MetSyn traits. In our previous """"""""integrative genetics"""""""" studies, we examined both molecular phenotypes (transcript levels) and clinical phenotypes in segregating mouse populations. This allowed us to identify genetic loci controlling transcript levels and model co-expression networks. We will now extend this approach to human populations. In collaboration with Dr. Markku Laakso, we will examine DNA variation and transcript levels in fat biopsies from 1,000 individuals in a MetSyn study population that has been typed for the major MetSyn traits. We will then identify genes and co-expression networks related to clinical traits. Gene-by-diet interactions are critically important in MetSyn, but they are notoriously difficult to study directly in human populations. We will use our mouse diversity panel to examine differences in biologic networks and clinical traits in mice maintained on either a chow diet or a high fat diet for 8 weeks. This will allow us to map genes controlled dietary responsiveness of MetSyn traits and to medol to co-expression networks perturbed by these genes. The mouse and human data will be integrated and aspects relevant to this program validated in collaborative studies with other Projects and the Cores.

Public Health Relevance

MetSyn is a primary cause of cardiovascular disease and diabetes. Our integrative genetics approach provides a means of understanding the biologic networks that underlie the complex interactions in MetSyn traits. One particularly important interaction is that between genetics and diet, and this will be addressed using our mouse diversity panel. The results will be relevant to disease prevention, diagnosis, and treatment.

Agency
National Institute of Health (NIH)
Institute
National Heart, Lung, and Blood Institute (NHLBI)
Type
Research Program Projects (P01)
Project #
5P01HL028481-28
Application #
8378143
Study Section
Heart, Lung, and Blood Initial Review Group (HLBP)
Project Start
Project End
Budget Start
2012-07-01
Budget End
2013-06-30
Support Year
28
Fiscal Year
2012
Total Cost
$424,375
Indirect Cost
$145,380
Name
University of California Los Angeles
Department
Type
DUNS #
092530369
City
Los Angeles
State
CA
Country
United States
Zip Code
90095
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