A comprehensive evaluation of human exposure pathways at Superfund sites reveals that contaminants? functioning as Ahr agonists present a significant risk to surrounding residents and immunological effects are? one of the least studied toxciological end points. The primary objectives of this project are two-fold: (1)? dissect the gene expression cascade involved in suppression of B-cell activation and IgM secretion following? exposure to Ahr agonists; (2) combine information on the gene expression cascade with a comprehensive? survey of protein interactions and focused molecular experimentation to create an integrated, systems-level model of the role of Ahr in the B-cell? differentiation signaling network. We hypothesize that multiple nodes in the B-cell differentiation network? are regulated by the Ahr. By dissecting the interrelationships within the gene expression cascade together? with a comprehensive protein interaction map, we will be able to mechanistically model the dose-response? behavior for Ahr B-cell immunotoxicity. This hypothesis will be tested using a unique combination of? genomic and computational tools that dissect the transcriptional cascades following exposure to an Ahr? agonist and infer the corresponding structure of the cellular signaling network for computational modeling.? The specific aims of this proposal are: (1) identify Ahr-dependent alterations in the B-cell gene expression? cascade following activation with LPS and exposure to the prototype Ahr agonist TCDD; (2) characterize the? direct, cis-acting effects of Ahr activation on primary changes in gene expression in the B-cell differentiation? cascade; (3) delineate the interrelationships between primary gene expression events and secondary and? tertiary gene expression changes for Ahr-mediated alterations in B-cell differentiation; and (4) combine? information on the Ahr-regulated B-cell gene expression cascade with a comprehensive survey of protein? interactions and focused molecular experimentation to create an integrated, systems-level computational? model of the Ahr and B-cell differentiation signaling network. Through these specific aims, we will develop a? systems-level approach will provide a quantitative and mechanistic understanding of the cellular signaling? network involved in the suppression of B-cell differentiation by Ahr agonists. Specifically, genomic tools will? provide snapshots into transcriptional responses and functional relationships between genes in the B-cell? differentiation pathway, while computational modeling will be used to provide a quantitative biological? structure to the signaling network. The development of a systems approach is significant for the? environmental health community as a whole by providing a mechanism to systematically investigate the? cause-and-effect relationships contained within the lists of altered genes and the underlying logic of the? signaling network involved in producing the toxicological effect at environmentally relevant doses.?

Agency
National Institute of Health (NIH)
Institute
National Institute of Environmental Health Sciences (NIEHS)
Type
Hazardous Substances Basic Research Grants Program (NIEHS) (P42)
Project #
2P42ES004911-17
Application #
7064098
Study Section
Special Emphasis Panel (ZES1-SET-A (P9))
Project Start
2006-04-01
Project End
2011-03-31
Budget Start
2006-05-04
Budget End
2007-03-31
Support Year
17
Fiscal Year
2006
Total Cost
$312,693
Indirect Cost
Name
Michigan State University
Department
Type
DUNS #
193247145
City
East Lansing
State
MI
Country
United States
Zip Code
48824
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