This is the final submission of the collaborative R01 MH094421 Psychiatric GWAS Consortium: Genomic Follow-Up Next-Gen Sequencing &Genotyping. The overall goal of this application is ambitious:
we aim to generate a trustworthy, high-confidence """"""""maps"""""""" of the genetic architecture of centrally important psychiatric diseases. Such maps consist of systematic and comprehensive evaluation of the allelic spectrum for these disorders including rare exonic, common SNP, and copy number variation. The feasibility of our aims is supported by the track record of the first iteration of the Psychiatric GWAS Consortium (""""""""PGC1"""""""") where we united nearly all major groups in the field into a harmonious and functional entity and completed our initial aims to a high scientific standard. Psychiatric diseases are compelling targets for intensive research: they are mostly idiopathic, first-rank public health problems, and cause enormous morbidity, mortality, and personal/societal cost. Consistent with the NIH mission, our goal is to elucidate fundamental knowledge of these diseases. In this """"""""PGC2"""""""" application, we propose to capitalize on prior NIH investments and on the success of PGC1 for the next logical set of aims. The PGC2 aims are """"""""large-scale"""""""" (largest sample sizes ever in the field) and """"""""comprehensive"""""""" (via the careful application of multiple genomic-scale technologies). Our focus is comprehensive in other senses - the PGC encompasses nearly the entire field, and we aim to elucidate the allelic spectrum of these disorders by integrating empirical data for all readily measurable types of genetic variation of etiological relevance (common SNP, rare exonic, and rare and common copy number variation - what we term the """"""""map""""""""). There are three analytic aims - systematically to assess copy number variation, to create a pipeline for the analysis of exome data (and eventually whole-genome data), and to investigate genetic associations that span traditional disease boundaries. Finally, we propose to develop the """"""""PsychChip"""""""" a custom 20,000 probe array targeting common SNP, exonic, and CNVs that would then be used to genotype 115,082 subjects. The PGC2 impact is potentially very large - a fundamental understanding of the genetics of these diseases would be a major milestone in psychiatry and in biomedicine.

Public Health Relevance

Psychiatric disorders cause enormous human suffering and cost to society. Our goal is rapidly to learn more about the genetics of some of these disorders. We propose to do this via the largest consortium ever constructed in the field, and by the use of several genetic technologies.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project--Cooperative Agreements (U01)
Project #
5U01MH094421-03
Application #
8651541
Study Section
Special Emphasis Panel (ZRG1-PSE-M (03))
Program Officer
Lehner, Thomas
Project Start
2012-05-10
Project End
2016-03-31
Budget Start
2014-05-20
Budget End
2015-03-31
Support Year
3
Fiscal Year
2014
Total Cost
$482,383
Indirect Cost
$135,183
Name
University of North Carolina Chapel Hill
Department
Genetics
Type
Schools of Medicine
DUNS #
608195277
City
Chapel Hill
State
NC
Country
United States
Zip Code
27599
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