When genetic epidemiology meets psychiatry, the problems become immense. Genetic linkage analysis and segregation analysis in theory represent two powerful tools for identifying specific genes, detecting genetic heterogeneity, and predicting recurrence risk, but the problems in using these techniques in psychiatric disease have become more evident as investigators try to apply them. Several major psychiatric diseases show strong evidence that genes are involved in disease expression, but family data do not fit simple patterns of Mendelian inheritance. Genetic linkage analysis has failed to reproducibly identify a gene locus for any psychiatric disease. We confront new problems in the genetic analysis of psychiatric disease, including, among other things: heterogeneity of psychiatric disease and the limitations of current methodology in dealing with it; the effect of family sampling on genetic studies; the limited number of inheritance models used in genetic analysis; ambiguous phenotype definition; and the informativeness of families for linkage analysis. We will investigate problems in the mathematical foundation of current methods and in their application to psychiatric disease. Using both analytical approaches and computer simulation techniques, we will develop and test new methodologies in the genetic analysis of psychiatric disease. the results of our work will have a practical impact on real data collection and analysis.
We aim to apply the results of our work to common psychiatric diseases with genetic components, diseases such as schizophrenia, Alzheimer's disease, and panic disorder. Greater understanding of the genetic contributions to psychiatric disease will lead in turn to improved counseling, treatment, and, eventually, prevention. Specifically, we will investigate the following problems: (I) Two-locus and multilocus models are of increasing importance for a number of human diseases. Part I examines linkage analysis of two-locus models and will evaluate single-locus approximations for these analyses. (II) How families are selected (""""""""ascertained"""""""") for segregation analysis can profoundly affect the results of that analysis, yet how to correct for ascertainment remains a difficult, only partly solved problem. Part II develops a new nonparametric correction and considers three other critical ascertainment problems as well. (III) Complications arise when linkage analysis is performed on complex psychiatric diseases. Part III focuses on linkage strategies, including within-family heterogeneity, between-family heterogeneity, informativeness of different types of pedigrees, and the sensitivity of lod scores to changes in phenotypes. (IV) Finally, Part IV deals with reduced penetrance and affecteds-only methods of linkage analysis. Throughout, the work will both (a) determine the extent of problems, and (b) develop and test solutions to these problems. Solutions and their testing will require both theoretical tools and computer simulation.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH048858-03
Application #
2248409
Study Section
Epidemiologic and Services Research Review Committee (EPS)
Project Start
1992-05-01
Project End
1997-04-30
Budget Start
1994-05-01
Budget End
1995-04-30
Support Year
3
Fiscal Year
1994
Total Cost
Indirect Cost
Name
Columbia University (N.Y.)
Department
Psychiatry
Type
Schools of Medicine
DUNS #
064931884
City
New York
State
NY
Country
United States
Zip Code
10027
Lipner, Ettie M; Tomer, Yaron; Noble, Janelle A et al. (2015) Linkage Analysis of Genomic Regions Contributing to the Expression of Type 1 Diabetes Microvascular Complications and Interaction with HLA. J Diabetes Res 2015:694107
Corso, Barbara; Greenberg, David A (2014) Using linkage analysis to detect gene-gene interaction by stratifying family data on known disease, or disease-associated, alleles. PLoS One 9:e93398
Hodges, Laura M; Fyer, Abby J; Weissman, Myrna M et al. (2014) Evidence for linkage and association of GABRB3 and GABRA5 to panic disorder. Neuropsychopharmacology 39:2423-31
Helbig, Ingo; Hodge, Susan E; Ottman, Ruth (2013) Familial cosegregation of rare genetic variants with disease in complex disorders. Eur J Hum Genet 21:444-50
Tomer, Yaron; Hasham, Alia; Davies, Terry F et al. (2013) Fine mapping of loci linked to autoimmune thyroid disease identifies novel susceptibility genes. J Clin Endocrinol Metab 98:E144-52
Lipner, E M; Tomer, Y; Noble, J A et al. (2013) HLA class I and II alleles are associated with microvascular complications of type 1 diabetes. Hum Immunol 74:538-44
Hodge, Susan E; Subaran, Ryan L; Weissman, Myrna M et al. (2012) Designing case-control studies: decisions about the controls. Am J Psychiatry 169:785-9
Fyer, Abby J; Costa, Ramiro; Haghighi, Fatemeh et al. (2012) Linkage analysis of alternative anxiety phenotypes in multiply affected panic disorder families. Psychiatr Genet 22:123-9
Subaran, Ryan L; Talati, Ardesheer; Hamilton, Steven P et al. (2012) A survey of putative anxiety-associated genes in panic disorder patients with and without bladder symptoms. Psychiatr Genet 22:271-8
Shah, S H; Crosslin, D R; Haynes, C S et al. (2012) Branched-chain amino acid levels are associated with improvement in insulin resistance with weight loss. Diabetologia 55:321-30

Showing the most recent 10 out of 123 publications