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Two-locus genome-wide linkage scan for prostate cancer susceptibility genes with an interaction effect
Authors:Bao-Li Chang  Ethan M. Lange  Latchezar Dimitrov  Christopher J. Valis  Elizabeth M. Gillanders  Leslie A. Lange  Kathleen E. Wiley  Sarah D. Isaacs  Fredrik Wiklund  Agnes Baffoe-Bonnie  Carl D Langefeld  S. Lilly Zheng  Mika P. Matikainen  Tarja Ikonen  Henna Fredriksson  Teuvo Tammela  Patrick C. Walsh  Joan E. Bailey-Wilson  Johanna Schleutker  Henrik Gronberg  Kathleen A. Cooney  William B. Isaacs  Edward Suh  Jeffrey M. Trent  Jianfeng Xu
Affiliation:Center for Human Genomics, Wake Forest University School of Medicine, Winston-Salem, NC, USA.
Abstract:Prostate cancer represents a significant worldwide public health burden. Epidemiological and genetic epidemiological studies have consistently provided data supporting the existence of inherited prostate cancer susceptibility genes. Segregation analyses of prostate cancer suggest that a multigene model may best explain familial clustering of this disease. Therefore, modeling gene–gene interactions in linkage analysis may improve the power to detect chromosomal regions harboring these disease susceptibility genes. In this study, we systematically screened for prostate cancer linkage by modeling two-locus gene–gene interactions for all possible pairs of loci across the genome in 426 prostate cancer families from Johns Hopkins Hospital, University of Michigan, University of Umeå, and University of Tampere. We found suggestive evidence for an epistatic interaction for six sets of loci (target chromosome-wide/reference marker-specific P≤0.0001). Evidence for these interactions was found in two independent subsets from within the 426 families. While the validity of these results requires confirmation from independent studies and the identification of the specific genes underlying this linkage evidence, our approach of systematically assessing gene–gene interactions across the entire genome represents a promising alternative approach for gene identification for prostate cancer.
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