
A publication of the American Society for Bone and Mineral Research
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Abstract
Journal of Bone and Mineral Research, Journal of Bone and Mineral Research March 2005:20:365-376 (doi: 10.1359/JBMR.041129)
Nonreplication in Genetic Studies of Complex Diseases—Lessons Learned From Studies of Osteoporosis and Tentative Remedies Hui Shen, 1,2 Yongjun Liu, 2 Pengyuan Liu, 2 Robert R Recker, 2 Hong-Wen Deng1,2,3 1The Key Laboratory of Biomedical Information Engineering of Ministry of Education and Institute of Molecular Genetics, School of Life Science and Technology, Xi’an Jiaotong University, Xi’an, China; 2Osteoporosis Research Center, Creighton University Medical Center, Omaha, Nebraska, USA; 3Laboratory of Molecular and Statistical Genetics, College of Life Sciences, Hunan Normal University, ChangSha, Hunan, China. Address reprint requests to: Hong-Wen Deng, PhD Osteoporosis Research Center Creighton University Medical Center 601 N. 30th Street, Suite 6787 Omaha, NE 68131, USA E-mail: deng@creighton.edu Inconsistent results have accumulated in genetic studies of complex diseases/traits over the past decade. Using osteoporosis as an example, we address major potential factors for the nonreplication results and propose some potential remedies. Over the past decade, numerous linkage and association studies have been performed to search for genes predisposing to complex human diseases. However, relatively little success has been achieved, and inconsistent results have accumulated. We argue that those nonreplication results are not unexpected, given the complicated nature of complex diseases and a number of confounding factors. In this article, based on our experience in genetic studies of osteoporosis, we discuss major potential factors for the inconsistent results and propose some potential remedies. We believe that one of the main reasons for this lack of reproducibility is overinterpretation of nominally significant results from studies with insufficient statistical power. We indicate that the power of a study is not only influenced by the sample size, but also by genetic heterogeneity, the extent and degree of linkage disequilibrium (LD) between the markers tested and the causal variants, and the allele frequency differences between them. We also discuss the effects of other confounding factors, including population stratification, phenotype difference, genotype and phenotype quality control, multiple testing, and genuine biological differences. In addition, we note that with low statistical power, even a “replicated” finding is still likely to be a false positive. We believe that with rigorous control of study design and interpretation of different outcomes, inconsistency will be largely reduced, and the chances of successfully revealing genetic components of complex diseases will be greatly improved. Cited byJacqueline R Center and John A Eisman. (2008) Chapter 42. Genetics of Osteoporosis. Primer 7:1, 213-219Online publication date: 1-Jan-2008. Citation | Full Text | Printable PDF (100 KB) Greet Beyens, Anna Daroszewska, Fenna de Freitas, Erik Fransen, Filip Vanhoenacker, Leon Verbruggen, Hans-Georg Zmierczak, René Westhovens, Jan Van Offel, Stuart H Ralston, Jean-Pierre Devogelaer and Wim Van Hul. (2007) Identification of Sex-Specific Associations Between Polymorphisms of the Osteoprotegerin Gene, TNFRSF11B, and Paget’s Disease of Bone. Journal of Bone and Mineral Research 22:7, 1062-1071 Online publication date: 1-Jul-2007. Abstract | Full Text | Printable PDF (814 KB) Yong-Jun Liu, Hui Shen, Peng Xiao, Dong-Hai Xiong, Li-Hua Li, Robert R Recker and Hong-Wen Deng. (2006) Molecular Genetic Studies of Gene Identification for Osteoporosis: A 2004 Update. Journal of Bone and Mineral Research 21:10, 1511-1535 Online publication date: 1-Oct-2006. Abstract | Full Text | Printable PDF (690 KB) | Supplementary material Dong-Hai Xiong, Hui Shen, Peng Xiao, Yan-Fang Guo, Ji-Rong Long, Lan-Juan Zhao, Yao-Zhong Liu, Hong-Yi Deng, Jin-Long Li, Robert R Recker and Hong-Wen Deng. (2006) Genome-Wide Scan Identified QTLs Underlying Femoral Neck Cross-Sectional Geometry That Are Novel Studied Risk Factors of Osteoporosis. Journal of Bone and Mineral Research 21:3, 424-437 Online publication date: 1-Mar-2006. Abstract | Full Text | Printable PDF (307 KB) |
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