## Abstract Association analysis provides a powerful tool for complex disease gene mapping. However, in the presence of genetic heterogeneity, the power for association analysis can be low since only a fraction of the collected families may carry a specific disease susceptibility allele. Orderedโsu
Ordered subset analysis in genetic linkage mapping of complex traits
โ Scribed by Elizabeth R. Hauser; Richard M. Watanabe; William L. Duren; Meredyth P. Bass; Carl D. Langefeld; Michael Boehnke
- Publisher
- John Wiley and Sons
- Year
- 2004
- Tongue
- English
- Weight
- 123 KB
- Volume
- 27
- Category
- Article
- ISSN
- 0741-0395
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โฆ Synopsis
Abstract
Etiologic heterogeneity is a fundamental feature of complex disease etiology; genetic linkage analysis methods to map genes for complex traits that acknowledge the presence of genetic heterogeneity are likely to have greater power to identify subtle changes in complex biologic systems. We investigate the use of traitโrelated covariates to examine evidence for linkage in the presence of heterogeneity. Orderedโsubset analysis (OSA) identifies subsets of families defined by the level of a traitโrelated covariate that provide maximal evidence for linkage, without requiring a priori specification of the subset. We propose that examining evidence for linkage in the subset directly may result in a more etiologically homogeneous sample. In turn, the reduced impact of heterogeneity will result in increased overall evidence for linkage to a specific region and a more distinct lod score peak. In addition, identification of a subset defined by a specific traitโrelated covariate showing increased evidence for linkage may help refine the list of candidate genes in a given region and suggest a useful sample in which to begin searching for traitโassociated polymorphisms. This method provides a means to begin to bridge the gap between initial identification of linkage and identification of the disease predisposing variant(s) within a region when mapping genes for complex diseases. We illustrate this method by analyzing data on breast cancer age of onset and chromosome 17q [Hall et al., 1990, Science 250:1684โ1689]. We evaluate OSA using simulation studies under a variety of genetic models. ยฉ 2004 WileyโLiss, Inc.
๐ SIMILAR VOLUMES
A two-locus segregation and linkage-analysis approach was used to characterize the genetic control of a complex trait (Ql) and to localize the genes that have detectable effects. The results suggested that a two-locus Mendelian model fit the data significantly better than a one-locus model. The link