Abstract
For large numbers of marker loci in a genomic scan for disease loci, we propose a novel 2‐stage approach for linkage or association analysis. The two stages are (1) selection of a subset of markers that are ‘important’ for the trait studied, and (2) modelling interactions among markers and between markers and trait. Here we focus on stage 1 and develop a selection method based on a 2‐level nested bootstrap procedure. The method is applied to single nucleotide polymorphisms (SNPs) data in a cohort study of heart disease patients. Out of the 89 original SNPs the method selects 11 markers as being ‘important’. Conventional backward stepwise logistic regression on the 89 SNPs selects 7 markers, which are a subset of the 11 markers chosen by our method.
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CITATION STYLE
HOH, J., WILLE, A., ZEE, R., CHENG, S., REYNOLDS, R., LINDPAINTNER, K., & OTT, J. (2000). Selecting SNPs in two‐stage analysis of disease association data: a model‐free approach. Annals of Human Genetics, 64(5), 413–417. https://doi.org/10.1046/j.1469-1809.2000.6450413.x
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