Power and false-positive rates for the restricted partition method (RPM) in a large candidate gene data set

  • Culverhouse R
  • Jin W
  • Jin C
  • et al.
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Abstract

Many phenotypes of public health importance (e.g., diabetes, coronary artery disease, major depression, obesity, and addictions to alcohol and nicotine) involve complex pathways of action. Interactions between genetic variants or between genetic variants and environmental factors likely play important roles in the functioning of these pathways. Unfortunately, complex interacting systems are likely to have important interacting factors that may not readily reveal themselves to univariate analyses. Instead, detecting the role of some of these factors may require analyses that are sensitive to interaction effects.In this study, we evaluate the sensitivity and specificity of the restricted partition method (RPM) to detect signals related to coronary artery disease in the Genetic Analysis Workshop 16 Problem 3 data using the 50,000 k candidate gene single-nucleotide polymorphism set. Power and false-positive rates were evaluated using the first 100 replicate datasets. This included an exploration of the utility of using of all genotyped family members compared with selecting one member per family.

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Culverhouse, R., Jin, W., Jin, C. H., Hinrichs, A. L., & Suarez, B. K. (2009). Power and false-positive rates for the restricted partition method (RPM) in a large candidate gene data set. BMC Proceedings, 3(S7). https://doi.org/10.1186/1753-6561-3-s7-s74

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