CoM/NAC Research dissemination conference: Towards 2015 successes and challenges of health and HIV/AIDS research in the context of Millenium Development

CoM/NAC 研究成果传播会议:迈向2015年——千年发展目标背景下健康和艾滋病毒/艾滋病研究的成功与挑战

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Abstract

BACKGROUND: Given the increasing scale of rare variant association studies, we introduce a method for high-dimensional studies that integrates multiple sources of data as well as allows for multiple region-specific risk indices. METHODS: Our method builds upon the previous Bayesian risk index by integrating external biological variant-specific covariates to help guide the selection of associated variants and regions. Our extension also incorporates a second level of uncertainty as to which regions are associated with the outcome of interest. RESULTS: Using a set of study-based simulations, we show that our approach leads to an increase in power to detect true associations in comparison to several commonly used alternatives. Additionally, the method provides multi-level inference at the pathway, region and variant levels. CONCLUSION: To demonstrate the flexibility of the method to incorporate various types of information and the applicability to high-dimensional data, we apply our method to a single region within a candidate gene study of second primary breast cancer and to multiple regions within a candidate pathway study of colon cancer.

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