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X-WR-CALNAME;VALUE=TEXT:Qingyuan Zhao: Job Talk
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SUMMARY:Qingyuan Zhao: Job Talk
DESCRIPTION:<p>	<strong>Mendelian randomization: A comprehensive statistical approach and applications to preventing heart disease</strong></p><p>	Mendelian randomization (MR) can give unbiased estimate of a confounded causal effect by using genetic variants as instrumental variables. The summary-data MR design is rapidly gaining popularity in practice due to the increasing availability of large-scale genome-wide association studies. As we are entering the "MR of every risk factor on every disease outcome" era, existing statistical methods still have several major limitations and lack theoretical grounding.</p><p>	In this talk I will present a comprehensive statistical approach to overcome the challenges. Motivated by exploratory data analysis, the summary-data MR problem will be formulated as a linear errors-in-variables regression with over-dispersion and occasional outliers. This means that none of the genetic instruments is valid in the strict sense. I will develop a class of statistical estimators with increased robustness to invalid instruments and maximal efficiency using weak instruments across the entire genome. I will further demonstrate visualization tools to detect meaningful effect heterogeneity. The new methods will be used to re-analyze several cardiometabolic diseases and risk factors, yielding new insights into the role of HDL particles (the "good" cholesterol) in coronary artery disease.</p><p>	This talk is based on joint work with Jingshu Wang, Nancy Zhang, Dylan Small (Universityof Pennsylvania); Jack Bowden, Gibran Hemani, George Davey Smith (University ofBristol); Yang Chen (University of Michigan).</p>
LOCATION:Science Center 300H
STATUS:CONFIRMED
DTSTART:20190211T170000Z
DTEND:20190211T180000Z
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