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Legend: Palais des congrès de Montréal = CC, Le Westin Montréal = W, Intercontinental Montréal = I
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Activity Details


393 Tue, 8/6/2013, 2:00 PM - 3:50 PM CC-512ab
Recent Developments for Disease Diagnosis, Risk Prediction, and Treatment Selection Using Biomarkers — Invited Papers
ENAR , Statistical Learning and Data Mining Section , Biometrics Section , Section on Statistics in Epidemiology , Scientific and Public Affairs Advisory Committee
Organizer(s): Huaihou Chen, New York University
Chair(s): Douglas Gunzler, Case Western Reserve University
2:05 PM Predictive Accuracy of Covariates for Event Times Donglin Zeng, The University of North Carolina ; Li Chen, University of Kentucky ; Danyu Lin, Univ of North Carolina
2:30 PM Locally Smoothed Statistical Learning for Age-Dependent Classification and Disease Risk Prediction — Huaihou Chen, New York University ; Tianle Chen, Columbia University ; Donglin Zeng, The University of North Carolina ; Yuanjia Wang, Columbia University
2:55 PM Latent Class Regression Model for Assessment of Diagnostic Tests in the Absence of a Gold Standard, with Accommodation for Covariate Information Zheyu Wang, University of Washington ; Xiao-Hua Andrew Zhou, University of Washington
3:20 PM Identifying Subpopulations with Differential Risk Benefit Profiles Tianxi Cai, Harvard University
3:45 PM Floor Discussion



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