-
clinical trials in patients with cancer; to identify and validate predictive biomarkers of clinical outcomes in cancer; and perform meta- analyses using the Bayesian framework. The projects will lead to both
-
patients with cancer; to identify and validate predictive biomarkers of clinical outcomes in cancer; and perform meta- analyses using the Bayesian framework. The projects will lead to both collaborative and
-
DESCRIPTION Duke University and North Carolina State University (NC State) invite applications for a full-time Postdoc Associate to conduct research on causal inference and analytic methods for data integration
-
(NC State) invite applications for a full-time Postdoc Associate to conduct research on causal inference and analytic methods for data integration, with a focus on innovative statistical methods
-
., https://tinyurl.com/yy8xwtoq , https://tinyurl.com/bhkr2mm5 , https://tinyurl.com/2f99j7df , and https://tinyurl.com/ysxhmujv The overall goal is to: (1) develop inference and dynamic prediction
-
epidemiology methods relevant to cancer and population health, especially for secondary data analysis; Develop advanced statistical methodology, causal inferences in observational data, quasi- experimental
-
tenure-track faculty members, 1250 undergraduate students, 1400 master’s students, and 600 PhD students. Housed within a university renowned for its programs in the liberal arts, medicine, business and law
-
strong track record of publications by the trainees and the trainees of the Mazurowski lab have found strong positions after completing their training in the lab including faculty positions at leading
-
. Preferred: Experience with in vitro and in vivo electrophysiology, imaging, mouse behavioral assays, and histological analysis. Computational skills are a plus. Why Join the Yang Lab? A proven track record of
-
, non-coding genome, genetic variants and functional genomics, is a plus. Excellent communication skills including writing, publishing, and presenting research; proven track record of publishing in peer