Talking about effect sizes with your statistician
This lecture focuses on some commonly used effect size measures: how they are computed, what they mean, and why they are important in clinical research. A PDF of the slides presented can be found here: https://goo.gl/yju5cb Part of the "Biostatistics in Action: Tips for Clinical Researchers" lecture series that is sponsored by the Irving Institute for Clinical and Translational Research - Biostatistics, Epidemiology and Research Design resource, which is supported in part by an NIH Clinical and Translational Science Award (CTSA) through its Center for Advancing Translational Sciences (Grant No, UL1TR001873). The speaker, Adam Ciarleglio, PhD is an Assistant Professor of Clinical Biostatistics (in Psychiatry) in the Department of Biostatistics at the Mailman School of Public Health. Sponsored by: The Irving Institute for Clinical and Translational Research: http://irvinginstitute.columbia.edu/ In affiliation with: The Department of Biostatistics at the Mailman School of Public Health: https://www.mailman.columbia.edu/beco...

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