Journal Club Series Episode 6 - Hypothesis Testing (e.g. Type 1 and Type II Errors, P-values)
Description
Title: Episode 6- Hypothesis Testing (e.g. Type 1 and Type II Errors, P-values)
Target Audience
This activity is directed to physicians who take care of hospitalized children, medical students, nurse practitioners, and physician assistants working in the emergency room, intensive care unit, or hospital wards.
Objectives:
Upon completion of this activity, participants should be able to:
-
1. Discuss the definition and relevance of p-values.
2. Discuss type 1 vs type ii errors.
3. Discuss statistical significance and what it means.
Course Directors:
Tony R. Tarchichi MD — Associate Professor, Department of Pediatrics, Children's Hospital of Pittsburgh of the University of Pittsburgh Medical Center (UPMC.) Paul C. Gaffney Division of Pediatric Hospital Medicine.
No relationships with industry relevant to the content of this educational activity have been disclosed.
Jenna Carlson Ph.D. - University of Pittsburgh- Assistant Professor of Human Genetics and Biostatistics in school of Public Health
No relationships with industry relevant to the content of this educational activity have been disclosed.
Conflict of Interest Disclosure:
No other planners, members of the planning committee, speakers, presenters, authors, content reviewers and/or anyone else in a position to control the content of this education activity have relevant financial relationships to disclose.
Accreditation Statement:
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