Journal of Clinical Epidemiology
Volume 52, Issue 3 , Pages 229-235, March 1999

Increasing Physicians’ Awareness of the Impact of Statistics on Research Outcomes:

Comparative Power of the t-test and Wilcoxon Rank-Sum Test in Small Samples Applied Research

  • Patrick D Bridge

      Affiliations

    • Department of Family Medicine, Wayne State University School of Medicine, Detroit, MI USA
    • Corresponding Author InformationAddress for correspondence: Patrick D. Bridge, University Health Center, 4201 St. Antoine, Room 4J, Wayne State University, Detroit, MI 48201
  • ,
  • Shlomo S Sawilowsky

      Affiliations

    • Department of Theoretical and Behavioral Foundations, College of Education, Wayne State University, Detroit, MI USA

Accepted 6 November 1998.

Abstract 

To effectively evaluate medical literature, practicing physicians and medical researchers must understand the impact of statistical tests on research outcomes. Applying inefficient statistics not only increases the need for resources, but more importantly increases the probability of committing a Type I or Type II error. The t-test is one of the most prevalent tests used in the medical field and is the uniformally most powerful unbiased test (UMPU) under normal curve theory. But does it maintain its UMPU properties when assumptions of normality are violated? A Monte Carlo investigation evaluates the comparative power of the independent samples t-test and its nonparametric counterpart, the Wilcoxon Rank-Sum (WRS) test, to violations from population normality, using three commonly occurring distributions and small sample sizes. The t-test was more powerful under relatively symmetric distributions, although the magnitude of the differences was moderate. Under distributions with extreme skews, the WRS held large power advantages. When distributions consist of heavier tails or extreme skews, the WRS should be the test of choice. In turn, when population characteristics are unknown, the WRS is recommended, based on the magnitude of these power differences in extreme skews, and the modest variation in symmetric distributions.

Keywords: Research methods, t-test, Wilcoxon Rank-Sum test, nonparametric statistics, parametric statistics, power

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PII: S0895-4356(98)00168-1

Journal of Clinical Epidemiology
Volume 52, Issue 3 , Pages 229-235, March 1999