| Literature DB >> 28392720 |
Abstract
Hypothesis testing is a methodological paradigm widely popularized outside the field of pure statistics, and nowadays more or less familiar to the largest part of biomedical researchers. Conversely, the equivalence testing is still somehow obscure and misunderstood, although it represents a conceptual mainstay for some biomedical fields like pharmacology. In order to appreciate the way it could suit laboratory medicine, it is necessary to understand the philosophy behind it, and in turn how it stemmed and differentiated along the history of classical hypothesis testing. Here we present the framework of equivalence testing, the various tests used to assess equivalence and discuss their applicability to laboratory medicine research and issues.Entities:
Keywords: biostatistics; methodological studies; statistical data analysis
Mesh:
Year: 2017 PMID: 28392720 PMCID: PMC5382845 DOI: 10.11613/BM.2017.001
Source DB: PubMed Journal: Biochem Med (Zagreb) ISSN: 1330-0962 Impact factor: 2.313
Hypothesis testing and decision-making
| TRUTH | correct decision | Type I error (α) | |
| Type II error (β) | correct decision | ||
| DIFFERENCE TESTING | H0: there is no difference | ||
| H1: there is a difference | |||
| EQUIVALENCE TESTING | H0: there is a certain difference | ||
| H1: there is no certain difference | |||
| The hypothesis testing framework is shown by the decision-making standpoint. By carefully reading the statements in the lower part of the table, it is possible to understand why in difference testing the sensitivity corresponds to 1 - α (showing a difference when there is one) and not to 1 - β. The term “equivalence” means “within a certain difference”, so the statement of “no certain difference” is indeed synonym of “equivalence”. | |||
Figure 1Rejection region (solid black area under the curve) for different procedures to test equivalence. (A) The Anderson and Hauck’s two-sided test - each area accounts for α / 2, so that the confidence is 1 – α. (B) The Schuirmann’s two one-sided test - each area accounts for α, so that the confidence is 1 - 2α.
Figure 2The confidence interval approach (Westlake’s method) for TOST-P. The diamond represents the average difference (d = 1.1), while the whiskers are the 90% CI (0.18; 2.20); the grey shaded area is the interval of equivalence with the dashed lines marking its boundaries (-3.12; 3.12).