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The Assessment of Diagnostic Tests. A Survey of Current Medical Research

Overview
Journal JAMA
Specialty General Medicine
Date 1984 Nov 2
PMID 6481928
Citations 36
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Abstract

To study current diagnostic test evaluation, 129 recent articles were assessed against several well-known methodological criteria. Only 68% employed a well-defined "gold standard." Test interpretation was clearly described in only 68% and was stated to be "blind" in only 40%. Approximately 20% used the terms sensitivity and specificity incorrectly. Predictive values were considered in only 31% and the influence of disease prevalence and study setting was considered in only 19%. Overall, 74% failed to demonstrate more than four of seven important characteristics and there was an increased proportion of high specificities reported in this group. Articles assessing new tests reported high sensitivities and specificities significantly more often than articles assessing existing tests. These results indicate a clear need for greater attention to accepted methodological standards on the part of researchers, reviewers, and editors.

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