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      Matched case-control studies: a review of reported statistical methodology

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          Abstract

          Background

          Case-control studies are a common and efficient means of studying rare diseases or illnesses with long latency periods. Matching of cases and controls is frequently employed to control the effects of known potential confounding variables. The analysis of matched data requires specific statistical methods.

          Methods

          The objective of this study was to determine the proportion of published, peer-reviewed matched case-control studies that used statistical methods appropriate for matched data. Using a comprehensive set of search criteria we identified 37 matched case-control studies for detailed analysis.

          Results

          Among these 37 articles, only 16 studies were analyzed with proper statistical techniques (43%). Studies that were properly analyzed were more likely to have included case patients with cancer and cardiovascular disease compared to those that did not use proper statistics (10/16 or 63%, versus 5/21 or 24%, P = 0.02). They were also more likely to have matched multiple controls for each case (14/16 or 88%, versus 13/21 or 62%, P = 0.08). In addition, studies with properly analyzed data were more likely to have been published in a journal with an impact factor listed in the top 100 according to the Journal Citation Reports index (12/16 or 69%, versus 1/21 or 5%, P ≤ 0.0001).

          Conclusion

          The findings of this study raise concern that the majority of matched case-control studies report results that are derived from improper statistical analyses. This may lead to errors in estimating the relationship between a disease and exposure, as well as the incorrect adaptation of emerging medical literature.

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          Author and article information

          Journal
          Clin Epidemiol
          Clin Epidemiol
          Clinical Epidemiology
          Clinical Epidemiology
          Dove Medical Press
          1179-1349
          2012
          27 April 2012
          : 4
          : 99-110
          Affiliations
          [1 ]Department of Critical Care Medicine, Peter Lougheed Centre, Calgary
          [2 ]Department of Community Health Sciences, University of Calgary, Calgary, Alberta, Canada
          Author notes
          Correspondence: Daniel J Niven, Critical Care Medicine, Peter Lougheed Centre, 3500 26th Ave NE, Calgary, Alberta, Canada, T1Y 6J4, Tel +1 403 943 5791, Fax +1 403 291 1491, Email daniel.niven@ 123456albertahealthservices.ca
          Article
          clep-4-099
          10.2147/CLEP.S30816
          3346204
          22570570
          82902067-9e3c-4347-b0b6-34b004cc05bb
          © 2012 Niven et al, publisher and licensee Dove Medical Press Ltd.

          This is an Open Access article which permits unrestricted noncommercial use, provided the original work is properly cited.

          History
          Categories
          Original Research

          Public health
          case-control,dependent data,statistics,matched
          Public health
          case-control, dependent data, statistics, matched

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