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Methods for detecting, quantifying, and adjusting for dissemination bias in meta-analysis are described. | LitMetric

Methods for detecting, quantifying, and adjusting for dissemination bias in meta-analysis are described.

J Clin Epidemiol

Department of Neonatology, University Hospital Zurich, University of Zurich, Frauenklinikstrasse 10, 8091 Zurich, Switzerland. Electronic address:

Published: December 2016

AI Article Synopsis

  • The objective of the review was to explore various methods for detecting and adjusting for the nonpublication of studies (dissemination bias) in meta-analyses and to check their application on empirical datasets.
  • The study involved a systematic search of reputable databases, leading to the inclusion of 150 relevant articles that described a wide range of methods, from graphical techniques like funnel plots to advanced statistical methods.
  • Despite identifying many approaches, the review concludes that most methods lack validation with real unpublished studies, making it challenging to recommend a specific method and highlighting the need for comprehensive literature searches and actions to improve access to research findings.

Article Abstract

Objective: To systematically review methodological articles which focus on nonpublication of studies and to describe methods of detecting and/or quantifying and/or adjusting for dissemination in meta-analyses. To evaluate whether the methods have been applied to an empirical data set for which one can be reasonably confident that all studies conducted have been included.

Study Design And Setting: We systematically searched Medline, the Cochrane Library, and Web of Science, for methodological articles that describe at least one method of detecting and/or quantifying and/or adjusting for dissemination bias in meta-analyses.

Results: The literature search retrieved 2,224 records, of which we finally included 150 full-text articles. A great variety of methods to detect, quantify, or adjust for dissemination bias were described. Methods included graphical methods mainly based on funnel plot approaches, statistical methods, such as regression tests, selection models, sensitivity analyses, and a great number of more recent statistical approaches. Only few methods have been validated in empirical evaluations using unpublished studies obtained from regulators (Food and Drug Administration, European Medicines Agency).

Conclusion: We present an overview of existing methods to detect, quantify, or adjust for dissemination bias. It remains difficult to advise which method should be used as they are all limited and their validity has rarely been assessed. Therefore, a thorough literature search remains crucial in systematic reviews, and further steps to increase the availability of all research results need to be taken.

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Source
http://dx.doi.org/10.1016/j.jclinepi.2016.04.015DOI Listing

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