4.6 Article

Contour plot assessment of existing meta-analyses confirms robust association of statin use and acute kidney injury risk

Journal

JOURNAL OF CLINICAL EPIDEMIOLOGY
Volume 68, Issue 10, Pages 1138-1143

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.jclinepi.2015.05.030

Keywords

Meta-analysis; Sensitivity analysis; Contour plot; Statins; Kidney injury; Evidence-based medicine; Funnel plot

Funding

  1. Canadian Network for Observational Drug Effect Studies (CNODES), a collaborating centre of the Drug Safety and Effectiveness Network (DSEN) - Canadian Institutes of Health Research [DSE-111845]
  2. CNODES
  3. National Scholar (Chercheur National) of the Fonds de Recherche du Quebec-Sante (FQR-S)
  4. FQR-S

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Objectives: Robustness of an existing meta-analysis can justify decisions on whether to conduct an additional study addressing the same research question. We illustrate the graphical assessment of the potential impact of an additional study on an existing meta-analysis using published data on statin use and the risk of acute kidney injury. Study Design and Setting: A previously proposed graphical augmentation approach is used to assess the sensitivity of the current test and heterogeneity statistics extracted from existing meta-analysis data. In addition, we extended the graphical augmentation approach to assess potential changes in the pooled effect estimate after updating a current meta-analysis and applied the three graphidal contour definitions to data from meta-analyses on statin use and acute kidney injury risk. Results: In the considered example data, the pooled effect estimates and heterogeneity indices demonstrated to be considerably robust to the addition of a future study. Supportingly, for some previously inconclusive meta-analyses, a study update might yield statistically significant kidney injury risk increase associated with higher statin exposure. Conclusions: The illustrated contour approach should become a standard tool for the assessment of the robustness of meta-analyses. It can guide decisions on whether to conduct additional studies addressing a relevant research question. (C) 2015 Elsevier Inc. All rights reserved.

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