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Wiley InterScience | ||
![]() Journal of the Royal Statistical Society: Series A (Statistics in Society)Volume 168 Issue 2, Pages 267 - 306 Published Online: 3 Mar 2005 © 2009 The Royal Statistical Society and Blackwell Publishing Ltd Published on behalf of the Royal Statistical Society
Abstract | References | Full Text: HTML, PDF (Size: 373K) | Related Articles | Citation Tracking Multiple-bias modelling for analysis of observational data Copyright 2005 Royal Statistical Society KEYWORDS Bayesian statistics • Confidence profile method • Confounding • Epidemiologic methods • Leukaemia • Magnetic fields • Meta-analysis • Meta-statistics • Monte Carlo methods • Observational data • Odds ratio • Relative risk • Risk analysis • Risk assessment • Sensitivity analysis ABSTRACTSummary. Conventional analytic results do not reflect any source of uncertainty other than random error, and as a result readers must rely on informal judgments regarding the effect of possible biases. When standard errors are small these judgments often fail to capture sources of uncertainty and their interactions adequately. Multiple-bias models provide alternatives that allow one systematically to integrate major sources of uncertainty, and thus to provide better input to research planning and policy analysis. Typically, the bias parameters in the model are not identified by the analysis data and so the results depend completely on priors for those parameters. A Bayesian analysis is then natural, but several alternatives based on sensitivity analysis have appeared in the risk assessment and epidemiologic literature. Under some circumstances these methods approximate a Bayesian analysis and can be modified to do so even better. These points are illustrated with a pooled analysis of case–control studies of residential magnetic field exposure and childhood leukaemia, which highlights the diminishing value of conventional studies conducted after the early 1990s. It is argued that multiple-bias modelling should become part of the core training of anyone who will be entrusted with the analysis of observational data, and should become standard procedure when random error is not the only important source of uncertainty (as in meta-analysis and pooled analysis). Read before The Royal Statistical Society on Wednesday, September 29th, 2004, the President, Professor A. P. Grieve, in the Chair |