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Evaluation of regression calibration and SIMEX methods in logistic regression when one of the predictors is subject to additive measurement error.

BACKGROUND: This paper presents an evaluation of two methods of measurement error adjustment based on recently-developed computer routines (RCAL and SIMEX) under logistic regression models, when one of the two predictors is subject to additive measurement error or Berkson error. METHODS: Computer simulations were used to generate data under a variety of conditions and the methods compared in terms of bias, mean squared error and confidence interval coverage of the regression estimates. RESULTS: Based on our investigations, RCAL was shown to perform very well in all situations considered, except in the presence of Berkson error when the predictor variables were highly correlated. CONCLUSIONS: Since measurement error can lead to misleading inference, it is important to adjust for measurement error in the application of logistic regression. Until better measurement error adjustment methods become available, we recommend RCAL on the basis of our simulation results.

Authors

  • Fung, K Y, Fung KY, Department of Mathematics and Statistics, University of Windsor, Ontario, Canada.

  • Krewski, D, Krewski D,

YEAR OF PUBLICATION: 1999
SOURCE: J Epidemiol Biostat. 1999;4(2):65-74.
JOURNAL TITLE ABBREVIATION: J Epidemiol Biostat
JOURNAL TITLE: Journal of epidemiology and biostatistics
ISSN: 1359-5229 (Print) 1359-5229 (Linking)
VOLUME: 4
ISSUE: 2
PAGES: 65-74
PLACE OF PUBLICATION: England
ABSTRACT:
BACKGROUND: This paper presents an evaluation of two methods of measurement error adjustment based on recently-developed computer routines (RCAL and SIMEX) under logistic regression models, when one of the two predictors is subject to additive measurement error or Berkson error. METHODS: Computer simulations were used to generate data under a variety of conditions and the methods compared in terms of bias, mean squared error and confidence interval coverage of the regression estimates. RESULTS: Based on our investigations, RCAL was shown to perform very well in all situations considered, except in the presence of Berkson error when the predictor variables were highly correlated. CONCLUSIONS: Since measurement error can lead to misleading inference, it is important to adjust for measurement error in the application of logistic regression. Until better measurement error adjustment methods become available, we recommend RCAL on the basis of our simulation results.
LANGUAGE: eng
DATE OF PUBLICATION: 1999
DATE COMPLETED: 20000113
DATE REVISED: 20171116
MESH DATE: 2000/01/05 00:01
EDAT: 2000/01/05 00:00
STATUS: MEDLINE
PUBLICATION STATUS: ppublish
OWNER: NLM

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Daniel Krewski

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Dr. Daniel Krewski is Chief Risk Scientist and co-founder of Risk Sciences International (RSI), a firm established in 2006 to bring evidence-based, multidisciplinary expertise to the challenge of understanding, managing, and communicating risk. As RSI’s inaugural CEO and long-time scientific...
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