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Activity Number:
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469
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Type:
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Contributed
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Date/Time:
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Wednesday, August 1, 2007 : 2:00 PM to 3:50 PM
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Sponsor:
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Biometrics Section
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| Abstract - #308348 |
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Title:
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Martingale Residuals for Nested Case-Control Data
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Author(s):
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Ornulf Borgan*+ and Bryan Langholz
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Companies:
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University of Oslo and University of Southern California
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Address:
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Department of Mathematics, Oslo, N-0316, Norway
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Keywords:
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Cohort sampling ; Counter-matching ; Counting processes ; Cox's regression model ; Regression diagnostic plots ; Relative risk regression
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Abstract:
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Standard use of Cox's regression model and other relative risk regression models for censored survival data requires collection of covariate information on all individuals under study even when only a small fraction of them die or get diseased. For such situations nested case-control sampling offers a useful alternative. For cohort data, martingale residuals provide a useful tool for assessing the fit of a model. We introduce a natural extension of the cohort methods to nested case-control data, and show that plots of martingale residual processes provide a useful tool for checking model-fit. A formal goodness-of-fit test to go along with the plots is also presented. The methods are illustrated using data on lung cancer deaths in a cohort of uranium miners.
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