A study of R2 measure under the accelerated failure time models |
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Authors: | Priscilla H. Chan Christina D. Chambers |
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Affiliation: | 1. Department of Pediatrics, University of California, San Diego, San Diego, US;2. Department of Family and Preventative Medicine, University of California, San Diego, La Jolla, US |
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Abstract: | For right-censored data, the accelerated failure time (AFT) model is an alternative to the commonly used proportional hazards regression model. It is a linear model for the (log-transformed) outcome of interest, and is particularly useful for censored outcomes that are not time-to-event, such as laboratory measurements. We provide a general and easily computable definition of the R2 measure of explained variation under the AFT model for right-censored data. We study its behavior under different censoring scenarios and under different error distributions; in particular, we also study its robustness when the parametric error distribution is misspecified. Based on Monte Carlo investigation results, we recommend the log-normal distribution as a robust error distribution to be used in practice for the parametric AFT model, when the R2 measure is of interest. We apply our methodology to an alcohol consumption during pregnancy data set from Ukraine. |
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Keywords: | Censoring type Error distribution Explained variation Log-normal distribution Semiparametric AFT model Transformation models |
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