Screening for prostate cancer using multivariate mixed-effects models

Using several variables known to be related to prostate cancer, a multivariate classification method is developed to predict the onset of clinical prostate cancer. A multivariate mixed-effects model is used to describe longitudinal changes in prostate-specific antigen (PSA), a free testosterone inde...

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Bibliographic Details
Published inJournal of applied statistics Vol. 39; no. 6; pp. 1151 - 1175
Main Authors Morrell, Christopher H., Brant, Larry J., Sheng, Shan, Metter, E. Jeffrey
Format Journal Article
LanguageEnglish
Published England Taylor & Francis 01.06.2012
Taylor and Francis Journals
Taylor & Francis Ltd
SeriesJournal of Applied Statistics
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ISSN0266-4763
1360-0532
DOI10.1080/02664763.2011.644523

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Summary:Using several variables known to be related to prostate cancer, a multivariate classification method is developed to predict the onset of clinical prostate cancer. A multivariate mixed-effects model is used to describe longitudinal changes in prostate-specific antigen (PSA), a free testosterone index (FTI), and body mass index (BMI) before any clinical evidence of prostate cancer. The patterns of change in these three variables are allowed to vary depending on whether the subject develops prostate cancer or not and the severity of the prostate cancer at diagnosis. An application of Bayes' theorem provides posterior probabilities that we use to predict whether an individual will develop prostate cancer and, if so, whether it is a high-risk or a low-risk cancer. The classification rule is applied sequentially one multivariate observation at a time until the subject is classified as a cancer case or until the last observation has been used. We perform the analyses using each of the three variables individually, combined together in pairs, and all three variables together in one analysis. We compare the classification results among the various analyses and a simulation study demonstrates how the sensitivity of prediction changes with respect to the number and type of variables used in the prediction process.
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ISSN:0266-4763
1360-0532
DOI:10.1080/02664763.2011.644523