Predicting survival using disease history: a model combining relative survival and frailty

Information on disease history and comorbidity of patients can often be of great value to predict survival, for example in cancer research. In this paper a model is presented that accommodates such information by combining relative survival and frailty. Relative survival is used to model the excess...

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Published inStatistica Neerlandica Vol. 58; no. 1; pp. 21 - 34
Main Authors Goeman, J. J., Le Cessie, S., Baatenburg de Jong, R. J., Van De Geer, S. A.
Format Journal Article
LanguageEnglish
Published Oxford, UK Blackwell Publishing 01.02.2004
Netherlands Society for Statistics and Operations Research
Blackwell Publishing Ltd
SeriesStatistica Neerlandica
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Summary:Information on disease history and comorbidity of patients can often be of great value to predict survival, for example in cancer research. In this paper a model is presented that accommodates such information by combining relative survival and frailty. Relative survival is used to model the excess risk of dying from recent concurrent diseases. Individual frailty allows estimation of a ‘selection effect’, which occurs if patients who have survived much hazard in the past are tougher and therefore tend to live longer than those who have survived less. Results are shown to be independent of the chosen family of frailty distributions if heterogeneity is small and to lead to a simple proportional excess hazards model. The model is applied to data from the Leiden University Medical Center on patients with head/neck tumors using information on previous tumors.
Bibliography:ark:/67375/WNG-55069LDB-Q
ArticleID:STAN244
istex:E77CE6C81B4B380C4D51469A944F41876BA48D38
ISSN:0039-0402
1467-9574
DOI:10.1111/j.1467-9574.2004.00244.x