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Assessing the discriminative ability of risk models for more than two outcome categories.

Authors :
Van Calster B
Vergouwe Y
Looman CW
Van Belle V
Timmerman D
Steyerberg EW
Source :
European journal of epidemiology [Eur J Epidemiol] 2012 Oct; Vol. 27 (10), pp. 761-70. Date of Electronic Publication: 2012 Oct 07.
Publication Year :
2012

Abstract

The discriminative ability of risk models for dichotomous outcomes is often evaluated with the concordance index (c-index). However, many medical prediction problems are polytomous, meaning that more than two outcome categories need to be predicted. Unfortunately such problems are often dichotomized in prediction research. We present a perspective on the evaluation of discriminative ability of polytomous risk models, which may instigate researchers to consider polytomous prediction models more often. First, we suggest a "discrimination plot" as a tool to visualize the model's discriminative ability. Second, we discuss the use of one overall polytomous c-index versus a set of dichotomous measures to summarize the performance of the model. Third, we address several aspects to consider when constructing a polytomous c-index. These involve the assessment of concordance in pairs versus sets of patients, weighting by outcome prevalence, the value related to models with random performance, the reduction to the dichotomous c-index for dichotomous problems, and interpretation. We illustrate these issues on case studies dealing with ovarian cancer (four outcome categories) and testicular cancer (three categories). We recommend the use of a discrimination plot together with an overall c-index such as the Polytomous Discrimination Index. If the overall c-index suggests that the model has relevant discriminative ability, pairwise c-indexes for each pair of outcome categories are informative. For pairwise c-indexes we recommend the 'conditional-risk' method which is consistent with the analytical approach of the multinomial logistic regression used to develop polytomous risk models.

Details

Language :
English
ISSN :
1573-7284
Volume :
27
Issue :
10
Database :
MEDLINE
Journal :
European journal of epidemiology
Publication Type :
Academic Journal
Accession number :
23054032
Full Text :
https://doi.org/10.1007/s10654-012-9733-3