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.
Department of Development and Regeneration, KU Leuven, University of Leuven, Herestraat 49 Box 7003, 3000, Leuven, Belgium, ben.vancalster@med.kuleuven.be.
%0 Journal Article
%1 Calster2012
%A Calster, Ben Van
%A Vergouwe, Yvonne
%A Looman, Caspar W N
%A Belle, Vanya Van
%A Timmerman, Dirk
%A Steyerberg, Ewout W
%D 2012
%J European journal of epidemiology
%K DataInterpretation DiscriminantAnalysis Female Humans LogisticModels Male Models OvarianNeoplasms OvarianNeoplasms:diagnosis OvarianNeoplasms:epidemiology Prevalence Prognosis ROCCurve RiskAssessment Statistical TesticularNeoplasms TesticularNeoplasms:diagnosis TesticularNeoplasms:epidemiology
%N 10
%P 761-70
%R 10.1007/s10654-012-9733-3
%T Assessing the discriminative ability of risk models for more than two outcome categories.
%U http://www.ncbi.nlm.nih.gov/pubmed/23054032
%V 27
%X 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.
%@ 1573-7284; 0393-2990
@article{Calster2012,
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.},
added-at = {2023-02-03T11:44:35.000+0100},
author = {Calster, Ben Van and Vergouwe, Yvonne and Looman, Caspar W N and Belle, Vanya Van and Timmerman, Dirk and Steyerberg, Ewout W},
biburl = {https://www.bibsonomy.org/bibtex/24ad801716adde7a7e5475b8dabed4e42/jepcastel},
city = {Department of Development and Regeneration, KU Leuven, University of Leuven, Herestraat 49 Box 7003, 3000, Leuven, Belgium, ben.vancalster@med.kuleuven.be.},
doi = {10.1007/s10654-012-9733-3},
interhash = {b99d4b954e24875b153049dae531efbf},
intrahash = {4ad801716adde7a7e5475b8dabed4e42},
isbn = {1573-7284; 0393-2990},
issn = {1573-7284},
journal = {European journal of epidemiology},
keywords = {DataInterpretation DiscriminantAnalysis Female Humans LogisticModels Male Models OvarianNeoplasms OvarianNeoplasms:diagnosis OvarianNeoplasms:epidemiology Prevalence Prognosis ROCCurve RiskAssessment Statistical TesticularNeoplasms TesticularNeoplasms:diagnosis TesticularNeoplasms:epidemiology},
month = {10},
note = {7087<br/>JID: 8508062; 2012/05/14 [received]; 2012/09/14 [accepted]; 2012/10/07 [aheadofprint]; ppublish;<br/>Models predictius; Avaluació de riscs},
number = 10,
pages = {761-70},
pmid = {23054032},
timestamp = {2023-02-03T11:44:35.000+0100},
title = {Assessing the discriminative ability of risk models for more than two outcome categories.},
url = {http://www.ncbi.nlm.nih.gov/pubmed/23054032},
volume = 27,
year = 2012
}