4.5 Article

Risk prediction models for discrete ordinal outcomes: Calibration and the impact of the proportional odds assumption

期刊

STATISTICS IN MEDICINE
卷 41, 期 8, 页码 1334-1360

出版社

WILEY
DOI: 10.1002/sim.9281

关键词

calibration; discrete ordinal outcome; predictive performance; proportional odds; risk prediction; simulation

资金

  1. FondsWetenschappelijk Onderzoek [G0B4716N]
  2. Onderzoeksraad, KU Leuven [C24M/20/064]

向作者/读者索取更多资源

Calibration of risk prediction models is crucial, especially for ordinal outcomes, but research in this area is limited. This study compared calibration measures for risk models predicting discrete ordinal outcomes, and found that multinomial logistic regression generally provides more accurate risk estimates. The study also showed that the proportional odds assumption impacts calibration and overfitting.
Calibration is a vital aspect of the performance of risk prediction models, but research in the context of ordinal outcomes is scarce. This study compared calibration measures for risk models predicting a discrete ordinal outcome, and investigated the impact of the proportional odds assumption on calibration and overfitting. We studied the multinomial, cumulative, adjacent category, continuation ratio, and stereotype logit/logistic models. To assess calibration, we investigated calibration intercepts and slopes, calibration plots, and the estimated calibration index. Using large sample simulations, we studied the performance of models for risk estimation under various conditions, assuming that the true model has either a multinomial logistic form or a cumulative logit proportional odds form. Small sample simulations were used to compare the tendency for overfitting between models. As a case study, we developed models to diagnose the degree of coronary artery disease (five categories) in symptomatic patients. When the true model was multinomial logistic, proportional odds models often yielded poor risk estimates, with calibration slopes deviating considerably from unity even on large model development datasets. The stereotype logistic model improved the calibration slope, but still provided biased risk estimates for individual patients. When the true model had a cumulative logit proportional odds form, multinomial logistic regression provided biased risk estimates, although these biases were modest. Nonproportional odds models require more parameters to be estimated from the data, and hence suffered more from overfitting. Despite larger sample size requirements, we generally recommend multinomial logistic regression for risk prediction modeling of discrete ordinal outcomes.

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