Publication | Open Access
Use and Misuse of the Receiver Operating Characteristic Curve in Risk Prediction
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Citations
25
References
2007
Year
Heart FailureEngineeringRisk Model ValidationPrognosisSafety ScienceRisk MetricC StatisticRisk ManagementBiostatisticsPublic HealthCardiologyStatisticsPrediction ModellingRisk PredictionHealth PolicyDisease Risk AssessmentPredictive AnalyticsRiskRisk FactorsEpidemiologyCardiovascular Disease Risk AssessmentCardiovascular DiseaseRisk Analysis (Business)
The c statistic, while popular for diagnostic tests, is inadequate for risk prediction because it ignores calibration and can undervalue risk factors that meaningfully reclassify patients. Risk factors that minimally affect the c statistic can still substantially improve patient reclassification, and overreliance on the c statistic risks discarding valuable predictors.
The c statistic, or area under the receiver operating characteristic (ROC) curve, achieved popularity in diagnostic testing, in which the test characteristics of sensitivity and specificity are relevant to discriminating diseased versus nondiseased patients. The c statistic, however, may not be optimal in assessing models that predict future risk or stratify individuals into risk categories. In this setting, calibration is as important to the accurate assessment of risk. For example, a biomarker with an odds ratio of 3 may have little effect on the c statistic, yet an increased level could shift estimated 10-year cardiovascular risk for an individual patient from 8% to 24%, which would lead to different treatment recommendations under current Adult Treatment Panel III guidelines. Accepted risk factors such as lipids, hypertension, and smoking have only marginal impact on the c statistic individually yet lead to more accurate reclassification of large proportions of patients into higher-risk or lower-risk categories. Perfectly calibrated models for complex disease can, in fact, only achieve values for the c statistic well below the theoretical maximum of 1. Use of the c statistic for model selection could thus naively eliminate established risk factors from cardiovascular risk prediction scores. As novel risk factors are discovered, sole reliance on the c statistic to evaluate their utility as risk predictors thus seems ill-advised.
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