Generalizability of Cardiovascular Disease Clinical Prediction Models: 158 Independent External Validations of 104 Unique Models

BACKGROUND: While clinical prediction models (CPMs) are used increasingly commonly to guide patient care, the performance and clinical utility of these CPMs in new patient cohorts is poorly understood. METHODS: We performed 158 external validations of 104 unique CPMs across 3 domains of cardiovascul...

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Veröffentlicht in:CIRCULATION-CARDIOVASCULAR QUALITY AND OUTCOMES 2022-04, Vol.15 (4), p.248-260
Hauptverfasser: Gulati, Gaurav, Upshaw, Jenica, Wessler, Benjamin S, Brazil, Riley J, Nelson, Jason, van Klaveren, David, Lundquist, Christine M, Park, Jinny G, McGinnes, Hannah, Steyerberg, Ewout W, Van Calster, Ben, Kent, David M
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Sprache:eng
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Zusammenfassung:BACKGROUND: While clinical prediction models (CPMs) are used increasingly commonly to guide patient care, the performance and clinical utility of these CPMs in new patient cohorts is poorly understood. METHODS: We performed 158 external validations of 104 unique CPMs across 3 domains of cardiovascular disease (primary prevention, acute coronary syndrome, and heart failure). Validations were performed in publicly available clinical trial cohorts and model performance was assessed using measures of discrimination, calibration, and net benefit. To explore potential reasons for poor model performance, CPM-clinical trial cohort pairs were stratified based on relatedness, a domain-specific set of characteristics to qualitatively grade the similarity of derivation and validation patient populations. We also examined the model-based C-statistic to assess whether changes in discrimination were because of differences in case-mix between the derivation and validation samples. The impact of model updating on model performance was also assessed. RESULTS: Discrimination decreased significantly between model derivation (0.76 [interquartile range 0.73-0.78]) and validation (0.64 [interquartile range 0.60-0.67], P
ISSN:1941-7705