Assessment of heterogeneity in an individual participant data meta-analysis of prediction models: An overview and illustration
Files
Publication date
2019-09-30
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
Abstract
Clinical prediction models aim to provide estimates of absolute risk for a diagnostic or prognostic endpoint. Such models may be derived from data from various studies in the context of a meta-analysis. We describe and propose approaches for assessing heterogeneity in predictor effects and predictions arising from models based on data from different sources. These methods are illustrated in a case study with patients suffering from traumatic brain injury, where we aim to predict 6-month mortality based on individual patient data using meta-analytic techniques (15 studies, n = 11 022 patients). The insights into various aspects of heterogeneity are important to develop better models and understand problems with the transportability of absolute risk predictions.
Keywords
heterogeneity, meta-analysis, prediction, regression modeling, Journal Article
Citation
Steyerberg, E W, Nieboer, D, Debray, T P A & van Houwelingen, H C 2019, 'Assessment of heterogeneity in an individual participant data meta-analysis of prediction models : An overview and illustration', Statistics in Medicine, vol. 38, no. 22, pp. 4290-4309. https://doi.org/10.1002/sim.8296