A new framework to enhance the interpretation of external validation studies of clinical prediction models
University Medical Center Utrecht · Erasmus MC · +1 more institution
Abstract
It is widely acknowledged that the performance of diagnostic and prognostic prediction models should be assessed in external validation studies with independent data from "different but related" samples as compared with that of the development sample. We developed a framework of methodological steps and statistical methods for analyzing and enhancing the interpretation of results from external validation studies of prediction models. STUDY DESIGN AND SETTING: We propose to quantify the degree of relatedness between development and validation samples on a scale ranging from reproducibility to transportability by evaluating their corresponding case-mix differences. We subsequently assess the models' performance in the validation sample and interpret the performance in view of the case-mix differences. Finally, we may adjust the model to the validation setting.
We illustrate this three-step framework with a prediction model for diagnosing deep venous thrombosis using three validation samples with varying case mix. While one external validation sample merely assessed the model's reproducibility, two other samples rather assessed model transportability. The performance in all validation samples was adequate, and the model did not require extensive updating to correct for miscalibration or poor fit to the validation settings.
Citation impact
- FWCI
- 17.06
- Percentile
- 100%
- References
- 59
Authors
6Topics & keywords
- Computer science
- Predictive modelling
- Model validation
- Sample (material)
- Reproducibility
- Sample size determination
- Data mining
- Scale (ratio)