Evaluating individualized treatment effect predictions: A model-based perspective on discrimination and calibration assessment.

Hoogland, J; Efthimiou, O; Nguyen, T L; Debray, T P A (2024). Evaluating individualized treatment effect predictions: A model-based perspective on discrimination and calibration assessment. (In Press). Statistics in medicine Wiley-Blackwell 10.1002/sim.10186

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In recent years, there has been a growing interest in the prediction of individualized treatment effects. While there is a rapidly growing literature on the development of such models, there is little literature on the evaluation of their performance. In this paper, we aim to facilitate the validation of prediction models for individualized treatment effects. The estimands of interest are defined based on the potential outcomes framework, which facilitates a comparison of existing and novel measures. In particular, we examine existing measures of discrimination for benefit (variations of the c-for-benefit), and propose model-based extensions to the treatment effect setting for discrimination and calibration metrics that have a strong basis in outcome risk prediction. The main focus is on randomized trial data with binary endpoints and on models that provide individualized treatment effect predictions and potential outcome predictions. We use simulated data to provide insight into the characteristics of the examined discrimination and calibration statistics under consideration, and further illustrate all methods in a trial of acute ischemic stroke treatment. The results show that the proposed model-based statistics had the best characteristics in terms of bias and accuracy. While resampling methods adjusted for the optimism of performance estimates in the development data, they had a high variance across replications that limited their accuracy. Therefore, individualized treatment effect models are best validated in independent data. To aid implementation, a software implementation of the proposed methods was made available in R.

Item Type:

Journal Article (Original Article)

Division/Institute:

04 Faculty of Medicine > Medical Education > Institute of General Practice and Primary Care (BIHAM)
04 Faculty of Medicine > Pre-clinic Human Medicine > Institute of Social and Preventive Medicine (ISPM)

UniBE Contributor:

Efthimiou, Orestis

Subjects:

600 Technology > 610 Medicine & health
300 Social sciences, sociology & anthropology > 360 Social problems & social services

ISSN:

0277-6715

Publisher:

Wiley-Blackwell

Funders:

[4] Swiss National Science Foundation ; [222] Horizon 2020

Language:

English

Submitter:

Pubmed Import

Date Deposited:

05 Aug 2024 16:21

Last Modified:

09 Aug 2024 11:10

Publisher DOI:

10.1002/sim.10186

PubMed ID:

39090523

Uncontrolled Keywords:

calibration discrimination individualized prediction treatment effect

BORIS DOI:

10.48350/199439

URI:

https://boris.unibe.ch/id/eprint/199439

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