The Risks of Risk Assessment Causal Blind Spots When Using Prediction Models for Treatment Decisions

Open Access
Authors
  • Jesse H. Krijthe
  • Niels Peek
  • Kim Luijken
  • Sara Magliacane
  • Paweł Morzywołek
  • Thijs van Ommen
  • Hein Putter
  • Matthew Sperrin
  • Junfeng Wang
  • Daniala L. Weir
  • Vanessa Didelez
Publication date 09-2025
Journal Annals of Internal Medicine
Volume | Issue number 178 | 9
Pages (from-to) 1326-1333
Organisations
  • Interfacultary Research - Institute for Logic, Language and Computation (ILLC)
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Clinicians increasingly rely on prediction models to guide treatment choices. Most prediction models, however, are developed using observational data that include some patients who have already received the treatment the prediction model is meant to inform. Special attention to the causal role of those earlier treatments is required when interpreting the resulting predictions. “Causal blind spots” were identified in 3 common approaches to handling treatment when developing a prediction model: including treatment as a predictor, restricting to persons taking a certain treatment, and ignoring treatment. Through several real examples, this article illustrates how the risks obtained from models developed using such approaches may be misinterpreted and can lead to misinformed decision making. The discussion covers issues attributable to confounding, selection, mediation, and changes in treatment protocols over time. An extension of guidelines for the development, reporting, and evaluation of prediction models is advocated to avoid such misinterpretations. Developers must ensure that the intended target population for the model, and the treatment conditions under which predictions hold, are clearly communicated. When prediction models are intended to inform treatment decisions, they need to provide estimates of risk under the specific treatment (or intervention) options being considered, known as “prediction under interventions.” Next to suitable data, this requires causal reasoning and causal inference techniques during model development and evaluation. Being clear about what a given prediction model can and cannot be used for prevents misinformed treatment decisions and thereby prevents potential harm to patients.
Document type Article
Language English
Published at https://doi.org/10.7326/ANNALS-24-00279
Other links https://www.scopus.com/pages/publications/105016388470
Downloads
The Risks of Risk Assessment (Final published version)
Supplementary materials
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