Invited Commentary: Treatment Drop-in-Making the Case for Causal Prediction

Matthew Sperrin, Karla Diaz-Ordaz, Romin Pajouheshnia

Research output: Contribution to journalComment/Letter to the editorAcademicpeer-review

Abstract

Clinical prediction models (CPMs) are often used to guide treatment initiation, with individuals at high risk offered treatment. This implicitly assumes that the probability quoted from a CPM represents the risk to an individual of an adverse outcome in absence of treatment. However, for a CPM to correctly target this estimand requires careful causal thinking. One problem that needs to be overcome is treatment drop-in: where individuals in the development data commence treatment after the time of prediction but before the outcome occurs. In this issue of the Journal, Xu et al. (Am J Epidemiol. 2021;190(10):2000-2014) use causal estimates from external data sources, such as clinical trials, to adjust CPMs for treatment drop-in. This represents a pragmatic and promising approach to address this issue, and it illustrates the value of utilizing causal inference in prediction. Building causality into the prediction pipeline can also bring other benefits. These include the ability to make and compare hypothetical predictions under different interventions, to make CPMs more explainable and transparent, and to improve model generalizability. Enriching CPMs with causal inference therefore has the potential to add considerable value to the role of prediction in healthcare.

Original languageEnglish
Pages (from-to)2015-2018
Number of pages4
JournalAmerican Journal of Epidemiology
Volume190
Issue number10
DOIs
Publication statusPublished - 1 Oct 2021

Keywords

  • counterfactual causal inference
  • risk prediction
  • treatment drop-in

Fingerprint

Dive into the research topics of 'Invited Commentary: Treatment Drop-in-Making the Case for Causal Prediction'. Together they form a unique fingerprint.

Cite this