From algorithms to action: improving patient care requires causality

Publication date

2024-12

Authors

van Amsterdam, Wouter A CORCID 0000-0002-3181-0810
de Jong, Pim AORCID 0000-0003-4840-6854ISNI 0000000395539334
Verhoeff, Joost J CORCID 0000-0001-9673-0793ISNI 0000000393929005
Leiner, TimORCID 0000-0003-1885-5499ISNI 0000000390698205
Ranganath, Rajesh

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Abstract

In cancer research there is much interest in building and validating outcome prediction models to support treatment decisions. However, because most outcome prediction models are developed and validated without regard to the causal aspects of treatment decision making, many published outcome prediction models may cause harm when used for decision making, despite being found accurate in validation studies. Guidelines on prediction model validation and the checklist for risk model endorsement by the American Joint Committee on Cancer do not protect against prediction models that are accurate during development and validation but harmful when used for decision making. We explain why this is the case and how to build and validate models that are useful for decision making.

Keywords

Causal inference, Oncology, Prediction research, Prognosis research, Tailored treatment decision making, Health Policy, Health Informatics, Computer Science Applications

Citation

van Amsterdam, W A C, de Jong, P A, Verhoeff, J J C, Leiner, T & Ranganath, R 2024, 'From algorithms to action : improving patient care requires causality', BMC Medical Informatics and Decision Making, vol. 24, no. 1, 111. https://doi.org/10.1186/s12911-024-02513-3