Understanding Algorithmic Fairness for Clinical Prediction in Terms of Subgroup Net Benefit and Health Equity.
TL;DR
This work proposes assessing the fairness of a prediction model by expanding the concept of net benefit, using it to quantify and compare the clinical impact of a model in different subgroups, and shows how resource constraints might introduce necessary trade-offs between health equity and other objectives of healthcare systems.
OpenAlex 토픽 ·
Artificial Intelligence in Healthcare and Education
Explainable Artificial Intelligence (XAI)
Ethics and Social Impacts of AI
This work proposes assessing the fairness of a prediction model by expanding the concept of net benefit, using it to quantify and compare the clinical impact of a model in different subgroups, and sho
APA
Jose Benitez-Aurioles, Alice Joules, et al. (2026). Understanding Algorithmic Fairness for Clinical Prediction in Terms of Subgroup Net Benefit and Health Equity.. Epidemiology (Cambridge, Mass.), 37(3), 386-396. https://doi.org/10.1097/EDE.0000000000001949
MLA
Jose Benitez-Aurioles, et al.. "Understanding Algorithmic Fairness for Clinical Prediction in Terms of Subgroup Net Benefit and Health Equity.." Epidemiology (Cambridge, Mass.), vol. 37, no. 3, 2026, pp. 386-396.
PMID
41512215
Abstract
There are concerns about the fairness of clinical prediction models. "Fair" models are defined as those for which their performance or predictions are not inappropriately influenced by protected attributes such as ethnicity, gender, or socioeconomic status. Researchers have raised concerns that current algorithmic fairness paradigms enforce strict egalitarianism in healthcare, leveling down the performance of models in higher-performing subgroups instead of improving it in lower-performing ones. We propose assessing the fairness of a prediction model by expanding the concept of net benefit, using it to quantify and compare the clinical impact of a model in different subgroups. We use this to explore how a model distributes benefits across a population, its impact on health inequalities, and its role in the achievement of health equity. We show how resource constraints might introduce necessary trade-offs between health equity and other objectives of healthcare systems. We showcase our proposed approach with the development of two clinical prediction models: (1) a prognostic type 2 diabetes model used by clinicians to enroll patients into a preventive care lifestyle intervention programme and (2) a lung cancer screening algorithm used to allocate diagnostic scans across the population. This approach helps modelers better understand if a model upholds health equity by considering its performance in a clinical and social context.
MeSH Terms
Humans; Health Equity; Algorithms; Diabetes Mellitus, Type 2; Lung Neoplasms; Female; Male; Early Detection of Cancer