4.6 Article

A cost-aware framework for the development of AI models for healthcare applications

Journal

NATURE BIOMEDICAL ENGINEERING
Volume 6, Issue 12, Pages 1384-1398

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41551-022-00872-8

Keywords

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Funding

  1. National Science Foundation [CAREER DBI-1552309, DBI-1759487]
  2. American Cancer Society [127332-RSG-15-097-01-TBG]
  3. National Institutes of Health [F30 HL 151074, R35 GM 128638, R01 NIA AG 061132]

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Accurate artificial intelligence models can be costly and impractical in emergency and critical-care medicine. This study presents a cost-aware AI framework that optimizes the trade-off between prediction performance and feature cost, reducing cost and improving accuracy in disease diagnosis.
Accurate artificial intelligence (AI) for disease diagnosis could lower healthcare workloads. However, when time or financial resources for gathering input data are limited, as in emergency and critical-care medicine, developing accurate AI models, which typically require inputs for many clinical variables, may be impractical. Here we report a model-agnostic cost-aware AI (CoAI) framework for the development of predictive models that optimize the trade-off between prediction performance and feature cost. By using three datasets, each including thousands of patients, we show that relative to clinical risk scores, CoAI substantially reduces the cost and improves the accuracy of predicting acute traumatic coagulopathy in a pre-hospital setting, mortality in intensive-care patients and mortality in outpatient settings. We also show that CoAI outperforms state-of-the-art cost-aware prediction strategies in terms of predictive performance, model cost, training time and robustness to feature-cost perturbations. CoAI uses axiomatic feature-attribution methods for the estimation of feature importance and decouples feature selection from model training, thus allowing for a faster and more flexible adaptation of AI models to new feature costs and prediction budgets.

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