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Personalized treatment for coronary artery disease patients: a machine learning approach

Author

Listed:
  • Dimitris Bertsimas

    (Massachusetts Institute of Technology)

  • Agni Orfanoudaki

    (Massachusetts Institute of Technology)

  • Rory B. Weiner

    (Massachusetts General Hospital)

Abstract

Current clinical practice guidelines for managing Coronary Artery Disease (CAD) account for general cardiovascular risk factors. However, they do not present a framework that considers personalized patient-specific characteristics. Using the electronic health records of 21,460 patients, we created data-driven models for personalized CAD management that significantly improve health outcomes relative to the standard of care. We develop binary classifiers to detect whether a patient will experience an adverse event due to CAD within a 10-year time frame. Combining the patients’ medical history and clinical examination results, we achieve 81.5% AUC. For each treatment, we also create a series of regression models that are based on different supervised machine learning algorithms. We are able to estimate with average R2 = 0.801 the outcome of interest; the time from diagnosis to a potential adverse event (TAE). Leveraging combinations of these models, we present ML4CAD, a novel personalized prescriptive algorithm. Considering the recommendations of multiple predictive models at once, the goal of ML4CAD is to identify for every patient the therapy with the best expected TAE using a voting mechanism. We evaluate its performance by measuring the prescription effectiveness and robustness under alternative ground truths. We show that our methodology improves the expected TAE upon the current baseline by 24.11%, increasing it from 4.56 to 5.66 years. The algorithm performs particularly well for the male (24.3% improvement) and Hispanic (58.41% improvement) subpopulations. Finally, we create an interactive interface, providing physicians with an intuitive, accurate, readily implementable, and effective tool.

Suggested Citation

  • Dimitris Bertsimas & Agni Orfanoudaki & Rory B. Weiner, 2020. "Personalized treatment for coronary artery disease patients: a machine learning approach," Health Care Management Science, Springer, vol. 23(4), pages 482-506, December.
  • Handle: RePEc:kap:hcarem:v:23:y:2020:i:4:d:10.1007_s10729-020-09522-4
    DOI: 10.1007/s10729-020-09522-4
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    References listed on IDEAS

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    1. Stefan Wager & Susan Athey, 2018. "Estimation and Inference of Heterogeneous Treatment Effects using Random Forests," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 113(523), pages 1228-1242, July.
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    3. Agni Orfanoudaki & Emma Chesley & Christian Cadisch & Barry Stein & Amre Nouh & Mark J Alberts & Dimitris Bertsimas, 2020. "Machine learning provides evidence that stroke risk is not linear: The non-linear Framingham stroke risk score," PLOS ONE, Public Library of Science, vol. 15(5), pages 1-20, May.
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    Cited by:

    1. Dimitris Bertsimas & Alison Borenstein & Luca Mingardi & Omid Nohadani & Agni Orfanoudaki & Bartolomeo Stellato & Holly Wiberg & Pankaj Sarin & Dirk J. Varelmann & Vicente Estrada & Carlos Macaya & Iv, 2021. "Personalized prescription of ACEI/ARBs for hypertensive COVID-19 patients," Health Care Management Science, Springer, vol. 24(2), pages 339-355, June.
    2. Adam Diamant, 2021. "Dynamic multistage scheduling for patient-centered care plans," Health Care Management Science, Springer, vol. 24(4), pages 827-844, December.

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