Leveraging Artificial Intelligence to Improve Chronic Disease Care: Methods and Application to Pharmacotherapy Decision Support for Type-2 Diabetes Mellitus

Author:

Tarumi Shinji1,Takeuchi Wataru1,Chalkidis George1,Rodriguez-Loya Salvador2,Kuwata Junichi3,Flynn Michael4,Turner Kyle M.5,Sakaguchi Farrant H.6,Weir Charlene2,Kramer Heidi2,Shields David E.2,Warner Phillip B.2,Kukhareva Polina2,Ban Hideyuki1,Kawamoto Kensaku2

Affiliation:

1. Department of Media Intelligent Processing Research, Center for Technology Innovation Artificial Intelligence, Hitachi Ltd., Kokubunji, Tokyo, Japan

2. Department of Biomedical Informatics, University of Utah, Salt Lake City, Utah, United States

3. Department of Product Design, Center for Social Innovation, Hitachi Ltd., Kokubunji, Tokyo, Japan

4. Departments of Internal Medicine and Pediatrics, University of Utah, Salt Lake City, Utah, United States

5. Department of Pharmacotherapy, University of Utah, Salt Lake City, Utah, United States

6. Department of Family and Preventive Medicine, University of Utah, Salt Lake City, Utah, United States

Abstract

Abstract Objectives Artificial intelligence (AI), including predictive analytics, has great potential to improve the care of common chronic conditions with high morbidity and mortality. However, there are still many challenges to achieving this vision. The goal of this project was to develop and apply methods for enhancing chronic disease care using AI. Methods Using a dataset of 27,904 patients with diabetes, an analytical method was developed and validated for generating a treatment pathway graph which consists of models that predict the likelihood of alternate treatment strategies achieving care goals. An AI-driven clinical decision support system (CDSS) integrated with the electronic health record (EHR) was developed by encapsulating the prediction models in an OpenCDS Web service module and delivering the model outputs through a SMART on FHIR (Substitutable Medical Applications and Reusable Technologies on Fast Healthcare Interoperability Resources) web-based dashboard. This CDSS enables clinicians and patients to review relevant patient parameters, select treatment goals, and review alternate treatment strategies based on prediction results. Results The proposed analytical method outperformed previous machine-learning algorithms on prediction accuracy. The CDSS was successfully integrated with the Epic EHR at the University of Utah. Conclusion A predictive analytics-based CDSS was developed and successfully integrated with the EHR through standards-based interoperability frameworks. The approach used could potentially be applied to many other chronic conditions to bring AI-driven CDSS to the point of care.

Funder

Hitachi, Ltd.

Publisher

Georg Thieme Verlag KG

Subject

Health Information Management,Advanced and Specialised Nursing,Health Informatics

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