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Design and development of a machine-learning-driven opioid overdose risk prediction tool integrated in electronic health records in primary care settings
5
Zitationen
20
Autoren
2024
Jahr
Abstract
The final backend process for our CDS alert aligns with PCP needs and UFHealth standards. Integrating feedback from PCPs in the early development phase of our ML-driven CDS tool helped identify barriers and facilitators in the CDS integration process. This collaborative approach yielded a refined prototype aimed at minimizing unintended consequences and enhancing usability.
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Autoren
- Khoa A. Nguyen
- Debbie L. Wilson
- Julie Diiulio
- Bradley R. Hall
- Laura G. Militello
- Walid F. Gellad
- Christopher A. Harle
- Motomori O. Lewis
- Siegfried Schmidt
- Eric I. Rosenberg
- Danielle Nelson
- Xing He
- Yonghui Wu
- Jiang Bian
- Stephanie A. S. Staras
- Adam J. Gordon
- Jerry Cochran
- Courtney C. Kuza
- Seonkyeong Yang
- Wei‐Hsuan Lo‐Ciganic
Institutionen
- University of Florida(US)
- Applied Decision Science (United States)(US)
- University of Pittsburgh(US)
- VA Pittsburgh Healthcare System(US)
- Regenstrief Institute(US)
- Indiana University Indianapolis(US)
- Indiana University – Purdue University Indianapolis(US)
- University of Utah(US)
- VA Salt Lake City Healthcare System(US)
- Geriatric Research Education and Clinical Center(US)
- North Florida/South Georgia Veterans Health System(US)