Machine Learning Methods Using Artificial Intelligence Deployed on Electronic Health Record Data for Identification and Referral of At-Risk Patients From Primary Care Physicians to Eye Care Specialists: Retrospective, Case-Controlled Study.
Joshua A YoungChin-Wen ChangCharles W ScalesSaurabh V MenonChantal E HolyCaroline Adrienne BlackiePublished in: JMIR AI (2024)
The 5 ML methods deployed were able to successfully identify patients with elevated odds ratios (ORs), thus capable of patient triage, for ocular pathology ranging from 2.4 (95% CI 2.4-2.5) for glaucoma to 5.7 (95% CI 5.0-6.4) for type 1 NPDR, with an average OR of 3.9. The application of these models could enable PCPs to better identify and triage patients at risk for treatable ophthalmic pathology. Early identification of patients with unrecognized sight-threatening conditions may lead to earlier treatment and a reduced economic burden. More importantly, such triage may improve patients' lives.
Keyphrases
- primary care
- end stage renal disease
- machine learning
- artificial intelligence
- emergency department
- electronic health record
- ejection fraction
- newly diagnosed
- chronic kidney disease
- healthcare
- prognostic factors
- peritoneal dialysis
- patient reported outcomes
- case report
- health insurance
- patient reported
- general practice