Artificial Intelligence for Personalised Ophthalmology Residency Training

Author:

Muntean George Adrian1,Groza Adrian2ORCID,Marginean Anca2ORCID,Slavescu Radu Razvan2,Steiu Mihnea Gabriel2,Muntean Valentin3,Nicoara Simona Delia1ORCID

Affiliation:

1. Department of Ophthalmology, “Iuliu Hatieganu” University of Medicine and Pharmacy Emergency County Hospital, 400347 Cluj-Napoca, Romania

2. Department of Computer Science, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania

3. Department of Surgery, MedLife Humanitas Hospital, 400664 Cluj-Napoca, Romania

Abstract

Residency training in medicine lays the foundation for future medical doctors. In real-world settings, training centers face challenges in trying to create balanced residency programs, with cases encountered by residents not always being fairly distributed among them. In recent years, there has been a tremendous advancement in developing artificial intelligence (AI)-based algorithms with human expert guidance for medical imaging segmentation, classification, and prediction. In this paper, we turned our attention from training machines to letting them train us and developed an AI framework for personalised case-based ophthalmology residency training. The framework is built on two components: (1) a deep learning (DL) model and (2) an expert-system-powered case allocation algorithm. The DL model is trained on publicly available datasets by means of contrastive learning and can classify retinal diseases from color fundus photographs (CFPs). Patients visiting the retina clinic will have a CFP performed and afterward, the image will be interpreted by the DL model, which will give a presumptive diagnosis. This diagnosis is then passed to a case allocation algorithm which selects the resident who would most benefit from the specific case, based on their case history and performance. At the end of each case, the attending expert physician assesses the resident’s performance based on standardised examination files, and the results are immediately updated in their portfolio. Our approach provides a structure for future precision medical education in ophthalmology.

Funder

Ministry of Research, Innovation and Digitization, CCCDI-UEFISCDI

Publisher

MDPI AG

Subject

General Medicine

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4. Pachade, S., Porwal, P., Thulkar, D., Kokare, M., Deshmukh, G., Sahasrabuddhe, V., Giancardo, L., Quellec, G., and Mériaudeau, F. (2020). Retinal Fundus Multi-disease Image Dataset (RFMiD).

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