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Identification of kidney-related medications using AI from self-captured pill images.

Authors :
Sheikh MS
Dreesman B
Barreto EF
Thongprayoon C
Miao J
Suppadungsuk S
Mao MA
Qureshi F
Pham JH
Craici IM
Kashani KB
Cheungpasitporn W
Source :
Renal failure [Ren Fail] 2024 Dec; Vol. 46 (2), pp. 2402075. Date of Electronic Publication: 2024 Sep 11.
Publication Year :
2024

Abstract

Introduction: ChatGPT, a state-of-the-art large language model, has shown potential in analyzing images and providing accurate information. This study aimed to explore ChatGPT-4 as a tool for identifying commonly prescribed nephrology medications across different versions and testing dates.<br />Methods: 25 nephrology medications were obtained from an institutional pharmacy. High-quality images of each medication were captured using an iPhone 13 Pro Max and uploaded to ChatGPT-4 with the query, 'What is this medication?' The accuracy of ChatGPT-4's responses was assessed for medication name, dosage, and imprint. The process was repeated after 2 weeks to evaluate consistency across different versions, including GPT-4, GPT-4 Legacy, and GPT-4.Ø.<br />Results: ChatGPT-4 correctly identified 22 out of 25 (88%) medications across all versions. However, it misidentified Hydrochlorothiazide, Nifedipine, and Spironolactone due to misreading imprints. For instance, Nifedipine ER 90 mg was mistaken for Metformin Hydrochloride ER 500 mg because 'NF 06' was misread as 'NF 05'. Hydrochlorothiazide 50 mg was confused with the 25 mg version due to imprint errors, and Spironolactone 25 mg was misidentified as Naproxen Sodium or Diclofenac Sodium. Despite these errors, ChatGPT-4 showed 100% consistency when retested, correcting misidentifications after receiving feedback on the correct imprints.<br />Conclusion: ChatGPT-4 shows strong potential in identifying nephrology medications from self-captured images, though challenges with difficult-to-read imprints remain. Providing feedback improved accuracy, suggesting ChatGPT-4 could be a valuable tool in digital health for medication identification. Future research should enhance the model's ability to distinguish similar imprints and explore broader integration into digital health platforms.

Details

Language :
English
ISSN :
1525-6049
Volume :
46
Issue :
2
Database :
MEDLINE
Journal :
Renal failure
Publication Type :
Academic Journal
Accession number :
39258385
Full Text :
https://doi.org/10.1080/0886022X.2024.2402075