» Articles » PMID: 39129037

Development of a Novel Scoring System for Glaucoma Risk Based on Demographic and Laboratory Factors Using ChatGPT-4

Overview
Publisher Springer
Date 2024 Aug 11
PMID 39129037
Authors
Affiliations
Soon will be listed here.
Abstract

We developed a scoring system for assessing glaucoma risk using demographic and laboratory factors by employing a no-code approach (automated coding) using ChatGPT-4. Comprehensive health checkup data were collected from the Korea National Health and Nutrition Examination Survey. Using ChatGPT-4, logistic regression was conducted to predict glaucoma without coding or manual numerical processes, and the scoring system was developed based on the odds ratios (ORs). ChatGPT-4 also facilitated the no-code creation of an easy-to-use risk calculator for glaucoma. The ORs for the high-risk groups were calculated to measure performance. ChatGPT-4 automatically developed a scoring system based on demographic and laboratory factors, and successfully implemented a risk calculator tool. The predictive ability of the scoring system was comparable to that of traditional machine learning approaches. For high-risk groups with 1-2, 3-4, and 5 + points, the calculated ORs for glaucoma were 1.87, 2.72, and 15.36 in the validation set, respectively, compared with the group with 0 or fewer points. This study presented a novel no-code approach for developing a glaucoma risk assessment tool using ChatGPT-4, highlighting its potential for democratizing advanced predictive analytics, making them readily available for clinical use in glaucoma detection.

Citing Articles

Retinal vein occlusion risk prediction without fundus examination using a no-code machine learning tool for tabular data: a nationwide cross-sectional study from South Korea.

Yu N, Shin D, Ryu I, Yoo T, Koh K BMC Med Inform Decis Mak. 2025; 25(1):118.

PMID: 40055729 PMC: 11889835. DOI: 10.1186/s12911-025-02950-8.


Application of ChatGPT-4 to oculomics: a cost-effective osteoporosis risk assessment to enhance management as a proof-of-principles model in 3PM.

Choi J, Han E, Yoo T EPMA J. 2024; 15(4):659-676.

PMID: 39635018 PMC: 11612069. DOI: 10.1007/s13167-024-00378-0.


Assessment of Large Language Models in Cataract Care Information Provision: A Quantitative Comparison.

Su Z, Jin K, Wu H, Luo Z, Grzybowski A, Ye J Ophthalmol Ther. 2024; 14(1):103-116.

PMID: 39516445 PMC: 11724831. DOI: 10.1007/s40123-024-01066-y.

References
1.
Janssen S, Gorgels T, Ramdas W, Klaver C, Van Duijn C, Jansonius N . The vast complexity of primary open angle glaucoma: disease genes, risks, molecular mechanisms and pathobiology. Prog Retin Eye Res. 2013; 37:31-67. DOI: 10.1016/j.preteyeres.2013.09.001. View

2.
Graham S, Butlin M, Lee M, Avolio A . Central blood pressure, arterial waveform analysis, and vascular risk factors in glaucoma. J Glaucoma. 2011; 22(2):98-103. DOI: 10.1097/IJG.0b013e3182254bc0. View

3.
Wang W, He M, Li Z, Huang W . Epidemiological variations and trends in health burden of glaucoma worldwide. Acta Ophthalmol. 2019; 97(3):e349-e355. DOI: 10.1111/aos.14044. View

4.
Liu H, Li L, Wormstone I, Qiao C, Zhang C, Liu P . Development and Validation of a Deep Learning System to Detect Glaucomatous Optic Neuropathy Using Fundus Photographs. JAMA Ophthalmol. 2019; 137(12):1353-1360. PMC: 6743057. DOI: 10.1001/jamaophthalmol.2019.3501. View

5.
Biswas S, Lin C, Leung C . Evaluation of a Myopic Normative Database for Analysis of Retinal Nerve Fiber Layer Thickness. JAMA Ophthalmol. 2016; 134(9):1032-9. DOI: 10.1001/jamaophthalmol.2016.2343. View