将 ChatGPT-4 应用于眼科:经济有效的骨质疏松症风险评估,作为 3PM 的原理验证模型,加强管理

IF 6.5 2区 医学 Q1 Medicine
Joon Yul Choi, Eoksoo Han, Tae Keun Yoo
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引用次数: 0

摘要

背景眼科是一个新兴的医学领域,主要通过研究眼睛来检测和了解全身性疾病。ChatGPT-4 是一种高度先进的人工智能模型,具有多模态功能,可以处理文本和统计数据。骨质疏松症是一种无症状的慢性病,但如果不及时治疗会导致骨折。目前的诊断方法(如双 X 射线吸收测量法(DXA))成本高昂,而且会产生辐射。本研究旨在根据预测、预防和个性化医疗(3PM)原则,利用眼科数据和基于眼球组学的 ChatGPT-4 开发一种经济有效的骨质疏松症风险预测工具。工作假设和方法我们假设,利用眼科数据(眼球组学)结合 ChatGPT-4 开发的人工智能驱动回归模型,可以显著提高骨质疏松症风险预测的准确性。这种整合将有助于更早地发现骨质疏松症,制定更有效的预防策略,并支持为患者量身定制个性化治疗方案。我们利用韩国国民健康与营养调查的 DXA 和眼科数据,开发并验证了骨质疏松症和骨质疏松症预测模型。在 ChatGPT-4 的帮助下,我们将眼科和人口统计学数据整合到逻辑回归分析中,创建了预测公式。结果ChatGPT-4根据骨质疏松症和骨质疏松症的主要预测因素(包括年龄、性别、体重以及白内障和早期老年性黄斑变性等特定眼科疾病)自动开发了预测模型,并成功实施了风险计算器工具。基于眼科组学的模型优于传统方法,在验证集中,骨质疏松症和骨质疏松症的接收器操作特征曲线下面积分别为 0.785 和 0.866。该计算器显示出较高的灵敏度和特异性,为早期骨质疏松症筛查提供了可靠的工具。 该研究说明了将眼科数据整合到骨质疏松症多层次诊断中的价值,显著提高了健康风险评估和高危人群识别的准确性。这种方法符合 3PM 的原则,有助于更早地发现并建立个性化的患者档案,从而促进个性化和有针对性的治疗策略。这项研究还凸显了人工智能(特别是 ChatGPT-4)在开发方便、经济、无辐射的筛查工具方面的潜力,从而推动 3PM 在临床实践中的应用。我们的研究结果强调了综合方法的重要性,即结合全面的健康指数和跨学科合作,提供个性化的管理计划。预防策略应侧重于生活方式的调整和有针对性的干预措施,以增强骨骼健康,从而防止骨质疏松症的发展并促进患者的整体健康。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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

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

Background

Oculomics is an emerging medical field that focuses on the study of the eye to detect and understand systemic diseases. ChatGPT-4 is a highly advanced AI model with multimodal capabilities, allowing it to process text and statistical data. Osteoporosis is a chronic condition presenting asymptomatically but leading to fractures if untreated. Current diagnostic methods like dual X-ray absorptiometry (DXA) are costly and involve radiation exposure. This study aims to develop a cost-effective osteoporosis risk prediction tool using ophthalmological data and ChatGPT-4 based on oculomics, aligning with predictive, preventive, and personalized medicine (3PM) principles.

Working hypothesis and methods

We hypothesize that leveraging ophthalmological data (oculomics) combined with AI-driven regression models developed by ChatGPT-4 can significantly improve the predictive accuracy for osteoporosis risk. This integration will facilitate earlier detection, enable more effective preventive strategies, and support personalized treatment plans tailored to individual patients. We utilized DXA and ophthalmological data from the Korea National Health and Nutrition Examination Survey to develop and validate osteopenia and osteoporosis prediction models. Ophthalmological and demographic data were integrated into logistic regression analyses, facilitated by ChatGPT-4, to create prediction formulas. These models were then converted into calculator software through automated coding by ChatGPT-4.

Results

ChatGPT-4 automatically developed prediction models based on key predictors of osteoporosis and osteopenia included age, gender, weight, and specific ophthalmological conditions such as cataracts and early age-related macular degeneration, and successfully implemented a risk calculator tool. The oculomics-based models outperformed traditional methods, with area under the curve of the receiver operating characteristic values of 0.785 for osteopenia and 0.866 for osteoporosis in the validation set. The calculator demonstrated high sensitivity and specificity, providing a reliable tool for early osteoporosis screening.

Conclusions and expert recommendations in the framework of 3PM

This study illustrates the value of integrating ophthalmological data into multi-level diagnostics for osteoporosis, significantly improving the accuracy of health risk assessment and the identification of at-risk individuals. Aligned with the principles of 3PM, this approach fosters earlier detection and enables the development of individualized patient profiles, facilitating personalized and targeted treatment strategies. This study also highlights the potential of AI, specifically ChatGPT-4, in developing accessible, cost-effective, and radiation-free screening tools for advancing 3PM in clinical practice. Our findings emphasize the importance of a holistic approach, incorporating comprehensive health indices and interdisciplinary collaboration, to deliver personalized management plans. Preventive strategies should focus on lifestyle modifications and targeted interventions to enhance bone health, thereby preventing the progression of osteoporosis and contributing to overall patient well-being.

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来源期刊
Epma Journal
Epma Journal Medicine-Biochemistry (medical)
CiteScore
11.30
自引率
23.10%
发文量
0
期刊介绍: PMA Journal is a journal of predictive, preventive and personalized medicine (PPPM). The journal provides expert viewpoints and research on medical innovations and advanced healthcare using predictive diagnostics, targeted preventive measures and personalized patient treatments. The journal is indexed by PubMed, Embase and Scopus.
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