[人工智能在中国基层医疗机构眼病筛查应用中的新挑战]。

Q3 Medicine
H D Zou, S L Lin, L N Lu, Y Xu
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引用次数: 0

摘要

近年来,人工智能(AI)在中国基层医疗机构眼病筛查中的应用取得了突破性进展,但挑战也随之而来。首先,人工智能软件不断发展,可筛查的眼病范围不断扩大,诊断准确率不断提高,并朝着预测眼病病程的方向发展。然而,5G 等基础设施的不足和专业人员的短缺阻碍了筛查的覆盖面。其次,虽然人工智能的成本效益已得到公认,但新的筛查模式影响了筛查的公平性。必须根据中国的具体情况调整人工智能应用模式。第三,人工智能筛查指南日益完善,为人工智能发展指明了方向,也为人工智能技术的推广应用提供了参考。然而,眼病筛查中的人工智能相关政策制定亟需高质量的实证研究提供科学依据。因此,建议开发将症状、病史等基础数据与简单眼科检查相结合的多模态人工智能模型,加快5G等基础设施建设,注重培养跨学科人才,因地制宜探索适合大规模眼病筛查的服务体系和模式,开展长期、多中心的实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Emerging challenges in the application of artificial intelligence for the eye disease screening in Chinese primary healthcare institutions].

Breakthroughs have been achieved recently in the application of artificial intelligence (AI) for the eye disease screening in Chinese primary healthcare institutions, but challenges have also emerged. First, AI software has continuously evolved, expanding the range of eye diseases that can be screened, enhancing diagnostic accuracy, and progressing towards predicting the course of eye diseases. However, inadequate infrastructure such as 5G and a shortage of specialized personnel have hindered the coverage of screenings. Second, while the cost-effectiveness of AI is well-established, new screening models have impacted the equity of screenings. It is essential to tailor AI application models to the specific context of China. Third, AI screening guidelines have been increasingly improved, providing direction for AI development and reference for the promotion and application of AI technologies. Nonetheless, high-quality empirical research is urgently needed to provide scientific evidence for policymaking related to AI in the eye disease screening. Therefore, it is suggested to develop multimodal AI models that integrate basic data such as symptoms and medical history with simple ophthalmic examinations, to accelerate the construction of infrastructure like 5G and focus on cultivating interdisciplinary talents, to explore suitable service systems and models for the large-scale eye disease screening tailored to local conditions, and to conduct long-term, multi-center, empirical studies.

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来源期刊
中华眼科杂志
中华眼科杂志 Medicine-Ophthalmology
CiteScore
0.80
自引率
0.00%
发文量
12700
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