人工智能在白内障管理中的应用:现状与未来方向。

Laura Gutierrez, Jane Sujuan Lim, Li Lian Foo, Wei Yan Ng, Michelle Yip, Gilbert Yong San Lim, Melissa Hsing Yi Wong, Allan Fong, Mohamad Rosman, Jodhbir Singth Mehta, Haotian Lin, Darren Shu Jeng Ting, Daniel Shu Wei Ting
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引用次数: 24

摘要

人工智能(AI)的兴起为医学的许多领域带来了突破。在眼科领域,人工智能在筛查和检测糖尿病视网膜病变、年龄相关性黄斑变性、青光眼和早产儿视网膜病变方面取得了显著成果。白内障管理是另一个可以从更多人工智能应用中受益的领域。白内障是可逆性视力损害的主要原因,全球临床负担不断增加。改进诊断、监测和手术管理是应对这一挑战的必要条件。此外,发展中大国的患者往往难以获得三级医疗服务,持续的COVID-19大流行进一步加剧了这一问题。另一方面,人工智能可以通过提高自动化程度、效率和克服地理障碍来帮助改变白内障管理。首先,人工智能可以作为远程诊断平台,通过裂隙灯和眼底照片对白内障患者进行筛查和诊断。它利用深度学习卷积神经网络(CNN)来检测和分类可参考的白内障。其次,一些最新的人工晶状体配方使用人工智能来提高预测精度,与传统配方相比,获得了更好的术后屈光结果。第三,人工智能可以通过视频识别白内障手术的不同阶段来增强白内障手术技能培训,并通过准确预测手术时间来优化手术室工作流程。第四,一些AI CNN模型能够有效预测后囊膜混浊的进展和最终是否需要YAG激光囊切开术。人工智能的这些进步可以改变白内障的管理,并使提供高效的眼科服务成为可能。主要挑战包括数据的伦理管理、确保数据安全和隐私、展示临床可接受的性能、提高人工智能模型在异质人群中的通用性,以及提高最终用户的信任。
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 artificial intelligence in cataract management: current and future directions.

Application of artificial intelligence in cataract management: current and future directions.

The rise of artificial intelligence (AI) has brought breakthroughs in many areas of medicine. In ophthalmology, AI has delivered robust results in the screening and detection of diabetic retinopathy, age-related macular degeneration, glaucoma, and retinopathy of prematurity. Cataract management is another field that can benefit from greater AI application. Cataract  is the leading cause of reversible visual impairment with a rising global clinical burden. Improved diagnosis, monitoring, and surgical management are necessary to address this challenge. In addition, patients in large developing countries often suffer from limited access to tertiary care, a problem further exacerbated by the ongoing COVID-19 pandemic. AI on the other hand, can help transform cataract management by improving automation, efficacy and overcoming geographical barriers. First, AI can be applied as a telediagnostic platform to screen and diagnose patients with cataract using slit-lamp and fundus photographs. This utilizes a deep-learning, convolutional neural network (CNN) to detect and classify referable cataracts appropriately. Second, some of the latest intraocular lens formulas have used AI to enhance prediction accuracy, achieving superior postoperative refractive results compared to traditional formulas. Third, AI can be used to augment cataract surgical skill training by identifying different phases of cataract surgery on video and to optimize operating theater workflows by accurately predicting the duration of surgical procedures. Fourth, some AI CNN models are able to effectively predict the progression of posterior capsule opacification and eventual need for YAG laser capsulotomy. These advances in AI could transform cataract management and enable delivery of efficient ophthalmic services. The key challenges include ethical management of data, ensuring data security and privacy, demonstrating clinically acceptable performance, improving the generalizability of AI models across heterogeneous populations, and improving the trust of end-users.

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