Artificial Intelligence Applications in Ophthalmology.

IF 1.5 Q2 MEDICINE, GENERAL & INTERNAL
JMA journal Pub Date : 2025-01-15 Epub Date: 2024-09-13 DOI:10.31662/jmaj.2024-0139
Tetsuro Oshika
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Abstract

Ophthalmology is well suited for the integration of artificial intelligence (AI) owing to its reliance on various imaging modalities, such as anterior segment photography, fundus photography, and optical coherence tomography (OCT), which generate large volumes of high-resolution digital images. These images provide rich datasets for training AI algorithms, which enables precise diagnosis and monitoring of various ocular conditions. Retinal disease management heavily relies on image recognition. Limited access to ophthalmologists in underdeveloped areas and high image volumes in developed countries make AI a promising, cost-effective solution for screening and diagnosis. In corneal diseases, differential diagnosis is critical yet challenging because of the wide range of potential etiologies. AI and diagnostic technologies offer promise for improving the accuracy and speed of these diagnoses, including the differentiation between infectious and noninfectious conditions. Smartphone imaging coupled with AI technology can advance the diagnosis of anterior segment diseases, democratizing access to eye care and providing rapid and reliable diagnostic results. Other potential areas for AI applications include cataract and vitreous surgeries as well as the use of generative AI in training ophthalmologists. While AI offers substantial benefits, challenges remain, including the need for high-quality images, accurate manual annotations, patient heterogeneity considerations, and the "black-box phenomenon". Addressing these issues is crucial for enhancing the effectiveness of AI and ensuring its successful integration into clinical practice. AI is poised to transform ophthalmology by increasing diagnostic accuracy, optimizing treatment strategies, and improving patient care, particularly in high-risk or underserved populations.

人工智能在眼科中的应用。
眼科非常适合人工智能(AI)的整合,因为它依赖于各种成像方式,如前段摄影、眼底摄影和光学相干断层扫描(OCT),这些成像方式会产生大量高分辨率的数字图像。这些图像为训练人工智能算法提供了丰富的数据集,从而能够精确诊断和监测各种眼部疾病。视网膜疾病的管理很大程度上依赖于图像识别。在不发达地区,获得眼科医生的机会有限,而在发达国家,图像量高,这使得人工智能成为一种有希望的、具有成本效益的筛查和诊断解决方案。在角膜疾病,鉴别诊断是至关重要的,但具有挑战性,因为广泛的潜在病因。人工智能和诊断技术有望提高这些诊断的准确性和速度,包括区分传染性和非传染性疾病。智能手机成像与人工智能技术相结合,可以推进前段疾病的诊断,使眼科护理大众化,并提供快速可靠的诊断结果。人工智能的其他潜在应用领域包括白内障和玻璃体手术,以及在眼科医生培训中使用生成式人工智能。虽然人工智能带来了巨大的好处,但挑战仍然存在,包括对高质量图像的需求、准确的人工注释、患者异质性的考虑以及“黑箱现象”。解决这些问题对于提高人工智能的有效性并确保其成功融入临床实践至关重要。人工智能有望通过提高诊断准确性、优化治疗策略和改善患者护理来改变眼科,特别是在高风险或服务不足的人群中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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