Kazemzadeh Kimia
IVORC Academic Foundation (International Virtual Ophthalmic Research Center), Texas, United States.
Med Hypothesis Discov Innov Ophthalmol. 2025 May 10;14(1):255-272. doi: 10.51329/mehdiophthal1517. eCollection 2025 Spring.
By leveraging the imaging-rich nature of ophthalmology and optometry, artificial intelligence (AI) is rapidly transforming the vision sciences and addressing the global burden of ocular diseases. The ability of AI to analyze complex imaging and clinical data allows unprecedented improvements in diagnosis, management, and patient outcomes. In this narrative review, we explore the current and emerging opportunities of utilizing AI in the vision sciences, critically examine the associated challenges, and discuss the ethical implications of integrating AI into clinical practice.
We searched PubMed/MEDLINE and Google Scholar for English-language articles published from January 1, 2005, to March 31, 2025. Studies on AI applications in ophthalmology and optometry, focusing on diagnostic performance, clinical integration, and ethical considerations, were included, irrespective of study design (clinical trials, observational studies, validation studies, systematic reviews, and meta-analyses). Articles not related to the use of AI in vision care were excluded.
AI has achieved high diagnostic accuracy across different ocular domains. In terms of the cornea and anterior segment, AI models have detected keratoconus with sensitivity and accuracy exceeding 98% and 99.6%, respectively, including in subclinical cases, by analyzing Scheimpflug tomography and corneal biomechanics. For cataract surgery, machine learning-based intraocular lens power calculation formulas, such as the Kane and ZEISS AI formulas, reduce refractive errors, achieving mean absolute errors below 0.30 diopters and performing particularly well in highly myopic eyes. AI-based retinal screening systems, such as the EyeArt and IDx-DR, can autonomously detect diabetic retinopathy with sensitivities above 95%, while deep learning models can predict age-related macular degeneration progression with an area under the receiver operating characteristic curve exceeding 0.90. In glaucoma detection, fundus and optical coherence tomography-based AI models have reached pooled sensitivity and specificity exceeding 90%, although performance varies with disease stage and population diversity. AI has also advanced strabismus detection, amblyopia risk prediction, and myopia progression forecasting by using facial analysis and biometric data. Currently, key challenges in implementing AI in ophthalmology include dataset bias, limited external validation, regulatory hurdles, and ethical issues, such as transparency and equitable access.
AI is rapidly transforming vision sciences by improving diagnostic accuracy, streamlining clinical workflow, and broadening access to quality eye care, particularly in underserved regions. Its integration into ophthalmology and optometry thus holds significant promise for enhancing patient outcomes and optimizing healthcare delivery. However, to harness the transformative potential of AI fully, sustained multidisciplinary collaboration, involving clinicians, data scientists, ethicists, and policymakers, is essential. Rigorous validation processes, transparency in algorithm development, and strong ethical oversight are equally important to mitigate risks such as bias, data misuse, and unequal access. Responsible implementation of AI in the vision sciences is essential to ensure that all populations are served equitably.
通过利用眼科和验光领域丰富的影像学资源,人工智能(AI)正在迅速改变视觉科学,并应对全球眼部疾病负担。人工智能分析复杂影像学和临床数据的能力带来了诊断、管理及患者预后方面前所未有的改善。在这篇叙述性综述中,我们探讨了在视觉科学中利用人工智能的当前及新兴机遇,批判性地审视了相关挑战,并讨论了将人工智能整合到临床实践中的伦理意义。
我们在PubMed/MEDLINE和谷歌学术中检索了2005年1月1日至2025年3月31日发表的英文文章。纳入了关于人工智能在眼科和验光领域应用的研究,重点关注诊断性能、临床整合及伦理考量,无论研究设计(临床试验、观察性研究、验证性研究、系统评价和荟萃分析)如何。排除了与人工智能在视力保健中的应用无关的文章。
人工智能在不同眼部领域均取得了较高的诊断准确性。在角膜和眼前节方面,人工智能模型通过分析眼前节光学相干断层扫描(Scheimpflug tomography)和角膜生物力学,检测圆锥角膜的敏感性和准确性分别超过98%和99.6%,包括在亚临床病例中。对于白内障手术,基于机器学习的人工晶状体屈光力计算公式,如凯恩公式(Kane formula)和蔡司人工智能公式(ZEISS AI formula),可减少屈光不正,平均绝对误差低于0.30屈光度,在高度近视眼中表现尤为出色。基于人工智能的视网膜筛查系统,如EyeArt和IDx-DR,可自主检测糖尿病视网膜病变,敏感性高于95%,而深度学习模型可预测年龄相关性黄斑变性的进展,受试者工作特征曲线下面积超过0.90。在青光眼检测中,基于眼底和光学相干断层扫描的人工智能模型的综合敏感性和特异性超过90%,尽管性能因疾病阶段和人群多样性而异。人工智能还通过使用面部分析和生物特征数据,在斜视检测、弱视风险预测和近视进展预测方面取得了进展。目前,在眼科实施人工智能的主要挑战包括数据集偏差、外部验证有限、监管障碍以及伦理问题,如透明度和公平获取。
人工智能正在通过提高诊断准确性、简化临床工作流程以及扩大优质眼科护理的可及性,特别是在服务不足地区,迅速改变视觉科学。因此,将其整合到眼科和验光领域对于改善患者预后和优化医疗服务具有重大前景。然而,要充分发挥人工智能的变革潜力,临床医生、数据科学家、伦理学家和政策制定者等多学科的持续合作至关重要。严格的验证过程、算法开发的透明度以及强有力的伦理监督对于减轻偏差、数据滥用和获取不平等风险同样重要。在视觉科学中负责任地实施人工智能对于确保公平服务所有人群至关重要。