Applications of Artificial Intelligence in Cataract Surgery: A Review.

Clinical ophthalmology (Auckland, N.Z.) Pub Date : 2024-10-17 eCollection Date: 2024-01-01 DOI:10.2147/OPTH.S489054
Abhimanyu S Ahuja, Alfredo A Paredes Iii, Mallory L S Eisel, Sejal Kodwani, Isabella V Wagner, Darby D Miller, Syril Dorairaj
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Abstract

Cataract surgery is one of the most performed procedures worldwide, and cataracts are rising in prevalence in our aging population. With the increasing utilization of artificial intelligence (AI) in the medical field, we aimed to understand the extent of present AI applications in ophthalmic microsurgery, specifically cataract surgery. We conducted a literature search on PubMed and Google Scholar using keywords related to the application of AI in cataract surgery and included relevant articles published since 2010 in our review. The literature search yielded information on AI mechanisms such as machine learning (ML), deep learning (DL), and convolutional neural networks (CNN) as they are being incorporated into pre-operative, intraoperative, and post-operative stages of cataract surgery. AI is currently integrated in the pre-operative stage of cataract surgery to calculate intraocular lens (IOL) power and diagnose cataracts with slit-lamp microscopy and retinal imaging. During the intraoperative stage, AI has been applied to risk calculation, tracking surgical workflow, multimodal imaging data analysis, and instrument location via the use of "smart instruments". AI is also involved in predicting post-operative complications, such as posterior capsular opacification and intraocular lens dislocation, and organizing follow-up patient care. Challenges such as limited imaging dataset availability, unstandardized deep learning analysis metrics, and lack of generalizability to novel datasets currently present obstacles to the enhanced application of AI in cataract surgery. Upon addressing these barriers in upcoming research, AI stands to improve cataract screening accessibility, junior physician training, and identification of surgical complications through future applications of AI in cataract surgery.

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人工智能在白内障手术中的应用:综述。
白内障手术是全球开展最多的手术之一,而随着人口老龄化,白内障的发病率也在不断上升。随着人工智能(AI)在医疗领域的应用日益广泛,我们旨在了解目前人工智能在眼科显微手术(尤其是白内障手术)中的应用程度。我们使用与人工智能在白内障手术中的应用相关的关键词在 PubMed 和 Google Scholar 上进行了文献检索,并将 2010 年以来发表的相关文章纳入了审查范围。通过文献检索,我们获得了机器学习(ML)、深度学习(DL)和卷积神经网络(CNN)等人工智能机制的相关信息,这些机制正被纳入白内障手术的术前、术中和术后阶段。目前,人工智能已融入白内障手术的术前阶段,用于计算人工晶体(IOL)的功率,并通过裂隙灯显微镜和视网膜成像诊断白内障。在术中阶段,人工智能已被应用于风险计算、手术流程跟踪、多模态成像数据分析,以及通过使用 "智能仪器 "进行仪器定位。人工智能还参与预测术后并发症,如后囊变性和眼内晶状体脱位,并组织后续患者护理。目前,成像数据集可用性有限、深度学习分析指标不规范、对新数据集缺乏通用性等挑战阻碍了人工智能在白内障手术中的进一步应用。在即将开展的研究中解决了这些障碍后,人工智能未来在白内障手术中的应用将改善白内障筛查的可及性、初级医师培训以及手术并发症的识别。
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