Utility of artificial intelligence in the diagnosis and management of keratoconus: a systematic review

Deniz Goodman, Angela Y. Zhu
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Abstract

The application of artificial intelligence (AI) systems in ophthalmology is rapidly expanding. Early detection and management of keratoconus is important for preventing disease progression and the need for corneal transplant. We review studies regarding the utility of AI in the diagnosis and management of keratoconus and other corneal ectasias.We conducted a systematic search for relevant original, English-language research studies in the PubMed, Web of Science, Embase, and Cochrane databases from inception to October 31, 2023, using a combination of the following keywords: artificial intelligence, deep learning, machine learning, keratoconus, and corneal ectasia. Case reports, literature reviews, conference proceedings, and editorials were excluded. We extracted the following data from each eligible study: type of AI, input used for training, output, ground truth or reference, dataset size, availability of algorithm/model, availability of dataset, and major study findings.Ninety-three original research studies were included in this review, with the date of publication ranging from 1994 to 2023. The majority of studies were regarding the use of AI in detecting keratoconus or subclinical keratoconus (n=61). Among studies regarding keratoconus diagnosis, the most common inputs were corneal topography, Scheimpflug-based corneal tomography, and anterior segment-optical coherence tomography. This review also summarized 16 original research studies regarding AI-based assessment of severity and clinical features, 7 studies regarding the prediction of disease progression, and 6 studies regarding the characterization of treatment response. There were only three studies regarding the use of AI in identifying susceptibility genes involved in the etiology and pathogenesis of keratoconus.Algorithms trained on Scheimpflug-based tomography seem promising tools for the early diagnosis of keratoconus that can be particularly applied in low-resource communities. Future studies could investigate the application of AI models trained on multimodal patient information for staging keratoconus severity and tracking disease progression.
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人工智能在角膜病诊断和管理中的应用:系统综述
人工智能(AI)系统在眼科领域的应用正在迅速扩大。早期发现和治疗角膜塑形镜对于防止疾病恶化和角膜移植的需要非常重要。我们对 PubMed、Web of Science、Embase 和 Cochrane 数据库中从开始到 2023 年 10 月 31 日的相关原始英文研究进行了系统检索,检索时使用了以下关键词:人工智能、深度学习、机器学习、角膜病和角膜异位症。病例报告、文献综述、会议论文集和社论均被排除在外。我们从每项符合条件的研究中提取了以下数据:人工智能的类型、用于训练的输入、输出、地面实况或参考、数据集大小、算法/模型的可用性、数据集的可用性以及主要研究结果。大多数研究涉及人工智能在检测角膜病或亚临床角膜病中的应用(n=61)。在有关角膜炎诊断的研究中,最常见的输入是角膜地形图、基于 Scheimpflug 的角膜断层扫描和前段光学相干断层扫描。本综述还总结了 16 项关于基于人工智能的严重程度和临床特征评估的原创性研究、7 项关于疾病进展预测的研究和 6 项关于治疗反应特征的研究。在基于 Scheimpflug 的层析成像上训练的算法似乎是角膜病早期诊断的有前途的工具,尤其适用于资源匮乏的社区。未来的研究可以探讨如何应用根据患者多模态信息训练的人工智能模型来分期角膜病的严重程度并跟踪疾病的进展。
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