机器学习
软件部署
人工智能
计算机科学
结束语(心理学)
分类
疾病
临床实习
算法
医学
病理
物理疗法
市场经济
操作系统
经济
作者
Zhi Da Soh,Mingrui Tan,Monisha E. Nongpiur,Benjamin Y. Xu,David S. Friedman,Xiulan Zhang,Christopher Kai-Shun Leung,Nan Liu,Victor Koh,Tin Aung,Ching‐Yu Cheng
标识
DOI:10.1016/j.preteyeres.2023.101227
摘要
Primary angle closure glaucoma is a visually debilitating disease that is under-detected worldwide. Many of the challenges in managing primary angle closure disease (PACD) are related to the lack of convenient and precise tools for clinic-based disease assessment and monitoring. Artificial intelligence (AI)- assisted tools to detect and assess PACD have proliferated in recent years with encouraging results. Machine learning (ML) algorithms that utilize clinical data have been developed to categorize angle closure eyes by disease mechanism. Other ML algorithms that utilize image data have demonstrated good performance in detecting angle closure. Nonetheless, deep learning (DL) algorithms trained directly on image data generally outperformed traditional ML algorithms in detecting PACD, were able to accurately differentiate between angle status (open, narrow, closed), and automated the measurement of quantitative parameters. However, more work is required to expand the capabilities of these AI algorithms and for deployment into real-world practice settings. This includes the need for real-world evaluation, establishing the use case for different algorithms, and evaluating the feasibility of deployment while considering other clinical, economic, social, and policy-related factors.
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