Artificial intelligence-assisted glaucoma detection on color fundus images: with comorbidity and cross-institutional analysis.

IF 2.4
Wei-Shiang Chen, Yu-Chieh Ko, Yen-Cheng Chen, Henry Horng-Shing Lu
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Abstract

Background: Glaucoma is a major cause of irreversible blindness, and early detection is essential to prevent vision loss. Color fundus photography is a simple, low-cost, and noninvasive eye screening method, but diagnosis through this method can be difficult in patients with additional retinal diseases. Although artificial intelligence (AI) can address this difficulty, its effectiveness may vary between hospitals. In this study, an AI glaucoma detection system was developed and tested for reliability across different populations and clinical settings.

Methods: A stepwise AI pipeline was designed that combined image enhancement, automated identification of the optic nerve area, and deep learning-based classification. The system was trained on 1696 images from Taipei Veterans General Hospital and tested on five cross-regional external datasets. The system was also evaluated on a separate internal set of 151 images representing comorbid eye diseases.

Results: The AI system achieved a balanced accuracy of at least 80% on all external datasets. For images with other eye diseases, it achieved an area under the curve of 0.93 and a balanced accuracy of 80.9%. Its performance remained consistent regardless of differences in patient ethnicity, camera types, and image quality.

Conclusion: The proposed AI system can detect glaucoma on standard color fundus photographs with high accuracy across clinical environments and in the presence of comorbid eye diseases. The system may be a practical and affordable tool for large-scale glaucoma screening, particularly in institutions with limited resources.

人工智能辅助青光眼彩色眼底图像检测:合并症和跨机构分析。
背景:青光眼是不可逆失明的主要原因,早期发现对预防视力丧失至关重要。彩色眼底摄影是一种简单、低成本、无创的眼部筛查方法,但在患有其他视网膜疾病的患者中,通过这种方法进行诊断可能很困难。尽管人工智能(AI)可以解决这一难题,但其有效性可能因医院而异。在本研究中,开发了一种人工智能青光眼检测系统,并对其在不同人群和临床环境中的可靠性进行了测试。方法:设计了一种结合图像增强、视神经区域自动识别和深度学习分类的逐步人工智能流水线。该系统在台北荣民总医院的1696张图像上进行了训练,并在5个跨区域的外部数据集上进行了测试。该系统还在代表共病眼病的151张单独的内部图像集上进行了评估。结果:AI系统在所有外部数据集上实现了至少80%的平衡精度。对于其他眼病的图像,曲线下面积为0.93,平衡精度为80.9%。无论患者种族、相机类型和图像质量如何,其表现都是一致的。结论:本文提出的人工智能系统可以在临床环境和存在合并症的眼部疾病的情况下,对标准彩色眼底照片进行青光眼检测,准确率较高。该系统可能是大规模青光眼筛查的实用和负担得起的工具,特别是在资源有限的机构中。
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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