Division of Biostatistics, Centre for Clinical Research and Biostatistics, Jockey Club School of Public Health and Primary Care, Faculty of Medicine, The Chinese University of Hong Kong, New Territories, Hong Kong, China.
Department of Ophthalmology, Zhongshan Hospital, Fudan University, Shanghai, China.
Sci Rep. 2022 Jun 21;12(1):10455. doi: 10.1038/s41598-022-13919-2.
Image quality assessment is essential for retinopathy detection on color fundus retinal image. However, most studies focused on the classification of good and poor quality without considering the different types of poor quality. This study developed an automatic retinal image analysis (ARIA) method, incorporating transfer net ResNet50 deep network with the automatic features generation approach to automatically assess image quality, and distinguish eye-abnormality-associated-poor-quality from artefact-associated-poor-quality on color fundus retinal images. A total of 2434 retinal images, including 1439 good quality and 995 poor quality (483 eye-abnormality-associated-poor-quality and 512 artefact-associated-poor-quality), were used for training, testing, and 10-ford cross-validation. We also analyzed the external validation with the clinical diagnosis of eye abnormality as the reference standard to evaluate the performance of the method. The sensitivity, specificity, and accuracy for testing good quality against poor quality were 98.0%, 99.1%, and 98.6%, and for differentiating between eye-abnormality-associated-poor-quality and artefact-associated-poor-quality were 92.2%, 93.8%, and 93.0%, respectively. In external validation, our method achieved an area under the ROC curve of 0.997 for the overall quality classification and 0.915 for the classification of two types of poor quality. The proposed approach, ARIA, showed good performance in testing, 10-fold cross validation and external validation. This study provides a novel angle for image quality screening based on the different poor quality types and corresponding dealing methods. It suggested that the ARIA can be used as a screening tool in the preliminary stage of retinopathy grading by telemedicine or artificial intelligence analysis.
图像质量评估对于眼底彩色视网膜图像中的视网膜病变检测至关重要。然而,大多数研究都集中在对良好和不良质量的分类上,而没有考虑到不同类型的不良质量。本研究开发了一种自动视网膜图像分析 (ARIA) 方法,该方法结合了转移网络 ResNet50 深度网络和自动特征生成方法,以自动评估图像质量,并区分眼底彩色视网膜图像中与眼部异常相关的不良质量和与伪影相关的不良质量。共使用了 2434 张视网膜图像,包括 1439 张良好质量和 995 张不良质量(483 张与眼部异常相关的不良质量和 512 张与伪影相关的不良质量)进行训练、测试和 10 倍交叉验证。我们还使用临床诊断的眼部异常作为参考标准进行外部验证,以评估该方法的性能。测试中良好质量与不良质量的灵敏度、特异性和准确性分别为 98.0%、99.1%和 98.6%,区分与眼部异常相关的不良质量和与伪影相关的不良质量的灵敏度、特异性和准确性分别为 92.2%、93.8%和 93.0%。在外部验证中,我们的方法在整体质量分类方面获得了 0.997 的 ROC 曲线下面积,在两种类型的不良质量分类方面获得了 0.915 的 ROC 曲线下面积。该方法在测试、10 倍交叉验证和外部验证中均表现出良好的性能。本研究为基于不同不良质量类型及其对应处理方法的图像质量筛查提供了新的角度。建议使用 ARIA 作为远程医疗或人工智能分析在视网膜病变分级的初步阶段的筛查工具。