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利用超广角眼底照片和深度学习自动检测玻璃体混浊。

AUTOMATED DETECTION OF VITRITIS USING ULTRAWIDE-FIELD FUNDUS PHOTOGRAPHS AND DEEP LEARNING.

机构信息

Department of Ophthalmology, Sorbonne Université, Pitié Salpêtrière University Hospital, Paris, France.

Department of Ophthalmology, Centre Hospitalier Intercommunal de Créteil, Créteil, France.

出版信息

Retina. 2024 Jun 1;44(6):1034-1044. doi: 10.1097/IAE.0000000000004049.

Abstract

BACKGROUND/PURPOSE: Evaluate the performance of a deep learning algorithm for the automated detection and grading of vitritis on ultrawide-field imaging.

METHODS

Cross-sectional noninterventional study. Ultrawide-field fundus retinophotographs of uveitis patients were used. Vitreous haze was defined according to the six steps of the Standardization of Uveitis Nomenclature classification. The deep learning framework TensorFlow and the DenseNet121 convolutional neural network were used to perform the classification task. The best fitted model was tested in a validation study.

RESULTS

One thousand one hundred eighty-one images were included. The performance of the model for the detection of vitritis was good with a sensitivity of 91%, a specificity of 89%, an accuracy of 0.90, and an area under the receiver operating characteristics curve of 0.97. When used on an external set of images, the accuracy for the detection of vitritis was 0.78. The accuracy to classify vitritis in one of the six Standardization of Uveitis Nomenclature grades was limited (0.61) but improved to 0.75 when the grades were grouped into three categories. When accepting an error of one grade, the accuracy for the six-class classification increased to 0.90, suggesting the need for a larger sample to improve the model performances.

CONCLUSION

A new deep learning model based on ultrawide-field fundus imaging that produces an efficient tool for the detection of vitritis was described. The performance of the model for the grading into three categories of increasing vitritis severity was acceptable. The performance for the six-class grading of vitritis was limited but can probably be improved with a larger set of images.

摘要

背景/目的:评估深度学习算法在超广角成像中自动检测和分级玻璃体炎症的性能。

方法

横断面非干预性研究。使用葡萄膜炎患者的超广角眼底视网膜照相。根据标准葡萄膜炎命名分类的六个步骤定义玻璃体混浊。使用深度学习框架 TensorFlow 和 DenseNet121 卷积神经网络执行分类任务。在验证研究中测试最佳拟合模型。

结果

共纳入 1181 张图像。该模型对玻璃体炎症的检测性能良好,灵敏度为 91%,特异性为 89%,准确性为 0.90,接受者操作特征曲线下面积为 0.97。当应用于外部图像集时,玻璃体炎症的检测准确性为 0.78。在标准葡萄膜炎命名分类的六个等级之一中对玻璃体炎症进行分类的准确性有限(0.61),但当将等级分为三类时,准确性提高到 0.75。当接受一个等级的误差时,六级分类的准确性提高到 0.90,这表明需要更大的样本量来提高模型性能。

结论

描述了一种基于超广角眼底成像的新深度学习模型,该模型生成了一种用于检测玻璃体炎症的有效工具。该模型对严重程度递增的玻璃体炎症进行三级分类的性能可接受。对玻璃体炎症六级分类的性能有限,但可能可以通过更大的图像集来改善。

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