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The Clinical Influence after Implementation of Convolutional Neural Network-Based Software for Diabetic Retinopathy Detection in the Primary Care Setting

机译:在初级保健环境中实施卷积神经网络基于糖尿病性视网膜病变检测的临床影响

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摘要

Deep learning-based software is developed to assist physicians in terms of diagnosis; however, its clinical application is still under investigation. We integrated deep-learning-based software for diabetic retinopathy (DR) grading into the clinical workflow of an endocrinology department where endocrinologists grade for retinal images and evaluated the influence of its implementation. A total of 1432 images from 716 patients and 1400 images from 700 patients were collected before and after implementation, respectively. Using the grading by ophthalmologists as the reference standard, the sensitivity, specificity, and area under the receiver operating characteristic curve (AUC) to detect referable DR (RDR) were 0.91 (0.87–0.96), 0.90 (0.87–0.92), and 0.90 (0.87–0.93) at the image level; and 0.91 (0.81–0.97), 0.84 (0.80–0.87), and 0.87 (0.83–0.91) at the patient level. The monthly RDR rate dropped from 55.1% to 43.0% after implementation. The monthly percentage of finishing grading within the allotted time increased from 66.8% to 77.6%. There was a wide range of agreement values between the software and endocrinologists after implementation (kappa values of 0.17–0.65). In conclusion, we observed the clinical influence of deep-learning-based software on graders without the retinal subspecialty. However, the validation using images from local datasets is recommended before clinical implementation.
机译:基于深度学习的软件开发,以协助医生在诊断方面;然而,其临床应用仍在调查中。我们综合基于深度学习的糖尿病视网膜病变软件(DR)分级,进入内分泌学部门的临床工作流程,其中内分泌学家为视网膜图像等分析并评估其实施的影响。在实施之前和之后,共收集了716名患者的1432张图像和来自700名患者的1400张图像。通过眼科医生的分级作为参考标准,接收器操作特性曲线(AUC)下的灵敏度,特异性和面积检测可称为DR(RDR)为0.91(0.87-0.96),0.90(0.87-0.92)和0.90 (0.87-0.93)在图像水平;患者水平的0.91(0.81-0.97),0.84(0.81-0.87),0.84(0.80-0.87)和0.87(0.83-0.91)。实施后,每月RDR率下降55.1%至43.0%。分配时间内完成分级的月度百分比从66.8%增加到77.6%。在实施后软件和内分泌学家之间存在广泛的协议值(Kappa值为0.17-0.65)。总之,我们观察了基于深度学习的软件在没有视网膜阶段的学生上的临床影响。但是,在临床实施之前建议使用来自本地数据集的图像的验证。

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