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Deep learning-based automated grading of visual impairment in cataract patients using fundus images

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摘要 Cataract is the leading cause of visual impairment globally.The scarcity and uneven distribution of ophthalmologists seriously hinder early visual impairment grading for cataract patients in the clin-ic.In this study,a deep learning-based automated grading system of visual impairment in cataract patients is proposed using a multi-scale efficient channel attention convolutional neural network(MECA_CNN).First,the efficient channel attention mechanism is applied in the MECA_CNN to extract multi-scale features of fundus images,which can effectively focus on lesion-related regions.Then,the asymmetric convolutional modules are embedded in the residual unit to reduce the infor-mation loss of fine-grained features in fundus images.In addition,the asymmetric loss function is applied to address the problem of a higher false-negative rate and weak generalization ability caused by the imbalanced dataset.A total of 7299 fundus images derived from two clinical centers are em-ployed to develop and evaluate the MECA_CNN for identifying mild visual impairment caused by cataract(MVICC),moderate to severe visual impairment caused by cataract(MSVICC),and nor-mal sample.The experimental results demonstrate that the MECA_CNN provides clinically meaning-ful performance for visual impairment grading in the internal test dataset:MVICC(accuracy,sensi-tivity,and specificity;91.3%,89.9%,and 92%),MSVICC(93.2%,78.5%,and 96.7%),and normal sample(98.1%,98.0%,and 98.1%).The comparable performance in the external test dataset is achieved,further verifying the effectiveness and generalizability of the MECA_CNN model.This study provides a deep learning-based practical system for the automated grading of visu-al impairment in cataract patients,facilitating the formulation of treatment strategies in a timely man-ner and improving patients’vision prognosis.
作者 蒋杰伟 ZHANG Yi XIE He GONG Jiamin ZHU Shaomin WU Shanjun LI Zhongwen JIANG Jiewei;ZHANG Yi;XIE He;GONG Jiamin;ZHU Shaomin;WU Shanjun;LI Zhongwen(School of Electronic Engineering,Xi’an University of Posts and Telecommunications,Xi’an 710121,P.R.China;School of Ophthalmology and Optometry and Eye Hospital,Wenzhou Medical University,Wenzhou 325000,P.R.China;Ningbo Eye Hospital,Wenzhou Medical University,Ningbo 315000,P.R.China)
出处 《High Technology Letters》 EI CAS 2023年第4期377-387,共11页 高技术通讯(英文版)
基金 the National Natural Science Foundation of China(No.62276210,82201148,61775180) the Natural Science Basic Research Program of Shaanxi Province(No.2022JM-380) the Shaanxi Province College Students'Innovation and Entrepreneurship Training Program(No.S202311664128X) the Natural Science Foundation of Zhejiang Province(No.LQ22H120002) the Medical Health Science and Technology Project of Zhejiang Province(No.2022RC069,2023KY1140) the Natural Science Foundation of Ningbo(No.2023J390)。
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