Web-Based Cataract Detection System Using Deep Convolutional Neural Network

Musa Yusuf, Samuel Theophilous, Jadesola Adejoke, A. B. Hassan
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引用次数: 8

Abstract

The alarming cases of cataract within the last decade and the projection of cataract cases within the next few decades call for urgent intervention by early diagnosis. Formal ways of detecting cataract such as physical examination, tests and diagnosis are clinic and professional bound. Hence the need for automation process. Some works have been done on Computer Aided Diagnosis (CAD) of cataract with tools such as Expert systems, which are limited to their knowledgebase thus inaccurate. Early diagnosis of cataract enables quick intervention and treatment. This paper presents a web-based Computer Aided Diagnostic for cataract detection system using Convolutional Neural Network that can be used by any nonprofessional outside the clinic environment. The systems model trained on a data set of 100 eye images using transfer learning which were retrieved from google image search results of “normal human eyes” and “human eye cataract”. It utilized ImageNet model developed in ILSVRC2012 using the Convolutional Neural Network classifier and transferred its knowledge using Transfer learning to train a new model. The new model gained the ability to classify eye images into “Normal” and “Cataractious”. The system was designed to take images as inputs and achieved a Sensitivity of 69%, a Specificity of 86%, Precision of 86%, F-Score of 56% and AUC of 84.56%. Its accuracy score was 78% which was influenced using the model trained during the ImageNet image classification using deep convolutional neural network
基于web的深度卷积神经网络白内障检测系统
过去十年中惊人的白内障病例和未来几十年白内障病例的预测要求通过早期诊断进行紧急干预。检查白内障的正规方法,如体检、检查和诊断,是临床和专业的结合。因此需要自动化过程。目前已有专家系统等工具对白内障的计算机辅助诊断(CAD)进行了一些研究,但由于其知识库有限,不准确。白内障的早期诊断可以快速干预和治疗。本文介绍了一种基于网络的基于卷积神经网络的白内障检测计算机辅助诊断系统,该系统可以供临床环境以外的任何非专业人员使用。该系统模型采用迁移学习的方法对100张眼睛图像进行训练,这些图像来自于“正常人眼睛”和“人眼白内障”的谷歌图像搜索结果。利用ILSVRC2012中开发的ImageNet模型,使用卷积神经网络分类器,利用迁移学习对其知识进行迁移,训练新的模型。新模型获得了将眼睛图像分为“正常”和“白内障”的能力。该系统以图像为输入,灵敏度为69%,特异性为86%,精度为86%,F-Score为56%,AUC为84.56%。使用深度卷积神经网络对ImageNet图像进行分类时所训练的模型对其准确率的影响为78%
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