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The Use of Convolutional Neural Networks and Digital Camera Images in Cataract Detection

Chi-Ju Lai, Ping‐Feng Pai, Marvin Marvin, Hsiao-Han Hung, Sihan Wang, Din-Nan Chen

2022Electronics25 citationsDOIOpen Access PDF

Abstract

Cataract is one of the major causes of blindness in the world. Its early detection and treatment could greatly reduce the risk of deterioration and blindness. Instruments commonly used to detect cataracts are slit lamps and fundus cameras, which are highly expensive and require domain knowledge. Thus, the problem is that the lack of professional ophthalmologists could result in the delay of cataract detection, where medical treatment is inevitable. Therefore, this study aimed to design a convolutional neural network (CNN) with digital camera images (CNNDCI) system to detect cataracts efficiently and effectively. The designed CNNDCI system can perform the cataract identification process accurately in a user-friendly manner using smartphones to collect digital images. In addition, the existing numerical results provided by the literature were used to demonstrate the performance of the proposed CNNDCI system for cataract detection. Numerical results revealed that the designed CNNDCI system could identify cataracts effectively with satisfying accuracy. Thus, this study concluded that the presented CNNDCI architecture is a feasible and promising alternative for cataract detection.

Topics & Concepts

CataractsConvolutional neural networkComputer scienceBlindnessArtificial intelligenceComputer visionFundus (uterus)OptometryMedicineOphthalmologyRetinal Imaging and AnalysisDigital Imaging for Blood DiseasesImage Processing Techniques and Applications