Deep Sequential Feature Learning in Clinical Image Classification of Infectious Keratitis

Infectious keratitis is the most common condition of corneal diseases in which a pathogen grows in the cornea leading to inflammation and destruction of the corneal tissues. Infectious keratitis is a medical emergency for which a rapid and accurate diagnosis is needed to ensure prompt and precise tr...

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Published inEngineering (Beijing, China) Vol. 7; no. 7; pp. 1002 - 1010
Main Authors Xu, Yesheng, Kong, Ming, Xie, Wenjia, Duan, Runping, Fang, Zhengqing, Lin, Yuxiao, Zhu, Qiang, Tang, Siliang, Wu, Fei, Yao, Yu-Feng
Format Journal Article
LanguageEnglish
Published China Elsevier Ltd 01.07.2021
Department of Ophthalmology,Sir Run Run Shaw Hospital,School of Medicine,Zhejiang University,Hangzhou 310016,China%College of Computer Science and Technology,Zhejiang University,Hangzhou 31002,China
Elsevier
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Summary:Infectious keratitis is the most common condition of corneal diseases in which a pathogen grows in the cornea leading to inflammation and destruction of the corneal tissues. Infectious keratitis is a medical emergency for which a rapid and accurate diagnosis is needed to ensure prompt and precise treatment to halt the disease progression and to limit the extent of corneal damage; otherwise, it may develop a sight-threatening and even eye-globe-threatening condition. In this paper, we propose a sequential-level deep model to effectively discriminate infectious corneal disease via the classification of clinical images. In this approach, we devise an appropriate mechanism to preserve the spatial structures of clinical images and disentangle the informative features for clinical image classification of infectious keratitis. In a comparison, the performance of the proposed sequential-level deep model achieved 80% diagnostic accuracy, far better than the 49.27% ± 11.5% diagnostic accuracy achieved by 421 ophthalmologists over 120 test images.
Bibliography:USDOE Office of Electricity (OE), Advanced Grid Research & Development. Power Systems Engineering Research
2018C03082
ISSN:2095-8099
DOI:10.1016/j.eng.2020.04.012