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Intelligent diagnosis of retinal vein occlusion based on color fundus photographs
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作者 yu-ke ji Rong-Rong Hua +3 位作者 Sha Liu Cui-Juan Xie Shao-Chong Zhang Wei-Hua Yang 《International Journal of Ophthalmology(English edition)》 SCIE CAS 2024年第1期1-6,共6页
AIM:To develop an artificial intelligence(AI)diagnosis model based on deep learning(DL)algorithm to diagnose different types of retinal vein occlusion(RVO)by recognizing color fundus photographs(CFPs).METHODS:Totally ... AIM:To develop an artificial intelligence(AI)diagnosis model based on deep learning(DL)algorithm to diagnose different types of retinal vein occlusion(RVO)by recognizing color fundus photographs(CFPs).METHODS:Totally 914 CFPs of healthy people and patients with RVO were collected as experimental data sets,and used to train,verify and test the diagnostic model of RVO.All the images were divided into four categories[normal,central retinal vein occlusion(CRVO),branch retinal vein occlusion(BRVO),and macular retinal vein occlusion(MRVO)]by three fundus disease experts.Swin Transformer was used to build the RVO diagnosis model,and different types of RVO diagnosis experiments were conducted.The model’s performance was compared to that of the experts.RESULTS:The accuracy of the model in the diagnosis of normal,CRVO,BRVO,and MRVO reached 1.000,0.978,0.957,and 0.978;the specificity reached 1.000,0.986,0.982,and 0.976;the sensitivity reached 1.000,0.955,0.917,and 1.000;the F1-Sore reached 1.000,0.9550.943,and 0.887 respectively.In addition,the area under curve of normal,CRVO,BRVO,and MRVO diagnosed by the diagnostic model were 1.000,0.900,0.959 and 0.970,respectively.The diagnostic results were highly consistent with those of fundus disease experts,and the diagnostic performance was superior.CONCLUSION:The diagnostic model developed in this study can well diagnose different types of RVO,effectively relieve the work pressure of clinicians,and provide help for the follow-up clinical diagnosis and treatment of RVO patients. 展开更多
关键词 deep learning artificial intelligence Swin Transformer diagnostic model retinal vein occlusion color fundus photographs
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Research progress in artificial intelligence assisted diabetic retinopathy diagnosis
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作者 Yun-Fang Liu yu-ke ji +3 位作者 Fang-Qin Fei Nai-Mei Chen Zhen-Tao Zhu Xing-Zhen Fei 《International Journal of Ophthalmology(English edition)》 SCIE CAS 2023年第9期1395-1405,共11页
Diabetic retinopathy(DR)is one of the most common retinal vascular diseases and one of the main causes of blindness worldwide.Early detection and treatment can effectively delay vision decline and even blindness in pa... Diabetic retinopathy(DR)is one of the most common retinal vascular diseases and one of the main causes of blindness worldwide.Early detection and treatment can effectively delay vision decline and even blindness in patients with DR.In recent years,artificial intelligence(AI)models constructed by machine learning and deep learning(DL)algorithms have been widely used in ophthalmology research,especially in diagnosing and treating ophthalmic diseases,particularly DR.Regarding DR,AI has mainly been used in its diagnosis,grading,and lesion recognition and segmentation,and good research and application results have been achieved.This study summarizes the research progress in AI models based on machine learning and DL algorithms for DR diagnosis and discusses some limitations and challenges in AI research. 展开更多
关键词 diabetic retinopathy artificial intelligence machine learning deep learning DIAGNOSIS GRADING lesions segmentation
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人工智能在视光学领域中的研究进展 被引量:2
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作者 纪玉珂 陈楠 +5 位作者 颜智鹏 李柯然 王成虎 曹国凡 蒋沁 杨卫华 《国际眼科杂志》 CAS 北大核心 2022年第5期731-735,共5页
近年来,随着计算机科学技术的不断提高,以深度学习(DL)为基础的人工智能(AI)技术得到了飞速的发展,引起了全球的广泛关注。AI在医学领域的研究和应用已经取得了很大的进展,在眼科视光学领域,AI可对近视、斜视、弱视等疾病进行辅助诊断;... 近年来,随着计算机科学技术的不断提高,以深度学习(DL)为基础的人工智能(AI)技术得到了飞速的发展,引起了全球的广泛关注。AI在医学领域的研究和应用已经取得了很大的进展,在眼科视光学领域,AI可对近视、斜视、弱视等疾病进行辅助诊断;在圆锥角膜的筛查和早期诊断以及近视的预防和矫正中取得了良好的结果。尽管如此,AI在眼科的应用也存在巨大的限制和挑战,包括临床和技术挑战、算法结果的可解释性、医学法律问题等。本文综述了AI在眼科视光学领域诊疗中的应用、局限性及展望。 展开更多
关键词 人工智能 深度学习 视光学
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