Clinically Applicable Deep Learning for Diagnosis of Diabetic Retinopathy

Li Yung-Hui, Yeh Nai-Ning, Kartika Purwandari, Latifa Nabila Harfiya
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引用次数: 4

Abstract

Diabetic retinopathy (DR) is the kind of diabetes complication that affects eyes and can damage the blood vessels inside the retina. To diagnose the strength of DR disease based on examination of the retina. Nowadays, the common diagnosis process asks for experienced ophthalmologists to inspect both fundus image and OCT (optical coherence tomography) images, which is time-consuming and not very convenient for remote rural inhabitants. The research purpose in this paper is to propose a new paradigm of automatic DR diagnosis by using artificial intelligence and cloud computing. Inside the DCNN, we changed max-pooling layers with factional max-pooling. We trained using support vector machine (SVM) to learn the underlying boundary of distribution of each category. Using that proposed method, we achieved the results of the recognition up to 86.17%. We also develop an iPhone APP. It called 'Deep Retina' that equipped with a handheld ophthalmoscope, a layman can take fundus images and perform the diagnosis automatically without intervention from ophthalmologists. It is a practically applicable telemedicine system which benefits the home care, remote medical care, and self-examination.
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深度学习在糖尿病视网膜病变诊断中的临床应用
糖尿病视网膜病变(DR)是一种糖尿病并发症,会影响眼睛,损害视网膜内的血管。目的:通过视网膜检查诊断DR病变的强度。目前,常见的诊断过程需要经验丰富的眼科医生同时检查眼底图像和OCT(光学相干断层扫描)图像,这对偏远的农村居民来说既费时又不方便。本文的研究目的是提出一种基于人工智能和云计算的DR自动诊断新范式。在DCNN内部,我们将最大池化层改为分部最大池化。我们使用支持向量机(SVM)来学习每个类别的底层分布边界。使用该方法,我们的识别率达到了86.17%。我们还开发了一款名为“Deep Retina”的iPhone应用程序,它配备了一个手持检眼镜,外行人可以在没有眼科医生干预的情况下自动拍摄眼底图像并进行诊断。它是一种适用于家庭护理、远程医疗、自我检查的远程医疗系统。
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