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Vision for Vision — Deep Learning in Retinal Image Analysis

机译:视觉为视觉—视网膜图像分析中的深度学习

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Automated, fast and large-scale computer-aided diagnosis of medical images has become reality. The greatest breakthrough is Deep Learning. It already has huge impact in self-driving cars, industrial product inspection, surveillance, robotics and translation services, and in the medical arena it is outperforming human experts already in many domains. However, it is still largely a black box. What can we learn from recent insights in the functionality, nanometer-scale connectivity and self-organization of the human visual brain? We will discuss several recent breakthroughs in our understanding of visual perception and visual deep learning. We apply these techniques in the RetinaCheck project, a large screening / early warning project for eye damage due to diabetes. In China now an alarming 11.6% of the population has developed diabetes, due to genetic factors and fast lifestyle changes. In this project large amounts of retinal fundus images are acquired, and the e-cloud deep learning system successfully learns to identify early biomarkers of retinal disease. The circle is round: we can prevent blindness by learning from the visual system: vision for vision.
机译:自动化,快速且大规模的计算机辅助医学图像诊断已成为现实。最大的突破是深度学习。它已经对自动驾驶汽车,工业产品检查,监视,机器人技术和翻译服务产生了巨大影响,并且在医疗领域,它已经在许多领域超过了人类专家。但是,它在很大程度上仍然是一个黑匣子。从人类视觉大脑的功能,纳米级连接性和自组织的最新见解中,我们可以学到什么?我们将在对视觉感知和视觉深度学习的理解中讨论最近的一些突破。我们将这些技术应用到RetinaCheck项目中,该项目是针对因糖尿病引起的眼部损伤的大型筛查/预警项目。由于遗传因素和快速的生活方式变化,在中国现在令人震惊的11.6%的人口患有糖尿病。在该项目中,获取了大量的视网膜眼底图像,并且电子云深度学习系统成功学习了识别视网膜疾病的早期生物标志物的功能。圆圈是圆形的:我们可以通过从视觉系统中学习来预防失明:以视觉为视觉。

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