利用深度学习改进青光眼诊断

Saumya Borwankar, R. Sen, Bhavin Kakani
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引用次数: 5

摘要

青光眼被认为是视力丧失的主要原因之一,在许多情况下是不可逆的[1]。这是一种损害视神经的疾病,由于早期症状不明显,所以在早期没有被注意到。最近的方法是根据可用的数据集自动检测青光眼。世界卫生组织还认为,由于在全球对健康挑战进行了健康评估,眼睛缺陷是至关重要的。调查指出,它可能成为2020年的主要问题之一,可能影响约7500万至8000万人。我们已经使用深度学习方法自动化了青光眼的诊断过程。图像处理已经获得了很大的吸引力,可以用于形成计算机辅助诊断疾病的这个问题。最后,我们将我们的结果与之前的方法进行了比较,结果表明我们的方法具有更好的准确率得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Glaucoma Diagnosis Using Deep Learning
Glaucoma is termed as one of the top leading causes of vision loss and in many cases is irreversible [1]. It is a condition that damages the optic nerve and it goes unnoticed in early stages as the symptoms are not prominent in the early stages. Recent approaches have been made to automate the detection of glaucoma based on available datasets. World Health Organization also looks at eye defects to be critical as a result of the health evaluation conducted globally on health challenges. Survey points to the fact that it can become one of the primary concerns in 2020 which might affect around 75-80 million people. We have automated the process of diagnosis of glaucoma using deep learning approaches. Image processing has gained a lot of attraction and can be used for this problem in forming a computer-aided diagnosis for diseases. In the end, we have compared our results with previous approaches, which shows that our method has a better accuracy score.
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