Creating an Early Diagnostic Method for Glaucoma Using Convolutional Neural Networks

Areej A. Alqarni, Sanad H. Al Harbi, Irshad A. Subhan
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Abstract

According to the World Health Organization, glaucoma is a leading cause of blindness, accounting for over 12% of global blindness as it affects one in every 100 people. In fact, 79.6 million people worldwide live with blindness caused by glaucoma. This is because the current method for diagnosing glaucoma is by examining retinal fundus images. However, it is considerably difficult to distinguish the lesions' features solely through manual observations by ophthalmologists, especially in the early phases. This study proposes a new diagnosis method using convolutional neural networks. The attention mechanism is utilized to learn pixel-wise features for accurate prediction. Several attention strategies have been developed to guide the networks in learning the important features and factors that affect localization accuracy. The algorithms were trained for glaucoma detection using Python 2.7, TensorFlow, Py Torch, and Keras. The methods were evaluated on Drishti-GS and RIM-ONE datasets with 361 training and 225 test sets, consisting of 344 healthy and 242 glaucomatous images. The proposed algorithms can achieve impressive results that show an increase in overall diagnostic efficiency, as the algorithm displays a 30-second detection time with 98.9% accuracy compared to the 72.3% accuracy of traditional testing methods. Finally, this algorithm has been implemented as a webpage, allowing patients to test for glaucoma. This webpage offers various services such as: connecting the patient to the nearest care setup; offering scientific articles regarding glaucoma; and a video game that supports eye-treatment yogic exercises to strengthen vision and focus. This early diagnostic method has the near future potential to decrease the percentage of irreversible vision loss due to glaucoma by 42.79% (the percentage was calculated using the mean absolute error function), which could prevent glaucoma from remaining the leading cause of blindness worldwide.
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利用卷积神经网络创建青光眼早期诊断方法
据世界卫生组织统计,青光眼是导致失明的主要原因之一,占全球失明人数的 12%以上,每 100 人中就有一人受到青光眼的影响。事实上,全世界有 7960 万人因青光眼而失明。这是因为目前诊断青光眼的方法是检查视网膜眼底图像。本研究提出了一种使用卷积神经网络的新诊断方法。本研究利用卷积神经网络提出了一种新的诊断方法,利用注意力机制来学习像素特征,从而进行准确预测。我们开发了几种注意力策略来指导网络学习影响定位准确性的重要特征和因素。我们使用 Python2.7、TensorFlow、Py Torch 和 Keras 对算法进行了训练,以检测青光眼。这些方法在 DrishtiGS 和 RIM-ONE 数据集上进行了评估,共有 361 个训练集和 225 个测试集,其中包括 344 张健康图像和 242 张青光眼图像。与传统检测方法 72.3% 的准确率相比,该算法的检测时间仅为 30 秒,准确率高达 98.9%。最后,该算法还被制作成网页,供患者检测青光眼。该网页提供多种服务,例如:将患者与最近的医疗机构联系起来;提供有关青光眼的科学文章;以及支持眼部治疗瑜伽练习的视频游戏,以增强视力和注意力。在不久的将来,这种早期诊断方法有可能将青光眼导致的不可逆转视力损失的比例降低 42.79%(该比例是使用平均绝对误差函数计算得出的),从而避免青光眼继续成为全球致盲的主要原因。
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