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KeratoDetect: Keratoconus Detection Algorithm Using Convolutional Neural Networks

机译:KeratoDetect:卷积神经网络的角蛋白检测算法

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Keratoconus (KTC) is a noninflammatory disorder characterized by progressive thinning, corneal deformation, and scarring of the cornea. The pathological mechanisms of this condition have been investigated for a long time. In recent years, this disease has come to the attention of many research centers because the number of people diagnosed with keratoconus is on the rise. In this context, solutions that facilitate both the diagnostic and treatment options are quickly needed. The main contribution of this paper is the implementation of an algorithm that is able to determine whether an eye is affected or not by keratoconus. The KeratoDetect algorithm analyzes the corneal topography of the eye using a convolutional neural network (CNN) that is able to extract and learn the features of a keratoconus eye. The results show that the KeratoDetect algorithm ensures a high level of performance, obtaining an accuracy of 99.33% on the data test set. KeratoDetect can assist the ophthalmologist in rapid screening of its patients, thus reducing diagnostic errors and facilitating treatment.
机译:角蛋白(KTC)是一种非炎症性疾病,其特征在于渐进式稀疏,角膜变形和角膜瘢痕形成。这种情况的病理机制已经进行了很长时间。近年来,这种疾病提请了许多研究中心的注意,因为诊断出Keratoconus的人数正在上升。在这种情况下,快速需要促进诊断和治疗方案的解决方案。本文的主要贡献是实现能够确定眼睛是否受到角色影响的算法的实现。 KeratoDetect算法使用能够提取和学习角蛋白酶的特征的卷积神经网络(CNN)分析眼睛的角膜地形。结果表明,KeratoDetect算法确保了高水平的性能,在数据测试集中获得了99.33%的精度。 Keratodetect可以帮助眼科医生在快速筛查其患者,从而减少诊断误差并促进治疗。

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