Department of Computer Science & Engineering, Amity University, Noida, India.
Department of Electronics & Communication Engineering, Amity University, Noida, India.
Int J Med Inform. 2018 Feb;110:52-70. doi: 10.1016/j.ijmedinf.2017.11.015. Epub 2017 Nov 26.
Glaucoma is an ocular disease which can cause irreversible blindness. The disease is currently identified using specialized equipment operated by optometrists manually. The proposed work aims to provide an efficient imaging solution which can help in automating the process of Glaucoma diagnosis using computer vision techniques from digital fundus images. The proposed method segments the optic disc using a geometrical feature based strategic framework which improves the detection accuracy and makes the algorithm invariant to illumination and noise. Corner thresholding and point contour joining based novel methods are proposed to construct smooth contours of Optic Disc. Based on a clinical approach as used by ophthalmologist, the proposed algorithm tracks blood vessels inside the disc region and identifies the points at which first vessel bend from the optic disc boundary and connects them to obtain the contours of Optic Cup. The proposed method has been compared with the ground truth marked by the medical experts and the similarity parameters, used to determine the performance of the proposed method, have yield a high similarity of segmentation. The proposed method has achieved a macro-averaged f-score of 0.9485 and accuracy of 97.01% in correctly classifying fundus images. The proposed method is clinically significant and can be used for Glaucoma screening over a large population which will work in a real time.
青光眼是一种眼部疾病,可导致不可逆转的失明。目前,这种疾病是通过由验光师手动操作的专门设备来识别的。本研究旨在提供一种有效的成像解决方案,通过使用计算机视觉技术从眼底数字图像中,帮助自动化青光眼诊断过程。所提出的方法使用基于几何特征的策略框架来分割视盘,从而提高检测精度,并使算法不受光照和噪声的影响。提出了基于角点阈值和点轮廓连接的新方法来构建视盘的平滑轮廓。基于眼科医生使用的临床方法,该算法跟踪视盘区域内的血管,并识别出第一个血管从视盘边界弯曲的点,并将它们连接起来以获得视杯的轮廓。所提出的方法与医学专家标记的真实数据进行了比较,用于确定所提出方法性能的相似性参数得出了分割高度相似的结果。所提出的方法在正确分类眼底图像方面取得了宏平均 f 分数为 0.9485 和准确度为 97.01%的优异成绩。该方法具有临床意义,可以用于对大量人群进行青光眼筛查,并可以实时工作。