Department of Computer Applications, Kalasalingam Academy of Research and Education, Krishnankoil, Tamilnadu, India.
Higher Colleges of Technology, Ras Al Khaimah, United Arab Emirates.
J Int Med Res. 2024 Sep;52(9):3000605241271766. doi: 10.1177/03000605241271766.
We developed an optimized decision support system for retinal fundus image-based glaucoma screening.
We combined computer vision algorithms with a convolutional network for fundus images and applied a faster region-based convolutional neural network (FRCNN) and artificial algae algorithm with support vector machine (AAASVM) classifiers. Optic boundary detection, optic cup, and optic disc segmentations were conducted using TernausNet. Glaucoma screening was performed using the optimized FRCNN. The Softmax layer was replaced with an SVM classifier layer and optimized with an AAA to attain enhanced accuracy.
Using three retinal fundus image datasets (G1020, digital retinal images vessel extraction, and high-resolution fundus), we obtained accuracy of 95.11%, 92.87%, and 93.7%, respectively. Framework accuracy was amplified with an adaptive gradient algorithm optimizer FRCNN (AFRCNN), which achieved average accuracy 94.06%, sensitivity 93.353%, and specificity 94.706%. AAASVM obtained average accuracy of 96.52%, which was 3% ahead of the FRCNN classifier. These classifiers had areas under the curve of 0.9, 0.85, and 0.87, respectively.
Based on statistical Friedman evaluation, AAASVM was the best glaucoma screening model. Segmented and classified images can be directed to the health care system to assess patients' progress. This computer-aided decision support system will be useful for optometrists.
我们开发了一种优化的基于视网膜眼底图像的青光眼筛查决策支持系统。
我们将计算机视觉算法与卷积网络相结合,用于眼底图像,并应用更快的基于区域的卷积神经网络(FRCNN)和带有支持向量机(AAASVM)分类器的人工藻类算法。TernausNet 用于进行视盘边界检测、视杯和视盘分割。使用优化的 FRCNN 进行青光眼筛查。Softmax 层被替换为 SVM 分类器层,并通过 AAA 进行优化,以获得更高的准确性。
使用三个视网膜眼底图像数据集(G1020、数字视网膜图像血管提取和高分辨率眼底),我们分别获得了 95.11%、92.87%和 93.7%的准确率。使用自适应梯度算法优化器 FRCNN(AFRCNN)放大了框架的准确率,其平均准确率为 94.06%,灵敏度为 93.353%,特异性为 94.706%。AAASVM 获得了 96.52%的平均准确率,比 FRCNN 分类器高 3%。这些分类器的曲线下面积分别为 0.9、0.85 和 0.87。
基于统计 Friedman 评估,AAASVM 是最佳的青光眼筛查模型。分割和分类的图像可以直接发送到医疗保健系统,以评估患者的进展。这种计算机辅助决策支持系统将对验光师有用。