Bhansali Ashok, Patra Rajkumar, Abouhawwash Mohamed, Askar S S, Awasthy Mohan, Rao K B V Brahma
Deptartment of Computer Engineering and Applications, GLA University, Mathura, India.
Department of Computer Science and Engineering, CMR Technical Campus, Hyderabad, India.
Front Bioeng Biotechnol. 2023 Dec 19;11:1286966. doi: 10.3389/fbioe.2023.1286966. eCollection 2023.
Diabetic Retinopathy (DR) is a major type of eye defect that is caused by abnormalities in the blood vessels within the retinal tissue. Early detection by automatic approach using modern methodologies helps prevent consequences like vision loss. So, this research has developed an effective segmentation approach known as Level-set Based Adaptive-active Contour Segmentation (LBACS) to segment the images by improving the boundary conditions and detecting the edges using Level Set Method with Improved Boundary Indicator Function (LSMIBIF) and Adaptive-Active Counter Model (AACM). For evaluating the DR system, the information is collected from the publically available datasets named as Indian Diabetic Retinopathy Image Dataset (IDRiD) and Diabetic Retinopathy Database 1 (DIARETDB 1). Then the collected images are pre-processed using a Gaussian filter, edge detection sharpening, Contrast enhancement, and Luminosity enhancement to eliminate the noises/interferences, and data imbalance that exists in the available dataset. After that, the noise-free data are processed for segmentation by using the Level set-based active contour segmentation technique. Then, the segmented images are given to the feature extraction stage where Gray Level Co-occurrence Matrix (GLCM), Local ternary, and binary patterns are employed to extract the features from the segmented image. Finally, extracted features are given as input to the classification stage where Long Short-Term Memory (LSTM) is utilized to categorize various classes of DR. The result analysis evidently shows that the proposed LBACS-LSTM achieved better results in overall metrics. The accuracy of the proposed LBACS-LSTM for IDRiD and DIARETDB 1 datasets is 99.43% and 97.39%, respectively which is comparably higher than the existing approaches such as Three-dimensional semantic model, Delimiting Segmentation Approach Using Knowledge Learning (DSA-KL), K-Nearest Neighbor (KNN), Computer aided method and Chronological Tunicate Swarm Algorithm with Stacked Auto Encoder (CTSA-SAE).
糖尿病性视网膜病变(DR)是一种主要的眼部缺陷类型,由视网膜组织内血管异常引起。使用现代方法通过自动检测进行早期发现有助于预防视力丧失等后果。因此,本研究开发了一种有效的分割方法,即基于水平集的自适应主动轮廓分割(LBACS),通过改进边界条件并使用具有改进边界指示函数的水平集方法(LSMIBIF)和自适应主动轮廓模型(AACM)来检测边缘,从而对图像进行分割。为了评估糖尿病性视网膜病变系统,从公开可用的数据集收集信息,这些数据集分别名为印度糖尿病性视网膜病变图像数据集(IDRiD)和糖尿病性视网膜病变数据库1(DIARETDB 1)。然后,使用高斯滤波器、边缘检测锐化、对比度增强和亮度增强对收集到的图像进行预处理,以消除可用数据集中存在的噪声/干扰和数据不平衡。之后,使用基于水平集的主动轮廓分割技术对无噪声数据进行分割处理。然后,将分割后的图像送入特征提取阶段,在该阶段使用灰度共生矩阵(GLCM)、局部三元模式和二元模式从分割后的图像中提取特征。最后,将提取的特征作为输入送入分类阶段,在该阶段使用长短期记忆(LSTM)对糖尿病性视网膜病变的各种类别进行分类。结果分析明显表明,所提出的LBACS-LSTM在整体指标上取得了更好的结果。所提出的LBACS-LSTM对IDRiD和DIARETDB 1数据集的准确率分别为99.43%和97.39%,相比三维语义模型、基于知识学习的界定分割方法(DSA-KL)、K近邻(KNN)、计算机辅助方法以及带有堆叠自动编码器的时间顺序海鞘群算法(CTSA-SAE)等现有方法要高得多。