基于优化阈值血管分割和混合分类器的糖尿病视网膜病变自动诊断

IF 1.2 Q3 Computer Science
B. Narhari, Bakwad Kamlakar Murlidhar, A. Sayyad, G. Sable
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引用次数: 2

摘要

摘要目的本文的重点是介绍一种通过分析血管,通过增强分割和分类策略,从彩色眼底图像中自动检测早期糖尿病视网膜病变(DR)的方案。方法DR的发生率在过去几年中不断增加,由于血糖水平的突然升高而影响眼睛。在世界各地,70岁以下的人中有一半患有严重的糖尿病。在缺乏对DR的早期识别和适当治疗的情况下,受DR影响的患者将失去视力。为了减少视力丧失的增长和发生,DR的早期发现和及时治疗是可取的。目前,使用视网膜图像进行DR检测的深度学习模型表现出更好的性能。在这项工作中,最初对输入的视网膜眼底图像进行预处理,该预处理通过对比度限制自适应直方图均衡(CLAHE)和平均滤波进行对比度增强。此外,对血管分割进行了基于二值阈值的优化分割。对分割后的图像进行三级离散小波分解(Tri-DWT),在特征提取阶段提取局部二值模式(LBP)和灰度共生矩阵(GLCM)。接下来,通过两种算法的组合来完成图像的分类,一种是神经网络(NN),另一种是卷积神经网络(CNN)。对提取的特征进行NN处理,对基于三DWT的分割图像进行CNN处理。分割和分类阶段都通过称为基于适应度率的Crow搜索算法(FR-CSA)的改进元启发式算法来增强,在该算法中,为了获得最大的检测精度,对一些参数进行了优化。结果所提出的DR检测模型在MATLAB 2018a中实现,并使用HRF、Messidor和DIARETDB三个数据集进行分析。结论所开发的FR-CSA算法在诊断DR中具有最好的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated diagnosis of diabetic retinopathy enabled by optimized thresholding-based blood vessel segmentation and hybrid classifier
Abstract Objectives The focus of this paper is to introduce an automated early Diabetic Retinopathy (DR) detection scheme from colour fundus images through enhanced segmentation and classification strategies by analyzing blood vessels. Methods The occurrence of DR is increasing from the past years, impacting the eyes due to a sudden rise in the glucose level of blood. All over the world, half of the people who are under age 70 are severely suffered from diabetes. The patients who are affected by DR will lose their vision during the absence of early recognition of DR and appropriate treatment. To decrease the growth and occurrence of loss of vision, the early detection and timely treatment of DR are desirable. At present, deep learning models have presented better performance using retinal images for DR detection. In this work, the input retinal fundus images are initially subjected to pre-processing that undergoes contrast enhancement by Contrast Limited Adaptive Histogram Equalization (CLAHE) and average filtering. Further, the optimized binary thresholding-based segmentation is done for blood vessel segmentation. For the segmented image, Tri-level Discrete Level Decomposition (Tri-DWT) is performed to decompose it. In the feature extraction phase, Local Binary Pattern (LBP), and Gray-Level Co-occurrence Matrices (GLCMs) are extracted. Next, the classification of images is done through the combination of two algorithms, one is Neural Network (NN), and the other Convolutional Neural Network (CNN). The extracted features are subjected to NN, and the tri-DWT-based segmented image is subjected to CNN. Both the segmentation and classification phases are enhanced by the improved meta-heuristic algorithm called Fitness Rate-based Crow Search Algorithm (FR-CSA), in which few parameters are optimized for attaining maximum detection accuracy. Results The proposed DR detection model was implemented in MATLAB 2018a, and the analysis was done using three datasets, HRF, Messidor, and DIARETDB. Conclusions The developed FR-CSA algorithm has the best detection accuracy in diagnosing DR.
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来源期刊
Bio-Algorithms and Med-Systems
Bio-Algorithms and Med-Systems MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
3.80
自引率
0.00%
发文量
3
期刊介绍: The journal Bio-Algorithms and Med-Systems (BAMS), edited by the Jagiellonian University Medical College, provides a forum for the exchange of information in the interdisciplinary fields of computational methods applied in medicine, presenting new algorithms and databases that allows the progress in collaborations between medicine, informatics, physics, and biochemistry. Projects linking specialists representing these disciplines are welcome to be published in this Journal. Articles in BAMS are published in English. Topics Bioinformatics Systems biology Telemedicine E-Learning in Medicine Patient''s electronic record Image processing Medical databases.
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