最优阈值与神经网络融合的计算机辅助糖尿病视网膜病变诊断模型

A. Jadhav, Pushpa B. Patil, Sunil Biradar
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引用次数: 6

摘要

糖尿病视网膜病变(DR)是全世界失明的主要根源之一。虽然DR在开始阶段很难诊断,即使对合格的专家来说,检测过程也可能很耗时。如今,智能疾病检测技术对于各种疾病的进展分析和识别是非常受欢迎的。因此,我们提出了一种基于智能学习方法的计算机辅助诊断方案,以便使用基准数据集有效地诊断DR。提出的DR诊断过程包括四个主要步骤:(1)图像预处理,(2)血管分割,(3)特征提取,(4)分类。首先,利用对比度有限自适应直方图均衡化(CLAHE)和平均滤波器对眼底图像进行预处理。下一步,使用优化的灰度阈值分割过程进行血管分割。血管提取完成后,利用局部二值模式(LBP)、纹理能量测量(基于纹理能量定律的TEM)和Shanon熵和Kapur熵两种熵计算方法进行特征提取。这些收集到的特征被一个称为神经网络(NN)的分类器使用优化的训练算法。采用改进的Levy update - dragonfly算法(MLU-DA)对灰度阈值和神经网络进行了增强,最大限度地提高了分割精度,减小了神经网络预测结果与实际结果之间的误差差。最后,这种分类误差可以正确地证明所提出的DR检测模型的有效性。MLU-DA的总体准确率比传统分类器高16.6%,比LM-NN高22%,比PSO-NN、GWO-NN和DA-NN高16.6%。本文采用最优灰度阈值的最新优化算法MLU-DA- neural Network用于糖尿病视网膜病变的检测。这是第一次利用基于mlu - da的神经网络进行糖尿病视网膜病变的计算机辅助诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer-aided diabetic retinopathy diagnostic model using optimal thresholding merged with neural network
Diabetic retinopathy (DR) is a central root of blindness all over the world. Though DR is tough to diagnose in starting stages, and the detection procedure might be time-consuming even for qualified experts. Nowadays, intelligent disease detection techniques are extremely acceptable for progress analysis and recognition of various diseases. Therefore, a computer-aided diagnosis scheme based on intelligent learning approaches is intended to propose for diagnosing DR effectively using a benchmark dataset.,The proposed DR diagnostic procedure involves four main steps: (1) image pre-processing, (2) blood vessel segmentation, (3) feature extraction, and (4) classification. Initially, the retinal fundus image is taken for pre-processing with the help of Contrast Limited Adaptive Histogram Equalization (CLAHE) and average filter. In the next step, the blood vessel segmentation is carried out using a segmentation process with optimized gray-level thresholding. Once the blood vessels are extracted, feature extraction is done, using Local Binary Pattern (LBP), Texture Energy Measurement (TEM based on Laws of Texture Energy), and two entropy computations – Shanon's entropy, and Kapur's entropy. These collected features are subjected to a classifier called Neural Network (NN) with an optimized training algorithm. Both the gray-level thresholding and NN is enhanced by the Modified Levy Updated-Dragonfly Algorithm (MLU-DA), which operates to maximize the segmentation accuracy and to reduce the error difference between the predicted and actual outcomes of the NN. Finally, this classification error can correctly prove the efficiency of the proposed DR detection model.,The overall accuracy of the proposed MLU-DA was 16.6% superior to conventional classifiers, and the precision of the developed MLU-DA was 22% better than LM-NN, 16.6% better than PSO-NN, GWO-NN, and DA-NN. Finally, it is concluded that the implemented MLU-DA outperformed state-of-the-art algorithms in detecting DR.,This paper adopts the latest optimization algorithm called MLU-DA-Neural Network with optimal gray-level thresholding for detecting diabetic retinopathy disease. This is the first work utilizes MLU-DA-based Neural Network for computer-aided Diabetic Retinopathy diagnosis.
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