基于灰度游程矩阵特征提取的神经网络肺部x射线图像肺结核检测

Togi SiholMarito Simarmata, R. Isnanto, A. Triwiyatno
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引用次数: 0

摘要

结核病是一种由结核分枝杆菌引起的疾病,它会攻击呼吸系统。这项研究的目的是在胸部x光图像上检测细菌。x射线图像将在本研究中使用的四个阶段进行处理,即预处理,分割,使用GLRLM(灰度运行长度矩阵)提取特征以及使用人工神经网络检测方法。本研究对结核的检测准确率为98.8%,正常肺为97.5%,结核肺为100%。本研究的输入图像是由Kaggle获得的结核阳性和正常情况患者的肺部x线图像。使用的图像为2099张,分为2019张训练图像、334张结核病训练图像和165张正常训练图像。检测80张图像,其中结核图像40张,正常图像40张。从百分准确率的结果来看,采用GLRLM特征提取方法和人工神经网络所构建的系统对于肺结核的检测效果非常好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Pulmonary Tuberculosis Using Neural Network with Feature Extraction of Gray Level Run-Length Matrix Method on Lung X-Ray Images
Tuberculosis is a disease caused by Mycobacterium tuberculosis, which attacks the respiratory system. The purpose of the research is to detect bacteria on chest X-ray images. The x-ray images will be processed in the four stages used in this study i.e. pre-processing, segmentation, feature extraction using GLRLM (Gray Level Run Length Matrix) and detection methods using an artificial neural network. The accuracy rate for detecting tuberculosis in this research is 98.8%, with normal lungs at 97.5% and tuberculosis lungs at 100%. The input images in this study were X-ray images of the lungs in patients with positive tuberculosis and normal conditions obtained from Kaggle. The images used are 2099 images which are divided into 2019 training images, 334 tuberculosis training images, and 165 normal training images. The testing is 80 images, which consist of 40 tuberculosis images and 40 normal images. Based on the results of percentage accuracy, it can be said that the system created is very good for detecting tuberculosis using the GLRLM feature extraction method and Artificial Neural Network.
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