基于纹理、形状和像素值的K-NN分类器肺部疾病分类

Q3 Medicine
Latika A. Thamke, M. Vaidya
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引用次数: 1

摘要

肺部疾病是一种紊乱,影响肺部的问题,肺部是允许我们呼吸的器官,它是世界上最常见的疾病,尤其是在印度。在这项工作中,可以解决肺部疾病的问题,如在x线摄影中遇到的疾病分类困难。在这项工作中,我们提出了肺ct图像分类的特征提取技术。提出了一种结合纹理、形状和像素系数特征的肺部疾病CT图像分类方法。该系统可以将肺图像自动分类为正常肺、胸腔积液、肺气肿和支气管炎。建议的制度包括四个步骤。在初始步骤中,对图像进行预处理。第二步,通过阈值分割和边缘检测对图像进行分割。第三步,利用灰度共生矩阵(GLCM)、矩不变和Walsh Hadamard变换(WHT)计算纹理、形状和像素系数特征,并将其组合成单个描述符。在最后一步,使用K-NN、Multiclass-SVM和决策树分类器对肺图像进行分类。图像为CT扫描图像。整个数据集包含400张图片,每一种疾病有100张图片,如正常、胸腔积液、肺气肿和支气管炎。280张图片用于训练,120张图片用于测试。基于全局阈值的K-NN分类器完成折叠方法的分类准确率,WHT +GLCM为97.50%,WHT +MI为97.50%,GLCM+MI为94.45%,WHT +GLCM+MI为97.50%。与其他方法和分类器相比,具有全局阈值的K-NN分类器减少了时间,也提供了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Lung Diseases Using a Combination of Texture, Shape and Pixel Value by K-NN Classifier
Lung diseases are the disorder, issues that affect the lungs, the organs that permit us to breathe and it is the most frequent medical conditions worldwide especially in India. In this work, the problem of lung diseases like the difficulty encountered while classifying the disease in radiography can be solved. In this work, we propose Features Extraction Techniques for classification of Lung Computed Tomography Images. A Combination of Texture, Shape and Pixel Coefficient Feature are developed for Classifying the CT images of lung disease. The proposed system can classify lung images automatically as Normal Lung, Pleural Effusion, Emphysema and Bronchitis. The proposed System contains four steps. In the initial step, the images are pre-processed. In the second step, the images are segmented by Thresholding and Edge Detection. In the third step, the Texture, Shape and Pixel Coefficient Feature are calculated using the GLCM (Gray Level Co-occurrence Matrix), Moment Invariant and WHT (Walsh Hadamard Transform) and combined to form the single descriptor. In the final step, the K-NN, Multiclass-SVM and Decision Tree classifiers are used for classification of Lung images. The images are the CT scan images. The total datasets contain 400 images, 100 images of each disease like the Normal, Pleural Effusion, Emphysema and Bronchitis. The 280 images are used for Training and 120 images are used for Testing. The classification accuracy of folding method accomplished by the K-NN classifier with Global Thresholding is 97.50% for WHT +GLCM, 97.50% for WHT + MI, 94.45% for GLCM + MI, 97.50% for WHT +GLCM+MI. The K-NN classifier with Global Thresholding reduces the time and also gives better results as compared to other methods and classifiers.
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来源期刊
Koomesh
Koomesh Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
0
审稿时长
24 weeks
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