Gray Level Co-Occurrence Matrices and Support Vector Machine for Improved Lung Cancer Detection

M. Yunianto, A. Suparmi, C. Cari, T. Ardyanto
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引用次数: 1

Abstract

A detection system based on digital image processing and machine learning classification was developed to detect normal and cancerous lung conditions. 340 data from LIDC –IDRI were processed through several stages. The first stage is pre-processing using three filter variations and contrast stretching, which reduce noise and increase image contrast. The image segmentation process uses Otsu Thresholding to clarify the ROI of the image. The texture feature extraction with GLCM was applied using 21 feature variations. Data extraction is used as a label value learned by the classification system in the form of SVM. The results of the training data classification are processed with a confusion matrix which shows that the high pass filter has higher accuracy than the other two variations. The proposed method was assessed in terms of accuracy, precision and recall. The model provided an accuracy of 99.67 % training data and 97.50 % testing data.
灰度共生矩阵与支持向量机改进肺癌检测
开发了一种基于数字图像处理和机器学习分类的检测系统,用于检测正常和癌变的肺部状况。来自LIDC -IDRI的340份数据经过了几个阶段的处理。第一阶段是预处理,使用三种滤波器变化和对比度拉伸,以减少噪声和提高图像对比度。图像分割过程使用Otsu阈值来明确图像的ROI。采用GLCM方法提取了21种纹理特征。数据提取作为分类系统以支持向量机的形式学习到的标签值。对训练数据的分类结果进行了混淆矩阵处理,结果表明高通滤波比其他两种方法具有更高的准确率。从准确度、精密度和召回率三个方面对该方法进行了评价。该模型提供了99.67%的训练数据和97.50%的测试数据的准确率。
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