Blockwise Classification of Lung Patterns in Unsegmented CT Images

Luiza Dri Bagesteiro, L. F. Oliveira, Daniel Weingaertner
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引用次数: 6

Abstract

Diagnosis of lung diseases is usually accomplished by detecting abnormal characteristics in Computed Tomography (CT) scans. We report an initial study for classifying texture patterns in High-Resolution lung CTs using the Completed Local Binary Pattern (CLBP) descriptor with a Support Vector Machine (SVM). The main contribution of the proposed method is that it does not depend on a previously segmented lung, as it performs a coarse segmentation by classifying body areas outside the lungs. The classified patterns are: non lung, normal lung tissue, emphysema, ground-glass opacity, fibrosis and micronodules. Using image blocks of 32x32 pixels, extracted from a public dataset with 113 patients, correct block wise classification of non lung patterns was achieved with an accuracy of 98.91%. Regarding normal and pathological lung patterns, a mean accuracy of 91.81% was obtained. This is similar to the reported results in literature which used a presegmented lung.
未分割CT图像中肺模式的块分类
肺部疾病的诊断通常是通过检测计算机断层扫描(CT)的异常特征来完成的。我们报告了一项基于支持向量机(SVM)的完整局部二值模式(complete Local Binary Pattern, CLBP)描述符对高分辨率肺ct纹理模式进行分类的初步研究。该方法的主要贡献在于它不依赖于先前分割的肺,因为它通过对肺外的身体区域进行分类来进行粗分割。分类类型为:非肺组织、正常肺组织、肺气肿、毛玻璃样混浊、纤维化和微结节。使用从113例患者的公共数据集中提取的32 × 32像素的图像块,实现了正确的非肺模式块智能分类,准确率为98.91%。对于正常和病理肺型,平均准确率为91.81%。这与文献报道的使用预分割肺的结果相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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