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Logarithmic Texture Analysis for Early Lung Cancer Screening on Contrast Enhancement CT Images

机译:对数纹理分析,用于对比增强CT图像的早期肺癌筛查

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This study aims to investigate the effects of contrast enhancement computed tomography (CECT) images on the malignant distinguishes of solid lung nodules. As a representational describer of tumor heterogeneity on images, texture features are used as the classification basis for lung cancers and non-cancers in this preliminary study. 49 patients with malignant bias suspicious lung nodules (all about 3cm) underwent non-contrast and contrast enhancement CT in arterial and venous phases were collected. And the biopsy reports show that there are 28 malignant (or cancer) and 21 benign (or non-cancer) nodules. To enlarge the feature difference between malignant and benign nodules, we proposed an improved logarithmic texture feature analysis scheme. Support vector machine classification and leave-one-out validation were implemented. The areas under the receiver operating characteristic curves of the non-contrast and contrast enhancement CT images in arterial and venous phases are 0.67, 0.73 and 0.77 respectively. Therefore the texture features presented by contrast enhancement CT images show better distinguishing capacity on solid lung nodules than the non-contrast enhancement CT images.
机译:本研究旨在探讨对比增强计算断层扫描(CECT)图像对固体肺结节的恶性区分的影响。作为肿瘤异质性的代表性描述者,纹理特征被用作肺癌和非癌症在该初步研究中的分类基础。收集49例恶性偏见可恶性肺结节(全约3cm)的患者在动脉和静脉曲位中接受非对比度和对比增强CT。活检报告表明,有28个恶性(或癌症)和21个良性(或非癌症)结节。为了扩大恶性和良性结节之间的特征差异,我们提出了一种改进的对数纹理特征分析方案。支持向量机分类和休假验证。在动脉和静脉曲相中的非对比度和对比度增强CT图像的接收器操作特性曲线分别为0.67,0.73和0.77。因此,由对比度增强CT图像呈现的纹理特征在实体肺结节上显示出比非对比度增强CT图像更好的区别容量。

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