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基于NECT 和 CECT 图像的对比纹理分析鉴别肺腺癌与鳞状细胞癌。

A Comparative Texture Analysis Based on NECT and CECT Images to Differentiate Lung Adenocarcinoma from Squamous Cell Carcinoma.

机构信息

School of Biomedical Engineering, Capital Medical University, Fengtai District, Beijing, 100069, China.

Department of Radiology, the General Hospital of Chinese People's Armed Police Forces, Beijing, 100039, China.

出版信息

J Med Syst. 2019 Feb 1;43(3):59. doi: 10.1007/s10916-019-1175-y.

Abstract

The purpose of the study was to compare the texture based discriminative performances between non-contrast enhanced computed tomography (NECT) and contrast-enhanced computed tomography (CECT) images in differentiating lung adenocarcinoma (ADC) from squamous cell carcinoma (SCC) patients. Eighty-seven lung cancer subjects were enrolled in the study, including pathologically proved 47 ADC patients and 40 SCC patients, and 261 texture features were extracted from the manually delineated region of interests on CECT and NECT images respectively. Fisher score was then used to select the effective discriminative texture features between groups, and the selected texture features were adopted to differentiate ADC from SCC using Support Vector Machine and Leave-one-out cross-validation. Both NECT and CECT images could achieve the same best classification accuracy of 95.4%, and most of the informative features were from the gray-level co-occurrence matrix. In addition, CECT images were found with enhanced texture features compared with NECT images, and combining texture features of CECT and NECT images together could further improve the prediction accuracy. Besides the texture feature, the tumor location information also contributed to the differential diagnosis between ADC and SCC.

摘要

本研究旨在比较非增强 CT(NECT)和增强 CT(CECT)图像在鉴别肺腺癌(ADC)和鳞状细胞癌(SCC)患者方面的纹理特征的判别性能。本研究共纳入 87 例肺癌患者,包括病理证实的 47 例 ADC 患者和 40 例 SCC 患者,分别从 CECT 和 NECT 图像的手动勾画 ROI 中提取 261 个纹理特征。然后采用 Fisher 评分法选择组间有效的鉴别性纹理特征,并采用支持向量机和留一法交叉验证法对 ADC 和 SCC 进行鉴别。NECT 和 CECT 图像均可达到 95.4%的最佳分类准确率,且信息量较大的特征主要来源于灰度共生矩阵。此外,CECT 图像的纹理特征较 NECT 图像增强,将 CECT 和 NECT 图像的纹理特征相结合可进一步提高预测准确率。除纹理特征外,肿瘤位置信息也有助于 ADC 和 SCC 的鉴别诊断。

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