Technical Note: Identification of CT Texture Features Robust to Tumor Size Variations for Normal Lung Texture Analysis.

Wookjin Choi, Sadegh Riyahi, Seth J Kligerman, Chia-Ju Liu, James G Mechalakos, Wei Lu
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引用次数: 7

Abstract

Normal lung CT texture features have been used for the prediction of radiation-induced lung disease (RILD). For these features to be clinically useful, they should be robust to tumor size variations and not correlated with the normal lung volume of interest, i.e., the volume of the peri-tumoral region (PTR). CT images of 14 lung cancer patients were studied. Different sizes of gross tumor volumes (GTVs) were simulated and placed in the lung contralateral to the tumor. 27 texture features [nine from intensity histogram, eight from the gray-level co-occurrence matrix (GLCM) and ten from the gray-level run-length matrix (GLRM)] were extracted from the PTR. The Bland-Altman analysis was applied to measure the normalized range of agreement (nRoA) for each feature when GTV size varied. A feature was considered as robust when its nRoA was less than the threshold (100%). Sixteen texture features were identified as robust. None of the robust features was correlated with the volume of the PTR. No feature showed statistically significant differences (P<0.05) on GTV locations. We identified 16 robust normal lung CT texture features that can be further examined for the prediction of RILD.

Abstract Image

Abstract Image

技术说明:识别CT纹理特征对肿瘤大小变化的鲁棒性,用于正常肺纹理分析。
正常肺部CT结构特征已被用于预测放射性肺部疾病(RILD)。为了使这些特征在临床上有用,它们应该对肿瘤大小变化具有鲁强性,并且与正常肺体积无关,即肿瘤周围区域(PTR)的体积。本文对14例肺癌患者的CT图像进行了研究。模拟不同大小的总肿瘤体积(GTVs)并放置在肿瘤对侧的肺中。从PTR中提取了27个纹理特征[9个来自强度直方图,8个来自灰度共生矩阵(GLCM), 10个来自灰度运行长度矩阵(GLRM)]。Bland-Altman分析用于测量GTV大小变化时每个特征的归一化一致范围(nRoA)。当nRoA小于阈值(100%)时,特征被认为是鲁棒的。确定了16个纹理特征为鲁棒性。这些鲁棒性特征均与PTR的体积无关。差异无统计学意义(P
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