...
首页> 外文期刊>Medical Physics >Quantitative classification based on CT histogram analysis of non-small cell lung cancer: Correlation with histopathological characteristics and recurrence-free survival
【24h】

Quantitative classification based on CT histogram analysis of non-small cell lung cancer: Correlation with histopathological characteristics and recurrence-free survival

机译:基于CT直方图分析的非小细胞肺癌的定量分类:与组织病理学特征和无复发生存的关系

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose: Quantification of the CT appearance of non-small cell lung cancer (NSCLC) is of interest in a number of clinical and investigational applications. The purpose of this work is to present a quantitative five-category (, , and ) classification method based on CT histogram analysis of NSCLC and to determine the prognostic value of this quantitative classification. Methods: Institutional review board approval and informed consent were obtained at the National Cancer Center Hospital. A total of 454 patients with NSCLC (maximum lesion size of 3 cm) were enrolled. Each lesion was measured using multidetector CT at the same tube voltage, reconstruction interval, beam collimation, and reconstructed slice thickness. Two observers segmented NSCLC nodules from the CT images by using a semi-automated three-dimensional technique. The two observers classified NSCLCs into one of five categories from the visual assessment of CT histograms obtained from each nodule segmentation result. Interobserver variability in the classification was computed with Cohen's statistic. Any disagreements were resolved by consensus between the two observers to define the gold standard of the classification. Using a classification and regression tree (CART), the authors obtained a decision tree for a quantitative five-category classification. To assess the impact of the nodule segmentation on the classification, the variability in classifications obtained by two decision trees for the nodule segmentation results was also calculated with the Cohen's statistic. The authors calculated the association of recurrence with prognostic factors including classification, sex, age, tumor diameter, smoking status, disease stage, histological type, lymphatic permeation, and vascular invasion using both univariate and multivariate Cox regression analyses. Results: The values for interobserver agreement of the classification using two nodule segmentation results were 0.921 (P 0.001) and 0.903 (P 0.001), respectively. The values for the variability in the classification task using two decision trees were 0.981 (P 0.001) and 0.981 (P 0.001), respectively. All the NSCLCs were classified into one of five categories (type , n 8; type , n 38; type , n 103; type , n 112; type , n 193) by using a decision tree. Using a multivariate Cox regression analysis, the classification (hazard ratio 5.64; P 0.008) and disease stage (hazard ratio 8.33; P 0.001) were identified as being associated with an increased recurrence risk. Conclusions: The quantitative five-category classifier presented here has the potential to provide an objective classification of NSCLC nodules that is strongly correlated with prognostic factors.
机译:目的:量化非小细胞肺癌(NSCLC)的CT表现在许多临床和研究应用中都受到关注。这项工作的目的是提出一种基于NSCLC的CT直方图分析的五类定量(,和)分类方法,并确定该定量分类的预后价值。方法:在国家癌症中心医院获得机构审查委员会的批准和知情同意。总共纳入454例NSCLC患者(最大病灶尺寸为3 cm)。使用多探测器CT在相同的管电压,重建间隔,光束准直和重建的切片厚度下测量每个病变。两名观察员通过使用半自动三维技术从CT图像中分割了NSCLC结节。根据从每个结节分割结果获得的CT直方图的视觉评估,两位观察者将NSCLC分为五类之一。使用Cohen的统计量计算分类中观察者间的差异。两位观察员之间的共识解决了任何分歧,从而确定了分类的黄金标准。使用分类和回归树(CART),作者获得了用于五类定量分类的决策树。为了评估结节分割对分类的影响,还使用Cohen统计来计算由两个决策树获得的结节分割结果的分类变异性。作者使用单变量和多变量Cox回归分析计算了复发与预后因素的关联,包括分类,性别,年龄,肿瘤直径,吸烟状况,疾病阶段,组织学类型,淋巴渗透和血管浸润。结果:使用两个结节分割结果进行分类的观察者间一致性的值分别为0.921(P 0.001)和0.903(P 0.001)。使用两个决策树的分类任务中的变异性值分别为0.981(P 0.001)和0.981(P 0.001)。使用决策树将所有NSCLC分为五类(类型,n 8;类型,n 38;类型,n 103;类型,n 112;类型,n 193)之一。使用多元Cox回归分析,将分类(危险比5.64; P 0.008)和疾病阶段(危险比8.33; P 0.001)确定为与复发风险增加相关。结论:这里提出的定量五分类器有可能提供与预后因素密切相关的NSCLC结节的客观分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号