Department of Cancer Imaging and Metabolism, H Lee Moffitt Cancer Center and Research Institute, Tampa, FL.
Department of Cancer Imaging and Metabolism, H Lee Moffitt Cancer Center and Research Institute, Tampa, FL ; Department of Radiology, Tianjin Medical University Cancer Institute and Hospital, Tianjin, China.
Transl Oncol. 2014 Feb 1;7(1):72-87. doi: 10.1593/tlo.13844. eCollection 2014 Feb.
We study the reproducibility of quantitative imaging features that are used to describe tumor shape, size, and texture from computed tomography (CT) scans of non-small cell lung cancer (NSCLC). CT images are dependent on various scanning factors. We focus on characterizing image features that are reproducible in the presence of variations due to patient factors and segmentation methods. Thirty-two NSCLC nonenhanced lung CT scans were obtained from the Reference Image Database to Evaluate Response data set. The tumors were segmented using both manual (radiologist expert) and ensemble (software-automated) methods. A set of features (219 three-dimensional and 110 two-dimensional) was computed, and quantitative image features were statistically filtered to identify a subset of reproducible and nonredundant features. The variability in the repeated experiment was measured by the test-retest concordance correlation coefficient (CCCTreT). The natural range in the features, normalized to variance, was measured by the dynamic range (DR). In this study, there were 29 features across segmentation methods found with CCCTreT and DR ≥ 0.9 and R(2) Bet ≥ 0.95. These reproducible features were tested for predicting radiologist prognostic score; some texture features (run-length and Laws kernels) had an area under the curve of 0.9. The representative features were tested for their prognostic capabilities using an independent NSCLC data set (59 lung adenocarcinomas), where one of the texture features, run-length gray-level nonuniformity, was statistically significant in separating the samples into survival groups (P ≤ .046).
我们研究了从非小细胞肺癌(NSCLC)的计算机断层扫描(CT)中用于描述肿瘤形状、大小和纹理的定量成像特征的可重复性。CT 图像依赖于各种扫描因素。我们专注于描述在由于患者因素和分割方法引起的变化存在的情况下具有可重复性的图像特征。从参考图像数据库中获取了 32 个 NSCLC 非增强肺部 CT 扫描,以评估响应数据集。使用手动(放射科专家)和集成(软件自动)方法对肿瘤进行了分割。计算了一组特征(219 个三维和 110 个二维),并对定量图像特征进行了统计筛选,以确定一组可重复且非冗余的特征。通过测试-再测试一致性相关系数(CCCTreT)测量重复实验中的可变性。通过动态范围(DR)测量特征的自然范围(归一化为方差)。在这项研究中,有 29 种特征通过 CCCTreT 和 DR≥0.9 以及 R(2)Bet≥0.95 找到,这些可重复的特征用于预测放射科医生预后评分;一些纹理特征(游程长度和 Laws 核)的曲线下面积为 0.9。使用独立的 NSCLC 数据集(59 个肺腺癌)测试了代表性特征的预后能力,其中一种纹理特征,游程长度灰度不均匀性,在将样本分为生存组时具有统计学意义(P≤0.046)。