Division of Hepatobiliary and General Surgery, Department of Surgery, IRCCS Humanitas Research Hospital, Rozzano, Milan, Italy.
Department of Biomedical Sciences, Humanitas University, Pieve Emanuele, Milan, Italy.
J Digit Imaging. 2023 Jun;36(3):1038-1048. doi: 10.1007/s10278-023-00799-9. Epub 2023 Feb 27.
Advanced imaging and analysis improve prediction of pathology data and outcomes in several tumors, with entropy-based measures being among the most promising biomarkers. However, entropy is often perceived as statistical data lacking clinical significance. We aimed to generate a voxel-by-voxel visual map of local tumor entropy, thus allowing to (1) make entropy explainable and accessible to clinicians; (2) disclose and quantitively characterize any intra-tumoral entropy heterogeneity; (3) evaluate associations between entropy and pathology data. We analyzed the portal phase of preoperative CT of 20 patients undergoing liver surgery for colorectal metastases. A three-dimensional core kernel (5 × 5 × 5 voxels) was created and used to compute the local entropy value for each voxel of the tumor. The map was encoded with a color palette. We performed two analyses: (a) qualitative assessment of tumors' detectability and pattern of entropy distribution; (b) quantitative analysis of the entropy values distribution. The latter data were compared with standard Hounsfield data as predictors of post-chemotherapy tumor regression grade (TRG). Entropy maps were successfully built for all tumors. Metastases were qualitatively hyper-entropic compared to surrounding parenchyma. In four cases hyper-entropic areas exceeded the tumor margin visible at CT. We identified four "entropic" patterns: homogeneous, inhomogeneous, peripheral rim, and mixed. At quantitative analysis, entropy-derived data (percentiles/mean/median/root mean square) predicted TRG (p < 0.05) better than Hounsfield-derived ones (p = n.s.). We present a standardized imaging technique to visualize tumor heterogeneity built on a voxel-by-voxel entropy assessment. The association of local entropy with pathology data supports its role as a biomarker.
高级成像和分析可改善几种肿瘤的病理学数据和结果预测,基于熵的测量方法是最有前途的生物标志物之一。然而,熵通常被认为是缺乏临床意义的统计数据。我们旨在生成局部肿瘤熵的体素级可视化图,从而使熵 (1) 变得可解释并易于临床医生理解;(2) 揭示和定量描述任何肿瘤内的熵异质性;(3) 评估熵与病理学数据之间的相关性。我们分析了 20 名接受结直肠癌肝转移手术的患者术前 CT 的门静脉期。创建了一个三维核心核(5×5×5 体素),并用于计算肿瘤每个体素的局部熵值。该图使用调色板进行编码。我们进行了两项分析:(a) 定性评估肿瘤的可检测性和熵分布模式;(b) 熵值分布的定量分析。后者的数据与标准的 Hounsfield 数据一起作为化疗后肿瘤退缩等级(TRG)的预测因子进行比较。成功为所有肿瘤构建了熵图。与周围实质相比,转移灶的熵值更高。在四种情况下,高熵区域超过了 CT 可见的肿瘤边界。我们确定了四种“熵”模式:均匀、不均匀、外周边缘和混合。在定量分析中,熵衍生数据(百分位数/均值/中位数/均方根)比 Hounsfield 衍生数据(p=n.s.)更好地预测了 TRG(p<0.05)。我们提出了一种标准化的成像技术,用于基于体素级熵评估可视化肿瘤异质性。局部熵与病理学数据的关联支持其作为生物标志物的作用。