Giganti Francesco, Antunes Sofia, Salerno Annalaura, Ambrosi Alessandro, Marra Paolo, Nicoletti Roberto, Orsenigo Elena, Chiari Damiano, Albarello Luca, Staudacher Carlo, Esposito Antonio, Del Maschio Alessandro, De Cobelli Francesco
Department of Radiology and Centre for Experimental Imaging San Raffaele Scientific Institute, Via Olgettina 60, 20132, Milan, Italy.
San Raffaele Vita-Salute University, Milan, Italy.
Eur Radiol. 2017 May;27(5):1831-1839. doi: 10.1007/s00330-016-4540-y. Epub 2016 Aug 23.
To investigate the association between preoperative texture analysis from multidetector computed tomography (MDCT) and overall survival in patients with gastric cancer.
Institutional review board approval and informed consent were obtained. Fifty-six patients with biopsy-proved gastric cancer were examined by MDCT and treated with surgery. Image features from texture analysis were quantified, with and without filters for fine to coarse textures. The association with survival time was assessed using Kaplan-Meier and Cox analysis.
The following parameters were significantly associated with a negative prognosis, according to different thresholds: energy [no filter] - Logarithm of relative risk (Log RR): 3.25; p = 0.046; entropy [no filter] (Log RR: 5.96; p = 0.002); entropy [filter 1.5] (Log RR: 3.54; p = 0.027); maximum Hounsfield unit value [filter 1.5] (Log RR: 3.44; p = 0.027); skewness [filter 2] (Log RR: 5.83; p = 0.004); root mean square [filter 1] (Log RR: - 2.66; p = 0.024) and mean absolute deviation [filter 2] (Log RR: - 4.22; p = 0.007).
Texture analysis could increase the performance of a multivariate prognostic model for risk stratification in gastric cancer. Further evaluations are warranted to clarify the clinical role of texture analysis from MDCT.
• Textural analysis from computed tomography can be applied in gastric cancer. • Preoperative non-invasive texture features are related to prognosis in gastric cancer. • Texture analysis could help to evaluate the aggressiveness of this tumour.
探讨多排螺旋计算机断层扫描(MDCT)术前纹理分析与胃癌患者总生存期之间的关联。
获得机构审查委员会批准并取得知情同意。对56例经活检证实为胃癌的患者进行MDCT检查并接受手术治疗。对纹理分析的图像特征进行量化,有无用于精细到粗糙纹理的滤波器。使用Kaplan-Meier和Cox分析评估与生存时间的关联。
根据不同阈值,以下参数与不良预后显著相关:能量[无滤波器] - 相对风险对数(Log RR):3.25;p = 0.046;熵[无滤波器](Log RR:5.96;p = 0.002);熵[滤波器1.5](Log RR:3.54;p = 0.027);最大亨氏单位值[滤波器1.5](Log RR:3.44;p = 0.027);偏度[滤波器2](Log RR:5.83;p = 0.004);均方根[滤波器1](Log RR:-2.66;p = 0.024)和平均绝对偏差[滤波器2](Log RR:-4.22;p = 0.007)。
纹理分析可提高胃癌风险分层多变量预后模型的性能。有必要进行进一步评估以阐明MDCT纹理分析的临床作用。
•计算机断层扫描的纹理分析可应用于胃癌。•术前非侵入性纹理特征与胃癌预后相关。•纹理分析有助于评估该肿瘤的侵袭性。