Reuzé Sylvain, Orlhac Fanny, Chargari Cyrus, Nioche Christophe, Limkin Elaine, Riet François, Escande Alexandre, Haie-Meder Christine, Dercle Laurent, Gouy Sébastien, Buvat Irène, Deutsch Eric, Robert Charlotte
INSERM, U1030, F-94805, Villejuif, France.
Université Paris-Sud, Université Paris-Saclay, F-94270, Le Kremlin-Bicêtre, France.
Oncotarget. 2017 Jun 27;8(26):43169-43179. doi: 10.18632/oncotarget.17856.
To identify an imaging signature predicting local recurrence for locally advanced cervical cancer (LACC) treated by chemoradiation and brachytherapy from baseline 18F-FDG PET images, and to evaluate the possibility of gathering images from two different PET scanners in a radiomic study.
118 patients were included retrospectively. Two groups (G1, G2) were defined according to the PET scanner used for image acquisition. Eleven radiomic features were extracted from delineated cervical tumors to evaluate: (i) the predictive value of features for local recurrence of LACC, (ii) their reproducibility as a function of the scanner within a hepatic reference volume, (iii) the impact of voxel size on feature values.
Eight features were statistically significant predictors of local recurrence in G1 (p < 0.05). The multivariate signature trained in G2 was validated in G1 (AUC=0.76, p<0.001) and identified local recurrence more accurately than SUVmax (p=0.022). Four features were significantly different between G1 and G2 in the liver. Spatial resampling was not sufficient to explain the stratification effect.
This study showed that radiomic features could predict local recurrence of LACC better than SUVmax. Further investigation is needed before applying a model designed using data from one PET scanner to another.
从基线18F-FDG PET图像中识别出一种影像特征,用于预测接受放化疗和近距离放疗的局部晚期宫颈癌(LACC)的局部复发情况,并评估在一项影像组学研究中收集来自两台不同PET扫描仪图像的可能性。
回顾性纳入118例患者。根据用于图像采集的PET扫描仪定义了两组(G1、G2)。从勾画的宫颈肿瘤中提取11个影像组学特征,以评估:(i)这些特征对LACC局部复发的预测价值;(ii)它们在肝脏参考体积内作为扫描仪函数的可重复性;(iii)体素大小对特征值的影响。
8个特征是G1组局部复发的统计学显著预测因子(p<0.05)。在G2组中训练的多变量特征在G1组中得到验证(AUC=0.76,p<0.001),并且比SUVmax更准确地识别局部复发(p=0.022)。G1组和G2组在肝脏中的4个特征有显著差异。空间重采样不足以解释分层效应。
本研究表明,影像组学特征比SUVmax能更好地预测LACC的局部复发。在将使用一台PET扫描仪数据设计的模型应用于另一台PET扫描仪之前,还需要进一步研究。