Giraud Nicolas, Saut Olivier, Aparicio Thomas, Ronchin Philippe, Bazire Louis-Arnaud, Barbier Emilie, Lemanski Claire, Mirabel Xavier, Etienne Pierre-Luc, Lièvre Astrid, Cacheux Wulfran, Darut-Jouve Ariane, De la Fouchardière Christelle, Hocquelet Arnaud, Trillaud Hervé, Charleux Thomas, Breysacher Gilles, Argo-Leignel Delphine, Tessier Alexandre, Magné Nicolas, Ben Abdelghani Meher, Lepage Côme, Vendrely Véronique
Radiation Oncology Department, Hôpital Haut-Lévêque, CHU Bordeaux, 33600 Pessac, France.
Modelisation in Oncology (MOnc) Team, INRIA Bordeaux-Sud-Ouest, CNRS UMR 5251 and Université de Bordeaux, 33400 Talence, France.
Cancers (Basel). 2021 Jan 7;13(2):193. doi: 10.3390/cancers13020193.
Chemo-radiotherapy (CRT) is the standard treatment for non-metastatic anal squamous cell carcinomas (ASCC). Despite excellent results for T1-2 stages, relapses still occur in around 35% of locally advanced tumors. Recent strategies focus on treatment intensification, but could benefit from a better patient selection. Our goal was to assess the prognostic value of pre-therapeutic MRI radiomics on 2-year disease control (DC).
We retrospectively selected patients with non-metastatic ASCC treated at the CHU Bordeaux and in the French FFCD0904 multicentric trial. Radiomic features were extracted from T2-weighted pre-therapeutic MRI delineated sequences. After random division between training and testing sets on a 2:1 ratio, univariate and multivariate analysis were performed on the training cohort to select optimal features. The correlation with 2-year DC was assessed using logistic regression models, with AUC and accuracy as performance gauges, and the prediction of disease-free survival using Cox regression and Kaplan-Meier analysis.
A total of 82 patients were randomized in the training ( = 54) and testing sets ( = 28). At 2 years, 24 patients (29%) presented relapse. In the training set, two clinical (tumor size and CRT length) and two radiomic features (FirstOrder_Entropy and GLCM_JointEnergy) were associated with disease control in univariate analysis and included in the model. The clinical model was outperformed by the mixed (clinical and radiomic) model in both the training (AUC 0.758 versus 0.825, accuracy of 75.9% versus 87%) and testing (AUC 0.714 versus 0.898, accuracy of 78.6% versus 85.7%) sets, which led to distinctive high and low risk of disease relapse groups (HR 8.60, = 0.005).
A mixed model with two clinical and two radiomic features was predictive of 2-year disease control after CRT and could contribute to identify high risk patients amenable to treatment intensification with view of personalized medicine.
放化疗(CRT)是非转移性肛管鳞状细胞癌(ASCC)的标准治疗方法。尽管T1-2期疗效优异,但约35%的局部晚期肿瘤仍会复发。近期策略聚焦于强化治疗,但可能受益于更好的患者选择。我们的目标是评估治疗前MRI影像组学对2年疾病控制(DC)的预后价值。
我们回顾性选择了在波尔多大学中心医院接受治疗以及参加法国FFCD0904多中心试验的非转移性ASCC患者。从治疗前T2加权MRI勾画序列中提取影像组学特征。按照2:1的比例随机分为训练集和测试集后,对训练队列进行单因素和多因素分析以选择最佳特征。使用逻辑回归模型评估与2年DC的相关性,以AUC和准确性作为性能指标,并使用Cox回归和Kaplan-Meier分析预测无病生存期。
共有82例患者被随机分配到训练集(n = 54)和测试集(n = 28)。2年后,24例患者(29%)出现复发。在训练集中,单因素分析显示两个临床因素(肿瘤大小和CRT长度)和两个影像组学特征(一阶熵和灰度共生矩阵联合能量)与疾病控制相关,并纳入模型。在训练集(AUC 0.758对0.825,准确性75.9%对87%)和测试集(AUC 0.714对0.898,准确性78.6%对85.7%)中,混合(临床和影像组学)模型均优于临床模型,这导致了明显的疾病复发高风险和低风险组(HR 8.60,P = 0.005)。
包含两个临床和两个影像组学特征的混合模型可预测CRT后的2年疾病控制,并有助于识别适合强化治疗的高风险患者,以实现个性化医疗。