Luo Hui, Gou Yue-Qin, Wang Yue-Su, Qin Hui-Lin, Zhou Hai-Ying, Zhang Xiao-Ming, Chen Tian-Wu
Department of Radiology, The Second Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Medical Imaging Key Laboratory of Sichuan Province, Department of Radiology, Affiliated Hospital of North Sichuan Medical College, Nanchong, China.
Eur Radiol. 2025 Mar 25. doi: 10.1007/s00330-025-11528-x.
To develop and validate a novel model based on preoperative MRI features and multiregional apparent diffusion coefficients (ADCs) to improve the prediction of pN stage in resectable rectal adenocarcinoma (RA).
Two hundred fifty-four consecutive patients (median age [interquartile range], 67 [56-74] years; 156 males) with resectable RA were retrospectively collected at two medical centers from January 2017 to December 2023 and were divided into the training (n = 139), internal validation (n = 60), and external validation (n = 55) sets. All patients underwent preoperative MRI scans. Univariate and multivariate logistic regression analyses were conducted on the MRI features and multiregional (RA, peritumoral tissue, and tumor-adjacent rectal wall) ADCs to construct a nomogram model for preoperative predicting pN stage in the training set. Receiver operating characteristic (ROC) analysis was used to evaluate the predictive performance of the nomogram model vs the conventional MRI-assessed N (mriN) stage. The ROC curves were compared using the DeLong test.
The predictors incorporated in the nomogram model comprised gross tumor volume, categories of short diameter of maximum node, extramural vascular invasion, mesorectal fascia involvement, and ADCs of RA and peritumoral tissue. This model yielded a better prediction of the pN stage compared to the mriN stage in training (AUC, 0.848 vs 0.672; p < 0.001), internal validation (AUC, 0.843 vs 0.699; p = 0.008), and external validation (AUC, 0.857 vs 0.723; p = 0.01) sets.
This novel model based on the preoperative MRI features and multiregional ADCs can improve the prediction of the pN stage in RA.
Question Accurate preoperative assessment of the pN stage is important for determining an appropriate therapeutic strategy in rectal cancer, but the conventional mriN stage has low sensitivity. Findings Utilization of certain MRI features and multiregional ADCs improves preoperative assessment of the pN stage in RA when compared with conventional MRI assessment. Clinical relevance The novel model, based on preoperative MRI features and multiregional ADC values, can improve the prediction of the pN stage compared to the mriN stage in RA. The combination of this model with the mriN stage helps personalize treatment plans to improve patient prognosis.
开发并验证一种基于术前MRI特征和多区域表观扩散系数(ADC)的新型模型,以改善可切除直肠腺癌(RA)pN分期的预测。
回顾性收集2017年1月至2023年12月在两个医学中心连续收治的254例可切除RA患者(中位年龄[四分位间距],67[56 - 74]岁;156例男性),并将其分为训练集(n = 139)、内部验证集(n = 60)和外部验证集(n = 55)。所有患者均接受术前MRI扫描。对MRI特征和多区域(RA、瘤周组织和肿瘤相邻直肠壁)ADC进行单因素和多因素逻辑回归分析,以构建训练集中术前预测pN分期的列线图模型。采用受试者工作特征(ROC)分析评估列线图模型与传统MRI评估的N(mriN)分期的预测性能。使用DeLong检验比较ROC曲线。
列线图模型纳入的预测因素包括肿瘤总体积、最大淋巴结短径类别、壁外血管侵犯、直肠系膜筋膜受累以及RA和瘤周组织的ADC。与mriN分期相比,该模型在训练集(AUC,0.848对0.672;p < 0.001)、内部验证集(AUC,0.843对0.699;p = 0.008)和外部验证集(AUC,0.857对0.723;p = 0.01)中对pN分期的预测更好。
这种基于术前MRI特征和多区域ADC的新型模型可改善RA中pN分期的预测。
问题准确的术前pN分期评估对于确定直肠癌的合适治疗策略很重要,但传统的mriN分期敏感性较低。发现与传统MRI评估相比,利用某些MRI特征和多区域ADC可改善RA中pN分期的术前评估。临床意义基于术前MRI特征和多区域ADC值的新型模型与RA中的mriN分期相比,可改善pN分期的预测。该模型与mriN分期相结合有助于个性化治疗方案,以改善患者预后。