Zhang SiYu, Tang Bin, Yu MingRong, He Lei, Zheng Ping, Yan ChuanJun, Li Jie, Peng Qian
Department of Radiation Oncology, Radiation Oncology Key Laboratory of Sichuan Province, Sichuan Clinical Research Center for Cancer, Sichuan Cancer Hospital & Institute, Sichuan Cancer Center, Affiliated Cancer Hospital of University of Electronic Science and Technology of China, Chengdu, China.
College of Physical Education, Sichuan Agricultural University, Yaan, China.
Int J Radiat Oncol Biol Phys. 2023 Nov 15;117(4):821-833. doi: 10.1016/j.ijrobp.2023.05.027. Epub 2023 May 24.
The response to neoadjuvant chemoradiotherapy (nCRT) varies among patients with locally advanced rectal cancer (LARC), and the treatment response of lymph nodes (LNs) to nCRT is critical in implementing a watch-and-wait strategy. A robust predictive model may help personalize treatment plans to increase the chance that patients achieve a complete response. This study investigated whether radiomics features based on prenCRT magnetic resonance imaging nodes could predict treatment response in preoperative LARC LNs.
The study included 78 patients with clinical stage T3-T4, N1-2, and M0 rectal adenocarcinoma who received long-course neoadjuvant radiotherapy before surgery. Pathologists evaluated 243 LNs, of which 173 and 70 were assigned to training and validation cohorts, respectively. For each LN, 3641 radiomics features were extracted from the region of interest in high-resolution T2WI magnetic resonance imaging before nCRT. The least absolute shrinkage and selection operator regression model was used for feature selection and radiomics signature building. A prediction model based on multivariate logistic analysis, combining radiomics signature and selected LN morphologic characteristics, was developed and visualized by drawing a nomogram. The model's performance was assessed by receiver operating characteristic curve analysis and calibration curves.
The radiomics signature consists of 5 selected features that were effectively discriminated within the training cohort (area under the curve [AUC], 0.908; 95% CI, 0.857%-0.958%) and the validation cohort (AUC, 0.865; 95% CI, 0.757%-0.973%). The nomogram, which consisted of radiomics signature and LN morphologic characteristics (short-axis diameter and border contours), showed better calibration and discrimination in the training and validation cohorts (AUC, 0.925; 95% CI, 0.880%-0.969% and AUC, 0.918; 95% CI, 0.854%-0.983%, respectively). The decision curve analysis confirmed that the nomogram had the highest clinical utility.
The nodal-based radiomics model effectively predicts LNs treatment response in patients with LARC after nCRT, which could help personalize treatment plans and guide the implementation of the watch-and-wait approach in these patients.
局部晚期直肠癌(LARC)患者对新辅助放化疗(nCRT)的反应存在差异,淋巴结(LN)对nCRT的治疗反应对于实施观察等待策略至关重要。一个强大的预测模型可能有助于个性化治疗方案,以增加患者实现完全缓解的机会。本研究调查了基于nCRT前磁共振成像淋巴结的放射组学特征是否可以预测术前LARC患者LN的治疗反应。
本研究纳入了78例临床分期为T3 - T4、N1 - 2和M0的直肠腺癌患者,这些患者在手术前接受了长程新辅助放疗。病理学家评估了243个LN,其中173个和70个分别分配到训练队列和验证队列。对于每个LN,在nCRT前从高分辨率T2WI磁共振成像的感兴趣区域提取3641个放射组学特征。使用最小绝对收缩和选择算子回归模型进行特征选择和构建放射组学特征。通过绘制列线图,开发了一种基于多变量逻辑分析的预测模型,该模型结合了放射组学特征和选定的LN形态特征,并进行了可视化。通过受试者操作特征曲线分析和校准曲线评估模型的性能。
放射组学特征由5个选定特征组成,在训练队列(曲线下面积[AUC],0.908;95%CI,0.857% - 0.958%)和验证队列(AUC,0.865;95%CI,0.757% - 0.973%)中得到有效区分。由放射组学特征和LN形态特征(短轴直径和边界轮廓)组成的列线图在训练和验证队列中显示出更好的校准和区分能力(AUC分别为0.925;95%CI,0.880% - 0.969%和AUC,0.918;95%CI,0.854% - 0.983%)。决策曲线分析证实列线图具有最高的临床实用性。
基于淋巴结的放射组学模型有效地预测了nCRT后LARC患者LN的治疗反应,这有助于个性化治疗方案,并指导这些患者观察等待方法的实施。