Wang Ziyao, Qiu Jiajun, Shen Xiaoding, Yang Fan, Liu Xubao, Wang Xing, Ke Nengwen
West China Hospital of Sichuan University, Chengdu, China.
Abdom Radiol (NY). 2025 Jan 22. doi: 10.1007/s00261-024-04759-x.
Combining Computed Tomography (CT) intuitive anatomical features with Three-Dimensional (3D) CT multimodal radiomic imaging features to construct a model for assessing the aggressiveness of pancreatic neuroendocrine tumors (pNETs) prior to surgery.
This study involved 242 patients, randomly assigned to training (170) and validation (72) cohorts. Preoperative CT and 3D CT radiomic features were used to develop a model predicting pNETs aggressiveness. The aggressiveness of pNETs was characterized by a combination of factors including G3 grade, nodal involvement (N + status), presence of distant metastases, and/or recurrence of the disease.
Three distinct predictive models were constructed to evaluate the aggressiveness of pNETs using CT features, 3D CT radiomic features, and their combination. The combined model demonstrated the greatest predictive accuracy and clinical applicability in both the training and validation sets (AUCs (95% CIs) = 0.93 (0.90-0.97) and 0.89 (0.79-0.98), respectively). Subsequently, a nomogram was developed using the features from the combined model, displaying strong alignment between actual observations and predictions as indicated by the calibration curves. Using a nomogram score of 86.06, patients were classified into high- and low-aggressiveness groups, with the high-aggressiveness group demonstrating poorer overall survival and shorter disease-free survival.
This study presents a combined model incorporating CT and 3D CT radiomic features, which accurately predicts the aggressiveness of PNETs preoperatively.
将计算机断层扫描(CT)直观的解剖特征与三维(3D)CT多模态影像组学特征相结合,构建一个术前评估胰腺神经内分泌肿瘤(pNETs)侵袭性的模型。
本研究纳入242例患者,随机分为训练组(170例)和验证组(72例)。利用术前CT和3D CT影像组学特征建立预测pNETs侵袭性的模型。pNETs的侵袭性由包括G3级、淋巴结受累(N+状态)、远处转移的存在和/或疾病复发等多种因素综合表征。
构建了三种不同的预测模型,分别使用CT特征、3D CT影像组学特征及其组合来评估pNETs的侵袭性。联合模型在训练集和验证集上均表现出最高的预测准确性和临床适用性(AUC(95%CI)分别为0.93(0.90 - 0.97)和0.89(0.79 - 0.98))。随后,利用联合模型的特征开发了列线图,校准曲线显示实际观察值与预测值之间具有很强的一致性。使用列线图评分86.06将患者分为高侵袭性组和低侵袭性组,高侵袭性组的总生存期和无病生存期较差。
本研究提出了一个结合CT和3D CT影像组学特征的联合模型,该模型能准确术前预测pNETs的侵袭性。