Sichuan Key Laboratory of Medical Imaging, Department of Radiology, Affiliated Hospital of North Sichuan Medical College, Nanchong, Sichuan, China.
Department of Radiology, Chongqing University Cancer Hospital/Chongqing Cancer Hospital, Chongqing, China.
Medicine (Baltimore). 2021 Jul 9;100(27):e26557. doi: 10.1097/MD.0000000000026557.
Radiomics transforms the medical images into high-dimensional quantitative features and provides potential information about tumor phenotypes and heterogeneity. We conducted a retrospective analysis to explore and validate radiomics model based on contrast-enhanced computed tomography (CECT) to predict recurrence of locally advanced oesophageal squamous cell cancer (SCC) within 2 years after trimodal therapy. This study collected CECT and clinical data of consecutive 220 patients with pathology-confirmed locally advanced oesophageal SCC (154 in the training cohort and 66 in the validation cohort). Univariate statistical test and the least absolute shrinkage and selection operator method were performed to select the optimal radiomics features. Logistic regression was conducted to build radiomics model, clinical model, and combined model of both the radiomics and clinical features. Predictive performance was judged by the area under receiver operating characteristics curve (AUC), accuracy, and F1-score in the training and validation cohorts. Ten optimal radiomics features and/or 7 clinical features were selected to build radiomics model, clinical model, and the combined model. The integrated model of radiomics and clinical features was superior to radiomics model or clinical model in predicting recurrence of locally advanced oesophageal SCC within 2 years in the training (AUC: 0.879 vs 0.815 or 0.763; accuracy: 0.844 vs 0.773 or 0.740; and F1-score: 0.886 vs 0.839 or 0.815, respectively) and validation (AUC: 0.857 vs 0.720 or 0.750; accuracy: 0.788 vs 0.700 or 0.697; and F1-score: 0.851 vs 0.800 or 0.787, respectively) cohorts. The combined model of radiomics and clinical features shows better performance than the radiomics or clinical model to predict the recurrence of locally advanced oesophageal SCC within 2 years after trimodal therapy.
影像组学将医学图像转化为高维定量特征,并提供有关肿瘤表型和异质性的潜在信息。我们进行了一项回顾性分析,旨在探索和验证基于对比增强 CT(CECT)的影像组学模型,以预测三联治疗后 2 年内局部晚期食管鳞癌(SCC)的复发。本研究收集了 220 例经病理证实的局部晚期食管 SCC 患者的 CECT 和临床资料(训练队列 154 例,验证队列 66 例)。采用单因素统计检验和最小绝对收缩和选择算子方法选择最佳影像组学特征。采用逻辑回归构建影像组学模型、临床模型以及影像组学和临床特征的联合模型。在训练和验证队列中,通过接受者操作特征曲线(AUC)下面积、准确性和 F1 评分来判断预测性能。选择了 10 个最佳的影像组学特征和/或 7 个临床特征来构建影像组学模型、临床模型和影像组学和临床特征的联合模型。在训练(AUC:0.879 与 0.815 或 0.763;准确性:0.844 与 0.773 或 0.740;F1 评分:0.886 与 0.839 或 0.815)和验证(AUC:0.857 与 0.720 或 0.750;准确性:0.788 与 0.700 或 0.697;F1 评分:0.851 与 0.800 或 0.787)队列中,影像组学和临床特征的联合模型在预测三联治疗后 2 年内局部晚期食管 SCC 的复发方面优于影像组学或临床模型。