Yang Jing, Wu Qingyao, Xu Lei, Wang Zijie, Su Kefan, Liu Ruiqing, Yen Eric Alexander, Liu Shunli, Qin Jiale, Rong Yi, Lu Yun, Niu Tianye
Women's Hospital, Zhejiang University School of Medicine, Hangzhou, China; Institute of Translational Medicine, Zhejiang University, Hangzhou, China.
The Affiliated Hospital of Qingdao University, China.
Radiother Oncol. 2020 Sep;150:89-96. doi: 10.1016/j.radonc.2020.06.004. Epub 2020 Jun 10.
To develop and validate a radiomics method via integrating tumor and lymph node radiomics for the preoperative prediction of lymph node (LN) status in gastric cancer (GC).
We retrospectively collected 170 contrast-enhanced abdominal CT images from GC patients. Five times repeated random hold-out experiment was employed. Tumor and nodal radiomics features were extracted from each individual tumor and LN respectively, and then multi-step feature selection was performed. The optimal tumor and nodal features were selected using Pearson correlation analysis and sequential forward floating selection (SFFS) algorithm. After feature fusion, the SFFS algorithm was used to develop radiomics signatures. The performance of the radiomics signatures developed based on logistic regression classifier was further analyzed and compared using the area under the receiver operating characteristic curve (AUC).
The AUC values, reported as mean ± standard deviation, were 0.9319 ± 0.0129 and 0.8546 ± 0.0261 for the training and validation cohorts respectively. The radiomic signatures could predict LN status, especially in T2-stage, diffuse-type and moderately/well differentiated GC. After integrating clinicopathologic information, the radiomic-clinicopathologic model (training cohort, 0.9432 ± 0.0129; validation cohort, 0.8764 ± 0.0322) showed a better discrimination capability than other radiomics models and clinicopathologic model. The radiomic-clinicopathologic model also showed superior performance to the gastroenterologist' decision in all experiments, and outperformed the radiologist in some experiments.
Our proposed method presented good predictive performance and great potential for predicting LNM in GC. As a noninvasive preoperative prediction tool, it can be helpful for guiding the prognosis and treatment decision-making in GC patients.
通过整合肿瘤和淋巴结的放射组学方法来开发和验证一种用于术前预测胃癌(GC)淋巴结(LN)状态的方法。
我们回顾性收集了170例GC患者的腹部增强CT图像。采用五次重复随机留出实验。分别从每个肿瘤和LN中提取肿瘤和淋巴结的放射组学特征,然后进行多步特征选择。使用Pearson相关分析和顺序向前浮动选择(SFFS)算法选择最佳的肿瘤和淋巴结特征。特征融合后,使用SFFS算法开发放射组学特征。基于逻辑回归分类器开发的放射组学特征的性能通过受试者操作特征曲线(AUC)下的面积进一步分析和比较。
训练队列和验证队列的AUC值分别报告为平均值±标准差,分别为0.9319±0.0129和0.8546±0.0261。放射组学特征可以预测LN状态,尤其是在T2期、弥漫型和中/高分化GC中。整合临床病理信息后,放射组学-临床病理模型(训练队列,0.9432±0.0129;验证队列,0.8764±0.0322)显示出比其他放射组学模型和临床病理模型更好的辨别能力。在所有实验中,放射组学-临床病理模型也显示出优于胃肠病学家决策的性能,并且在一些实验中优于放射科医生。
我们提出的方法在预测GC中的LNM方面表现出良好的预测性能和巨大潜力。作为一种非侵入性的术前预测工具,它有助于指导GC患者的预后和治疗决策。