Pan Bujian, Zhang Weiteng, Chen Wenjing, Zheng Jingwei, Yang Xinxin, Sun Jing, Sun Xiangwei, Chen Xiaodong, Shen Xian
Department of Gastrointestinal Surgery, The Second Affiliated Hospital, Wenzhou Medical University, Wenzhou, China.
Department of Gastrointestinal Surgery, The First Affiliated Hospital, Wenzhou Medical University, Wenzhou, China.
Front Oncol. 2021 Aug 9;11:682456. doi: 10.3389/fonc.2021.682456. eCollection 2021.
Currently, there are shortcomings in diagnosing gastric cancer with or without serous invasion, making it difficult for patients to receive appropriate treatment. Therefore, we aimed to develop a radiomic nomogram for preoperative identification of serosal invasion.
We selected 315 patients with gastric cancer, confirmed by pathology, and randomly divided them into two groups: the training group (189 patients) and the verification group (126 patients). We obtained patient splenic imaging data for the training group. A p-value of <0.05 was considered significant for features that were selected for lasso regression. Eight features were chosen to construct a serous invasion prediction model. Patients were divided into high- and low-risk groups according to the radiologic tumor invasion risk score. Subsequently, univariate and multivariate regression analyses were performed with other invasion-related factors to establish a visual combined prediction model.
The diagnostic accuracy of the radiologic tumor invasion score was consistent in the training and verification groups (p<0.001 and p=0.009, respectively). Univariate and multivariate analyses of invasion risk factors revealed that the radiologic tumor invasion index (p=0.002), preoperative hemoglobin <100 (p=0.042), and the platelet and lymphocyte ratio <92.8 (p=0.031) were independent risk factors for serosal invasion in the training cohort. The prediction model based on the three indexes accurately predicted the serosal invasion risk with an area under the curve of 0.884 in the training cohort and 0.837 in the testing cohort.
Radiological tumor invasion index based on splenic imaging combined with other factors accurately predicts serosal invasion of gastric cancer, increases diagnostic precision for the most effective treatment, and is time-efficient.
目前,在诊断有无浆膜侵犯的胃癌方面存在不足,这使得患者难以接受恰当的治疗。因此,我们旨在开发一种用于术前识别浆膜侵犯的影像组学列线图。
我们选取了315例经病理确诊的胃癌患者,并将他们随机分为两组:训练组(189例患者)和验证组(126例患者)。我们获取了训练组患者的脾脏影像数据。对于通过套索回归选择的特征,p值<0.05被认为具有统计学意义。选择了8个特征来构建浆膜侵犯预测模型。根据放射学肿瘤侵犯风险评分将患者分为高风险组和低风险组。随后,对其他与侵犯相关的因素进行单因素和多因素回归分析,以建立可视化的联合预测模型。
放射学肿瘤侵犯评分的诊断准确性在训练组和验证组中是一致的(分别为p<0.001和p=0.009)。对侵犯风险因素的单因素和多因素分析显示,放射学肿瘤侵犯指数(p=0.002)、术前血红蛋白<100(p=0.042)以及血小板与淋巴细胞比值<92.8(p=0.031)是训练队列中浆膜侵犯的独立风险因素。基于这三个指标的预测模型在训练队列中准确预测浆膜侵犯风险,曲线下面积为0.884,在测试队列中为0.837。
基于脾脏影像的放射学肿瘤侵犯指数联合其他因素能够准确预测胃癌的浆膜侵犯,提高诊断精度以实现最有效的治疗,并且具有省时的特点。