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一种基于CT特征的放射学诊断评分模型,用于鉴别胃神经鞘瘤与胃胃肠道间质瘤。

A radiologic diagnostic scoring model based on CT features for differentiating gastric schwannoma from gastric gastrointestinal stromal tumors.

作者信息

Xu Jian-Xia, Yu Jie-Ni, Wang Xiao-Jie, Xiong Yan-Xi, Lu Yuan-Fei, Zhou Jia-Ping, Zhou Qiao-Mei, Yang Xiao-Yan, Shi Dan, Huang Xiao-Shan, Fan Shu-Feng, Yu Ri-Sheng

机构信息

Department of Radiology, The Second Affiliated Hospital of Zhejiang Chinese Medical University 318 Chao-Wang Road, Hangzhou 310005, Zhejiang Province, China.

Department of Radiology, Second Affiliated Hospital, School of Medicine, Zhejiang University 88 Jie-Fang Road, Hangzhou 310009, Zhejiang Province, China.

出版信息

Am J Cancer Res. 2022 Jan 15;12(1):303-314. eCollection 2022.

Abstract

We aimed to further explore the CT features of gastric schwannoma (GS), propose and validate a convenient diagnostic scoring system to distinguish GS from gastric gastrointestinal stromal tumors (GISTs) preoperatively. 170 patients with submucosal tumors pathologically confirmed (GS n=35; gastric GISTs n=135) from Hospital 1 were analyzed retrospectively as the training cohort, and 72 patients (GS=11; gastric GISTs=61) from Hospital 2 were enrolled as the validation cohort. We searched for significant CT imaging characteristics and constructed the scoring system via binary logistic regression and converted regression coefficients to weighted scores. The ROC curves, AUCs and calibration tests were carried out to evaluate the scoring models in both the training cohort and the validation cohort. For convenient assessment, the system was further divided into four score ranges and their diagnostic probability of GS was calculated respectively. Four CT imaging characteristics were ultimately enrolled in this scoring system, including transverse position (2 points), location (5 points), perilesional lymph nodes (6 points) and pattern of enhancement (2 points). The AUC of the scoring model in the training cohort were 0.873 (95% CI, 0.816-0.929) and the cutoff point was 6 points. In the validation cohort, the AUC was 0.898 (95% CI, 0.804-0.957) and the cutoff value was 5 points. Four score ranges were as follows: 0-3 points for very low probability of GS, 4-7 points for low probability; 8-9 points for middle probability; 10-15 points for very high probability. A convenient scoring model to preoperatively discriminate GS from gastric GISTs was finally proposed.

摘要

我们旨在进一步探究胃神经鞘瘤(GS)的CT特征,提出并验证一种简便的诊断评分系统,以便在术前将GS与胃胃肠道间质瘤(GISTs)区分开来。对来自第一医院的170例经病理证实的黏膜下肿瘤患者(GS患者35例;胃GISTs患者135例)进行回顾性分析作为训练队列,将来自第二医院的72例患者(GS患者11例;胃GISTs患者61例)纳入作为验证队列。我们寻找显著的CT影像特征,并通过二元逻辑回归构建评分系统,将回归系数转换为加权分数。在训练队列和验证队列中进行ROC曲线、AUC及校准试验,以评估评分模型。为便于评估,该系统进一步分为四个评分范围,并分别计算其诊断GS的概率。最终,四个CT影像特征被纳入该评分系统,包括横向位置(2分)、部位(5分)、病灶周围淋巴结(6分)及强化方式(2分)。训练队列中评分模型的AUC为0.873(95%CI,0.816 - 0.929),截断点为6分。在验证队列中,AUC为0.898(95%CI,0.804 - 0.957),截断值为5分。四个评分范围如下:0 - 3分为GS极低概率;4 - 7分为低概率;8 - 9分为中等概率;10 - 15分为极高概率。最终提出了一种术前鉴别GS与胃GISTs的简便评分模型。

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