Gu J Y, Shi H T, Yang L X, Shen Y Q, Wang Z X, Feng Q, Wang M, Cao H
Department of Gastrointestinal Surgery, Renji Hospital, Shanghai Jiaotong University School of Medicine, Shanghai 200127, China.
Shanghai Jiaotong University School of Medicine, Shanghai 200025, China.
Zhonghua Wei Chang Wai Ke Za Zhi. 2021 Sep 25;24(9):796-803. doi: 10.3760/cma.j.cn.441530-20210706-00267.
Contrast-enhanced CT is an important method of preoperative diagnosis and evaluation for the malignant potential of gastric submucosal tumor (SMT). It has a high diagnostic accuracy rate in differentiating gastric gastrointestinal stromal tumor (GIST) with a diameter greater than 5 cm from gastric benign SMT. This study aimed to use deep learning algorithms to establish a diagnosis model (GISTNet) based on contrast-enhanced CT and evaluate its diagnostic value in distinguishing gastric GIST with a diameter ≤ 5 cm and other gastric SMT before surgery. A diagnostic test study was carried out. Clinicopathological data of 181 patients undergoing resection with postoperative pathological diagnosis of gastric SMT with a diameter ≤ 5 cm at Department of Gastrointestinal Surgery of Renji Hospital from September 2016 to April 2021 were retrospectively collected. After excluding 13 patients without preoperative CT or with poor CT imaging quality, a total of 168 patients were enrolled in this study, of whom, 107 were GIST while 61 were benign SMT (non-GIST), including 27 leiomyomas, 24 schwannomas, 6 heterotopic pancreas and 4 lipomas. Inclusion criteria were as follows: (1) gastric SMT was diagnosed by contrast-enhanced CT before surgery; (2) preoperative gastroscopic examination and biopsy showed no abnormal cells; (3) complete clinical and pathological data. Exclusion criteria were as follows: (1) patients received anti-tumor therapy before surgery; (2) without preoperative CT or with poor CT imaging quality due to any reason; (3) except GIST, other gastric malignant tumors were pathologically diagnosed after surgery. Based on the hold-out method, 148 patients were randomly selected as the training set and 20 patients as the test set of the GISTNet diagnosis model. After the GISTNet model was established, 5 indicators were used for evaluation in the test set, including sensitivity, specificity, positive predictive value, negative predictive value and the area under the receiver operating curve (AUC). Then GISTNet diagnosis model was compared with the GIST-risk scoring model based on traditional CT features. Besides, in order to compare the accuracy of the GISTNet diagnosis model and the imaging doctors in the diagnosis of gastric SMT imaging, 3 radiologists with 3, 9 and 19 years of work experience, respectively, blinded to clinical and pathological information, tested and judged the samples. The accuracy rate between the three doctors and the GISTNet model was compared. The GISTNet model yielded an AUC of 0.900 (95% CI: 0.827-0.973) in the test set. When the threshold value was 0.345, the sensitivity specificity, positive and negative predictive values of the GISTNet diagnosis model was 100%, 67%, 75% and 100%, respectively. The accuracy rate of the GISTNet diagnosis model was better than that of the GIST-risk model and the manual readings from two radiologists with 3 years and 9 years of work experience (83% vs. 75%, 60%, 65%), and was close to the manual reading of the radiologist with 19 years of work experience (83% vs. 80%). The deep learning algorithm based on contrast-enhanced CT has favorable and reliable diagnostic accuracy in distinguishing gastric GIST with a diameter ≤ 5 cm and other gastric SMT before operation.
增强CT是术前诊断和评估胃黏膜下肿瘤(SMT)恶性潜能的重要方法。在鉴别直径大于5cm的胃胃肠道间质瘤(GIST)与胃良性SMT方面,其诊断准确率较高。本研究旨在利用深度学习算法,基于增强CT建立诊断模型(GISTNet),并评估其在术前鉴别直径≤5cm的胃GIST与其他胃SMT的诊断价值。开展了一项诊断试验研究。回顾性收集了2016年9月至2021年4月在仁济医院胃肠外科接受手术切除且术后病理诊断为直径≤5cm胃SMT的181例患者的临床病理资料。排除13例无术前CT或CT影像质量差的患者后,本研究共纳入168例患者,其中107例为GIST,61例为良性SMT(非GIST),包括27例平滑肌瘤、24例神经鞘瘤、6例异位胰腺和4例脂肪瘤。纳入标准如下:(1)术前增强CT诊断为胃SMT;(2)术前胃镜检查及活检未发现异常细胞;(3)临床和病理资料完整。排除标准如下:(1)术前接受过抗肿瘤治疗的患者;(2)因任何原因无术前CT或CT影像质量差;(3)术后病理诊断除GIST外还存在其他胃恶性肿瘤。基于留出法,随机选取148例患者作为GISTNet诊断模型的训练集,20例患者作为测试集。建立GISTNet模型后,在测试集中采用5项指标进行评估,包括灵敏度、特异度、阳性预测值、阴性预测值和受试者工作特征曲线下面积(AUC)。然后将GISTNet诊断模型与基于传统CT特征的GIST风险评分模型进行比较。此外,为比较GISTNet诊断模型与影像科医生对胃SMT影像诊断的准确性,分别由3名工作经验为3年、9年和19年的放射科医生在不知晓临床和病理信息的情况下对样本进行检测和判断。比较了三位医生与GISTNet模型的准确率。GISTNet模型在测试集中的AUC为0.900(95%CI:0.827 - 0.973)。当阈值为0.345时,GISTNet诊断模型的灵敏度、特异度、阳性和阴性预测值分别为100%、67%、75%和100%。GISTNet诊断模型的准确率优于GIST风险模型以及两名工作经验为3年和9年的放射科医生的人工读片(83%对75%、60%、65%),且与工作经验为19年的放射科医生的人工读片相近(83%对80%)。基于增强CT的深度学习算法在术前鉴别直径≤5cm的胃GIST与其他胃SMT方面具有良好且可靠的诊断准确性。