Su Shen, Wu Shun-Yao, Tang Yun-He, Ren Lin-Lin, Yin Fan, Xu Yu-Shuang, Li Xiao-Yu, Liu Hua, Zhang Shao-Hua, Zhang Xing-Lin, Tian Zi-Bin, Mao Tao
Affiliated Hospital of Qingdao University, Qingdao, China.
Qingdao University, Qingdao, China.
BMC Gastroenterol. 2025 Jul 11;25(1):515. doi: 10.1186/s12876-025-03993-x.
The clinical course and manifestations of subepithelial lesions (SEL) patients tend to vary from different pathological types, therefore the accurate diagnosis of SEL would undoubtedly be beneficial to the treatment and prognosis of SEL patients. Based on the decision tree method, we developed a novel classification model for SELs by combining endoscopy with endoscopic ultrasound (EUS).
We retrospectively collected data from 469 patients hospitalized in the Affiliated Hospital of Qingdao University between January 2017 to November 2021 for endoscopic resection. Chi-square test (P < 0.05), independence test (P < 0.001), and Pearson correlation analysis (|r|<0.8) were performed to identify significant variables among endoscopic and EUS features, which were subsequently incorporated into decision tree analysis. Finally, a hierarchical diagnostic model based on multiple decision trees was constructed. The predictive performance of the model was obtained through a five-fold cross-validation, and each decision tree model was evaluated by the area under the curve (AUC) and F1.
A total of 13 variables were included in the construction of the model. The overall accuracy of this hierarchical model was 75.12%. The AUC values for each pathology type, namely gastrointestinal stromal tumor (GIST) and schwannoma, leiomyoma, inflammatory fibroid polyp, heterotopic pancreas, and lipoma, were 0.882, 0.866, 0.964, 0.863, and 0.953, respectively. And F1 of them were 0.777, 0.697, 0.658, 0.904, and 0.698, respectively.
This decision tree-based hierarchical model can potentially assist in the preoperative diagnosis of SEL and guide clinical decision-making for the individualized treatment of SEL patients.
上皮下病变(SEL)患者的临床病程和表现因病理类型不同而有所差异,因此准确诊断SEL无疑将有利于SEL患者的治疗和预后。基于决策树方法,我们通过结合内镜检查和内镜超声(EUS)开发了一种新型的SEL分类模型。
我们回顾性收集了2017年1月至2021年11月在青岛大学附属医院住院接受内镜切除的469例患者的数据。进行卡方检验(P < 0.05)、独立性检验(P < 0.001)和Pearson相关分析(|r| < 0.8)以确定内镜及EUS特征中的显著变量,随后将这些变量纳入决策树分析。最后,构建了基于多个决策树的分层诊断模型。通过五折交叉验证获得模型的预测性能,并通过曲线下面积(AUC)和F1对每个决策树模型进行评估。
模型构建共纳入13个变量。该分层模型的总体准确率为75.12%。每种病理类型的AUC值,即胃肠道间质瘤(GIST)、神经鞘瘤、平滑肌瘤、炎性纤维性息肉、异位胰腺和脂肪瘤分别为0.882、0.866、0.964、0.863和0.953。它们的F1值分别为0.777、0.697、0.658、0.904和0.698。
这种基于决策树的分层模型可能有助于SEL的术前诊断,并指导SEL患者个体化治疗的临床决策。