Kim Sun Moon, Kim Eun Young, Cho Jin Woong, Jeon Seong Woo, Kim Ji Hyun, Kim Tae Hyeon, Moon Jeong Seop, Kim Jin-Oh
Department of Internal Medicine, Konyang University College of Medicine, Daejeon, Korea.
Department of Internal Medicine, Daegu Catholic University School of Medicine, Daegu, Korea.
Clin Endosc. 2021 Nov;54(6):872-880. doi: 10.5946/ce.2021.251. Epub 2021 Nov 18.
BACKGROUND/AIMS: The utility of endoscopic ultrasonography (EUS) for differentiating gastrointestinal stromal tumors (GISTs) and leiomyomas of the stomach is not well known. We aimed to evaluate the ability of EUS for differentiating gastric GISTs and leiomyomas.
We retrospectively reviewed the medical records of patients with histopathologically proven GISTs (n=274) and leiomyomas (n=87). In two consensus meetings, the inter-observer variability in the EUS image analysis was reduced. Using logistic regression analyses, we selected predictive factors and constructed a predictive model and nomogram for differentiating GISTs from leiomyomas. A receiver operating characteristic (ROC) curve analysis was performed to measure the discrimination performance in the development and internal validation sets.
Multivariate analysis identified heterogeneity (odds ratio [OR], 9.48), non-cardia (OR, 19.11), and older age (OR, 1.06) as independent predictors of GISTs. The areas under the ROC curve of the predictive model using age, sex, and four EUS factors (homogeneity, location, anechoic spaces, and dimpling or ulcer) were 0.916 (sensitivity, 0.908; specificity, 0.793) and 0.904 (sensitivity, 0.908; specificity, 0.782) in the development and internal validation sets, respectively.
The predictive model and nomogram using age, sex and homogeneity, tumor location, presence of anechoic spaces, and presence of dimpling or ulcer on EUS may facilitate differentiation between GISTs and leiomyomas.
背景/目的:内镜超声检查(EUS)在鉴别胃肠道间质瘤(GIST)和胃平滑肌瘤方面的效用尚不明确。我们旨在评估EUS鉴别胃GIST和胃平滑肌瘤的能力。
我们回顾性分析了组织病理学确诊为GIST(n = 274)和平滑肌瘤(n = 87)患者的病历。在两次共识会议中,降低了EUS图像分析中观察者间的变异性。通过逻辑回归分析,我们选择了预测因素,并构建了鉴别GIST和平滑肌瘤的预测模型和列线图。进行了受试者工作特征(ROC)曲线分析,以测量在开发集和内部验证集中的鉴别性能。
多变量分析确定异质性(比值比[OR],9.48)、非贲门部(OR,19.11)和年龄较大(OR,1.06)为GIST的独立预测因素。使用年龄、性别和四个EUS因素(均质性、位置、无回声区和凹陷或溃疡)的预测模型在开发集和内部验证集中的ROC曲线下面积分别为0.916(敏感性,0.908;特异性,0.793)和0.904(敏感性,0.908;特异性, 0.782)。
使用年龄、性别以及EUS上的均质性、肿瘤位置、无回声区的存在以及凹陷或溃疡的存在构建的预测模型和列线图可能有助于鉴别GIST和平滑肌瘤。