Jovanovic Milica Mitrovic, Stefanovic Aleksandra Djuric, Sarac Dimitrije, Kovac Jelena, Jankovic Aleksandra, Saponjski Dusan J, Tadic Boris, Kostadinovic Milena, Veselinovic Milan, Sljukic Vladimir, Skrobic Ognjan, Micev Marjan, Masulovic Dragan, Pesko Predrag, Ebrahimi Keramatollah
Center for Radiology and Magnetic Resonance Imaging, University Clinical Centre of Serbia, Pasterova No. 2, 11000 Belgrade, Serbia.
Department for Radiology, Faculty of Medicine, University of Belgrade, Dr Subotica No. 8, 11000 Belgrade, Serbia.
Cancers (Basel). 2023 Dec 14;15(24):5840. doi: 10.3390/cancers15245840.
The objective of this study is to determine the morphological computed tomography features of the tumor and texture analysis parameters, which may be a useful diagnostic tool for the preoperative prediction of high-risk gastrointestinal stromal tumors (HR GISTs).
This is a prospective cohort study that was carried out in the period from 2019 to 2022. The study included 79 patients who underwent CT examination, texture analysis, surgical resection of a lesion that was suspicious for GIST as well as pathohistological and immunohistochemical analysis.
Textural analysis pointed out min norm ( = 0.032) as a histogram parameter that significantly differed between HR and LR GISTs, while min norm ( = 0.007), skewness ( = 0.035) and kurtosis ( = 0.003) showed significant differences between high-grade and low-grade tumors. Univariate regression analysis identified tumor diameter, margin appearance, growth pattern, lesion shape, structure, mucosal continuity, enlarged peri- and intra-tumoral feeding or draining vessel (EFDV) and max norm as significant predictive factors for HR GISTs. Interrupted mucosa ( < 0.001) and presence of EFDV ( < 0.001) were obtained by multivariate regression analysis as independent predictive factors of high-risk GISTs with an AUC of 0.878 (CI: 0.797-0.959), sensitivity of 94%, specificity of 77% and accuracy of 88%.
This result shows that morphological CT features of GIST are of great importance in the prediction of non-invasive preoperative metastatic risk. The incorporation of texture analysis into basic imaging protocols may further improve the preoperative assessment of risk stratification.
本研究的目的是确定肿瘤的形态学计算机断层扫描特征和纹理分析参数,这可能是术前预测高危胃肠道间质瘤(HR GISTs)的有用诊断工具。
这是一项在2019年至2022年期间进行的前瞻性队列研究。该研究纳入了79例接受CT检查、纹理分析、对可疑为GIST的病变进行手术切除以及病理组织学和免疫组织化学分析的患者。
纹理分析指出最小范数(=0.032)是HR和LR GISTs之间有显著差异的直方图参数,而最小范数(=0.007)、偏度(=0.035)和峰度(=0.003)在高级别和低级别肿瘤之间显示出显著差异。单因素回归分析确定肿瘤直径、边缘外观、生长方式、病变形状、结构、黏膜连续性、肿瘤周围和肿瘤内增粗的供血或引流血管(EFDV)以及最大范数是HR GISTs的重要预测因素。多因素回归分析得出黏膜中断(<0.001)和EFDV的存在(<0.001)是高危GISTs的独立预测因素,AUC为0.878(CI:0.797 - 0.959),敏感性为94%,特异性为77%,准确性为88%。
该结果表明GIST的形态学CT特征在预测非侵入性术前转移风险方面具有重要意义。将纹理分析纳入基本成像方案可能会进一步改善术前风险分层评估。