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基于临床病理和CT纹理特征的联合模型预测高危胃肠道间质瘤肝转移的性能

[Performance of the Combined Model Based on Both Clinicopathological and CT Texture Features in Predicting Liver Metastasis of High-risk Gastrointestinal Stromal Tumors].

作者信息

Zheng Jing, Wang Xu, Xia Yang, Jiang Hai-Tao

机构信息

Department of Radiology,Shaoxing Central Hospital,Key Laboratory of Functional Molecular Imaging of Tumor and Interventional Diagnosis and Treatment of Shaoxing City,Shaoxing,Zhejiang 312030,China.

Department of Radiology,Cancer Hospital of the University of Chinese Academy of Sciences, Zhejiang Cancer Hospital,Hangzhou 310022,China.

出版信息

Zhongguo Yi Xue Ke Xue Yuan Xue Bao. 2022 Feb;44(1):53-59. doi: 10.3881/j.issn.1000-503X.14051.

Abstract

Objective To investigate the performance of the combined model based on both clinicopathological features and CT texture features in predicting liver metastasis of high-risk gastrointestinal stromal tumors(GISTs). Methods The high-risk GISTs confirmed by pathology from January 2015 to December 2020 were analyzed retrospectively,including 153 cases from the Cancer Hospital of the University of Chinese Academy of Sciences and 51 cases from the Shaoxing Central Hospital.The cases were randomly assigned into a training set(=142)and a test set(=62)at a ratio of 7∶3.According to the results of operation or puncture,they were classified into a liver metastasis group(76 cases)and a non-metastasis group(128 cases).ITK-SNAP was employed to delineate the volume of interest of the stromal tumors.Least absolute shrinkage and selection operator(LASSO)was employed to screen out the effective features.Multivariate logistic regression was adopted to construct the models based on clinicopathological features,texture features extracted from CT scans,and the both(combined model),respectively.Receiver operating characteristic(ROC)curve and calibration curve were established to evaluate the predictive performance of the models.The area under the curve(AUC)was compared by Delong test. Results Body mass index(BMI),tumor size,Ki-67,tumor occurrence site,abdominal mass,gastrointestinal bleeding,and CA125 level showed statistical differences between groups(all <0.05).A total of 107 texture features were extracted from CT images,from which 13 and 7 texture features were selected by LASSO from CT plain scans and CT enhanced scans,respectively.The AUC of the prediction with the training set and the test set respectively was 0.870 and 0.855 for the model based on clinicopathological features,0.918 and 0.836 for the model based on texture features extracted from CT plain scans,0.920 and 0.846 for the model based on texture features extracted from CT enhanced scans,and 0.930 and 0.889 for the combined model based on both clinicopathological features and texture features extracted from CT plain scans.Delong test demonstrated no significant difference in AUC between the models based on the texture features extracted from CT plain scans and CT enhanced scans(=0.762),whereas the AUC of the combined model was significantly different from that of the clinicopathological feature-based model and texture feature-based model(=0.001 and =0.023,respectively). Conclusion Texture features extracted from CT plain scans can predict the liver metastasis of high-risk GISTs,and the model established with clinicopathological features combined with CT texture features has best prediction performance.

摘要

目的 探讨基于临床病理特征和CT纹理特征的联合模型预测高危胃肠道间质瘤(GISTs)肝转移的性能。方法 回顾性分析2015年1月至2020年12月经病理确诊的高危GISTs患者,其中中国科学院大学附属肿瘤医院153例,绍兴市中心医院51例。将病例按7∶3的比例随机分为训练集(n = 142)和测试集(n = 62)。根据手术或穿刺结果,将其分为肝转移组(76例)和无转移组(128例)。采用ITK-SNAP勾画间质瘤的感兴趣体积。采用最小绝对收缩和选择算子(LASSO)筛选有效特征。分别采用多因素logistic回归构建基于临床病理特征、CT扫描提取的纹理特征以及两者结合的模型(联合模型)。建立受试者操作特征(ROC)曲线和校准曲线评估模型的预测性能。采用Delong检验比较曲线下面积(AUC)。结果 体重指数(BMI)、肿瘤大小、Ki-67、肿瘤发生部位、腹部肿块、胃肠道出血及CA125水平在两组间差异有统计学意义(均P < 0.05)。从CT图像中提取了107个纹理特征,其中LASSO从CT平扫和CT增强扫描中分别筛选出13个和7个纹理特征。基于临床病理特征的模型在训练集和测试集的预测AUC分别为0.870和0.855,基于CT平扫提取的纹理特征的模型分别为0.918和0.836,基于CT增强扫描提取的纹理特征的模型分别为0.920和0.846,基于临床病理特征和CT平扫提取的纹理特征的联合模型分别为0.930和0.889。Delong检验显示基于CT平扫提取的纹理特征的模型与基于CT增强扫描提取的纹理特征的模型的AUC差异无统计学意义(P = 0.762),而联合模型的AUC与基于临床病理特征的模型和基于纹理特征的模型的AUC差异有统计学意义(分别为P = 0.001和P = 0.023)。结论 CT平扫提取的纹理特征可预测高危GISTs的肝转移,基于临床病理特征联合CT纹理特征建立的模型预测性能最佳。

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