Wang B Z, Zhang X, Wang Y L, Wang X Y, Wang Q G, Luo Z, Xu S L, Huang C
School of Health Science and Engineering,University of Shanghai for Science and Technology, Shanghai 200093,China Department of Gastrointestinal Surgery,General Surgery Clinical Medical Center,Shanghai General Hospital Affiliated to Shanghai Jiao Tong University School of Medicine,Shanghai 200080,China.
School of Health Science and Engineering,University of Shanghai for Science and Technology, Shanghai 200093,China.
Zhonghua Wai Ke Za Zhi. 2025 Aug 20;63(10):927-936. doi: 10.3760/cma.j.cn112139-20250407-00179.
To develop a preoperative differentiation model for colorectal mucinous adenocarcinoma and non-mucinous adenocarcinoma using a combination of contrast-enhanced CT radiomics and deep learning methods. This is a retrospective case series study. Clinical data of colorectal cancer patients confirmed by postoperative pathological examination were retrospectively collected from January 2016 to December 2023 at Shanghai General Hospital Affiliated to Shanghai Jiao Tong University School of Medicine (Center 1, =220) and the First Affiliated Hospital of Bengbu Medical University (Center 2, 51). Among them, there were 108 patients diagnosed with mucinous adenocarcinoma, including 55 males and 53 females, with an age of (68.4±12.2) years (range: 38 to 96 years); and 163 patients diagnosed with non-mucinous adenocarcinoma, including 96 males and 67 females, with an age of (67.9±11.0) years (range: 43 to 94 years). The cases from Center 1 were divided into a training set (=156) and an internal validation set (=64) using stratified random sampling in a 7︰3 ratio, and the cases from Center 2 were used as an independent external validation set (=51). Three-dimensional tumor volume of interest was manually segmented on venous-phase contrast-enhanced CT images. Radiomics features were extracted using PyRadiomics, and deep learning features were extracted using the ResNet-18 network. The two sets of features were then combined to form a joint feature set. The consistency of manual segmentation was assessed using the intraclass correlation coefficient. Feature dimensionality reduction was performed using the Mann-Whitney test and the least absolute shrinkage and selection operator regression. Six machine learning algorithms were used to construct models based on radiomics features, deep learning features, and combined features, including support vector machine, Logistic regression, random forest, extreme gradient boosting, k-nearest neighbors, and decision tree. The discriminative performance of each model was evaluated using receiver operating characteristic curves, the area under the curve (AUC), DeLong test, and decision curve analysis. After feature selection, 22 features with the most discriminative value were finally retained, among which 12 were traditional radiomics features and 10 were deep learning features. In the internal validation set, the Random Forest algorithm based on the combined features model achieved the best performance (AUC=0.938, 95% 0.875 to 0.984), which was superior to the single-modality radiomics feature model (AUC=0.817, 95% 0.702 to 0.913,=0.048) and the deep learning feature model (AUC=0.832, 95% 0.727 to 0.926,0.087); in the independent external validation set, the Random Forest algorithm with the combined features model maintained the highest discriminative performance (AUC=0.891, 95% 0.791 to 0.969), which was superior to the single-modality radiomics feature model (AUC=0.770, 95% 0.636 to 0.890,=0.045) and the deep learning feature model (AUC=0.799, 95% 0.652 to 0.911,=0.169). The combined model based on radiomics and deep learning features from venous-phase enhanced CT demonstrates good performance in the preoperative differentiation of colorectal mucinous from non-mucinous adenocarcinoma.
利用对比增强CT影像组学和深度学习方法相结合,开发一种用于结直肠黏液腺癌和非黏液腺癌的术前鉴别模型。这是一项回顾性病例系列研究。回顾性收集2016年1月至2023年12月在上海交通大学医学院附属上海第一人民医院(中心1,n = 220)和蚌埠医学院第一附属医院(中心2,n = 51)经术后病理检查确诊的结直肠癌患者的临床资料。其中,诊断为黏液腺癌的患者108例,包括男性55例、女性53例,年龄为(68.4±12.2)岁(范围:38至96岁);诊断为非黏液腺癌的患者163例,包括男性96例、女性67例,年龄为(67.9±11.0)岁(范围:43至94岁)。中心1的病例采用7︰3比例的分层随机抽样方法分为训练集(n = 156)和内部验证集(n = 64),中心2的病例用作独立的外部验证集(n = 51)。在静脉期对比增强CT图像上手动分割三维肿瘤感兴趣区。使用PyRadiomics提取影像组学特征,使用ResNet - 18网络提取深度学习特征。然后将两组特征合并形成联合特征集。使用组内相关系数评估手动分割的一致性。使用Mann - Whitney检验和最小绝对收缩和选择算子回归进行特征降维。使用六种机器学习算法基于影像组学特征、深度学习特征和联合特征构建模型,包括支持向量机、逻辑回归、随机森林、极端梯度提升、k近邻和决策树。使用受试者工作特征曲线、曲线下面积(AUC)、DeLong检验和决策曲线分析评估每个模型的鉴别性能。经过特征选择,最终保留了22个具有最高鉴别价值的特征,其中12个是传统影像组学特征,10个是深度学习特征。在内部验证集中,基于联合特征模型的随机森林算法表现最佳(AUC = 0.938,95%CI 0.875至0.984),优于单模态影像组学特征模型(AUC = 0.817,95%CI 0.702至0.913,P = 0.048)和深度学习特征模型(AUC = 0.832,95%CI 0.727至0.926,P = 0.087);在独立外部验证集中,联合特征模型的随机森林算法保持了最高的鉴别性能(AUC = 0.891,95%CI 0.791至0.969),优于单模态影像组学特征模型(AUC = 0.770,95%CI 0.636至0.890,P = 0.045)和深度学习特征模型(AUC = 0.799,95%CI 0.652至0.911,P = 0.169)。基于静脉期增强CT的影像组学和深度学习特征的联合模型在结直肠黏液腺癌与非黏液腺癌的术前鉴别中表现出良好性能。