Liu Yanjun, Yin Huanying, Li Jiaojiao, Wang Zimeng, Wang Wenjiang, Cui Shujun
Hebei North University, Zhangjiakou, China.
First Affiliated Hospital of Hebei North University, Hebei, China.
Abdom Radiol (NY). 2025 Aug 13. doi: 10.1007/s00261-025-05162-w.
To develop a CT-based deep learning radiomics nomogram (DLRN) for the preoperative prediction of peritoneal metastasis (PM) in patients with ovarian cancer (OC).
A total of 296 patients with OCs were randomly divided into training dataset (N = 207) and test dataset (N = 89). The radiomics features and DL features were extracted from CT images of each patient. Specifically, radiomics features were extracted from the 3D tumor regions, while DL features were extracted from the 2D slice with the largest tumor region of interest (ROI). The least absolute shrinkage and selection operator (LASSO) algorithm was used to select radiomics and DL features, and the radiomics score (Radscore) and DL score (Deepscore) were calculated. Multivariate logistic regression was employed to construct clinical model. The important clinical factors, radiomics and DL features were integrated to build the DLRN. The predictive performance of the models was evaluated using the area under the receiver operating characteristic curve (AUC) and DeLong's test.
Nine radiomics features and 10 DL features were selected. Carbohydrate antigen 125 (CA-125) was the independent clinical predictor. In the training dataset, the AUC values of the clinical, radiomics and DL models were 0.618, 0.842, and 0.860, respectively. In the test dataset, the AUC values of these models were 0.591, 0.819 and 0.917, respectively. The DLRN showed better performance than other models in both training and test datasets with AUCs of 0.943 and 0.951, respectively. Decision curve analysis and calibration curve showed that the DLRN provided relatively high clinical benefit in both the training and test datasets.
The DLRN demonstrated superior performance in predicting preoperative PM in patients with OC. This model offers a highly accurate and noninvasive tool for preoperative prediction, with substantial clinical potential to provide critical information for individualized treatment planning, thereby enabling more precise and effective management of OC patients.
开发一种基于CT的深度学习影像组学列线图(DLRN),用于术前预测卵巢癌(OC)患者的腹膜转移(PM)。
将296例OC患者随机分为训练数据集(N = 207)和测试数据集(N = 89)。从每位患者的CT图像中提取影像组学特征和深度学习(DL)特征。具体而言,从三维肿瘤区域提取影像组学特征,而从具有最大肿瘤感兴趣区(ROI)的二维切片中提取DL特征。使用最小绝对收缩和选择算子(LASSO)算法选择影像组学和DL特征,并计算影像组学评分(Radscore)和DL评分(Deepscore)。采用多变量逻辑回归构建临床模型。将重要的临床因素、影像组学和DL特征整合以构建DLRN。使用受试者操作特征曲线(AUC)下面积和德龙检验评估模型的预测性能。
选择了9个影像组学特征和10个DL特征。糖类抗原125(CA - 125)是独立的临床预测指标。在训练数据集中,临床、影像组学和DL模型的AUC值分别为0.618、0.842和0.860。在测试数据集中,这些模型的AUC值分别为0.591、0.819和0.917。DLRN在训练和测试数据集中均表现出比其他模型更好的性能,AUC分别为0.943和0.951。决策曲线分析和校准曲线表明,DLRN在训练和测试数据集中均提供了相对较高的临床获益。
DLRN在预测OC患者术前PM方面表现出卓越性能。该模型为术前预测提供了一种高度准确且无创的工具,具有巨大的临床潜力,可为个体化治疗规划提供关键信息,从而实现对OC患者更精确有效的管理。