Xu Lihang, Li Mingyu, Dong Xianling, Wang Zhongxiao, Tong Ying, Feng Tao, Xu Shuangyan, Shang Hui, Zhao Bin, Lin Jianpeng, Cao Zhendong, Zheng Yi
Radiology Department, Affiliated Hospital of Chengde Medical College, Chengde, China.
Hebei International Research Center for Medical-Engineering, Chengde Medical University, Chengde, China.
Abdom Radiol (NY). 2025 Apr 26. doi: 10.1007/s00261-025-04949-1.
To establish and validate a model based on deep learning (DL), integrating radiomic features with relevant clinical features to generate nomogram, for predicting preoperative serosal invasion in gastric cancer (GC).
This retrospective study included 335 patients from dual centers. T staging (T1-3 or T4) was used to assess serosal invasion. Radiomic features were extracted from primary GC lesions in the venous phase CT, and DL features from 8 transfer learning models were combined to create the Hand-crafted Radiomics and Deep Learning Radiomics (HCR-DLR) model. The Clinical (CL) model was built using clinical features, and both were combined into the Clinical and Radiomics Combined (CRC) model. In total, 15 predictive models were developed using 5 machine learning algorithms. The best-performing models were visualized as nomograms.
The total of 14 radiomic features, 13 DL features, and 2 clinical features were considered valuable through dimensionality reduction and selection. Among the constructed models: CRC model (AUC, training cohort: 0.9212; internal test cohort: 0.8743; external test cohort: 0.8853) than HCR-DLR model (AUC, training cohort: 0.8607; internal test cohort: 0.8543; external test cohort: 0.8824) and CL model (AUC, training cohort: 0.7632; internal test cohort: 0.7219; external test cohort: 0.7294) showed better performance. A nomogram based on the logistic CL model was drawn to facilitate the usage and showed its excellent predictive performance.
The predictive performance of the CRC Model, which integrates clinical features, radiomic features, and DL features, exhibits robust predictive capability and can serve as a simple, non-invasive, and practical tool for predicting the serosal invasion status of GC.
建立并验证一种基于深度学习(DL)的模型,将放射组学特征与相关临床特征相结合以生成列线图,用于预测胃癌(GC)术前浆膜侵犯情况。
这项回顾性研究纳入了来自两个中心的335例患者。采用T分期(T1 - 3或T4)评估浆膜侵犯情况。从静脉期CT的原发性GC病变中提取放射组学特征,并将来自8个迁移学习模型的DL特征相结合,创建手工放射组学和深度学习放射组学(HCR - DLR)模型。使用临床特征构建临床(CL)模型,并将两者合并为临床与放射组学联合(CRC)模型。总共使用5种机器学习算法开发了15个预测模型。性能最佳的模型被可视化为列线图。
通过降维和选择,总共14个放射组学特征、13个DL特征和2个临床特征被认为是有价值的。在构建的模型中:CRC模型(AUC,训练队列:0.9212;内部测试队列:0.8743;外部测试队列:0.8853)比HCR - DLR模型(AUC,训练队列:0.8607;内部测试队列:0.8543;外部测试队列:0.8824)和CL模型(AUC,训练队列:0.7632;内部测试队列:0.7219;外部测试队列:0.7294)表现更好。绘制了基于逻辑CL模型的列线图以方便使用,并显示出其出色的预测性能。
整合临床特征、放射组学特征和DL特征的CRC模型的预测性能表现出强大的预测能力,可作为预测GC浆膜侵犯状态的简单、无创且实用的工具。