Wang Yujian, Wang Tongyu, Zheng Fei, Hao Wenhan, Hao Qi, Zhang Wenjia, Yin Ping, Hong Nan
Department of Radiology, Peking University People's Hospital, No.11, Xizhimen South Street, Xicheng District, Beijing, 100044, China.
Department of Radiology, The Affiliated Hospital of Qingdao University, 266003, Qingdao, China.
J Imaging Inform Med. 2025 Sep 2. doi: 10.1007/s10278-025-01653-w.
Soft tissue sarcomas (STS) are heterogeneous malignancies with high recurrence rates (33-39%) post-surgery, necessitating improved prognostic tools. This study proposes a fusion model integrating deep transfer learning and radiomics from MRI to predict postoperative STS recurrence. Axial T2-weighted fat-suppressed imaging (TWI) of 803 STS patients from two institutions was retrospectively collected and divided into training (n = 527), internal validation (n = 132), and external validation (n = 144) cohorts. Tumor segmentation was performed using the SegResNet model within the Auto3DSeg framework. Radiomic features and deep learning features were extracted. Feature selection employed LASSO regression, and the deep learning radiomic (DLR) model combined radiomic and deep learning signatures. Using the features, nine models were constructed based on three classifiers. The area under the receiver operating characteristic curve (AUC), sensitivity, specificity, accuracy, negative predictive value, and positive predictive value were calculated for performance evaluation. The SegResNet model achieved Dice coefficients of 0.728 after refinement. Recurrence rates were 22.8% (120/527) in the training, 25.0% (33/132) in the internal validation, and 32.6% (47/144) in the external validation cohorts. The DLR model (ExtraTrees) demonstrated superior performance, achieving an AUC of 0.818 in internal validation and 0.809 in external validation, better than the radiomic model (0.710, 0.612) and the deep learning model (0.751, 0.667). Sensitivity and specificity ranged from 0.702 to 0.976 and 0.732 to 0.830, respectively. Decision curve analysis confirmed superior clinical utility. The DLR model provides a robust, non-invasive tool for preoperative STS recurrence prediction, enabling personalized treatment decisions and postoperative management.
软组织肉瘤(STS)是一种异质性恶性肿瘤,术后复发率较高(33%-39%),因此需要改进预后评估工具。本研究提出了一种融合模型,该模型整合了深度迁移学习和来自MRI的放射组学,以预测STS术后复发情况。回顾性收集了来自两家机构的803例STS患者的轴位T2加权脂肪抑制成像(TWI),并将其分为训练队列(n = 527)、内部验证队列(n = 132)和外部验证队列(n = 144)。在Auto3DSeg框架内使用SegResNet模型进行肿瘤分割。提取了放射组学特征和深度学习特征。特征选择采用LASSO回归,深度学习放射组学(DLR)模型结合了放射组学和深度学习特征。利用这些特征,基于三种分类器构建了九个模型。计算了受试者操作特征曲线(AUC)下的面积、敏感性、特异性、准确性、阴性预测值和阳性预测值,以进行性能评估。经过优化后,SegResNet模型的Dice系数达到0.728。训练队列中的复发率为22.8%(120/527),内部验证队列中的复发率为25.0%(33/132),外部验证队列中的复发率为32.6%(47/144)。DLR模型(ExtraTrees)表现出卓越的性能,在内部验证中的AUC为0.818,在外部验证中的AUC为0.809,优于放射组学模型(0.710,0.612)和深度学习模型(0.751,0.667)。敏感性和特异性分别在0.702至0.976和0.732至0.830之间。决策曲线分析证实了其卓越的临床实用性。DLR模型为术前预测STS复发提供了一种强大的非侵入性工具,有助于做出个性化的治疗决策和术后管理。