Wu Ji, Li Jian, Huang Bo, Dong Sunbin, Wu Luyang, Shen Xiping, Zheng Zhigang
Department of General surgery, Suzhou Ninth Hospital Affiliated to Soochow University, Suzhou, Jiangsu Province, China; Department of Radiology, Suzhou Ninth Hospital Affiliated to Soochow University, Suzhou, Jiangsu Province, China.
Department of Radiology, Changshu No.2 People's Hospital, The Affiliated Changshu Hospital of Nantong University, Changshu, Jiangsu, China.
Transl Oncol. 2025 Feb;52:102281. doi: 10.1016/j.tranon.2025.102281. Epub 2025 Jan 11.
Accurate estimation of recurrence risk for cervical cancer plays a pivot role in making individualized treatment plans. We aimed to develop and externally validate an end-to-end deep learning model for predicting recurrence risk in cervical cancer patients following surgery by using multiparametric MRI images.
The clinicopathologic data and multiparametric MRI images of 406 cervical cancer patients from three institutions were collected. We designed a novel deep learning model called "ConvXGB" for predicting recurrence risk by combining the convolutional neural network (CNN) and eXtreme Gradient Boost (XGBoost). The predictive performance of the ConvXGB model was evaluated using time-dependent area under curve (AUC), compared with the deep learning radio-clinical model, clinical model, conventional radiomics nomogram and an existing histology-specific tool. The potential of the ConvXGB model in predicting the recurrence-free survival (RFS) and overall survival (OS) was assessed.
The ConvXGB model outperformed other models in predicting recurrence risk, with AUCs for 1 and 3 year-RFS of 0.872(95% CI, 0.857-0.906) and 0.882(95% CI, 0.860-0.904) respectively in the test cohort. This model showed better discrimination, calibration and clinical utility. Grad-CAM analysis was adopted to help clinicians better understand the predictive results. Moreover, Kaplan-Meier survival analysis revealed that patients who were stratified into high-risk group by the ConvXGB model were significantly susceptible to higher cumulative recurrence risk rates and worse outcome.
The ConvXGB model allowed for predicting postoperative recurrence risk in cervical cancer patients and for stratifying the risk of RFS and OS.
准确估计宫颈癌复发风险在制定个体化治疗方案中起着关键作用。我们旨在开发并外部验证一种端到端深度学习模型,通过多参数MRI图像预测宫颈癌患者术后的复发风险。
收集了来自三个机构的406例宫颈癌患者的临床病理数据和多参数MRI图像。我们设计了一种名为“ConvXGB”的新型深度学习模型,通过结合卷积神经网络(CNN)和极端梯度提升(XGBoost)来预测复发风险。与深度学习放射临床模型、临床模型、传统放射组学列线图和现有的组织学特异性工具相比,使用时间依赖性曲线下面积(AUC)评估ConvXGB模型的预测性能。评估了ConvXGB模型在预测无复发生存期(RFS)和总生存期(OS)方面的潜力。
ConvXGB模型在预测复发风险方面优于其他模型,在测试队列中,1年和3年RFS的AUC分别为0.872(95%CI,0.857 - 0.906)和0.882(95%CI,0.860 - 0.904)。该模型显示出更好的辨别力、校准度和临床实用性。采用Grad-CAM分析帮助临床医生更好地理解预测结果。此外,Kaplan-Meier生存分析显示,被ConvXGB模型分层为高风险组的患者明显更容易出现更高的累积复发风险率和更差的预后。
ConvXGB模型能够预测宫颈癌患者术后的复发风险,并对RFS和OS风险进行分层。