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肝细胞癌患者深度生存可解释放射组学模型。

A deep survival interpretable radiomics model of hepatocellular carcinoma patients.

机构信息

Department of Radiation Oncology, University of Michigan, Ann Arbor, MI, USA.

Department of Radiation Oncology, Mayo Clinic, Rochester, MN, USA.

出版信息

Phys Med. 2021 Feb;82:295-305. doi: 10.1016/j.ejmp.2021.02.013. Epub 2021 Mar 10.

Abstract

This work aims to identify a new radiomics signature using imaging phenotypes and clinical variables for risk prediction of overall survival (OS) in hepatocellular carcinoma (HCC) patients treated with stereotactic body radiation therapy (SBRT). 167 patients were retrospectively analyzed with repeated nested cross-validation to mitigate overfitting issues. 56 radiomic features were extracted from pre-treatment contrast-enhanced (CE) CT images. 37 clinical factors were obtained from patients' electronic records. Variational autoencoders (VAE) based survival models were designed for radiomics and clinical features and a convolutional neural network (CNN) survival model was used for the CECT. Finally, radiomics, clinical and raw image deep learning network (DNN) models were combined to predict the risk probability for OS. The final models yielded c-indices of 0.579 (95%CI: 0.544-0.621), 0.629 (95%CI: 0.601-0.643), 0.581 (95%CI: 0.553-0.613) and 0.650 (95%CI: 0.635-0.683) for radiomics, clinical, image input and combined models on nested cross validation scheme, respectively. Integrated gradients method was used to interpret the trained models. Our interpretability analysis of the DNN showed that the top ranked features were clinical liver function and liver exclusive of tumor radiomics features, which suggests a prominent role of side effects and toxicities in liver outside the tumor region in determining the survival rate of these patients. In summary, novel deep radiomic analysis provides improved performance for risk assessment of HCC prognosis compared with Cox survival models and may facilitate stratification of HCC patients and personalization of their treatment strategies. Liver function was found to contribute most to the OS for these HCC patients and radiomics can aid in their management.

摘要

这项工作旨在使用成像表型和临床变量为接受立体定向体放射治疗 (SBRT) 的肝细胞癌 (HCC) 患者的总生存期 (OS) 风险预测确定新的放射组学特征。对 167 名患者进行了回顾性分析,并采用重复嵌套交叉验证来减轻过拟合问题。从治疗前对比增强 (CE) CT 图像中提取了 56 个放射组学特征。从患者的电子记录中获得了 37 个临床因素。基于变分自动编码器 (VAE) 的生存模型用于放射组学和临床特征,卷积神经网络 (CNN) 生存模型用于 CECT。最后,将放射组学、临床和原始图像深度学习网络 (DNN) 模型结合起来预测 OS 的风险概率。最终模型在嵌套交叉验证方案中分别产生了 0.579(95%CI:0.544-0.621)、0.629(95%CI:0.601-0.643)、0.581(95%CI:0.553-0.613)和 0.650(95%CI:0.635-0.683)的 c 指数,用于放射组学、临床、图像输入和综合模型。使用集成梯度方法解释训练模型。我们对 DNN 的可解释性分析表明,排名最高的特征是临床肝功能和肿瘤外肝脏放射组学特征,这表明肿瘤区域外肝脏的副作用和毒性在确定这些患者的生存率方面起着重要作用。总之,与 Cox 生存模型相比,新的深度放射组学分析为 HCC 预后风险评估提供了更好的性能,并且可能有助于对 HCC 患者进行分层并为他们制定个性化的治疗策略。肝功能对这些 HCC 患者的 OS 贡献最大,放射组学可以帮助他们进行管理。

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