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用于深度学习放射治疗剂量分析和预测肝 SBRT 结果的神经网络。

Neural Networks for Deep Radiotherapy Dose Analysis and Prediction of Liver SBRT Outcomes.

出版信息

IEEE J Biomed Health Inform. 2019 Sep;23(5):1821-1833. doi: 10.1109/JBHI.2019.2904078. Epub 2019 Mar 11.

DOI:10.1109/JBHI.2019.2904078
PMID:30869633
Abstract

Stereotactic body radiation therapy (SBRT) is a relatively novel treatment modality, with little post-treatment prognostic information reported. This study proposes a novel neural network based paradigm for accurate prediction of liver SBRT outcomes. We assembled a database of patients treated with liver SBRT at our institution. Together with a three-dimensional (3-D) dose delivery plans for each SBRT treatment, other variables such as patients' demographics, quantified abdominal anatomy, history of liver comorbidities, other liver-directed therapies, and liver function tests were collected. We developed a multi-path neural network with the convolutional path for 3-D dose plan analysis and fully connected path for other variables analysis, where the network was trained to predict post-SBRT survival and local cancer progression. To enhance the network robustness, it was initially pre-trained on a large database of computed tomography images. Following n-fold cross-validation, the network automatically identified patients that are likely to have longer survival or late cancer recurrence, i.e., patients with the positive predicted outcome (PPO) of SBRT, and vice versa, i.e., negative predicted outcome (NPO). The predicted results agreed with actual SBRT outcomes with 56% of PPO patients and 0% NPO patients with primary liver cancer survived more than two years after SBRT. Similarly, 82% of PPO patients and 0% of NPO patients with metastatic liver cancer survived two-year threshold. The obtained results were superior to the performance of support vector machine and random forest classifiers. Furthermore, the network was able to identify the critical-to-spare liver regions, and the critical clinical features associated with the highest risks of negative SBRT outcomes.

摘要

立体定向体部放射治疗(SBRT)是一种相对较新的治疗方式,报道的治疗后预后信息较少。本研究提出了一种基于神经网络的新方法,用于准确预测肝脏 SBRT 的结果。我们收集了在我们机构接受肝脏 SBRT 治疗的患者数据库。结合每个 SBRT 治疗的三维(3-D)剂量分布计划,还收集了患者的人口统计学、量化的腹部解剖结构、肝脏合并症史、其他肝脏导向治疗和肝功能检查等其他变量。我们开发了一种具有卷积路径的多路径神经网络,用于 3-D 剂量计划分析,以及全连接路径,用于其他变量分析,网络经过训练可预测 SBRT 后的生存和局部癌症进展。为了增强网络的鲁棒性,它最初在大量的 CT 图像数据库上进行了预训练。经过 n 折交叉验证后,网络自动识别出具有较长生存时间或晚期癌症复发风险的患者,即 SBRT 的阳性预测结果(PPO)患者,反之亦然,即阴性预测结果(NPO)患者。预测结果与实际 SBRT 结果一致,原发性肝癌的 56% PPO 患者和 0% NPO 患者在 SBRT 后两年以上存活,转移性肝癌的 82% PPO 患者和 0% NPO 患者存活两年的门槛。获得的结果优于支持向量机和随机森林分类器的性能。此外,该网络能够识别关键的 spared 肝脏区域,以及与 SBRT 结果负相关的最高风险的关键临床特征。

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