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A Super-Learner Model for Tumor Motion Prediction and Management in Radiation Therapy: Development and Feasibility Evaluation

机译:辐射疗法中肿瘤运动预测和管理的超级学习者模型:开发和可行性评估

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摘要

In cancer radiation therapy, large tumor motion due to respiration can lead to uncertainties in tumor target delineation and treatment delivery, thus making active motion management an essential step in thoracic and abdominal tumor treatment. In current practice, patients with tumor motion may be required to receive two sets of CT scans – the initial free-breathing 4-dimensional CT (4DCT) scan for tumor motion estimation and a second CT scan under appropriate motion management such as breath-hold or abdominal compression. The aim of this study is to assess the feasibility of a predictive model for tumor motion estimation in three-dimensional space based on machine learning algorithms. The model was developed based on sixteen imaging features extracted from non-4D diagnostic CT images and eleven clinical features extracted from the Electronic Health Record (EHR) database of 150 patients to characterize the lung tumor motion. A super-learner model was trained to combine four base machine learning models including the Random Forest, Multi-Layer Perceptron, LightGBM and XGBoost, the hyper-parameters of which were also optimized to obtain the best performance. The outputs of the super-learner model consist of tumor motion predictions in the Superior-Inferior (SI), Anterior-Posterior (AP) and Left-Right (LR) directions, and were compared against tumor motions measured in the free-breathing 4DCT scans. The accuracy of predictions was evaluated using Mean Absolute Error (MAE) and Root Mean Square Error (RMSE) through ten rounds of independent tests. The MAE and RMSE of predictions in the SI direction were 1.23 mm and 1.70 mm; the MAE and RMSE of predictions in the AP direction were 0.81 mm and 1.19 mm, and the MAE and RMSE of predictions in the LR direction were 0.70 mm and 0.95 mm. In addition, the relative feature importance analysis demonstrated that the imaging features are of great importance in the tumor motion prediction compared to the clinical features. Our findings indicate that a super-learner model can accurately predict tumor motion ranges as measured in the 4DCT, and could provide a machine learning framework to assist radiation oncologists in determining the active motion management strategy for patients with large tumor motion.
机译:在癌症放射治疗中,由于呼吸引起的大肿瘤运动会导致肿瘤靶标定界和治疗交付的不确定性,因此使主动运动管理成为胸腔和腹部肿瘤治疗中必不可少的步骤。在当前的实践中,可能会要求患有肿瘤运动的患者接受两组CT扫描-用于估计肿瘤运动的初始自由呼吸4维CT(4DCT)扫描,以及在适当的运动管理(如屏气)下进行的第二次CT扫描或腹部受压。这项研究的目的是评估基于机器学习算法的三维空间中肿瘤运动估计预测模型的可行性。该模型是基于从非4D诊断CT图像中提取的16种成像特征和从150名患者的电子健康记录(EHR)数据库中提取的11种临床特征开发出来的,以表征肺部肿瘤的运动。训练了一个超级学习者模型,以结合四个基本的机器学习模型,包括随机森林,多层感知器,LightGBM和XGBoost,还优化了它们的超参数以获得最佳性能。超级学习者模型的输出包括上下(SI),前后(AP)和左右(LR)方向上的肿瘤运动预测,并与自由呼吸4DCT中测得的肿瘤运动进行了比较扫描。通过十轮独立测试,使用平均绝对误差(MAE)和均方根误差(RMSE)评估了预测的准确性。 SI方向的预测的MAE和RMSE为1.23mm和1.70mm。 AP方向的MAE和RMSE分别为0.81mm和1.19mm,LR方向的MAE和RMSE分别为0.70mm和0.95mm。此外,相对特征重要性分析表明,与临床特征相比,成像特征在肿瘤运动预测中非常重要。我们的发现表明,超级学习者模型可以准确预测4DCT中测量的肿瘤运动范围,并且可以提供机器学习框架,以帮助放射肿瘤学家确定具有大肿瘤运动的患者的主动运动管理策略。

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