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Application and Parametric Studies of a Sliding Window Neural Network for Respiratory Motion Predictions of Lung Cancer Patients

机译:肺癌患者呼吸运动预测滑动窗口神经网络的应用与参数研究

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In real-time adaptive image-guided radiotherapy (IGRT), the beam delivery position is changed to follow the tumor motion. Most systems cannot respond instantaneously, and compensation for system lag is required. Typically, future tumor positions are predicted based on the respiratory motion tracked from an external surrogate. In the current work, a sliding window of time series data taken from the respiratory cycle is input into a neural network to predict a future position. The finite past history of the respiratory position is used to train the model. A nonlinear autoregressive neural network with exogenous inputs was used to simultaneously predict future positions. Patient data from the Respiratory Trace Generator (RTG) [1] was used for the training, validation and testing of the model. Parametric studies involving the number of input nodes (length of sliding window), number of hidden nodes and prediction horizon were performed. Tradeoffs between under-learning, training rate and over-learning were identified. While training error decreases as the number of hidden nodes increases, the validation error increases beyond 20 nodes. Large errors occur during transitions between inhale and exhale as well as when the prediction horizon increases.
机译:在实时自适应图像引导放射治疗(IGRT)中,梁输送位置改变为遵循肿瘤运动。大多数系统无法瞬间响应,并且需要对系统滞后的补偿。通常,基于从外部替代物跟踪的呼吸动作来预测未来的肿瘤位置。在当前的工作中,从呼吸周期采取的时间序列数据的滑动窗口被输入到神经网络中以预测未来位置。呼吸职位的有限历史用于培训模型。使用具有外源投入的非线性自回归神经网络同时预测未来的位置。来自呼吸跟踪发生器(RTG)的患者数据[1]用于培训,验证和测试模型。涉及输入节点数量(滑动窗口长度)的参数研究,执行隐藏节点的数量和预测地平线。确定了学习,培训率和过度学习之间的权衡。虽然随着隐藏节点的数量增加,训练错误会降低,但验证误差会增加20个节点。在吸气和呼气之间的过渡期间发生大错误以及当预测地平线增加时。

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