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使用实时递归学习训练的递归神经网络预测胸部内部点的运动,以补偿肺癌放射治疗中的潜伏期。

Prediction of the motion of chest internal points using a recurrent neural network trained with real-time recurrent learning for latency compensation in lung cancer radiotherapy.

机构信息

The University of Tokyo, Graduate School of Engineering, Department of Bioengineering, Tokyo, Japan.

The University of Tokyo, Graduate School of Engineering, Department of Bioengineering, Tokyo, Japan; The University of Tokyo, Graduate School of Engineering, Department of Nuclear Engineering and Management, Tokyo, Japan.

出版信息

Comput Med Imaging Graph. 2021 Jul;91:101941. doi: 10.1016/j.compmedimag.2021.101941. Epub 2021 May 28.

Abstract

During the radiotherapy treatment of patients with lung cancer, the radiation delivered to healthy tissue around the tumor needs to be minimized, which is difficult because of respiratory motion and the latency of linear accelerator (LINAC) systems. In the proposed study, we first use the Lucas-Kanade pyramidal optical flow algorithm to perform deformable image registration (DIR) of chest computed tomography (CT) scan images of four patients with lung cancer. We then track three internal points close to the lung tumor based on the previously computed deformation field and predict their position with a recurrent neural network (RNN) trained using real-time recurrent learning (RTRL) and gradient clipping. The breathing data is quite regular, sampled at approximately 2.5 Hz, and includes artificially added drift in the spine direction. The amplitude of the motion of the tracked points ranged from 12.0 mm to 22.7 mm. Finally, we propose a simple method for recovering and predicting three-dimensional (3D) tumor images from the tracked points and the initial tumor image, based on a linear correspondence model and the Nadaraya-Watson non-linear regression. The root-mean-square (RMS) error, maximum error and jitter corresponding to the RNN prediction on the test set were smaller than the same performance measures obtained with linear prediction and least mean squares (LMS). In particular, the maximum prediction error associated with the RNN, equal to 1.51 mm, is respectively 16.1% and 5.0% lower than the error given by a linear predictor and LMS. The average prediction time per time step with RTRL is equal to 119 ms, which is less than the 400 ms marker position sampling time. The tumor position in the predicted images appears visually correct, which is confirmed by the high mean cross-correlation between the original and predicted images, equal to 0.955. The standard deviation of the Gaussian kernel and the number of layers in the optical flow algorithm were the parameters having the most significant impact on registration performance. Their optimization led respectively to a 31.3% and 36.2% decrease in the registration error. Using only a single layer proved to be detrimental to the registration quality because tissue motion in the lower part of the lung has a high amplitude relative to the resolution of the CT scan images. The random initialization of the hidden units and the number of these hidden units were found to be the most important factors affecting the performance of the RNN. Increasing the number of hidden units from 15 to 250 led to a 56.3% decrease in the prediction error on the cross-validation data. Similarly, optimizing the standard deviation of the initial Gaussian distribution of the synaptic weights σ led to a 28.4% decrease in the prediction error on the cross-validation data, with the error minimized for σ=0.02 with the four patients.

摘要

在肺癌患者的放射治疗过程中,需要将肿瘤周围健康组织的放射剂量最小化,但由于呼吸运动和直线加速器(LINAC)系统的延迟,这很难实现。在本研究中,我们首先使用 Lucas-Kanade 金字塔光流算法对 4 名肺癌患者的胸部 CT 扫描图像进行可变形图像配准(DIR)。然后,根据之前计算出的变形场,跟踪三个靠近肺部肿瘤的内部点,并使用基于实时递归学习(RTRL)和梯度裁剪的递归神经网络(RNN)来预测它们的位置。呼吸数据非常规则,以大约 2.5 Hz 的频率采样,并且包括脊柱方向的人为添加漂移。跟踪点的运动幅度在 12.0 毫米到 22.7 毫米之间。最后,我们提出了一种从跟踪点和初始肿瘤图像中恢复和预测三维(3D)肿瘤图像的简单方法,该方法基于线性对应模型和内达雅-沃森非线性回归。RNN 在测试集上的预测的均方根(RMS)误差、最大误差和抖动均小于线性预测和最小均方误差(LMS)的相同性能指标。特别是,与 RNN 相关的最大预测误差等于 1.51 毫米,分别比线性预测器和 LMS 给出的误差低 16.1%和 5.0%。使用 RTRL 进行每个时间步长的平均预测时间等于 119 毫秒,小于 400 毫秒的标记位置采样时间。预测图像中的肿瘤位置看起来是正确的,这通过原始图像和预测图像之间的高平均互相关来确认,互相关值等于 0.955。光流算法中的高斯核的标准差和层数是对配准性能影响最大的参数。对它们的优化分别导致配准误差降低了 31.3%和 36.2%。事实证明,仅使用单层不利于配准质量,因为肺下部的组织运动相对于 CT 扫描图像的分辨率具有较高的幅度。隐藏单元的随机初始化和隐藏单元的数量被发现是影响 RNN 性能的最重要因素。将隐藏单元的数量从 15 增加到 250,导致交叉验证数据的预测误差降低了 56.3%。同样,优化突触权重σ的初始高斯分布的标准差也会导致交叉验证数据的预测误差降低 28.4%,对于四个患者,σ=0.02 时误差最小。

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