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Respiratory Signal Prediction Based on Adaptive Boosting and Multi-Layer Perceptron Neural Network

机译:基于自适应增强和多层感知器神经网络的呼吸信号预测

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摘要

To improve the prediction accuracy of respiratory signals using adaptive boosting and multi-layer perceptron neural network (ADMLP-NN) for gated treatment of moving target in radiation therapy. The respiratory signals acquired using a Real-time Position Management (RPM) device from 138 previous 4DCT scans were retrospectively used in this study. The ADMLP-NN was composed of several artificial neural networks (ANNs) which were used as weaker predictors to compose a stronger predictor. The respiratory signal was initially smoothed using a Savitzky-Golay finite impulse response smoothing filter (S-G filter). Then, several similar multi-layer perceptron neural networks (MLP-NNs) were configured to estimate future respiratory signal position from its previous positions. Finally, an adaptive boosting (Adaboost) decision algorithm was used to set weights for each MLP-NN based on the sample prediction error of each MLP-NN. Two prediction methods, MLP-NN and ADMLP-NN (MLP-NN plus adaptive boosting), were evaluated by calculating correlation coefficient and root-mean-square-error between true and predicted signals. For predicting 500-ms ahead of prediction, average correlation coefficients were improved from 0.83 (MLP-NN method) to 0.89 (ADMLP-NN method). The average of root-mean-square-error (relative unit) for 500-ms ahead of prediction using ADMLP-NN were reduced by 27.9%, compared to those using MLP-NN. The preliminary results demonstrate that the ADMLP-NN respiratory prediction method is more accurate than the MLP-NN method and can improve the respiration prediction accuracy.
机译:使用自适应增强和多层感知器神经网络(ADMLP-NN)来对放射治疗中的移动目标进行门控治疗,以提高呼吸信号的预测准确性。本研究回顾性地使用了从138次先前的4DCT扫描中使用实时位置管理(RPM)设备获取的呼吸信号。 ADMLP-NN由几个人工神经网络(ANN)组成,这些神经网络被用作较弱的预测器,以构成更强大的预测器。最初使用Savitzky-Golay有限脉冲响应平滑滤波器(S-G滤波器)对呼吸信号进行平滑。然后,配置了几个类似的多层感知器神经网络(MLP-NN),以从其先前位置估计未来的呼吸信号位置。最后,基于每个MLP-NN的样本预测误差,使用自适应增强(Adaboost)决策算法为每个MLP-NN设置权重。通过计算真实信号和预测信号之间的相关系数和均方根误差,评估了两种预测方法:MLP-NN和ADMLP-NN(MLP-NN加自适应增强)。为了比预测提前500毫秒,平均相关系数从0.83(MLP-NN方法)提高到0.89(ADMLP-NN方法)。与使用MLP-NN相比,使用ADMLP-NN进行预测前500毫秒的均方根误差(相对单位)平均值降低了27.9%。初步结果表明,ADMLP-NN呼吸预测方法比MLP-NN方法更准确,可以提高呼吸预测的准确性。

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