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Lung tumor motion prediction based on multiple time-variant seasonal autoregressive model for tumor following radiotherapy

机译:基于多个时变季节性自回归模型的放疗后肺癌运动预测

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This paper presents a new lung tumor motion prediction method for tumor following radiation therapy. An essential core of the method is accurate estimation of complex fluctuation of time-variant periodical nature of lung tumor motion. Such estimation can be achieved by using a multiple time-variant seasonal autoregressive integral moving average (TVSARIMA) model in which several windows of different lengths is used to calculate correlation based time-variant period of the motion. The proposed method provides the final predicted value as a combination of those based on different window lengths. We have tested unweighted average, multiple regression, and multi layer perceptron (MLP) for the combination method by using real lung tumor motion data. The proposed methods with multiple regression and MLP based combinations showed high accurate prediction and are superior to the single TVSARIMA based prediction. The most highest prediction accuracy was achieved by using the MLP based combination. The average errors were 0.7953±0.0243[mm] at 0.5[sec] ahead and 0.8581±0.0510[mm] at 1.0[sec] ahead predictions, respectively. The results clearly demonstrate that the proposed method with an appropriate combination of several TVSARIMA is useful for improving the prediction performance.
机译:本文提出了一种用于放射治疗后肿瘤的新的肺肿瘤运动预测方法。该方法的基本核心是准确估计肺肿瘤运动随时间变化的周期性周期性复杂波动。可以通过使用多个时变季节自回归积分移动平均(TVSARIMA)模型来实现这种估计,在该模型中,使用了几个不同长度的窗口来计算基于运动的时变周期的相关性。所提出的方法将最终预测值作为基于不同窗口长度的那些值的组合来提供。我们已经通过使用真实的肺部肿瘤运动数据对组合方法进行了非加权平均,多元回归和多层感知器(MLP)测试。所提出的具有多元回归和基于MLP的组合的方法显示了较高的准确预测,并且优于基于TVSARIMA的单一预测。通过使用基于MLP的组合,可以实现最高的预测精度。平均误差在0.5秒前为0.7953±0.0243 [mm],在1.0秒前为0.8581±0.0510 [mm]。结果清楚地表明,所提出的方法与几种TVSARIMA的适当组合对于改善预测性能很有用。

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