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Respiratory motion prediction using moving window based online training approach for LS-SVM

机译:基于移动窗口的LS-SVM的在线训练方法使用移动窗口的呼吸运动预测

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Prediction of respiratory motion to ablate tumors in chest and abdominal region is non-trivial because of the presence of intra-trace variabilities and irregularities. In recent past, several signal processing methods have been developed to model and predict respiratory motion. However, their prediction performance is susceptible to prediction horizons, irregularities and intra-trace variabilities. To counter these limitations and hence to enhance the prediction performance, in this paper, we proposed a moving window based online training approach for least squares support vector machines (LS-SVM) for respiratory motion prediction. To validate the proposed method, experiments have been conducted on ten real-respiratory motion traces. Results show that, the proposed online approach reduces prediction error compared to the conventional LS-SVM. Further, results demonstrate that the proposed approach provides better prediction performance than existing respiratory motion prediction methods.
机译:由于存在痕量变量和不规则性,预测胸腔和腹部肿瘤的呼吸肿瘤的预测是非琐碎的。最近,已经开发了几种信号处理方法来模拟和预测呼吸运动。然而,它们的预测性能易于预测视野,不规则性和微量痕量变性。为了对这些限制进行计,因此提高了预测性能,本文提出了一种基于移动窗口的在线训练方法,用于最小二乘支持向量机(LS-SVM),用于呼吸运动预测。为了验证所提出的方法,已经在十个实际呼吸运动痕迹上进行了实验。结果表明,与传统的LS-SVM相比,所提出的在线方法会降低预测误差。此外,结果表明,所提出的方法提供比现有呼吸运动预测方法更好的预测性能。

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