一种新型AE-nLMS滤波器与两种传统滤波器预测呼吸诱导肿瘤运动的比较研究

Ke Huang, Ivan Buzurovic, Yan Yu, T. Podder
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引用次数: 9

摘要

肿瘤运动预测是主动跟踪肿瘤和向肿瘤动态传递辐射剂量的重要步骤之一。本文在自适应归一化最小均二乘(nLMS)滤波器的基础上,提出了一种考虑预测加速度和实际加速度与预测加速度之比的自适应加速度增强归一化最小均二乘(AE-nLMS)预测滤波器。我们比较了nLMS、人工神经网络(ANN)和AE-nLMS滤波器在预测正常呼吸和不规则呼吸时的呼吸运动方面的性能。结果表明,人工神经网络滤波器对正常呼吸运动的预测效果最好,而AE-nLMS滤波器对不规则呼吸运动的预测效果优于其他滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study of a Novel AE-nLMS Filter and Two Traditional Filters in Predicting Respiration Induced Motion of the Tumor
Prediction of tumor motion is one of the important steps in active tracking of tumor and dynamic delivery of radiation dose to tumor. In this paper, we have presented a novel adaptive acceleration-enhanced normalized least mean squares (AE-nLMS) prediction filter based on the adaptive normalized least mean squares (nLMS) filter with predicted acceleration and ratio between the real and predicted acceleration taken into account. We have compared the performances of nLMS, artificial neural network (ANN), and AE-nLMS filter for predicting the respiration motion during normal and irregular respiration. The results revealed that the ANN filter has the best performance in the prediction of normal respiration motion, whereas the AE-nLMS filter outperformed other filters in the prediction of irregular respiration motion.
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