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Study of Learning Entropy for Novelty Detection in lung tumor motion prediction for target tracking radiation therapy

机译:用于目标跟踪放疗的肺肿瘤运动预测中新奇学习检测的学习熵研究

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This paper presents recently introduced concept of Learning Entropy (LE) for time series and recalls the practical form of its evaluation in real time. Then, a technique that estimates the increased risk of prediction inaccuracy of adaptive predictors in real time using LE is introduced. On simulation examples using artificial signal and real respiratory time series, it is shown that LE can be used to evaluate the actual validity of the adaptive predicting model of time series in real time. The introduced technique is discussed as a potential approach to the improvement of accuracy of lung tumor tracking radiation therapy.
机译:本文介绍了最近引入的时间序列学习熵(LE)的概念,并回顾了其实时评估的实用形式。然后,介绍了一种使用LE实时估计自适应预测器的预测不准确风险增加的技术。在使用人工信号和真实呼吸时间序列的仿真示例中,表明LE可用于实时评估时间序列自适应预测模型的实际有效性。讨论引入的技术是提高肺肿瘤跟踪放射治疗准确性的一种潜在方法。

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