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首页> 外文期刊>Medical Physics >On using an adaptive neural network to predict lung tumor motion during respiration for radiotherapy applications.
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On using an adaptive neural network to predict lung tumor motion during respiration for radiotherapy applications.

机译:关于使用自适应神经网络预测呼吸道在放疗应用中肺部肿瘤的运动。

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摘要

In this study we address the problem of predicting the position of a moving lung tumor during respiration on the basis of external breathing signals--a technique used for beam gating, tracking, and other dynamic motion management techniques in radiation therapy. We demonstrate the use of neural network filters to correlate tumor position with external surrogate markers while simultaneously predicting the motion ahead in time, for situations in which neither the breathing pattern nor the correlation between moving anatomical elements is constant in time. One pancreatic cancer patient and two lung cancer patients with mid/upper lobe tumors were fluoroscopically imaged to observe tumor motion synchronously with the movement of external chest markers during free breathing. The external marker position was provided as input to a feed-forward neural network that correlated the marker and tumor movement to predict the tumor position up to 800 ms in advance. The predicted tumor position was compared to its observed position to establish the accuracy with which the filter could dynamically track tumor motion under nonstationary conditions. These results were compared to simplified linear versions of the filter. The two lung cancer patients exhibited complex respiratory behavior in which the correlation between surrogate marker and tumor position changed with each cycle of breathing. By automatically and continuously adjusting its parameters to the observations, the neural network achieved better tracking accuracy than the fixed and adaptive linear filters. Variability and instability in human respiration complicate the task of predicting tumor position from surrogate breathing signals. Our results show that adaptive signal-processing filters can provide more accurate tumor position estimates than simpler stationary filters when presented with nonstationary breathing motion.
机译:在这项研究中,我们解决了根据外部呼吸信号预测呼吸过程中移动的肺部肿瘤的位置的问题-一种用于放射治疗中的射束门控,跟踪和其他动态运动管理技术的技术。我们展示了使用神经网络过滤器将肿瘤位置与外部替代标志物相关联,同时同时预测了提前运动的情况,这种情况是呼吸模式或移动的解剖元素之间的相关性都不是时间恒定的。对一名胰腺癌患者和两名患有中叶/上叶肿瘤的肺癌患者进行荧光透视成像,以观察自由呼吸过程中肿瘤的运动与外部胸部标志物的运动同步。提供外部标志物位置作为前馈神经网络的输入,前馈神经网络将标志物与肿瘤运动相关联,以提前800毫秒预测肿瘤位置。将预测的肿瘤位置与其观察到的位置进行比较,以确定过滤器可以在非平稳条件下动态跟踪肿瘤运动的准确性。将这些结果与滤波器的简化线性版本进行了比较。两名肺癌患者表现出复杂的呼吸行为,其中替代标志物与肿瘤位置之间的相关性随每个呼吸周期而变化。通过自动连续地调整其参数以适应观察,与固定和自适应线性滤波器相比,神经网络获得了更好的跟踪精度。人类呼吸的变异性和不稳定性使根据替代呼吸信号预测肿瘤位置的任务复杂化。我们的结果表明,当出现非平稳呼吸运动时,自适应信号处理滤波器比简单的固定滤波器可以提供更准确的肿瘤位置估计。

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