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Real-time filtering with sparse variations for head motion in magnetic resonance imaging

机译:磁共振成像中头部运动的稀疏变化实时滤波

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Estimating a time-varying signal, such as head motion from magnetic resonance imaging data, becomes particularly challenging in the face of other temporal dynamics such as functional activation. This paper describes a new Kalman-filter-like framework that includes a sparse residual term in the measurement model. This additional term allows the extended Kalman filter to generate real-time motion estimates suitable for prospective motion correction when such dynamics occur. An iterative augmented Lagrangian algorithm similar to the alterating direction method of multipliers implements the update step for this Kalman filter. This paper evaluates the accuracy and convergence rate of this iterative method for small and large motion in terms of its sensitivity to parameter selection. The included experiment on a simulated functional magnetic resonance imaging acquisition demonstrates that the resulting method improves the maximum Youden's J index of the time series analysis by 2 - 3% versus retrospective motion correction, while the sensitivity index increases from 4.3 to 5.4 when combining prospective and retrospective correction. (C) 2018 Elsevier B.V. All rights reserved.
机译:面对诸如功能激活之类的其他时间动态,估计时变信号(例如,根据磁共振成像数据的头部运动)变得特别具有挑战性。本文介绍了一种新的类似Kalman滤波器的框架,该框架在测量模型中包括一个稀疏残差项。该附加项允许扩展的卡尔曼滤波器在此类动态发生时生成适用于预期运动校正的实时运动估计。与乘法器的交替方向方法相似的迭代增强拉格朗日算法实现了此卡尔曼滤波器的更新步骤。本文从参数选择的敏感性出发,评估了这种迭代方法在大小运动中的准确性和收敛速度。包含在模拟功能磁共振成像采集上的实验表明,与回顾性运动校正相比,所得方法将时间序列分析的最大尤登J指数提高了2-3%,而将前瞻性和修正后的灵敏度指数从4.3提高到5.4。追溯校正。 (C)2018 Elsevier B.V.保留所有权利。

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