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Reliable and Efficient Approach of BOLD Signal with Dual Kalman Filtering

机译:采用双卡尔曼滤波的BOLD信号可靠高效方法

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摘要

By introducing the conflicting effects of dynamic changes in blood flow, volume, and blood oxygenation, Balloon model provides a biomechanical compelling interpretation of the BOLD signal. In order to obtain optimal estimates for both the states and parameters involved in this model, a joint filtering (estimate) method has been widely used. However, it is flawed in several aspects (i) Correlation or interaction between the states and parameters is incorporated despite its nonexistence in biophysical reality. (ii) A joint representation for states and parameters necessarily means the large dimension of state space and will in turn lead to huge numerical cost in implementation. Given this knowledge, a dual filtering approach is proposed and demonstrated in this paper as a highly competent alternative, which can not only provide more reliable estimates, but also in a more efficient way. The two approaches in our discussion will be based on unscented Kalman filter, which has become the algorithm of choice in numerous nonlinear estimation and machine learning applications.
机译:通过引入血流量,血容量和血液氧合动态变化的相互矛盾的影响,气球模型可对BOLD信号提供令人信服的生物力学解释。为了获得该模型涉及的状态和参数的最佳估计,联合过滤(估计)方法已被广泛使用。但是,它在几个方面都有缺陷(i)尽管状态和参数在生物物理现实中不存在,但它们之间仍存在相关性或相互作用。 (ii)状态和参数的联合表示必然意味着状态空间的大范围,进而将导致巨大的实施成本。有了这些知识,就提出了双重过滤方法,并在本文中进行了演示,它是一种非常有效的替代方法,它不仅可以提供更可靠的估计,而且还可以提供更有效的方式。我们讨论中的两种方法将基于无味卡尔曼滤波器,该算法已成为众多非线性估计和机器学习应用中的首选算法。

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