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Identification of Nonlinear fMRI Models Using Auxiliary Particle Filter and Kernel Smoothing Method

机译:使用辅助粒子滤波器和核平滑方法识别非线性FMRI模型

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Hemodynamic models have a high potential in application to understanding the functional differences of the brain. However, full system identification with respect to model fitting to actual functional magnetic resonance imaging (fMRI) data is practically difficult and is still an active area of research. We present a simulation based Bayesian approach for nonlinear model based analysis of the fMRI data. The idea is to do a joint state and parameter estimation within a general filtering framework. One advantage of using Bayesian methods is that they provide a complete description of the posterior distribution, not just a single point estimate. We use an Auxiliary Particle Filter adjoined with a kernel smoothing approach to address this joint estimation problem.
机译:血流动力学模型具有很高的应用潜力,以了解大脑的功能差异。然而,关于模型拟合到实际功能磁共振成像(FMRI)数据的完整系统识别实际上困难,并且仍然是一个有效的研究领域。我们介绍了一种基于模拟的基于FMRI数据的非线性模型的跳跃方法。该想法是在一般过滤框架内进行联合状态和参数估计。使用贝叶斯方法的一个优点是它们提供了对后部分布的完整描述,而不仅仅是单点估计。我们使用辅助粒子滤波器邻接的核平滑方法来解决该联合估计问题。

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