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首页> 外文期刊>Journal of neural engineering >Joint state and parameter estimation of the hemodynamic model by particle smoother expectation maximization method
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Joint state and parameter estimation of the hemodynamic model by particle smoother expectation maximization method

机译:粒子更平滑期望最大化方法对血液动力学模型的联合状态和参数估计

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Objective. In this paper, we aimed for the robust estimation of the parameters and states of the hemodynamic model by using blood oxygen level dependent signal. Approach. In the fMRI literature, there are only a few successful methods that are able to make a joint estimation of the states and parameters of the hemodynamic model. In this paper, we implemented a maximum likelihood based method called the particle smoother expectation maximization (PSEM) algorithm for the joint state and parameter estimation. Main results. Former sequential Monte Carlo methods were only reliable in the hemodynamic state estimates. They were claimed to outperform the local linearization (LL) filter and the extended Kalman filter (EKF). The PSEM algorithm is compared with the most successful method called square-root cubature Kalman smoother (SCKS) for both state and parameter estimation. SCKS was found to be better than the dynamic expectation maximization (DEM) algorithm, which was shown to be a better estimator than EKF, LL and particle filters. Significance. PSEM was more accurate than SCKS for both the state and the parameter estimation. Hence, PSEM seems to be the most accurate method for the system identification and state estimation for the hemodynamic model inversion literature. This paper do not compare its results with Tikhonov-regularized Newton-CKF (TNF-CKF), a recent robust method which works in filtering sense.
机译:目的。在本文中,我们旨在通过使用依赖于血氧水平的信号对血流动力学模型的参数和状态进行可靠的估计。方法。在fMRI文献中,只有少数成功的方法能够对血液动力学模型的状态和参数进行联合估计。在本文中,我们为联合状态和参数估计实现了一种基于最大似然的方法,称为粒子平滑器期望最大化(PSEM)算法。主要结果。以前的顺序蒙特卡洛方法仅在血液动力学状态估计中是可靠的。他们声称它们的性能优于局部线性化(LL)滤波器和扩展的卡尔曼滤波器(EKF)。将PSEM算法与最成功的称为平方根库曼卡尔曼平滑器(SCKS)的状态和参数估计方法进行了比较。发现SCKS比动态期望最大化(DEM)算法更好,后者被证明比EKF,LL和粒子滤波器更好。意义。在状态和参数估计方面,PSEM比SCKS更为准确。因此,对于血流动力学模型反演文献,PSEM似乎是最准确的系统识别和状态估计方法。本文不将其结果与Tikhonov正规化的Newton-CKF(TNF-CKF)进行比较,后者是一种在过滤意义上有效的最新健壮方法。

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