MEG source reconstruction constrained by diffusion MRI based whole brain dynamical model

M. Fukushima, O. Yamashita, T. Knösche, Masa-aki Sato
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引用次数: 4

Abstract

Previous studies have shown that MEG source reconstruction is improved by temporal constraints from local current source dynamics. Extending these constraints, we have developed a source reconstruction method that is spatiotemporally constrained by a whole brain dynamical model. The source dynamics are represented by a multivariate autoregressive (MAR) model whose matrix entries are constrained by connectivity estimates based on diffusion MRI. The MAR model parameters are jointly estimated with the source amplitude to infer source-space effective connectivity. Through simulation at low signal-to-noise ratio, we confirmed that the proposed method suppresses spurious sources and, unlike the non-dynamical sparse Bayesian method, can recover a low amplitude source. Furthermore, effective connectivity estimated by the proposed joint approach was more accurate than that obtained from the two stage approach, in which the current sources are first reconstructed by the non-dynamical method, followed by MAR model fitting to the resulting sources.
基于扩散核磁共振全脑动力学模型约束的脑磁图源重构
以往的研究表明,局部电流源动态的时间约束改善了MEG源重构。扩展这些约束,我们开发了一种受全脑动力学模型时空约束的源重建方法。源动态由一个多元自回归(MAR)模型表示,该模型的矩阵条目受基于扩散MRI的连通性估计的约束。该模型参数与源幅值联合估计,推断源空间有效连通性。通过低信噪比的仿真,我们证实了该方法抑制了杂散源,并且与非动态稀疏贝叶斯方法不同,该方法可以恢复低振幅源。此外,联合方法估计的有效连通性比两阶段方法获得的有效连通性更准确,两阶段方法首先用非动态方法重建电流源,然后对结果源进行MAR模型拟合。
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