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首页> 外文期刊>IEEE Transactions on Signal Processing >Algorithms and Bounds for Dynamic Causal Modeling of Brain Connectivity
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Algorithms and Bounds for Dynamic Causal Modeling of Brain Connectivity

机译:脑连通性动态因果建模的算法和界限

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摘要

Recent advances in neurophysiology have led to the development of complex dynamical models that describe the connections and causal interactions between different regions of the brain. These models are able to accurately mimic the event-related potentials observed by EEG/MEG measurement systems, and are considered to be key components for understanding brain functionality. In this paper, we focus on a class of nonlinear dynamic causal models (DCM) that are described by a set of connectivity parameters. In practice, the DCM parameters are inferred using data obtained by an EEG or MEG sensor array in response to a certain event or stimulus, and then used to analyze the strength and direction of the causal interactions between different brain regions. The usefulness of these parameters in this process will depend on how accurately they can be estimated, which in turn will depend on noise, the sampling rate, number of data samples collected, the accuracy of the source localization and reconstruction steps, etc. The goals of this paper are to present several algorithms for DCM parameter estimation, derive Cramér-Rao performance bounds for the estimates, and compare the accuracy of the algorithms against the theoretical performance limits under a variety of circumstances. The influence of noise and sampling rate will be explicitly investigated.
机译:神经生理学的最新进展导致了复杂的动力学模型的发展,该模型描述了大脑不同区域之间的联系和因果关系。这些模型能够准确模拟由EEG / MEG测量系统观察到的与事件相关的电位,并且被认为是理解大脑功能的关键组件。在本文中,我们重点研究由一组连接性参数描述的一类非线性动态因果模型(DCM)。在实践中,使用由EEG或MEG传感器阵列响应特定事件或刺激而获得的数据来推断DCM参数,然后将其用于分析不同大脑区域之间因果相互作用的强度和方向。这些参数在此过程中的有用性将取决于它们的估计精度,而后者又将取决于噪声,采样率,收集的数据样本数量,源定位和重建步骤的准确性等。目标本文的目的是提出几种用于DCM参数估计的算法,得出估计的Cramér-Rao性能范围,并在各种情况下将算法的精度与理论性能极限进行比较。将明确研究噪声和采样率的影响。

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