动态功能连接的状态空间模型

Sourish Chakravarty, Zachary D Threlkeld, Yelena G Bodien, Brian L Edlow, Emery N Brown
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引用次数: 0

摘要

动态功能连通性(DFC)分析包括测量多个脑区随时间变化的相关神经活动。神经信号(如静息态功能磁共振成像(fMRI)获得的神经信号)之间的显著区域相关性可能代表与静息相关的神经回路。传统的方法是从滑动时间窗口中估算相关动态的静态相关序列,这种方法在统计学上存在局限性。为了解决这个问题,我们受计量经济学研究最新成果的启发,提出了一种用于估计 DFC 的多元随机波动模型。该模型假设了一个状态空间框架,其中多变量正态观测序列的相关动态受一个正无限矩阵变量潜过程的控制。在序列贝叶斯估计框架内使用该统计模型,我们利用来自多个脑区的与血氧水平相关的活动来估计相关轨迹的后验分布。我们通过分析这种 DFC 估算框架在模拟数据上的性能,以及估算意识障碍(DoC)患者静息状态 fMRI 数据中的相关动态,证明了它的实用性。我们的工作推动了 DFC 分析及其在意识障碍生物标记探索中的原则性应用的最新发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A state-space model for dynamic functional connectivity.

Dynamic functional connectivity (DFC) analysis involves measuring correlated neural activity over time across multiple brain regions. Significant regional correlations among neural signals, such as those obtained from resting-state functional magnetic resonance imaging (fMRI), may represent neural circuits associated with rest. The conventional approach of estimating the correlation dynamics as a sequence of static correlations from sliding time-windows has statistical limitations. To address this issue, we propose a multivariate stochastic volatility model for estimating DFC inspired by recent work in econometrics research. This model assumes a state-space framework where the correlation dynamics of a multivariate normal observation sequence is governed by a positive-definite matrix-variate latent process. Using this statistical model within a sequential Bayesian estimation framework, we use blood oxygenation level dependent activity from multiple brain regions to estimate posterior distributions on the correlation trajectory. We demonstrate the utility of this DFC estimation framework by analyzing its performance on simulated data, and by estimating correlation dynamics in resting state fMRI data from a patient with a disorder of consciousness (DoC). Our work advances the state-of-the-art in DFC analysis and its principled use in DoC biomarker exploration.

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CiteScore
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