结构支持功能:告知定向和动态功能连接与解剖学先验。

IF 3.1
David Pascucci, Maria Rubega, Joan Rué-Queralt, Sebastien Tourbier, Patric Hagmann, Gijs Plomp
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引用次数: 7

摘要

功能脑网络的动态曲目受到结构连接的底层拓扑结构的限制。尽管结构连通性(SC)和功能连通性(FC)之间存在内在联系,但将两者结合起来的综合和多模式方法仍然有限。在这里,我们提出了一种新的自适应滤波器,用于估计动态和有向FC使用结构连接信息作为先验。我们分别使用来自示踪研究和弥散张量成像指标的meta分析的SC先验,在大鼠颅外膜记录和人类事件相关的脑电图数据中测试了该滤波器。我们表明,特别是在低信噪比的条件下,SC先验可以帮助改进有向FC的估计,促进结合结构和功能信息的稀疏功能网络。此外,所提出的滤波器提供了对sc相关假阴性的内在保护,以及对假阳性的鲁棒性,代表了动态和定向FC分析背景下多模态成像的有价值的新工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Structure supports function: Informing directed and dynamic functional connectivity with anatomical priors.

Structure supports function: Informing directed and dynamic functional connectivity with anatomical priors.

Structure supports function: Informing directed and dynamic functional connectivity with anatomical priors.

Structure supports function: Informing directed and dynamic functional connectivity with anatomical priors.

The dynamic repertoire of functional brain networks is constrained by the underlying topology of structural connections. Despite this intrinsic relationship between structural connectivity (SC) and functional connectivity (FC), integrative and multimodal approaches to combine the two remain limited. Here, we propose a new adaptive filter for estimating dynamic and directed FC using structural connectivity information as priors. We tested the filter in rat epicranial recordings and human event-related EEG data, using SC priors from a meta-analysis of tracer studies and diffusion tensor imaging metrics, respectively. We show that, particularly under conditions of low signal-to-noise ratio, SC priors can help to refine estimates of directed FC, promoting sparse functional networks that combine information from structure and function. In addition, the proposed filter provides intrinsic protection against SC-related false negatives, as well as robustness against false positives, representing a valuable new tool for multimodal imaging in the context of dynamic and directed FC analysis.

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