Magnetoencephalography dimensionality reduction informed by dynamic brain states

bioRxiv Pub Date : 2024-08-09 DOI:10.1101/2024.08.08.607151
Annie E Cathignol, L. Kusch, Marianna Angiolelli, E. Troisi Lopez, A. Polverino, A. Romano, G. Sorrentino, V. Jirsa, G. Rabuffo, P. Sorrentino
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Abstract

Complex spontaneous brain dynamics mirror the large number of interactions taking place among regions, supporting higher functions. Such complexity is manifested in the inter-regional dependencies among signals derived from different brain areas, as observed utilising neuroimaging techniques, like magnetoencephalography. The dynamics of this data produce numerous subsets of active regions at any moment as they evolve. Notably, converging evidence shows that these states can be understood in terms of transient coordinated events that spread across the brain over multiple spatial and temporal scales. Those can be used as a proxy of the “effectiveness” of the dynamics, as they become stereotyped or disorganised in neurological diseases. However, given the high dimensional nature of the data, representing them has been challenging thus far. Dimensionality reduction techniques are typically deployed to describe complex interdependencies and improve their interpretability. However, many dimensionality reduction techniques lose information about the sequence of configurations that took place. Here, we leverage a newly described algorithm, PHATE (Potential of Heat-diffusion for Affinity-based Transition Embedding), specifically designed to preserve the dynamics of the system in the low-dimensional embedding space. We analysed source-reconstructed resting-state magnetoencephalography from 18 healthy subjects to represent the dynamics of the configuration in low-dimensional space. After reduction with PHATE, unsupervised clustering via K-means is applied to identify distinct clusters. The topography of the states is described, and the dynamics are represented as a transition matrix. All the results have been checked against null models, providing a parsimonious account of the large-scale, fast, aperiodic dynamics during resting-state.
根据大脑动态状态进行脑磁图降维
复杂的大脑自发动态反映了各区域之间发生的大量相互作用,支持着高级功能。利用脑磁图等神经成像技术观察到的不同脑区信号之间的区域间依赖关系就体现了这种复杂性。这些数据的动态变化在任何时刻都会产生无数活跃区域的子集。值得注意的是,越来越多的证据表明,这些状态可以从瞬时协调事件的角度来理解,这些事件遍布大脑的多个空间和时间尺度。这些事件可作为动态 "有效性 "的代表,因为它们在神经系统疾病中会变得刻板或无序。然而,鉴于数据的高维特性,迄今为止,对其进行表征一直是一项挑战。降维技术通常用于描述复杂的相互依存关系,并提高其可解释性。然而,许多降维技术会丢失所发生的配置序列信息。在这里,我们利用了一种新描述的算法 PHATE(基于亲和力转换嵌入的热扩散潜能),该算法专门用于在低维嵌入空间中保留系统的动态。我们分析了来自 18 名健康受试者的源重构静息态脑磁图,以表示低维空间中的配置动态。在使用 PHATE 进行还原后,通过 K-means 进行无监督聚类,以识别不同的聚类。对状态的地形进行描述,并以过渡矩阵的形式表示动态。所有结果都与空模型进行了核对,为静息状态下的大规模、快速、非周期性动力学提供了一个简明的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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