用于描述 5D 时空网络动力学特征的深度残差模型揭示了精神分裂症中广泛的空间动力学变化。

Frontiers in neuroimaging Pub Date : 2023-02-01 eCollection Date: 2023-01-01 DOI:10.3389/fnimg.2023.1097523
Behnam Kazemivash, Theo G M van Erp, Peter Kochunov, Vince D Calhoun
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摘要

精神分裂症是一种严重的脑部疾病,具有妄想、言语混乱和幻觉等严重症状,会对患者生活的各个方面造成长期的不利影响。目前还不清楚精神分裂症的主要病因是什么,但大脑连接和结构的改变可能是其中的一个原因。神经影像学数据有助于描述精神分裂症的特征,但尽管有证据表明功能性网络在个体受试者体内会随着时间的推移发生复杂的时空变化,但很少有研究关注多个大脑网络随时间发生的体素变化。最近的研究主要关注功能数据的静态(平均)特征或固定网络之间的时间变化;然而,这些方法无法捕捉在体素水平上发生变化的多个重叠网络。在这项工作中,我们利用深度残差卷积神经网络(CNN)模型提取了 53 个不同的时空网络,每个网络都能捕捉皮层下、小脑、视觉、感觉运动、听觉、认知控制和默认模式等不同领域的动态变化。我们采用这种方法研究了从精神分裂症患者(N = 708)和对照组(N = 510)的大型功能磁共振成像(fMRI)数据集中提取的多个功能网络中的体素水平的时空动态性。我们的分析揭示了多个网络和时空特征中广泛存在的群体水平差异,包括预计会受精神分裂症影响的广泛区域的体素变异性、幅度和时空功能网络连通性。我们将其与典型的平均空间振幅进行了比较,结果表明,如果不考虑体素空间动态,就会错过高度结构化和神经解剖学相关的结果。重要的是,我们的方法可以总结静态、时间动态、空间动态和时空动态特征,从而证明这是一种统一和比较这些不同视角的强大方法。总之,我们的研究表明,所提出的方法突出了在全脑神经影像数据中考虑时间和空间动态性的重要性,对精神分裂症具有高度敏感性,能突出显示群体差异的全局但空间独特的动态性,在开发基于大脑的生物标记物的研究中可能尤为重要。
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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A deep residual model for characterization of 5D spatiotemporal network dynamics reveals widespread spatiodynamic changes in schizophrenia.

Schizophrenia is a severe brain disorder with serious symptoms including delusions, disorganized speech, and hallucinations that can have a long-term detrimental impact on different aspects of a patient's life. It is still unclear what the main cause of schizophrenia is, but a combination of altered brain connectivity and structure may play a role. Neuroimaging data has been useful in characterizing schizophrenia, but there has been very little work focused on voxel-wise changes in multiple brain networks over time, despite evidence that functional networks exhibit complex spatiotemporal changes over time within individual subjects. Recent studies have primarily focused on static (average) features of functional data or on temporal variations between fixed networks; however, such approaches are not able to capture multiple overlapping networks which change at the voxel level. In this work, we employ a deep residual convolutional neural network (CNN) model to extract 53 different spatiotemporal networks each of which captures dynamism within various domains including subcortical, cerebellar, visual, sensori-motor, auditory, cognitive control, and default mode. We apply this approach to study spatiotemporal brain dynamism at the voxel level within multiple functional networks extracted from a large functional magnetic resonance imaging (fMRI) dataset of individuals with schizophrenia (N = 708) and controls (N = 510). Our analysis reveals widespread group level differences across multiple networks and spatiotemporal features including voxel-wise variability, magnitude, and temporal functional network connectivity in widespread regions expected to be impacted by the disorder. We compare with typical average spatial amplitude and show highly structured and neuroanatomically relevant results are missed if one does not consider the voxel-wise spatial dynamics. Importantly, our approach can summarize static, temporal dynamic, spatial dynamic, and spatiotemporal dynamics features, thus proving a powerful approach to unify and compare these various perspectives. In sum, we show the proposed approach highlights the importance of accounting for both temporal and spatial dynamism in whole brain neuroimaging data generally, shows a high-level of sensitivity to schizophrenia highlighting global but spatially unique dynamics showing group differences, and may be especially important in studies focused on the development of brain-based biomarkers.

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