Microstates

微生物
  • 文章类型: Journal Article
    研究的目的是找出在休息状态和听北印度古典音乐Raag'RaagBilawal'期间产生的微态图地形及其参数。假设在休息状态和听音乐的过程中,微状态参数会有差异,即平均持续时间,全局解释方差(GEV),和时间覆盖。
    使用EEG微状态调查记录了12名印度受试者(平均年龄26.11.4岁)的128通道脑电图(EEG),同时休息和听音乐。微观状态参数的调查和比较是平均持续时间,全局解释方差(GEV),和两种条件之间的时间覆盖进行。
    发现了七个代表静息状态和听音乐状况的微状态图,四个规范和三个新颖的地图。在时间覆盖和平均持续时间的两种条件之间没有发现统计学上的显着差异。平均持续时间map-1、map-2、map-3、map-4、map-5、map-6和map-7的统计显著性水平分别为0.4、0.6、0.97、0.34、0.32、0.69和0.29;时间覆盖率分别为0.92、0.92、0.96、0.64、0.78、0.38和0.76。Map-1,map-4和map-7是我们在研究中发现的三个新颖的地图。
    在两种情况下都存在关于具有小脆弱性的地图的稳定性和优势的相似性,表明语音,视觉,和背侧注意力网络可以在休息状态和听音乐条件下被激活。
    UNASSIGNED: the objective of the study was to find out the microstate map topographies and their parameters generated during the resting state and during listening to North Indian classical Music Raag \'the Raag Bilawal\'. It was hypothesized that in the resting state and during listening to music conditions, there would be a difference in microstate parameters i.e. mean duration, global explained variance (GEV), and time coverage.
    UNASSIGNED: a 128-channel electroencephalogram (EEG) was recorded for 12 Indian subjects (average age 26.1+1.4 years) while resting and listening to music using the EEG microstate investigation. Investigation and comparison of the microstate parameters were the mean duration, global explained variance (GEV), and time coverage between both conditions were performed.
    UNASSIGNED: seven microstate maps were found to represent the resting state and listening to music condition, four canonical and three novel maps. No statistically significant difference was found between the two conditions for time coverage and mean duration. The statistical significance levels of the map-1, map-2, map-3, map-4, map-5, map-6, and map-7 for the mean duration were 0.4, 0.6, 0.97, 0.34, 0.32, 0.69, and 0.29 respectively; and for time coverage were 0.92, 0.92, 0.96, 0.64, 0.78, 0.38, and 0.76 respectively. Map-1, map-4, and map-7 were the three novel maps we found in our study.
    UNASSIGNED: similarities regarding stability and predominance of maps with small vulnerability exist in both conditions indicating that phonological, visual, and dorsal attention networks may be activated in both resting state and listening to music condition.
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  • 文章类型: Journal Article
    偏头痛是一种影响大量人群的慢性衰弱性疾病,女人比男人多。诊断的金标准是国际头痛疾病分类-3(ICHD-3)。作者已经在本诊断方法中确定了多个紧密点。另一种诊断方法一直令人垂涎。脑电图(EEG)是此类替代方案中研究最多的一种。视觉诱发电位是研究最多的;听觉诱发电位和经颅直流电刺激也在研究中。皮层过度兴奋和对感觉刺激的习惯性缺陷是一些一致的发现。Alpha振荡是最常研究的波段之一;EEG波的频谱分析通常显示出比直接从EEG读取的特征更可靠和一致的结果。脑电图微状态是一种新颖且有前途的方法,显示出特征性的可识别特征,可以帮助诊断偏头痛患者。诊断偏头痛的ICHD-3标准的替代方法将有助于及时诊断该疾病。EEG是最探索的替代方案之一,其中可枚举特征可用于识别偏头痛。其中最有前途的是脑电图微状态。
    Migraine is a chronic debilitating disease affecting a significant number of people, more often women than men. The gold standard for diagnosis is the International Classification of Headache Disorders-3 (ICHD-3). Authors have identified multiple tight spots in the present method of diagnosis. An alternative method of diagnosis has always been coveted. Electroencephalogram (EEG) is one of the most researched of such alternatives. The visually evoked potential is the most studied; auditory evoked potentials and transcranial direct current stimulation are also being studied. Cortical hyperexcitability and habituation deficit to sensory stimuli are some of the consistent findings. Alpha oscillations are among the most frequently studied bands; spectral analysis of EEG waves has often shown more reliable and consistent results than features read off the EEG directly. EEG microstate is a novel and promising method showing characteristic identifiable features that may help diagnose Migraine patients. An alternative to the ICHD-3 criterion for diagnosing Migraines would be instrumental in promptly diagnosing the disease. EEG is one of the most explored alternatives within which enumerable features can be used to identify Migraines, of which the most promising are EEG microstates.
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  • 文章类型: Journal Article
    音乐训练促进个体认知功能的发展并影响大脑的可塑性。全面了解音乐影响人脑的途径和过程,以及人类大脑对音乐感知的神经生物学机制,对于充分利用音乐为大脑发育提供的可塑性是必要的。
    为了研究有和没有音乐训练经验的个体的静息状态脑电图(EEG)活动,并探索脑电信号的微态模式。
    在这项研究中,对57名参与者的脑电图(EEG)微状态的分析得出了时间参数(平均持续时间,时间覆盖,发生,和转移概率)四个经典微状态类别(类别A,B,C,和D)两组:有音乐训练经验的人和没有音乐训练经验的人。组间对这些参数进行统计学分析。
    结果表明,与没有音乐训练经验的个人相比,具有音乐训练经验的参与者表现出明显更长的微状态A的平均持续时间,它与语音处理相关。此外,它们显示出微状态B的更大时间覆盖,它与视觉处理相关。与没有音乐训练经验的参与者相比,具有音乐训练经验的参与者从微观状态A到微观状态B的转换概率更大。相反,在没有音乐训练经验的参与者中,从微状态A到微状态C以及从微状态C到微状态D的转换概率更大。
    我们的研究发现,有和没有音乐训练经验的个体之间某些微观状态的特征参数存在差异。这表明在与语音相关的任务中大脑活动模式不同,愿景,以及具有不同音乐训练经验的个体之间的注意力调节。这些发现支持音乐训练经验与特定神经活动之间的关联。此外,他们赞同音乐训练经验在静息状态下影响大脑活动的假设。此外,它们暗示了音乐训练在与演讲相关的任务中的促进作用,愿景,和注意力调节,为进一步实证研究受音乐训练影响的认知过程提供初步证据。
    UNASSIGNED: Music training facilitates the development of individual cognitive functions and influences brain plasticity. A comprehensive understanding of the pathways and processes through which music affects the human brain, as well as the neurobiological mechanisms underlying human brain perception of music, is necessary to fully harness the plasticity that music offers for brain development.
    UNASSIGNED: To investigate the resting-state electroencephalogram (EEG) activity of individuals with and without music training experience, and explore the microstate patterns of EEG signals.
    UNASSIGNED: In this study, an analysis of electroencephalogram (EEG) microstates from 57 participants yielded temporal parameters(mean duration, time coverage, occurrence, and transition probability)of four classic microstate categories (Categories A, B, C, and D) for two groups: those with music training experience and those without. Statistical analysis was conducted on these parameters between groups.
    UNASSIGNED: The results indicate that compared to individuals without music training experience, participants with music training experience exhibit significantly longer mean durations of microstate A, which is associated with speech processing. Additionally, they show a greater time coverage of microstate B, which is associated with visual processing. Transition probabilities from microstate A to microstate B were greater in participants with music training experience compared to those without. Conversely, transition probabilities from microstate A to microstate C and from microstate C to microstate D were greater in participants without music training experience.
    UNASSIGNED: Our study found differences in characteristic parameters of certain microstates between individuals with and without music training experience. This suggests distinct brain activity patterns during tasks related to speech, vision, and attention regulation among individuals with varying levels of music training experience. These findings support an association between music training experience and specific neural activities. Furthermore, they endorse the hypothesis of music training experience influencing brain activity during resting states. Additionally, they imply a facilitative role of music training in tasks related to speech, vision, and attention regulation, providing initial evidence for further empirical investigation into the cognitive processes influenced by music training.
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  • 从默认模式网络(DMN)切换到额顶叶网络(FPN)的异常被提议为患有物质使用障碍的受试者的工作记忆缺陷的基础,可以在认知任务中使用神经成像技术进行研究。当前的研究使用EEG研究了在具有物质使用障碍的受试者中执行Sternberg的工作记忆任务期间的刺激前微观状态。
    在10名年龄和性别匹配的受试者中获取并处理128通道脑电图,每个人都有酒精使用障碍,阿片类药物使用障碍,和控件,而他们执行斯特恩伯格的任务。行为参数,预刺激脑电图微状态,和潜在来源进行了分析,并在有物质使用障碍的受试者和对照组之间进行了比较。
    酒精和阿片类药物使用障碍受试者的准确性均显着降低(P<0.01),而仅酒精使用障碍受试者的反应时间明显高于对照组(P<0.01)和阿片类药物使用障碍(P<0.01),反映物质使用障碍受试者不同程度的工作记忆缺陷。刺激前脑电图微状态显示四个地形图1-4:酒精和阿片类药物使用障碍的受试者显示出图3(视觉处理)和图2(显着性和DMN转换)的平均持续时间显着降低,分别,与对照组相比(P<0.05)。
    在酒精和阿片类药物使用障碍的受试者中,图3和图2的平均持续时间减少可能是他们在Sternberg任务中表现较差的原因。此外,皮质来源显示,海马旁回-DMN的枢纽,与冲动性相关的颞上和中回,以及维持执行反射系统和冲动系统之间平衡的脑岛,在两组物质使用障碍中均具有较高的活性。EEG微观状态可用于设想涉及酒精和阿片类药物使用障碍受试者的工作记忆缺陷的神经基础,反映在神经网络和信息处理机制之间的异常切换。
    UNASSIGNED: Aberrance in switching from default mode network (DMN) to fronto-parietal network (FPN) is proposed to underlie working memory deficits in subjects with substance use disorders, which can be studied using neuro-imaging techniques during cognitive tasks. The current study used EEG to investigate pre-stimulus microstates during the performance of Sternberg\'s working memory task in subjects with substance use disorders.
    UNASSIGNED: 128-channel EEG was acquired and processed in ten age and gender-matched subjects, each with alcohol use disorder, opioid use disorder, and controls while they performed Sternberg\'s task. Behavioral parameters, pre-stimulus EEG microstate, and underlying sources were analyzed and compared between subjects with substance use disorders and controls.
    UNASSIGNED: Both alcohol and opioid use disorder subjects had significantly lower accuracy (P < 0.01), while reaction times were significantly higher only in subjects of alcohol use disorder compared to controls (P < 0.01) and opioid use disorder (P < 0.01), reflecting working memory deficits of varying degrees in subjects with substance use disorders. Pre-stimulus EEG microstate revealed four topographic Maps 1-4: subjects of alcohol and opioid use disorder showing significantly lower mean duration of Map 3 (visual processing) and Map 2 (saliency and DMN switching), respectively, compared to controls (P < 0.05).
    UNASSIGNED: Reduced mean durations in Map 3 and 2 in subjects of alcohol and opioid use disorder can underlie their poorer performance in Sternberg\'s task. Furthermore, cortical sources revealed higher activity in both groups of substance use disorders in the parahippocampal gyrus- a hub of DMN; superior and middle temporal gyri associated with impulsivity; and insula that maintains balance between executive reflective system and impulsive system. EEG microstates can be used to envisage neural underpinnings implicated for working memory deficits in subjects of alcohol and opioid use disorders, reflected by aberrant switching between neural networks and information processing mechanisms.
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  • 文章类型: Journal Article
    青少年特发性脊柱侧凸(AIS)的病理生理学尚未完全了解,但是已经提出了多因素假设,包括有缺陷的中枢神经系统(CNS)姿势控制,生物力学,和身体模式改变。为了加深中枢神经系统对AIS姿势的控制,在有和没有AIS的青少年中进行简单平衡任务时的脑电图(EEG)活动被解析为EEG微状态。微状态是持续几十毫秒的大脑电势的准稳定空间分布。与对照相比,以从左额叶到右后部的方向为特征的EEG的空间分布在AIS中保持稳定更长时间。脑电图的这种空间分布,在文献中通常被称为B类,已经发现与视觉静息状态网络相关。视觉和本体感觉网络在绘制外部环境时都提供了关键信息。这种神经生理学标记可能揭示了AIS中姿势控制机制的改变,提示由于脊柱侧弯引起的姿势需求增加,信息处理负荷更高。
    The pathophysiology of Adolescent Idiopathic Scoliosis (AIS) is not yet fully understood, but multifactorial hypotheses have been proposed that include defective central nervous system (CNS) control of posture, biomechanics, and body schema alterations. To deepen CNS control of posture in AIS, electroencephalographic (EEG) activity during a simple balance task in adolescents with and without AIS was parsed into EEG microstates. Microstates are quasi-stable spatial distributions of the electric potential of the brain that last tens of milliseconds. The spatial distribution of the EEG characterised by the orientation from left-frontal to right-posterior remains stable for a greater amount of time in AIS compared to controls. This spatial distribution of EEG, commonly named in the literature as class B, has been found to be correlated with the visual resting state network. Both vision and proprioception networks provide critical information in mapping the extrapersonal environment. This neurophysiological marker probably unveils an alteration in the postural control mechanism in AIS, suggesting a higher information processing load due to the increased postural demands caused by scoliosis.
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  • 文章类型: Journal Article
    大脑老化是许多神经退行性疾病的主要危险因素。全脑振荡可能有助于衰老的新型早期生物标志物。这里,我们使用静息脑磁图(MEG)在624名个体的大型队列中研究了跨寿命期(18~88岁)的动态振荡神经活动.我们的目的是检查老化过程中振荡微状态的模式。通过使用机器学习算法,我们确定了不同年龄段和不同频段的四种典型的微状态模式簇:从左到右地形MS1,从右到左地形MS2,前后MS3和额中央MS4。我们观察到感官相关微态模式(MS1和MS2)的α持续时间减少和α发生增加。因此,MS1和MS2的θ和β变化可能与随年龄增长而增加的运动衰退有关。此外,自愿性的“自上而下的”显著性/注意力网络可能通过增加的MS3和MS4alpha发生率和互补的beta活动来反映。这项研究的发现使我们了解了衰老的大脑如何在神经状态转换中表现出功能障碍。通过利用已识别的微状态模式,这项研究为预测健康衰老和潜在的神经精神认知衰退提供了新的见解。
    The aging brain represents the primary risk factor for many neurodegenerative disorders. Whole-brain oscillations may contribute novel early biomarkers of aging. Here, we investigated the dynamic oscillatory neural activities across lifespan (from 18 to 88 years) using resting Magnetoencephalography (MEG) in a large cohort of 624 individuals. Our aim was to examine the patterns of oscillation microstates during the aging process. By using a machine-learning algorithm, we identify four typical clusters of microstate patterns across different age groups and different frequency bands: left-to-right topographic MS1, right-to-left topographic MS2, anterior-posterior MS3 and fronto-central MS4. We observed a decreased alpha duration and an increased alpha occurrence for sensory-related microstate patterns (MS1 & MS2). Accordingly, theta and beta changes from MS1 & MS2 may be related to motor decline that increased with age. Furthermore, voluntary \'top-down\' saliency/attention networks may be reflected by the increased MS3 & MS4 alpha occurrence and complementary beta activities. The findings of this study advance our knowledge of how the aging brain shows dysfunctions in neural state transitions. By leveraging the identified microstate patterns, this study provides new insights into predicting healthy aging and the potential neuropsychiatric cognitive decline.
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  • 文章类型: Published Erratum
    [这更正了文章DOI:10.3389/fnint.2023.1234471。].
    [This corrects the article DOI: 10.3389/fnint.2023.1234471.].
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  • 文章类型: Journal Article
    一些研究表明,神经集合之间的协调是理解人类认知的关键。绘制良好的路径是从EEG或MEG振荡的频谱变化中识别与认知功能相关的协调状态。越来越多的研究表明,在协调状态之间切换的趋势,雕刻大脑的动态库,并可以通过称为亚稳态的度量来索引。在这篇文章中,我们描述了经颅磁刺激后全球脑网络动力学亚稳态的扰动,可以量化信息处理改变的持续时间。从而让研究人员了解大脑刺激的网络效应,标准化刺激方案和设计实验任务。我们使用公开可用的数据集凭经验证明效果,并使用数字孪生(全脑连接体模型)来理解生成此类观察的动态原理。我们观察到亚稳定性显著降低,同时单脉冲TMS后相干性增加,反映出存在神经协调改变的窗口。复杂性的降低通过基于微态标记的EEG数据的Lempel-Ziv复杂性的附加测量来验证。有趣的是,较高频率的EEG信号显示出较低频率更快的亚稳态恢复。数字孪生阐明了单脉冲TMS在局部皮层网络中引入的相位重置如何在全球范围内传播,引起亚稳态和相干性的变化。
    Several studies have shown that coordination among neural ensembles is a key to understand human cognition. A well charted path is to identify coordination states associated with cognitive functions from spectral changes in the oscillations of EEG or MEG. A growing number of studies suggest that the tendency to switch between coordination states, sculpts the dynamic repertoire of the brain and can be indexed by a measure known as metastability. In this article, we characterize perturbations in the metastability of global brain network dynamics following Transcranial Magnetic Stimulation that could quantify the duration for which information processing is altered. Thus allowing researchers to understand the network effects of brain stimulation, standardize stimulation protocols and design experimental tasks. We demonstrate the effect empirically using publicly available datasets and use a digital twin (a whole brain connectome model) to understand the dynamic principles that generate such observations. We observed a significant reduction in metastability, concurrent with an increase in coherence following single-pulse TMS reflecting the existence of a window where neural coordination is altered. The reduction in complexity was validated by an additional measure based on the Lempel-Ziv complexity of microstate labeled EEG data. Interestingly, higher frequencies in the EEG signal showed faster recovery in metastability than lower frequencies. The digital twin shed light on how the phase resetting introduced by the single-pulse TMS in local cortical networks can propagate globally, giving rise to changes in metastability and coherence.
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  • 文章类型: Journal Article
    脑电图(EEG)微态分析需要在多通道EEG时间序列数据中找到准稳定且通常复发的离散状态的动力学,并将估计的状态转换动力学的属性与诸如认知和行为之类的可观测值相关联。虽然微观状态分析已被广泛用于分析脑电图数据,它的使用在功能磁共振成像(fMRI)数据中仍然不那么普遍,主要是由于此类数据的时间尺度较慢。在本研究中,我们将EEG微状态分析中使用的各种数据聚类方法扩展到健康人类的静息状态fMRI数据,以提取其状态转换动力学.我们表明,聚类的质量与EEG数据的各种微观状态分析的质量相当。然后,我们开发了一种方法来检查fMRI会话之间的离散状态转换动力学的测试-重测可靠性,并表明对于状态转换动力学的不同指标,参与者内部的测试-重测可靠性高于参与者之间的测试-重测可靠性。不同的网络,和不同的数据集。该结果表明,fMRI数据的状态转换动力学分析可以区分不同的个体,并且是进行个体指纹分析的有前途的工具。
    Electroencephalogram (EEG) microstate analysis entails finding dynamics of quasi-stable and generally recurrent discrete states in multichannel EEG time series data and relating properties of the estimated state-transition dynamics to observables such as cognition and behavior. While microstate analysis has been widely employed to analyze EEG data, its use remains less prevalent in functional magnetic resonance imaging (fMRI) data, largely due to the slower timescale of such data. In the present study, we extend various data clustering methods used in EEG microstate analysis to resting-state fMRI data from healthy humans to extract their state-transition dynamics. We show that the quality of clustering is on par with that for various microstate analyses of EEG data. We then develop a method for examining test-retest reliability of the discrete-state transition dynamics between fMRI sessions and show that the within-participant test-retest reliability is higher than between-participant test-retest reliability for different indices of state-transition dynamics, different networks, and different data sets. This result suggests that state-transition dynamics analysis of fMRI data could discriminate between different individuals and is a promising tool for performing fingerprinting analysis of individuals.
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  • 文章类型: Journal Article
    静息状态脑电图的微观状态分析是一种独特的数据驱动方法,用于识别头皮电位形貌的模式,或微状态,这反映了同步神经活动随时间动态演变的稳定但短暂的时期。在婴儿期-大脑快速发育和可塑性的关键时期-微观状态分析为表征大脑活动的空间和时间动态提供了独特的机会。然而,是否从这种方法得出测量值(例如,时间属性,转移概率,神经源)显示出强的心理测量特性(即,可靠性)婴儿期是未知的,并且是促进我们了解早期生活经历如何塑造微观状态以及它们是否与婴儿能力的个体差异有关的关键信息。缺乏进行婴儿脑电图微观状态分析的方法资源进一步阻碍了婴儿研究人员采用这种尖端方法。因此,在目前的研究中,我们系统地解决了这些知识空白,并报告说,除了转变概率外,大多数基于微状态的脑组织和功能测量在观看静息状态数据4分钟时是稳定的,并且在内部仅1分钟时是高度一致的.除了这些结果,我们提供了一个循序渐进的教程,随附网站,和开放存取数据,用于使用免费的,用户友好的软件称为Cartool。一起来看,当前的研究支持使用EEG微状态分析研究婴儿大脑发育的可靠性和可行性,并增加了这种方法在发育神经科学领域的可及性。
    Microstate analysis of resting-state EEG is a unique data-driven method for identifying patterns of scalp potential topographies, or microstates, that reflect stable but transient periods of synchronized neural activity evolving dynamically over time. During infancy - a critical period of rapid brain development and plasticity - microstate analysis offers a unique opportunity for characterizing the spatial and temporal dynamics of brain activity. However, whether measurements derived from this approach (e.g., temporal properties, transition probabilities, neural sources) show strong psychometric properties (i.e., reliability) during infancy is unknown and key information for advancing our understanding of how microstates are shaped by early life experiences and whether they relate to individual differences in infant abilities. A lack of methodological resources for performing microstate analysis of infant EEG has further hindered adoption of this cutting-edge approach by infant researchers. As a result, in the current study, we systematically addressed these knowledge gaps and report that most microstate-based measurements of brain organization and functioning except for transition probabilities were stable with four minutes of video-watching resting-state data and highly internally consistent with just one minute. In addition to these results, we provide a step-by-step tutorial, accompanying website, and open-access data for performing microstate analysis using a free, user-friendly software called Cartool. Taken together, the current study supports the reliability and feasibility of using EEG microstate analysis to study infant brain development and increases the accessibility of this approach for the field of developmental neuroscience.
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