eyes closed

眼睛闭上
  • 文章类型: Journal Article
    即使在没有外部刺激的情况下,人脑也会表现出时空复杂的活动,循环通过称为大脑状态的重复活动模式。到目前为止,大脑状态分析主要限于单峰神经成像数据集,导致对状态的定义有限,并且对从不同模态识别的状态之间的空间和时间关系的理解很差。这里,我们将隐马尔可夫模型(HMM)应用于并发脑电图功能磁共振成像(EEG-fMRI)睁眼(EO)和闭眼(EC)静息状态数据,分别对EEG和fMRI数据进行训练模型,并评估了模型区分两种静止条件之间动态的能力。此外,我们采用一般的线性模型方法来识别EEG定义状态的BOLD相关性,以研究fMRI数据是否可用于改善EEG状态的空间定义.最后,我们对状态时间过程进行了基于滑动窗口的分析,以识别时间动态中较慢的变化,然后将这些时间课程与模式相关联。我们发现,与EO休息相比,这两个模型都可以识别EC休息期间的预期变化,通过fMRI模型识别视觉和注意力静息状态网络的活动和功能连通性的变化,而EEG模型正确地识别了闭眼时alpha的典型增加。此外,通过使用功能磁共振成像数据,可以推断EEG状态的空间特性,产生类似于规范α-BOLD相关性的BOLD相关图。最后,滑动窗口分析揭示了来自两个模型的状态的独特分数占用动力学,选择的状态显示出跨模态的强时间相关性。总的来说,这项研究强调了使用HMM进行脑状态分析的功效,确认多模态数据可用于提供更深入的状态定义,并证明跨不同模态定义的状态显示出相似的时间动态。
    The human brain exhibits spatio-temporally complex activity even in the absence of external stimuli, cycling through recurring patterns of activity known as brain states. Thus far, brain state analysis has primarily been restricted to unimodal neuroimaging data sets, resulting in a limited definition of state and a poor understanding of the spatial and temporal relationships between states identified from different modalities. Here, we applied hidden Markov model (HMM) to concurrent electroencephalography-functional magnetic resonance imaging (EEG-fMRI) eyes open (EO) and eyes closed (EC) resting-state data, training models on the EEG and fMRI data separately, and evaluated the models\' ability to distinguish dynamics between the two rest conditions. Additionally, we employed a general linear model approach to identify the BOLD correlates of the EEG-defined states to investigate whether the fMRI data could be used to improve the spatial definition of the EEG states. Finally, we performed a sliding window-based analysis on the state time courses to identify slower changes in the temporal dynamics, and then correlated these time courses across modalities. We found that both models could identify expected changes during EC rest compared to EO rest, with the fMRI model identifying changes in the activity and functional connectivity of visual and attention resting-state networks, while the EEG model correctly identified the canonical increase in alpha upon eye closure. In addition, by using the fMRI data, it was possible to infer the spatial properties of the EEG states, resulting in BOLD correlation maps resembling canonical alpha-BOLD correlations. Finally, the sliding window analysis revealed unique fractional occupancy dynamics for states from both models, with a selection of states showing strong temporal correlations across modalities. Overall, this study highlights the efficacy of using HMMs for brain state analysis, confirms that multimodal data can be used to provide more in-depth definitions of state and demonstrates that states defined across different modalities show similar temporal dynamics.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    这里,我们假设,帕金森病痴呆(PDD)患者在从闭眼到睁眼转变过程中,后静息状态脑电图(rsEEG)α节律的反应性可能低于阿尔茨海默病痴呆(ADD)患者.欧亚数据库提供了73例PDD患者的临床人口统计学rsEEG数据集,35名ADD患者,和25名匹配的认知未受损(健康)人。eLORETA免费软件用于估计皮质rsEEG源。结果显示,在88%的健康老年人中,从闭眼到睁眼的后部α源活动(反应性)显着降低(大于-10%),57%的ADD患者,只有35%的PDD患者。在这些阿尔法反应参与者中,PDD组的顶叶α源活性反应性低于健康对照组老年人和ADD患者.这些结果表明,PDD患者对视觉输入的反应性使后rsEEGα节律不同步的机制反应性差。该神经生理学生物标志物可以为(非)药理学干预提供终点,以改善那些患者的警惕性调节。
    Here, we hypothesized that the reactivity of posterior resting-state electroencephalographic (rsEEG) alpha rhythms during the transition from eyes-closed to -open condition might be lower in patients with Parkinson\'s disease dementia (PDD) than in patients with Alzheimer\'s disease dementia (ADD). A Eurasian database provided clinical-demographic-rsEEG datasets in 73 PDD patients, 35 ADD patients, and 25 matched cognitively unimpaired (Healthy) persons. The eLORETA freeware was used to estimate cortical rsEEG sources. Results showed substantial (greater than -10%) reduction (reactivity) in the posterior alpha source activities from the eyes-closed to the eyes-open condition in 88% of the Healthy seniors, 57% of the ADD patients, and only 35% of the PDD patients. In these alpha-reactive participants, there was lower reactivity in the parietal alpha source activities in the PDD group than in the healthy control seniors and the ADD patients. These results suggest that PDD patients show poor reactivity of mechanisms desynchronizing posterior rsEEG alpha rhythms in response to visual inputs. That neurophysiological biomarker may provide an endpoint for (non) pharmacological interventions for improving vigilance regulation in those patients.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    人们普遍认识到,打开和关闭眼睛可以将注意力引导到外部或内部刺激处理。研究证实了在不同任务期间视觉刺激变化对大脑活动的影响,例如,运动图像和执行。然而,创建运动的心理表征的一个重要方面,比如图像透视,尚未在当前情况下进行调查。我们的研究旨在验证短暂的视觉剥夺(在睁眼[EO]和闭眼[EC]条件下)对动觉图像(KMI)和视觉运动图像(VMI)任务中脑电波振荡和行为表现的影响。我们专注于来自视觉和运动相关的EEG活动源的α和β节律。此外,我们使用机器学习算法来确定所记录的脑振荡差异是否会影响运动想象脑机接口(MI-BCI)性能.结果表明,在VMI任务期间,EC条件下的枕骨区域表现出明显更强的去同步性,这是典型的增强视觉刺激处理。此外,来自EO运动区域的α节律的更强去同步,比EC条件证实了在实际运动过程中获得的先前效果。还发现,在EC/EO条件下模拟运动会影响信号分类的准确性,这对MI-BCI的有效性具有实际意义。这些发现表明,将处理转向外部或内部刺激会调节与运动心理表征的不同观点相关的脑节律振荡。
    It is widely recognized that opening and closing the eyes can direct attention to external or internal stimuli processing. This has been confirmed by studies showing the effects of changes in visual stimulation changes on cerebral activity during different tasks, e.g., motor imagery and execution. However, an essential aspect of creating a mental representation of motion, such as imagery perspective, has not yet been investigated in the present context. Our study aimed to verify the effect of brief visual deprivation (under eyes open [EO] and eyes closed [EC] conditions) on brain wave oscillations and behavioral performance during kinesthetic imagery (KMI) and visual-motor imagery (VMI) tasks. We focused on the alpha and beta rhythms from visual- and motor-related EEG activity sources. Additionally, we used machine learning algorithms to establish whether the registered differences in brain oscillations might affect motor imagery brain-computer interface (MI-BCI) performance. The results showed that the occipital areas in the EC condition presented significantly stronger desynchronization during VMI tasks, which is typical for enhanced visual stimuli processing. Furthermore, the stronger desynchronization of alpha rhythms from motor areas in the EO, than EC condition confirmed previous effects obtained during real movements. It was also found that simulating movement under EC/EO conditions affected signal classification accuracy, which has practical implications for MI-BCI effectiveness. These findings suggest that shifting processing toward external or internal stimuli modulates brain rhythm oscillations associated with different perspectives on the mental representation of movement.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    静息状态网络包括几个表现出复杂相互作用模式的大脑区域。在静息状态下从闭眼(EC)切换到睁眼(EO)会修改这些连接模式,但这些变化究竟是如何变化的,目前尚不清楚。在这里,我们使用功能磁共振成像在两种休息条件下扫描健康参与者(即,EC和EO)。本研究选择了七个静息状态网络:显著性网络(SN),默认模式网络(DMN),中央执行网络(CEN),背侧注意网络(DAN),视觉网络(VN),运动网络(MN)和听觉网络(AN)。我们对每个网络进行了功能连接(FC)分析,比较EC和EO的FC图。我们的结果表明,在EC期间,大多数网络之间的连通性相对于EO增加,从而建议在EC期间增强集成,并在EO期间提高模块化或专业化。在这些网络中,SN是独特的:在从EO到EC的过渡过程中,它表明与DMN的连通性增加,与VN的连通性降低。这种变化可能意味着SN的功能类似于电路开关,用DMN和VN调节静态关系,在EO和EC之间转换时。
    Resting state networks comprise several brain regions that exhibit complex patterns of interaction. Switching from eyes closed (EC) to eyes open (EO) during the resting state modifies these patterns of connectivity, but precisely how these change remains unclear. Here we use functional magnetic resonance imaging to scan healthy participants in two resting conditions (viz., EC and EO). Seven resting state networks were chosen for this study: salience network (SN), default mode network (DMN), central executive network (CEN), dorsal attention network (DAN), visual network (VN), motor network (MN) and auditory network (AN). We performed functional connectivity (FC) analysis for each network, comparing the FC maps for both EC and EO. Our results show increased connectivity between most networks during EC relative to EO, thereby suggesting enhanced integration during EC and greater modularity or specialization during EO. Among these networks, SN is distinctive: during the transition from EO to EC it evinces increased connectivity with DMN and decreased connectivity with VN. This change might imply that SN functions in a manner analogous to a circuit switch, modulating resting state relations with DMN and VN, when transitioning between EO and EC.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    睁眼和闭眼数据通常用于验证新颖的人脑活动分类方法。经常使用在最小预处理数据上训练的模型的交叉验证,不管脑电图数据由肌肉活动和环境噪声产生的数据组成,影响分类精度。此外,单个受试者的脑电图数据通常被分成较小的部分,由于大型数据集的可用性有限。模型验证最常用的方法是交叉验证,即使结果可能会受到对有限受试者大脑活动细节的过度拟合的影响。为了测试预处理和分类器验证对分类准确性的影响,我们测试了在WEKA和MATLAB中实现的14种分类算法,对全面和简单预处理的脑电图数据进行测试。保留和交叉验证用于比较睁眼和闭眼数据的分类准确性。50名受试者的数据,使用四分钟闭眼和睁眼的数据。在交叉验证测试中,在简单预处理的数据上训练的算法优于在全面预处理的数据上训练的算法。当检查保持准确性时,情况恰恰相反。如果不同受试者的数据在测试和训练数据集之间没有严格分离,则观察到保持准确性显着提高。显示存在过度拟合。结果表明,全面的数据预处理有利于学科不变分类,而通过简单的预处理可以获得更高的主题特定精度。因此,研究人员应该说明他们的分类器的最终用途。
    Eyes open and eyes closed data is often used to validate novel human brain activity classification methods. The cross-validation of models trained on minimally preprocessed data is frequently utilized, regardless of electroencephalography data comprised of data resulting from muscle activity and environmental noise, affecting classification accuracy. Moreover, electroencephalography data of a single subject is often divided into smaller parts, due to limited availability of large datasets. The most frequently used method for model validation is cross-validation, even though the results may be affected by overfitting to the specifics of brain activity of limited subjects. To test the effects of preprocessing and classifier validation on classification accuracy, we tested fourteen classification algorithms implemented in WEKA and MATLAB, tested on comprehensively and simply preprocessed electroencephalography data. Hold-out and cross-validation were used to compare the classification accuracy of eyes open and closed data. The data of 50 subjects, with four minutes of data with eyes closed and open each was used. The algorithms trained on simply preprocessed data were superior to the ones trained on comprehensively preprocessed data in cross-validation testing. The reverse was true when hold-out accuracy was examined. Significant increases in hold-out accuracy were observed if the data of different subjects was not strictly separated between the test and training datasets, showing the presence of overfitting. The results show that comprehensive data preprocessing can be advantageous for subject invariant classification, while higher subject-specific accuracy can be attained with simple preprocessing. Researchers should thus state the final intended use of their classifier.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    这项研究首次研究了486名儿童睁眼(EO)和闭眼(EC)静息状态条件之间的脑电图(EEG)功率的频谱(1至250Hz)差异。通过表征整个儿童期EO和EC之间30至250Hz的EEG功率差异,该结果扩展了先前研究的发现。EEG功率的发育变化显示出空间和频带差异,是年龄和EO/EC状况的函数。使用64电极系统记录4、5、7、9和11岁时的EEG。具体发现是:(1)α峰从4年的8Hz移动到11年的9Hz,(2)EC导致在较低频率下增加的EEG功率(与EO相比),但在所有年龄段的较高频率下降低的EEG功率,(3)EO和EC之间的EEG功率差在窄频带内从正变为负,随着年龄的增长而向更高频率移动,从4年的9到12赫兹到11年的32赫兹,(4)在所有年龄段,EC的特征是低频EEG功率的增加在后部区域最为突出,(5)在所有年龄段,在EC期间,30Hz以上的EEG功率的降低主要在头皮的前部区域。该报告表明,打开和关闭眼睛的简单挑战提供了通过使用简短的大脑成熟表型变异的定量生物标志物的潜力,整个儿童的微创协议。
    This study is the first to examine spectrum-wide (1 to 250 Hz) differences in electroencephalogram (EEG) power between eyes open (EO) and eyes closed (EC) resting state conditions in 486 children. The results extend the findings of previous studies by characterizing EEG power differences from 30 to 250 Hz between EO and EC across childhood. Developmental changes in EEG power showed spatial and frequency band differences as a function of age and EO/EC condition. A 64-electrode system was used to record EEG at 4, 5, 7, 9, and 11 years of age. Specific findings were: (1) the alpha peak shifts from 8 Hz at 4 years to 9 Hz at 11 years, (2) EC results in increased EEG power (compared to EO) at lower frequencies but decreased EEG power at higher frequencies for all ages, (3) the EEG power difference between EO and EC changes from positive to negative within a narrow frequency band which shifts toward higher frequencies with age, from 9 to 12 Hz at 4 years to 32 Hz at 11 years, (4) at all ages EC is characterized by an increase in lower frequency EEG power most prominently over posterior regions, (5) at all ages, during EC, decreases in EEG power above 30 Hz are mostly over anterior regions of the scalp. This report demonstrates that the simple challenge of opening and closing the eyes offers the potential to provide quantitative biomarkers of phenotypic variation in brain maturation by employing a brief, minimally invasive protocol throughout childhood.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    在临床上很难将路易体痴呆与其他常见痴呆类型区分开来,相当多的病例只有在死后才被发现。因此,显然需要廉价和准确的临床诊断方法.脑电图(EEG)由于其相对较低的成本和非侵入性而成为一种潜在的候选者。以前检查使用EEG作为痴呆诊断的研究集中在闭眼(EC)静息状态;然而,由于临床可用性,睁眼(EO)EEG也可能是定量分析的有用辅助手段。
    我们从研究研究协议下记录的EEG信号中提取频谱特性(1024Hz采样率,10:5EEG布局)。数据来自40名痴呆症患者,平均年龄分别为74.42岁、75.81岁和73.88岁。路易体痴呆(DLB)和帕金森病痴呆(PDD),分别,和15名健康对照(HC),平均年龄为76.93岁。我们利用k最近邻,支持向量机和逻辑回归机器学习利用来自三角洲的光谱数据来区分群体,theta,高θ,α和β脑电图带。
    我们发现,与不使用EO数据的方法相比,EC和EO静息状态EEG数据的组合显着提高了组间分类准确性。其次,我们观察到EO和EC状态之间HC的主导频率方差明显增加,在任何痴呆亚组中均未观察到。对于组间分类,我们对HC与痴呆分类的特异性为0.87,敏感性为0.92,对AD与DLB分类的特异性为0.75,敏感性为0.91,k最近邻机器学习模型优于其他机器学习方法。
    我们的研究结果表明,在对老年人的痴呆类型进行分类时,EC和EO定量EEG特征的结合提高了总体分类准确性。此外,我们证明,健康对照显示EC和EO状态之间的主导频率方差有明确的变化。在未来,应使用验证队列进一步巩固这些发现.
    The differentiation of Lewy body dementia from other common dementia types clinically is difficult, with a considerable number of cases only being found post-mortem. Consequently, there is a clear need for inexpensive and accurate diagnostic approaches for clinical use. Electroencephalography (EEG) is one potential candidate due to its relatively low cost and non-invasive nature. Previous studies examining the use of EEG as a dementia diagnostic have focussed on the eyes closed (EC) resting state; however, eyes open (EO) EEG may also be a useful adjunct to quantitative analysis due to clinical availability.
    We extracted spectral properties from EEG signals recorded under research study protocols (1024 Hz sampling rate, 10:5 EEG layout). The data stems from a total of 40 dementia patients with an average age of 74.42, 75.81 and 73.88 years for Alzheimer\'s disease (AD), dementia with Lewy bodies (DLB) and Parkinson\'s disease dementia (PDD), respectively, and 15 healthy controls (HC) with an average age of 76.93 years. We utilised k-nearest neighbour, support vector machine and logistic regression machine learning to differentiate between groups utilising spectral data from the delta, theta, high theta, alpha and beta EEG bands.
    We found that the combination of EC and EO resting state EEG data significantly increased inter-group classification accuracy compared to methods not using EO data. Secondly, we observed a distinct increase in the dominant frequency variance for HC between the EO and EC state, which was not observed within any dementia subgroup. For inter-group classification, we achieved a specificity of 0.87 and sensitivity of 0.92 for HC vs dementia classification and 0.75 specificity and 0.91 sensitivity for AD vs DLB classification, with a k-nearest neighbour machine learning model which outperformed other machine learning methods.
    The findings of our study indicate that the combination of both EC and EO quantitative EEG features improves overall classification accuracy when classifying dementia types in older age adults. In addition, we demonstrate that healthy controls display a definite change in dominant frequency variance between the EC and EO state. In future, a validation cohort should be utilised to further solidify these findings.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    请修改摘要如下:在这里,我们测试了由于路易体(DLB)引起的痴呆患者从闭眼到睁眼的后部静息状态脑电图(rsEEG)α节律的反应性是否不同和阿尔茨海默病(ADD)作为调节后部视觉系统警惕性的主要神经同步机制的功能探针。我们用临床,人口统计学,和28名老年人(健康)的rsEEG数据集,42DLB,和48名ADD参与者。eLORETA免费软件用于估计皮质rsEEG源。结果显示,在24个健康的人睁眼期间,后部α活动大幅减少(>-10%),26增加,和22名DLB受试者。ADD和DLB组的后α活性降低低于健康组。DLB组枕骨区的减少低于ADD组。这些结果表明,与ADD患者相比,DLB患者可能在调节枕骨皮质系统警惕性的神经同步机制方面遭受更大的改变。
    Please modify the Abstract as follows:Here we tested if the reactivity of posterior resting-state electroencephalographic (rsEEG) alpha rhythms from the eye-closed to the eyes-open condition may differ in patients with dementia due to Lewy Bodies (DLB) and Alzheimer\'s disease (ADD) as a functional probe of the dominant neural synchronization mechanisms regulating the vigilance in posterior visual systems.We used clinical, demographical, and rsEEG datasets in 28 older adults (Healthy), 42 DLB, and 48 ADD participants. The eLORETA freeware was used to estimate cortical rsEEG sources.Results showed a substantial (> -10%) reduction in the posterior alpha activities during the eyes-open condition in 24 Healthy, 26 ADD, and 22 DLB subjects. There were lower reductions in the posterior alpha activities in the ADD and DLB groups than in the Healthy group. That reduction in the occipital region was lower in the DLB than in the ADD group.These results suggest that DLB patients may suffer from a greater alteration in the neural synchronization mechanisms regulating vigilance in occipital cortical systems compared to ADD patients.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    最初应用于20世纪70年代的阿尔法振荡,微状态(MS)分析已用于分解主要是宽带脑电图(EEG)信号(例如,1-40Hz)。我们假设MS在单独的内部分解,窄频带可以为捕获多通道脑电图的时空复杂性提供更细粒度的信息。在这项研究中,使用大型开放获取数据集(n=203),我们首先将脑电图记录过滤成四个经典频带(delta,theta,alpha和beta),然后使用互信息以及传统的MS度量(例如,平均持续时间和时间覆盖率)。首先,我们证实了MS地形在所有频率上都是空间等效的,匹配规范的宽带地图(A,B,C,D和C')。有趣的是,然而,我们观察到MS时间序列在谱带之间具有很强的信息独立性,以及传统MS测量的显著差异。例如,相对于宽带,α/β波段动态显示地图A和B的时间覆盖范围更大,而图D在δ/θ波段更为普遍。此外,使用频率特定的MS分类法(例如,A和αC),与宽带特征相比,我们能够更好地预测睁眼与闭眼的行为状态(80与73%的准确度)。总的来说,我们的研究结果证明了光谱特异性MS分析的价值和有效性,这可能有助于在基础研究中识别新的神经机制和/或在临床人群中发现生物标志物。
    Originally applied to alpha oscillations in the 1970s, microstate (MS) analysis has since been used to decompose mainly broadband electroencephalogram (EEG) signals (e.g., 1-40 Hz). We hypothesised that MS decomposition within separate, narrow frequency bands could provide more fine-grained information for capturing the spatio-temporal complexity of multichannel EEG. In this study, using a large open-access dataset (n = 203), we first filtered EEG recordings into four classical frequency bands (delta, theta, alpha and beta) and thereafter compared their individual MS segmentations using mutual information as well as traditional MS measures (e.g., mean duration and time coverage). Firstly, we confirmed that MS topographies were spatially equivalent across all frequencies, matching the canonical broadband maps (A, B, C, D and C\'). Interestingly, however, we observed strong informational independence of MS temporal sequences between spectral bands, together with significant divergence in traditional MS measures. For example, relative to broadband, alpha/beta band dynamics displayed greater time coverage of maps A and B, while map D was more prevalent in delta/theta bands. Moreover, using a frequency-specific MS taxonomy (e.g., ϴA and αC), we were able to predict the eyes-open versus eyes-closed behavioural state significantly better using alpha-band MS features compared with broadband ones (80 vs. 73% accuracy). Overall, our findings demonstrate the value and validity of spectrally specific MS analyses, which may prove useful for identifying new neural mechanisms in fundamental research and/or for biomarker discovery in clinical populations.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    目的:阴性精神分裂症(NSZ)和抑郁症(DE)具有许多临床相似性(例如,缺乏能量,社会退出)。本研究的目的是探索NSZ患者的微状态(MS)和微状态序列(SFML)的无标度动力学,DE患者和健康对照(HC)。
    方法:受试者包括30名NSZ患者,32例DE患者和34例年龄匹配的健康对照。在两种条件下记录静息状态脑电图(rsEEG):(1)睁眼的静息状态(EO)和(2)闭眼的静息状态(EC)。首先,rsEEG信号被过滤到1-45Hz。然后,使用MicrostatEEGLAB工具箱进行MS分析。最后,序列的SFML特征,它是从MS标记序列转化而来的,由赫斯特指数(HE)提取。
    结果:将所有受试者的rsEEG数据分为6个地形图。我们可以得出结论,DE和NSZ患者在EO状态下表现出相似的异常。然而,在欧共体州,MSA,B值是NSZ患者独有的,而DE患者的MSCD和F值不同。我们还发现这些特征与临床信息之间存在很大的相关性。在SFML中,EO状态的Hurst指数在评估NSZ的特征时可能更有用,而EC状态可用于了解具有不同随机游走分类的这些疾病。
    结论:这些方法与大脑和信息处理系统的动态变化能力有关。EO状态的MS和SFML可以用来反映NSZ和DE患者的相似异常。我们建议将EC状态作为研究疾病之间差异的适当状态。通过梳理这两种状态和这些方法,我们可以学习和研究更多的异同NSZ和DE。
    OBJECTIVE: Negative schizophrenia (NSZ) and depressive disorder (DE) have many clinical similarities (e.g., lack of energy, social withdrawal). The purpose of this study was to explore microstate (MS) and scale-free dynamics of microstate sequence (SFML) in NSZ patients, DE patients and healthy controls (HC).
    METHODS: The subjects included 30 NSZ patients, 32 DE patients and 34 age-matched healthy controls. A resting-state electroencephalogram (rsEEG) was recorded under two conditions: (1) resting state with eyes opened (EO) and (2) resting state with eyes closed (EC). First, rsEEG signals were filtered into 1-45 Hz. Then, MS analysis was performed using the Microstate EEGLAB toolbox. Finally, the SFML feature of the sequence, which was transformed from the MS label sequence, was extracted by the Hurst exponent (HE).
    RESULTS: The rsEEG data of all subjects were clustered into six topographies. We could conclude that DE and NSZ patients show similar abnormalities in EO state. However, in the EC state, MS A, and B values were unique to NSZ patients, while DE patients had different values for MS C D and F. We also found a large correlation between these features and clinical information. In SFML, the Hurst exponent of the EO state might be more useful in assessing the characteristics of NSZ, while that of EC state can be used to understand these disorders with different random walk classifications.
    CONCLUSIONS: The methods are associated with the ability to dynamically change of brain and information processing system. The MS and SFML of the EO state can be used to reflect the similar abnormalities of NSZ and DE patients. We recommend the EC state as the appropriate state to study the difference between the disorders. By combing the two states and these method, we can learn and study more similarities and differences between NSZ and DE.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

公众号