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首页> 外文期刊>Neuroscience Letters: An International Multidisciplinary Journal Devoted to the Rapid Publication of Basic Research in the Brain Sciences >Estimation of functional connectivity from electromagnetic signals and the amount of empirical data required
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Estimation of functional connectivity from electromagnetic signals and the amount of empirical data required

机译:根据电磁信号和所需的经验数据量估算功能连通性

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摘要

An increasing number of neuroimaging studies are concerned with the identification of interactions or statistical dependencies between brain areas. Dependencies between the activities of different brain regions can be quantified with functional connectivity measures such as the cross-correlation coefficient. An important factor limiting the accuracy of such measures is the amount of empirical data available. For event-related protocols, the amount of data also affects the temporal resolution of the analysis. We use analytical expressions to calculate the amount of empirical data needed to establish whether a certain level of dependency is significant when the time series are autocorrelated, as is the case for biological signals. These analytical results are then contrasted with estimates from simulations based on real data recorded with magnetoencephalography during a resting-state paradigm and during the presentation of visual stimuli. Results indicate that, for broadband signals, 50-100. s of data is required to detect a true underlying cross-correlations coefficient of 0.05. This corresponds to a resolution of a few hundred milliseconds for typical event-related recordings. The required time window increases for narrow band signals as frequency decreases. For instance, approximately 3 times as much data is necessary for signals in the alpha band. Important implications can be derived for the design and interpretation of experiments to characterize weak interactions, which are potentially important for brain processing.
机译:越来越多的神经影像研究与大脑区域之间的相互作用或统计依赖性的识别有关。不同大脑区域活动之间的依赖性可以通过功能连接性度量(例如互相关系数)进行量化。限制此类措施准确性的重要因素是可用的经验数据量。对于与事件相关的协议,数据量也会影响分析的时间分辨率。我们使用解析表达式来计算需要的经验数据量,以建立时间序列自相关时是否一定程度的依存关系是否显着(对于生物信号而言)。然后,将这些分析结果与基于在静止状态范式和​​视觉刺激过程中脑磁图记录的真实数据的模拟估算值进行对比。结果表明,对于宽带信号,为50-100。需要使用s的数据才能检测到0.05的真实基础互相关系数。对于典型的与事件相关的记录,这对应于几百毫秒的分辨率。窄带信号的所需时间窗口随频率降低而增加。例如,alpha波段中的信号大约需要3倍的数据。对于表征弱相互作用的实验的设计和解释,可以得出重要的含义,这对于大脑处理可能是重要的。

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