首页> 美国卫生研究院文献>Frontiers in Neuroscience >Group Analysis in FieldTrip of Time-Frequency Responses: A Pipeline for Reproducibility at Every Step of Processing Going From Individual Sensor Space Representations to an Across-Group Source Space Representation
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Group Analysis in FieldTrip of Time-Frequency Responses: A Pipeline for Reproducibility at Every Step of Processing Going From Individual Sensor Space Representations to an Across-Group Source Space Representation

机译:时频响应FieldTrip中的组分析:从单个传感器空间表示到跨组源空间表示的处理过程中每步重现性的管道

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摘要

An important aim of an analysis pipeline for magnetoencephalographic (MEG) data is that it allows for the researcher spending maximal effort on making the statistical comparisons that will answer his or her questions. The example question being answered here is whether the so-called beta rebound differs between novel and repeated stimulations. Two analyses are presented: going from individual sensor space representations to, respectively, an across-group sensor space representation and an across-group source space representation. The data analyzed are neural responses to tactile stimulations of the right index finger in a group of 20 healthy participants acquired from an Elekta Neuromag System. The processing steps covered for the first analysis are MaxFiltering the raw data, defining, preprocessing and epoching the data, cleaning the data, finding and removing independent components related to eye blinks, eye movements and heart beats, calculating participants' individual evoked responses by averaging over epoched data and subsequently removing the average response from single epochs, calculating a time-frequency representation and baselining it with non-stimulation trials and finally calculating a grand average, an across-group sensor space representation. The second analysis starts from the grand average sensor space representation and after identification of the beta rebound the neural origin is imaged using beamformer source reconstruction. This analysis covers reading in co-registered magnetic resonance images, segmenting the data, creating a volume conductor, creating a forward model, cutting out MEG data of interest in the time and frequency domains, getting Fourier transforms and estimating source activity with a beamformer model where power is expressed relative to MEG data measured during periods of non-stimulation. Finally, morphing the source estimates onto a common template and performing group-level statistics on the data are covered. Functions for saving relevant figures in an automated and structured manner are also included. The protocol presented here can be applied to any research protocol where the emphasis is on source reconstruction of induced responses where the underlying sources are not coherent.
机译:磁脑电图(MEG)数据分析管道的一个重要目标是,它允许研究人员花费最大的精力进行能够回答其问题的统计比较。这里要回答的示例问题是,新颖刺激和重复刺激之间所谓的β反弹是否不同。提出了两种分析方法:从单个传感器空间表示形式到跨组传感器空间表示形式和跨组源空间表示形式。分析的数据是从Elekta Neuromag系统获得的一组20名健康参与者对右手食指的触觉刺激的神经反应。第一次分析涉及的处理步骤是MaxFiltering原始数据,定义,预处理和提取数据,清理数据,查找和删除与眨眼,眼球运动和心跳有关的独立组件,通过平均计算参与者的个人诱发反应提取数据,然后从单个历元中除去平均响应,计算时间-频率表示形式,并通过非刺激试验对其进行基线确定,最后计算出总体平均值,即跨组传感器空间表示形式。第二种分析从总体平均传感器空间表示开始,在确定了β反弹之后,使用波束形成器源重建对神经起源进行成像。该分析涵盖读取共配准的磁共振图像,分割数据,创建体积导体,创建正向模型,在时域和频域中切出感兴趣的MEG数据,进行傅立叶变换并使用波束形成器模型估算源活动相对于在非刺激期间测得的MEG数据表示功率。最后,介绍了将源估计变形为通用模板并对数据执行组级统计。还包括用于以自动和结构化的方式保存相关图形的功能。这里介绍的协议可以应用于任何研究协议,在这些协议中,重点在于潜在来源不连贯的诱导响应的来源重构。

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