Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python

Communication between brain regions is thought to be facilitated by the synchronization of oscillatory activity. Hence, large-scale functional networks within the brain may be estimated by measuring synchronicity between regions. Neurophysiological recordings, such as magnetoencephalography (MEG) an...

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Main Authors: Marijn van Vliet, Mia Liljeström, Susanna Aro, Riitta Salmelin, Jan Kujala
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-09-01
Series:Frontiers in Neuroscience
Subjects:
MEG
Online Access:https://www.frontiersin.org/article/10.3389/fnins.2018.00586/full
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spelling doaj-52f363fba0574e9f9f6414a202bc7c2f2020-11-24T22:36:04ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2018-09-011210.3389/fnins.2018.00586348017Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in PythonMarijn van Vliet0Mia Liljeström1Mia Liljeström2Susanna Aro3Riitta Salmelin4Jan Kujala5Department of Neuroscience and Biomedical Engineering, Aalto University, Espoo, FinlandDepartment of Neuroscience and Biomedical Engineering, Aalto University, Espoo, FinlandNatMEG, Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, SwedenDepartment of Neuroscience and Biomedical Engineering, Aalto University, Espoo, FinlandDepartment of Neuroscience and Biomedical Engineering, Aalto University, Espoo, FinlandDepartment of Neuroscience and Biomedical Engineering, Aalto University, Espoo, FinlandCommunication between brain regions is thought to be facilitated by the synchronization of oscillatory activity. Hence, large-scale functional networks within the brain may be estimated by measuring synchronicity between regions. Neurophysiological recordings, such as magnetoencephalography (MEG) and electroencephalography (EEG), provide a direct measure of oscillatory neural activity with millisecond temporal resolution. In this paper, we describe a full data analysis pipeline for functional connectivity analysis based on dynamic imaging of coherent sources (DICS) of MEG data. DICS is a beamforming technique in the frequency-domain that enables the study of the cortical sources of oscillatory activity and synchronization between brain regions. All the analysis steps, starting from the raw MEG data up to publication-ready group-level statistics and visualization, are discussed in depth, including methodological considerations, rules of thumb and tradeoffs. We start by computing cross-spectral density (CSD) matrices using a wavelet approach in several frequency bands (alpha, theta, beta, gamma). We then provide a way to create comparable source spaces across subjects and discuss the cortical mapping of spectral power. For connectivity analysis, we present a canonical computation of coherence that facilitates a stable estimation of all-to-all connectivity. Finally, we use group-level statistics to limit the network to cortical regions for which significant differences between experimental conditions are detected and produce vertex- and parcel-level visualizations of the different brain networks. Code examples using the MNE-Python package are provided at each step, guiding the reader through a complete analysis of the freely available openfMRI ds000117 “familiar vs. unfamiliar vs. scrambled faces” dataset. The goal is to educate both novice and experienced data analysts with the “tricks of the trade” necessary to successfully perform this type of analysis on their own data.https://www.frontiersin.org/article/10.3389/fnins.2018.00586/fullDICSMEGcoherencebrain rhythmsworkflowtutorial
collection DOAJ
language English
format Article
sources DOAJ
author Marijn van Vliet
Mia Liljeström
Mia Liljeström
Susanna Aro
Riitta Salmelin
Jan Kujala
spellingShingle Marijn van Vliet
Mia Liljeström
Mia Liljeström
Susanna Aro
Riitta Salmelin
Jan Kujala
Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
Frontiers in Neuroscience
DICS
MEG
coherence
brain rhythms
workflow
tutorial
author_facet Marijn van Vliet
Mia Liljeström
Mia Liljeström
Susanna Aro
Riitta Salmelin
Jan Kujala
author_sort Marijn van Vliet
title Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
title_short Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
title_full Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
title_fullStr Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
title_full_unstemmed Analysis of Functional Connectivity and Oscillatory Power Using DICS: From Raw MEG Data to Group-Level Statistics in Python
title_sort analysis of functional connectivity and oscillatory power using dics: from raw meg data to group-level statistics in python
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2018-09-01
description Communication between brain regions is thought to be facilitated by the synchronization of oscillatory activity. Hence, large-scale functional networks within the brain may be estimated by measuring synchronicity between regions. Neurophysiological recordings, such as magnetoencephalography (MEG) and electroencephalography (EEG), provide a direct measure of oscillatory neural activity with millisecond temporal resolution. In this paper, we describe a full data analysis pipeline for functional connectivity analysis based on dynamic imaging of coherent sources (DICS) of MEG data. DICS is a beamforming technique in the frequency-domain that enables the study of the cortical sources of oscillatory activity and synchronization between brain regions. All the analysis steps, starting from the raw MEG data up to publication-ready group-level statistics and visualization, are discussed in depth, including methodological considerations, rules of thumb and tradeoffs. We start by computing cross-spectral density (CSD) matrices using a wavelet approach in several frequency bands (alpha, theta, beta, gamma). We then provide a way to create comparable source spaces across subjects and discuss the cortical mapping of spectral power. For connectivity analysis, we present a canonical computation of coherence that facilitates a stable estimation of all-to-all connectivity. Finally, we use group-level statistics to limit the network to cortical regions for which significant differences between experimental conditions are detected and produce vertex- and parcel-level visualizations of the different brain networks. Code examples using the MNE-Python package are provided at each step, guiding the reader through a complete analysis of the freely available openfMRI ds000117 “familiar vs. unfamiliar vs. scrambled faces” dataset. The goal is to educate both novice and experienced data analysts with the “tricks of the trade” necessary to successfully perform this type of analysis on their own data.
topic DICS
MEG
coherence
brain rhythms
workflow
tutorial
url https://www.frontiersin.org/article/10.3389/fnins.2018.00586/full
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