OBJECTIVE: In EEG/MEG experiments, increasing the number of sensors improves the spatial resolution of the results. However, the standard statistical methods are inappropriate for these multivariate, highly correlated datasets. We introduce a procedure to identify spatially extended scalp fields that correlate with some external, continuous measure (reaction-time, performance, clinical status) and to test their significance. METHODS: We formally deduce that the channel-wise covariance of some experimental variable with scalp field data directly represents intracerebral sources associated with that variable. We furthermore show how the significance of such a representation can be tested with resampling techniques. RESULTS: Simulations showed that depending on the number of channels and subjects, effects can be detected already at low signal to noise ratios. In a sample analysis of real data, we found that foreign-language evoked ERP data were significantly associated with foreign-language proficiency. Inverse solutions of the extracted covariances pointed to sources in language-related areas. CONCLUSIONS: Covariance mapping combined with bootstrapping methods has high statistical power and yields unique and directly interpretable results. SIGNIFICANCE: The introduced methodology overcomes some of the 'traditional' statistical problems in EEG/MEG scalp data analysis. Its application can improve the reproducibility of results in the field of EEG/MEG.
OBJECTIVE: In EEG/MEG experiments, increasing the number of sensors improves the spatial resolution of the results. However, the standard statistical methods are inappropriate for these multivariate, highly correlated datasets. We introduce a procedure to identify spatially extended scalp fields that correlate with some external, continuous measure (reaction-time, performance, clinical status) and to test their significance. METHODS: We formally deduce that the channel-wise covariance of some experimental variable with scalp field data directly represents intracerebral sources associated with that variable. We furthermore show how the significance of such a representation can be tested with resampling techniques. RESULTS: Simulations showed that depending on the number of channels and subjects, effects can be detected already at low signal to noise ratios. In a sample analysis of real data, we found that foreign-language evoked ERP data were significantly associated with foreign-language proficiency. Inverse solutions of the extracted covariances pointed to sources in language-related areas. CONCLUSIONS: Covariance mapping combined with bootstrapping methods has high statistical power and yields unique and directly interpretable results. SIGNIFICANCE: The introduced methodology overcomes some of the 'traditional' statistical problems in EEG/MEG scalp data analysis. Its application can improve the reproducibility of results in the field of EEG/MEG.
Authors: Franck Amyot; David B Arciniegas; Michael P Brazaitis; Kenneth C Curley; Ramon Diaz-Arrastia; Amir Gandjbakhche; Peter Herscovitch; Sidney R Hinds; Geoffrey T Manley; Anthony Pacifico; Alexander Razumovsky; Jason Riley; Wanda Salzer; Robert Shih; James G Smirniotopoulos; Derek Stocker Journal: J Neurotrauma Date: 2015-09-30 Impact factor: 5.269
Authors: Mara Kottlow; Anthony Schlaepfer; Anja Baenninger; Lars Michels; Daniel Brandeis; Thomas Koenig Journal: Front Behav Neurosci Date: 2015-05-06 Impact factor: 3.558
Authors: Nadja Razavi; Kay Jann; Thomas Koenig; Mara Kottlow; Martinus Hauf; Werner Strik; Thomas Dierks Journal: PLoS One Date: 2013-10-04 Impact factor: 3.240
Authors: Yvonne Egenolf; Maria Stein; Thomas Koenig; Martin Grosse Holtforth; Thomas Dierks; Franz Caspar Journal: Cogn Affect Behav Neurosci Date: 2013-12 Impact factor: 3.526