A simple measure of correlation across time, frequency and space between continuous brain signals.
- Authors
- Lachaux, Jean-Philippe; Chavez, Mario; Lutz, Antoine
- Year
- 2003
- Journal
- Journal of neuroscience methods
- PMID
- 12606066
- DOI
- 10.1016/s0165-0270(02)00358-8
This paper introduces a simple but systematic method to estimate correlations between the spectral energy of two continuous electrophysiological signals in such a way that it can detect relationships between different frequencies and different latencies. From two series of signals (e.g. electroencephalogram, magnetoencephalogram or local field potentials) recorded from two sites in response to repeated sensory stimulations, the method computes the time-frequency energy of each signal. Then, it computes the Spearman rank order correlation coefficient across all the trials between the energy of the first signal series in one time-frequency region and the energy of the second signal series in a second time-frequency region. The method was designed to analyze interactions between frequency bands, in an effort to describe how the main brain rhythms interact with each other across time and space. It was applied to two simulations and to intracranial electro-encephalogram (EEG) recordings obtained from an epileptic patient performing two verbal discrimination tests (a phonological and a semantic task). It led to the identification of different correlations patterns in the gamma band depending on the level of semantic analysis performed by the patient.
No figures extracted from this document.
No chunks β full text not yet ingested.
No entities extracted from this document yet.
No uploaded files.
No citations found.
In this knowledge base
External
| Title | Authors | Journal | Year | Link |
|---|---|---|---|---|
| Deep predictive coding with bi-directional propagation for classification and reconstruction. | Qiu S et al. | β | 2025 | β |
| o-CLEAN: a novel multi-stage algorithm for the ocular artifacts' correction from EEG data in out-of-the-lab applications. | Ronca V et al. | β | 2024 | β |
| Cortical dendritic activity correlates with spindle-rich oscillations during sleep in rodents. | Seibt J et al. | β | 2017 | β |
| Brain Oscillations in Sport: Toward EEG Biomarkers of Performance. | Cheron G et al. | β | 2016 | β |
| Development of grouped icEEG for the study of cognitive processing. | Kadipasaoglu CM et al. | β | 2015 | β |
| A note on the phase locking value and its properties. | Aydore S et al. | β | 2013 | β |
| Early gamma oscillations during rapid auditory processing in children with a language-learning impairment: changes in neural mass activity after training. | Heim S et al. | β | 2013 | β |
| High-frequency neural oscillations and visual processing deficits in schizophrenia. | Tan H-RM et al. | β | 2013 | β |
| Metastability and inter-band frequency modulation in networks of oscillating spiking neuron populations. | Bhowmik D et al. | β | 2013 | β |
| Proceedings of the Fourth International Workshop on Advances in Electrocorticography. | Ritaccio A et al. | β | 2013 | β |
| Recursive grid partitioning on a cortical surface model: an optimized technique for the localization of implanted subdural electrodes. | Pieters TA et al. | β | 2013 | β |
| Family-based genome-wide association study of frontal ΞΈ oscillations identifies potassium channel gene KCNJ6. | Kang SJ et al. | β | 2012 | β |
| Long-distance amplitude correlations in the high Ξ³ band reveal segregation and integration within the reading network. | Vidal JR et al. | β | 2012 | β |
| Tagging cortical networks in emotion: a topographical analysis. | Keil A et al. | β | 2012 | β |
| Genome-wide association study of theta band event-related oscillations identifies serotonin receptor gene HTR7 influencing risk of alcohol dependence. | Zlojutro M et al. | β | 2011 | β |
| Adaptive changes of rhythmic EEG oscillations in space implications for brain-machine interface applications. | Cheron G et al. | β | 2009 | β |
| Association of single nucleotide polymorphisms in a glutamate receptor gene (GRM8) with theta power of event-related oscillations and alcohol dependence. | Chen AC et al. | β | 2009 | β |
| Theta oscillations during the processing of monetary loss and gain: a perspective on gender and impulsivity. | Kamarajan C et al. | β | 2008 | β |
| Analysis of dynamic brain oscillations: methodological advances. | Le Van Quyen M et al. | β | 2007 | β |
| Delta and theta oscillations as risk markers in adolescent offspring of alcoholics. | Rangaswamy M et al. | β | 2007 | β |
| ERPWAVELAB a toolbox for multi-channel analysis of time-frequency transformed event related potentials. | MΓΈrup M et al. | β | 2007 | β |
| Feedback modulates gamma oscillations in a hypothesis testing paradigm. | Papo D et al. | β | 2007 | β |
| A cholinergic receptor gene (CHRM2) affects event-related oscillations. | Jones KA et al. | β | 2006 | β |
| Event-related oscillations in offspring of alcoholics: neurocognitive disinhibition as a risk for alcoholism. | Kamarajan C et al. | β | 2006 | β |
| Evoked gamma band response in male adolescent subjects at high risk for alcoholism during a visual oddball task. | Padmanabhapillai A et al. | β | 2006 | β |
| Intracerebral dynamics of saccade generation in the human frontal eye field and supplementary eye field. | Lachaux JP et al. | β | 2006 | β |
| S-transform time-frequency analysis of P300 reveals deficits in individuals diagnosed with alcoholism. | Jones KA et al. | β | 2006 | β |
| Suppression of early evoked gamma band response in male alcoholics during a visual oddball task. | Padmanabhapillai A et al. | β | 2006 | β |
| Cortical oscillatory activity and the dynamics of auditory memory processing. | Kaiser J et al. | β | 2005 | β |
| Let's talk together: memory traces revealed by cooperative activation in the cerebral cortex. | Kaiser J et al. | β | 2005 | β |
| The many faces of the gamma band response to complex visual stimuli. | Lachaux JP et al. | β | 2005 | β |
| Biopattern initiative: towards the development and integration of next-generation information fusion approaches. | Sakkalis V et al. | β | 2004 | β |
| EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis. | Delorme A et al. | β | 2004 | β |
| Linkage and linkage disequilibrium of evoked EEG oscillations with CHRM2 receptor gene polymorphisms: implications for human brain dynamics and cognition. | Jones KA et al. | β | 2004 | β |