12 results on '"Phase dynamics"'
Search Results
2. Standing Versus Stepping—Exploring the Relationships Between Postural Steadiness and Dynamic Reactive Balance Control
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Tyler B. Weaver, Michelle R Tanel, and Andrew C. Laing
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Reactive control ,medicine.medical_specialty ,Centre of pressure ,Rehabilitation ,Biophysics ,Stride length ,03 medical and health sciences ,0302 clinical medicine ,Physical medicine and rehabilitation ,Center of pressure (terrestrial locomotion) ,Phase dynamics ,medicine ,Balance perturbation ,Orthopedics and Sports Medicine ,030212 general & internal medicine ,Psychology ,Phase control ,030217 neurology & neurosurgery - Abstract
While the literature has characterized balance control during quasi-static and/or dynamic tasks, comparatively few studies have examined relationships across paradigms. This study investigated whether quiet-stance postural steadiness metrics were associated with reactive control parameters (during both stepping and restabilization phases) following a lean-and-release perturbation. A total of 40 older adults participated. Postural steadiness (center of the pressure range, root mean square, velocity, and frequency) was evaluated in “feet together” and “tandem stance” positions. During the reactive control trials, the step length, step width, movement time, and reaction time were measured, in addition to the postural steadiness variables measured during the restabilization phase following the stepping response. Out of 64 comparisons, only 10 moderate correlations were observed between postural steadiness and reactive spatio-temporal stepping parameters (P ≤ .05, r = −.312 to −.534). However, postural steadiness metrics were associated with the center of pressure velocity and frequency during the restabilization phase of the reactive control trials (P ≤ .02, r = .383 to .775 for velocity and P ≤ .01, r = .386 to .550 for frequency). Although some elements of quasi-static center of pressure control demonstrated moderate associations with dynamic stepping responses, relationships were stronger for restabilization phase dynamics after foot-contact. Future work should examine the potential association between restabilization phase control and older adult fall-risk.
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- 2018
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3. Monetary Incentives Modulate Feedback-related Brain Activity
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Shuting Mei, Qi Li, Ya Zheng, and Xun Liu
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Male ,Adolescent ,Brain activity and meditation ,lcsh:Medicine ,Electroencephalography ,Article ,050105 experimental psychology ,Young Adult ,03 medical and health sciences ,0302 clinical medicine ,Reward ,medicine ,Humans ,Nervous System Physiological Phenomena ,0501 psychology and cognitive sciences ,Valence (psychology) ,lcsh:Science ,Feedback, Physiological ,Performance feedback ,Motivation ,Multidisciplinary ,medicine.diagnostic_test ,05 social sciences ,lcsh:R ,Brain ,Affective modulation ,Incentive ,Motivational salience ,Phase dynamics ,Female ,lcsh:Q ,Cues ,Psychology ,030217 neurology & neurosurgery ,Cognitive psychology - Abstract
Previous research has shown that feedback evaluation is sensitive to monetary incentive. We investigated whether this sensitivity is driven by motivational salience (the difference between both rewarding and punishing events versus neutral events) or by motivational valence (the difference between rewarding and punishing events). Fifty-seven participants performed a monetary incentive delay task under a gain context, a loss context, and a neutral context with their electroencephalogram recorded. During the time domain, the feedback-related negativity (FRN) showed a motivational salience effect whereas the P3 displayed a reward valence effect. During the time-frequency domain, we observed a motivational salience effect for phase-locked theta power regardless of performance feedback, but a reward valence effect for non-phase-locked theta power in response to unsuccessful feedback. Moreover, we found a reward valence effect for phase-locked delta. These findings thus suggest that the affective modulation on feedback evaluation can be driven either by motivational valence or by motivational salience, which depends on the temporal dynamics (the FRN vs. the P3), the frequency dynamics (theta vs. delta power), as well as the phase dynamics (evoked vs. induced power).
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- 2018
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4. Estimation of Delay Times in Coupling Between Autonomic Regulatory Loops of Human Heart Rate and Blood Flow Using Phase Dynamics Analysis
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Tatyana A. Galushko, Mikhail D. Prokhorov, Vladimir S. Khorev, Anatoly S. Karavaev, Elena E. Lapsheva, and Anton R. Kiselev
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0301 basic medicine ,Physics ,Human heart ,Blood flow ,Autonomic regulation ,Coupling (electronics) ,03 medical and health sciences ,030104 developmental biology ,0302 clinical medicine ,Phase dynamics ,Control theory ,Cardiology and Cardiovascular Medicine ,030217 neurology & neurosurgery ,Delay time - Abstract
Objective:We assessed the delay times in the interaction between the autonomic regulatory loop of Heart Rate Variability (HRV) and autonomic regulatory loop of photoplethysmographic waveform variability (PPGV), showing low-frequency oscillations.Material and Methods:In eight healthy subjects aged 25–30 years (3 male, 5 female), we studied at rest (in a supine position) the simultaneously recorded two-hour signals of RR intervals (RRIs) chain and finger photoplethysmogram (PPG). To extract the low-frequency components of RRIs and PPG signal, associated with the low-frequency oscillations in HRV and PPGV with a frequency of about 0.1 Hz, we filtered RRIs and PPG with a bandpass 0.05-0.15 Hz filter. We used a method for the detection of coupling between oscillatory systems, based on the construction of predictive models of instantaneous phase dynamics, for the estimation of delay times in the interaction between the studied regulatory loops.Results:Averaged value of delay time in coupling from the regulatory loop of HRV to the loop of PPGV was 0.9±0.4 seconds (mean ± standard error of the means) and averaged value of delay time in coupling from PPGV to HRV was 4.1±1.1 seconds.Conclusion:Analysis of two-hour experimental time series of healthy subjects revealed the presence of delay times in the interaction between regulatory loops of HRV and PPGV. Estimated delay time in coupling regulatory loops from HRV to PPGV was about one second or even less, while the delay time in coupling from PPGV to HRV was about several seconds. The difference in delay times is explained by the fact that PPGV to HRV response is mediated through the autonomic nervous system (baroreflex), while the HRV to PPGV response is mediated mechanically via cardiac output.
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- 2017
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5. Roles of Brain Criticality and Multiscale Oscillations in Temporal Predictions for Sensorimotor Processing
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J. Matias Palva and Satu Palva
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0301 basic medicine ,Adaptive behavior ,Neurons ,Periodicity ,Quantitative Biology::Neurons and Cognition ,Computer science ,Brain activity and meditation ,Oscillation ,General Neuroscience ,Brain ,Electroencephalography ,03 medical and health sciences ,030104 developmental biology ,0302 clinical medicine ,Rhythm ,Phase dynamics ,Interneurons ,Neural processing ,Animals ,Humans ,Nerve Net ,Neuroscience ,030217 neurology & neurosurgery - Abstract
Sensorimotor predictions are essential for adaptive behavior. In natural environments, events that demand sensorimotor predictions unfold across many timescales, and corresponding temporal predictions (either explicit or implicit) should therefore emerge in brain dynamics. Neuronal oscillations are scale-specific processes found in several frequency bands. They underlie periodicity in sensorimotor processing and can represent temporal predictions via their phase dynamics. These processes build upon endogenous neural rhythmicity and adapt in response to exogenous timing demands. While much of the research on periodicity in neural processing has focused on subsecond oscillations, these fast-scale rhythms are in fact paralleled by critical-like, scale-free dynamics and fluctuations of brain activity at various timescales, ranging from seconds to hundreds of seconds. In this review, we put forth a framework positing that critical brain dynamics are essential for the role of neuronal oscillations in timing and that cross-frequency coupling flexibly organizes neuronal processing across multiple frequencies.
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- 2018
6. Bayesian Estimation of Phase Dynamics Based on Partially Sampled Spikes Generated by Realistic Model Neurons
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Kento Suzuki, Toshio Aoyagi, and Katsunori Kitano
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Computer science ,Bayesian probability ,Phase (waves) ,Neuroscience (miscellaneous) ,01 natural sciences ,Interaction function ,phase dynamics ,coupled oscillators ,lcsh:RC321-571 ,03 medical and health sciences ,Cellular and Molecular Neuroscience ,0302 clinical medicine ,0103 physical sciences ,Biological neural network ,010306 general physics ,lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry ,Original Research ,Bayes estimator ,Quantitative Biology::Neurons and Cognition ,Dynamics (mechanics) ,multi-neuronal spikes ,connectivity inference ,Bayesian estimation ,Phase dynamics ,Spike (software development) ,Biological system ,030217 neurology & neurosurgery ,Neuroscience - Abstract
A dynamic system showing stable rhythmic activity can be represented by the dynamics of phase oscillators. This would provide a useful mathematical framework through which one can understand the system's dynamic properties. A recent study proposed a Bayesian approach capable of extracting the underlying phase dynamics directly from time-series data of a system showing rhythmic activity. Here we extended this method to spike data that otherwise provide only limited phase information. To determine how this method performs with spike data, we applied it to simulated spike data generated by a realistic neuronal network model. We then compared the estimated dynamics obtained based on the spike data with the dynamics theoretically derived from the model. The method successfully extracted the modeled phase dynamics, particularly the interaction function, when the amount of available data was sufficiently large. Furthermore, the method was able to infer synaptic connections based on the estimated interaction function. Thus, the method was found to be applicable to spike data and practical for understanding the dynamic properties of rhythmic neural systems.
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- 2018
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7. Alpha Phase Dynamics Predict Age-Related Visual Working Memory Decline
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Sara C. LaHue, Lisa Tseng, Nicole C. Hoffner, Bradley Voytek, and Tam T. Tran
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Adult ,Male ,Aging ,medicine.medical_specialty ,Visual perception ,Cognitive Neuroscience ,Alpha (ethology) ,Audiology ,Memory load ,Memory array ,050105 experimental psychology ,Developmental psychology ,Young Adult ,03 medical and health sciences ,0302 clinical medicine ,Age related ,medicine ,Humans ,0501 psychology and cognitive sciences ,Healthy aging ,Young adult ,Cognitive decline ,Aged ,Cerebral Cortex ,Working memory ,05 social sciences ,Age Factors ,Middle Aged ,Alpha Rhythm ,Memory, Short-Term ,medicine.anatomical_structure ,Neurology ,Phase dynamics ,Cerebral cortex ,Visual Perception ,Female ,Cues ,Psychology ,Psychomotor Performance ,030217 neurology & neurosurgery - Abstract
Alpha oscillations are modulated in response to visual temporal and spatial cues, However, the neural response to alerting cues is less explored, as is how this response is affected by healthy aging. Using scalp EEG, we examined how visual cortical alpha activity relates to working memory performance. Younger (20-30 years) and older (60-70 years) participants were presented with a visual alerting cue uninformative of the position or size of a lateralized working memory array. Older adults showed longer response times overall, and reduced accuracy when memory load was high. Older adults had less consistent cue-evoked phase resetting than younger adults, which predicted worse performance. Alpha phase prior to memory array presentation predicted response time, but the relationship between phase and response time was weaker in older adults. These results suggest that changes in alpha phase dynamics, especially prior to presentation of task-relevant stimuli, potentially contribute to age-related cognitive decline.
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- 2016
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8. Discrepancies between Multi-Electrode LFP and CSD Phase-Patterns: A Forward Modeling Study
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Michel Besserve, Paul F. M. J. Verschure, Gustavo Deco, Theofanis I Panagiotaropoulos, Xerxes D. Arsiwalla, Nikos K. Logothetis, Rikkert Hindriks, and Mathematics
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0301 basic medicine ,Current Source Density ,Computer science ,Cognitive Neuroscience ,Models, Neurological ,Neuroscience (miscellaneous) ,Phase (waves) ,Local field potential ,lcsh:RC321-571 ,03 medical and health sciences ,Cellular and Molecular Neuroscience ,Neural activity ,0302 clinical medicine ,Traveling wave ,Animals ,Humans ,Neural oscillations ,lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry ,Original Research ,Cerebral Cortex ,Phase-dynamics ,Current source density (CSD) ,Electroencephalography ,Sensory Systems ,Electrophysiological Phenomena ,030104 developmental biology ,Phase dynamics ,Volume conduction ,Local field potential (LFP) ,Electrode ,Cortical oscillations ,Forward modeling ,Biological system ,Algorithm ,Neuroscience ,030217 neurology & neurosurgery ,Coherence (physics) - Abstract
Multi-electrode recordings of local field potentials (LFPs) provide the opportunity to investigate the spatiotemporal organization of neural activity on the scale of several millimeters. In particular, the phases of oscillatory LFPs allow studying the coordination of neural oscillations in time and space and to tie it to cognitive processing. Given the computational roles of LFP phases, it is important to know how they relate to the phases of the underlying current source densities (CSDs) that generate them. Although CSDs and LFPs are distinct physical quantities, they are often (implicitly) identified when interpreting experimental observations. That this identification is problematic is clear from the fact that LFP phases change when switching to different electrode montages, while the underlying CSD phases remain unchanged. In this study we use a volume-conductor model to characterize discrepancies between LFP and CSD phase-patterns, to identify the contributing factors, and to assess the effect of different electrode montages. Although we focus on cortical LFPs recorded with two-dimensional (Utah) arrays, our findings are also relevant for other electrode configurations. We found that the main factors that determine the discrepancy between CSD and LFP phase-patterns are the frequency of the neural oscillations and the extent to which the laminar CSD profile is balanced. Furthermore, the presence of laminar phase-differences in cortical oscillations, as commonly observed in experiments, precludes identifying LFP phases with those of the CSD oscillations at a given cortical depth. This observation potentially complicates the interpretation of spike-LFP coherence and spike-triggered LFP averages. With respect to reference strategies, we found that the average-reference montage leads to larger discrepancies between LFP and CSD phases as compared with the referential montage, while the Laplacian montage reduces these discrepancies. We therefore advice to conduct analysis of two-dimensional LFP recordings using the Laplacian montage. RH and GD were funded by the European Research Council (Advanced Grant DYSTRUCTURE No. 295129), the Spanish Research Project PSI2013-42091-P, the CONSOLIDER-INGENIO 2010 Program CSD2007-00012, and the FP7-ICT Brainscales (269921). XA and PV are supported by the European Research Council's CDAC project: “The Role of Consciousness in Adaptive Behavior: A Combined Empirical, Computational and Robot based Approach” (ERC-2013- ADG 341196).
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- 2016
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9. Exploration of the neural correlates of cerebral palsy for sensorimotor BCI control
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Reinhold Scherer, Gernot Müller-Putz, Ian Daly, Josef Faller, Slawomir J. Nasuto, Catherine M. Sweeney-Reed, and Martin Billinger
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medicine.medical_specialty ,medicine.medical_treatment ,0206 medical engineering ,Biomedical Engineering ,Biophysics ,Neuroscience (miscellaneous) ,02 engineering and technology ,phase dynamics ,sensorimotor rhythm ,Cerebral palsy ,03 medical and health sciences ,0302 clinical medicine ,Motor imagery ,Physical medicine and rehabilitation ,medicine ,Original Research Article ,Brain–computer interface ,Neural correlates of consciousness ,cerebral palsy ,Rehabilitation ,electroencephalogram (EEG) ,Motor control ,brain-computer interface (BCI) ,medicine.disease ,020601 biomedical engineering ,event-related desynchronization (ERD) ,medicine.anatomical_structure ,Sensorimotor rhythm ,phase synchrony ,Psychology ,Neuroscience ,030217 neurology & neurosurgery ,Motor cortex - Abstract
Cerebral palsy (CP) includes a broad range of disorders, which can result in impairment of posture and movement control. Brain-computer interfaces (BCIs) have been proposed as assistive devices for individuals with CP. Better understanding of the neural processing underlying motor control in affected individuals could lead to more targeted BCI rehabilitation and treatment options. We have explored well-known neural correlates of movement, including event-related desynchronization (ERD), phase synchrony, and a recently-introduced measure of phase dynamics, in participants with CP and healthy control participants. Although present, significantly less ERD and phase locking were found in the group with CP. Additionally, inter-group differences in phase dynamics were also significant. Taken together these findings suggest that users with CP exhibit lower levels of motor cortex activation during motor imagery, as reflected in lower levels of ongoing mu suppression and less functional connectivity. These differences indicate that development of BCIs for individuals with CP may pose additional challenges beyond those faced in providing BCIs to healthy individuals.
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- 2014
10. Functional roles of alpha-band phase synchronization in local and large-scale cortical networks
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Satu Palva and J. Matias Palva
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magnetoencephalography ,alpha ,lcsh:BF1-990 ,Alpha (ethology) ,Review Article ,Electroencephalography ,Inhibitory postsynaptic potential ,050105 experimental psychology ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Psychology ,0501 psychology and cognitive sciences ,phase ,General Psychology ,amplitude ,medicine.diagnostic_test ,05 social sciences ,synchrony ,Magnetoencephalography ,Phase synchronization ,source modeling ,Alpha band ,lcsh:Psychology ,Phase dynamics ,Functional magnetic resonance imaging ,Neuroscience ,030217 neurology & neurosurgery ,electroencephalography - Abstract
Alpha-frequency band (8-14 Hz) oscillations are among the most salient phenomena in human electroencephalography (EEG) recordings and yet their functional roles have remained unclear. Much of research on alpha oscillations in human EEG has focused on peri-stimulus amplitude dynamics, which phenomenologically support an idea of alpha oscillations being negatively correlated with local cortical excitability and having a role in the suppression of task-irrelevant neuronal processing. This kind of an inhibitory role for alpha oscillations is also supported by several functional magnetic resonance imaging (fMRI) and trans-cranial magnetic stimulation (TMS) studies. Nevertheless, investigations of local and inter-areal alpha phase dynamics suggest that the alpha-frequency band rhythmicity may play a role also in active task-relevant neuronal processing. These data imply that inter-areal alpha phase synchronization could support attentional, executive, and contextual functions. In this review, we outline evidence supporting different views on the roles of alpha oscillations in cortical networks and unresolved issues that should be addressed to resolve or reconcile these apparently contrasting hypotheses.
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- 2011
11. Nonlinear dynamics of cardiovascular ageing
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Peter V. E. McClintock, Y. Shiogai, and Aneta Stefanovska
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General Physics and Astronomy ,Physics and Astronomy(all) ,Synchronization ,Article ,law.invention ,03 medical and health sciences ,symbols.namesake ,0302 clinical medicine ,Wavelet ,law ,Heart rate variability ,Coupled oscillators ,030304 developmental biology ,Physics ,0303 health sciences ,Frequency analysis ,Wavelet transform ,Endothelial function ,Blood flow ,Complexity ,Iontophoresis ,Ageing ,Fourier transform ,Autoregressive model ,symbols ,Detrended fluctuation analysis ,Phase dynamics ,Biological system ,030217 neurology & neurosurgery - Abstract
The application of methods drawn from nonlinear and stochastic dynamics to the analysis of cardiovascular time series is reviewed, with particular reference to the identification of changes associated with ageing. The natural variability of the heart rate (HRV) is considered in detail, including the respiratory sinus arrhythmia (RSA) corresponding to modulation of the instantaneous cardiac frequency by the rhythm of respiration. HRV has been intensively studied using traditional spectral analyses, e.g. by Fourier transform or autoregressive methods, and, because of its complexity, has been used as a paradigm for testing several proposed new methods of complexity analysis. These methods are reviewed. The application of time–frequency methods to HRV is considered, including in particular the wavelet transform which can resolve the time-dependent spectral content of HRV. Attention is focused on the cardio-respiratory interaction by introduction of the respiratory frequency variability signal (RFV), which can be acquired simultaneously with HRV by use of a respiratory effort transducer. Current methods for the analysis of interacting oscillators are reviewed and applied to cardio-respiratory data, including those for the quantification of synchronization and direction of coupling. These reveal the effect of ageing on the cardio-respiratory interaction through changes in the mutual modulation of the instantaneous cardiac and respiratory frequencies. Analyses of blood flow signals recorded with laser Doppler flowmetry are reviewed and related to the current understanding of how endothelial-dependent oscillations evolve with age: the inner lining of the vessels (the endothelium) is shown to be of crucial importance to the emerging picture. It is concluded that analyses of the complex and nonlinear dynamics of the cardiovascular system can illuminate the mechanisms of blood circulation, and that the heart, the lungs and the vascular system function as a single entity in dynamical terms. Clear evidence is found for dynamical ageing.
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12. Scale-freeness or partial synchronization in neural mass phase oscillator networks: Pick one of two?
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Bastian Pietras, Gustavo Deco, Robert Ton, Andreas Daffertshofer, and Morten L. Kringelbach
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0301 basic medicine ,Scale (ratio) ,Cognitive Neuroscience ,Models, Neurological ,Phase (waves) ,Synchronization ,Power law ,03 medical and health sciences ,0302 clinical medicine ,Animals ,Humans ,Statistical physics ,Physics ,Coupling ,Criticality ,Wilson-Cowan model ,Resting state fMRI ,Brain ,Models, Theoretical ,Phase synchronization ,Wilson–Cowan model ,Power laws ,030104 developmental biology ,Neurology ,Phase dynamics ,Neural Networks, Computer ,Nerve Net ,Freeman model ,030217 neurology & neurosurgery - Abstract
Modeling and interpreting (partial) synchronous neural activity can be a challenge. We illustrate this by deriving the phase dynamics of two seminal neural mass models: the Wilson-Cowan firing rate model and the voltage-based Freeman model. We established that the phase dynamics of these models differed qualitatively due to an attractive coupling in the first and a repulsive coupling in the latter. Using empirical structural connectivity matrices, we determined that the two dynamics cover the functional connectivity observed in resting state activity. We further searched for two pivotal dynamical features that have been reported in many experimental studies: (1) a partial phase synchrony with a possibility of a transition towards either a desynchronized or a (fully) synchronized state; (2) long-term autocorrelations indicative of a scale-free temporal dynamics of phase synchronization. Only the Freeman phase model exhibited scale-free behavior. Its repulsive coupling, however, let the individual phases disperse and did not allow for a transition into a synchronized state. The Wilson-Cowan phase model, by contrast, could switch into a (partially) synchronized state, but it did not generate long-term correlations although being located close to the onset of synchronization, i.e. in its critical regime. That is, the phase-reduced models can display one of the two dynamical features, but not both. We would like to thank Mark Woolrich for his contribution to data acquisition and analysis and the fruitful discussion about interpretation of our findings. We received the following funding: GD, RT: ERC Advanced Grant: DYSTRUCTURE (n. 295129), GD: Spanish Research Project PSI2013-42091-P, Human Brain Project, and FP7-ICT BrainScales (269921). MLK: ERC Consolidator Grant CAREGIVING (n. 615539) and Center for Music in the Brain/Danish National Research Foundation (DNRF117). AD, BP: H2020-MSA-ITN COSMOS (n. 642563).
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