322 research outputs found
Temporal stability of network partitions
We present a method to find the best temporal partition at any time-scale and
rank the relevance of partitions found at different time-scales. This method is
based on random walkers coevolving with the network and as such constitutes a
generalization of partition stability to the case of temporal networks. We show
that, when applied to a toy model and real datasets, temporal stability
uncovers structures that are persistent over meaningful time-scales as well as
important isolated events, making it an effective tool to study both abrupt
changes and gradual evolution of a network mesoscopic structures.Comment: 15 pages, 12 figure
Directed Abelian sandpile with multiple downward neighbors
We study the directed Abelian sandpile model on a square lattice, with
downward neighbors per site, . The case is solved exactly, which
extends the earlier known solution for the case. For , the avalanche
clusters can have holes and side-branches and are thus qualitatively different
from the case where avalance clusters are compact. However, we find that
the critical exponents for are identical with those for the case,
and the large scale structure of the avalanches for tends to the
case.Comment: Accepted for publication in PR
An Odyssey with complexity and network science: From the brain to social organisation
Complexity science is the study of systems that give rise to a priori unexpected
macroscopic patterns, at different scales, emerging from the simple
microscopic rules governing the evolution of the system. Method to explore
complex systems are based on tools from a wide range of sciences, including
statistical mechanics. Recently, the study of the emerging properties
of complex systems has been enriched by a new toolbox derived by an extension
of graph theory, namely, complex network science. We use both
approaches to investigate two complex systems, the human brain and the
communications patterns of a social network.
The brain could be considered as an archetypical complex system; its
fundamental constituting units, the neurones, communicate via simple inhibitory
and excitatory interactions. These give rise to an extraordinarily
rich hierarchical complex system, the human mind, that enables one to
apprehend and interact with the universe.
Understanding how the brain functions is essential, both for the general
knowledge of humanity, but also for medical purposes; a better understanding
of brain functions could lead to finding cures. We investigate the dynamics
of brain activity at the smallest scale accessible by functional Magnetic
Resonance Imaging, the voxel, while subjects are at the resting-state. We
apply real-space renormalisation from the statistical mechanics toolbox, and
our findings confirm that brain dynamics displays characteristic signatures
of a critical system.
At a coarser level, we study the structural differences in the functional
networks of a healthy cohort and one made of people at-risk of developing a
mental disorder during a verbal fluency task. We find that a key brain region
plays a different role in the network organisation of the two populations,
which is in agreement with previous findings on the disease schizophrenia.
Finally, we investigate community structure in complex systems. Social
interactions in humans are also a prime example of a system with emerging
structure, the nature of which is dependent on the types of interactions
between individuals. We use and develop new methods for community
detection to uncover structures due to spatial and linguistic interactions in
a mobile phone network
Connecting Hodge and Sakaguchi-Kuramoto through a mathematical framework for coupled oscillators on simplicial complexes
Phase synchronizations in models of coupled oscillators such as the Kuramoto model have been widely studied with pairwise couplings on arbitrary topologies, showing many unexpected dynamical behaviors. Here, based on a recent formulation the Kuramoto model on weighted simplicial complexes with phases supported on simplices of any order k, we introduce linear and non-linear frustration terms independent of the orientation of the k + 1 simplices, as a natural generalization of the Sakaguchi-Kuramoto model to simplicial complexes. With increasingly complex simplicial complexes, we study the the dynamics of the edge simplicial Sakaguchi-Kuramoto model with nonlinear frustration to highlight the complexity of emerging dynamical behaviors. We discover various dynamical phenomena, such as the partial loss of synchronization in subspaces aligned with the Hodge subspaces and the emergence of simplicial phase re-locking in regimes of high frustration
Altered dynamical integration/segregation balance during anesthesia-induced loss of consciousness
In recent years, brain imaging studies have begun to shed light on the neural correlates of physiologically-reversible altered states of consciousness such as deep sleep, anesthesia, and psychedelic experiences. The emerging consensus is that normal waking consciousness requires the exploration of a dynamical repertoire enabling both global integration i.e., long-distance interactions between brain regions, and segregation, i.e., local processing in functionally specialized clusters. Altered states of consciousness have notably been characterized by a tipping of the integration/segregation balance away from this equilibrium. Historically, functional MRI (fMRI) has been the modality of choice for such investigations. However, fMRI does not enable characterization of the integration/segregation balance at sub-second temporal resolution. Here, we investigated global brain spatiotemporal patterns in electrocorticography (ECoG) data of a monkey (Macaca fuscata) under either ketamine or propofol general anesthesia. We first studied the effects of these anesthetics from the perspective of band-specific synchronization across the entire ECoG array, treating individual channels as oscillators. We further aimed to determine whether synchrony within spatially localized clusters of oscillators was differently affected by the drugs in comparison to synchronization over spatially distributed subsets of ECoG channels, thereby quantifying changes in integration/segregation balance on physiologically-relevant time scales. The findings reflect global brain dynamics characterized by a loss of long-range integration in multiple frequency bands under both ketamine and propofol anesthesia, most pronounced in the beta (13–30 Hz) and low-gamma bands (30–80 Hz), and with strongly preserved local synchrony in all bands
Self-similar correlation function in brain resting-state fMRI
Adaptive behavior, cognition and emotion are the result of a bewildering
variety of brain spatiotemporal activity patterns. An important problem in
neuroscience is to understand the mechanism by which the human brain's 100
billion neurons and 100 trillion synapses manage to produce this large
repertoire of cortical configurations in a flexible manner. In addition, it is
recognized that temporal correlations across such configurations cannot be
arbitrary, but they need to meet two conflicting demands: while diverse
cortical areas should remain functionally segregated from each other, they must
still perform as a collective, i.e., they are functionally integrated. Here, we
investigate these large-scale dynamical properties by inspecting the character
of the spatiotemporal correlations of brain resting-state activity. In physical
systems, these correlations in space and time are captured by measuring the
correlation coefficient between a signal recorded at two different points in
space at two different times. We show that this two-point correlation function
extracted from resting-state fMRI data exhibits self-similarity in space and
time. In space, self-similarity is revealed by considering three successive
spatial coarse-graining steps while in time it is revealed by the 1/f frequency
behavior of the power spectrum. The uncovered dynamical self-similarity implies
that the brain is spontaneously at a continuously changing (in space and time)
intermediate state between two extremes, one of excessive cortical integration
and the other of complete segregation. This dynamical property may be seen as
an important marker of brain well-being both in health and disease.Comment: 14 pages 13 figures; published online before print September 2
A unified framework for Simplicial Kuramoto models
Simplicial Kuramoto models have emerged as a diverse and intriguing class of
models describing oscillators on simplices rather than nodes. In this paper, we
present a unified framework to describe different variants of these models,
categorized into three main groups: "simple" models, "Hodge-coupled" models,
and "order-coupled" (Dirac) models. Our framework is based on topology,
discrete differential geometry as well as gradient flows and frustrations, and
permits a systematic analysis of their properties. We establish an equivalence
between the simple simplicial Kuramoto model and the standard Kuramoto model on
pairwise networks under the condition of manifoldness of the simplicial
complex. Then, starting from simple models, we describe the notion of
simplicial synchronization and derive bounds on the coupling strength necessary
or sufficient for achieving it. For some variants, we generalize these results
and provide new ones, such as the controllability of equilibrium solutions.
Finally, we explore a potential application in the reconstruction of brain
functional connectivity from structural connectomes and find that simple
edge-based Kuramoto models perform competitively or even outperform complex
extensions of node-based models.Comment: 36 pages, 11 figure
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Functional brain networks before the onset of psychosis: A prospective fMRI study with graph theoretical analysis☆☆☆
Individuals with an at-risk mental state (ARMS) have a risk of developing a psychotic disorder significantly greater than the general population. However, it is not currently possible to predict which ARMS individuals will develop psychosis from clinical assessment alone. Comparison of ARMS subjects who do, and do not, develop psychosis can reveal which factors are critical for the onset of illness. In the present study, 37 patients with an ARMS were followed clinically at least 24 months subsequent to initial referral. Functional MRI data were collected at the beginning of the follow-up period during performance of an executive task known to recruit frontal lobe networks and to be impaired in psychosis. Graph theoretical analysis was used to compare the organization of a functional brain network in ARMS patients who developed a psychotic disorder following the scan (ARMS-T) to those who did not become ill during the same follow-up period (ARMS-NT) and aged-matched controls. The global properties of each group's representative network were studied (density, efficiency, global average path length) as well as regionally-specific contributions of network nodes to the organization of the system (degree, farness-centrality, betweenness-centrality). We focused our analysis on the dorsal anterior cingulate cortex (ACC), a region known to support executive function that is structurally and functionally impaired in ARMS patients. In the absence of between-group differences in global network organization, we report a significant reduction in the topological centrality of the ACC in the ARMS-T group relative to both ARMS-NT and controls. These results provide evidence that abnormalities in the functional organization of the brain predate the onset of psychosis, and suggest that loss of ACC topological centrality is a potential biomarker for transition to psychosis
Altered dynamical integration/segregation balance during anesthesia-induced loss of consciousness
In recent years, brain imaging studies have begun to shed light on the neural correlates of physiologically-reversible altered states of consciousness such as deep sleep, anesthesia, and psychedelic experiences. The emerging consensus is that normal waking consciousness requires the exploration of a dynamical repertoire enabling both global integration i.e., long-distance interactions between brain regions, and segregation, i.e., local processing in functionally specialized clusters. Altered states of consciousness have notably been characterized by a tipping of the integration/segregation balance away from this equilibrium. Historically, functional MRI (fMRI) has been the modality of choice for such investigations. However, fMRI does not enable characterization of the integration/segregation balance at sub-second temporal resolution. Here, we investigated global brain spatiotemporal patterns in electrocorticography (ECoG) data of a monkey (Macaca fuscata) under either ketamine or propofol general anesthesia. We first studied the effects of these anesthetics from the perspective of band-specific synchronization across the entire ECoG array, treating individual channels as oscillators. We further aimed to determine whether synchrony within spatially localized clusters of oscillators was differently affected by the drugs in comparison to synchronization over spatially distributed subsets of ECoG channels, thereby quantifying changes in integration/segregation balance on physiologically-relevant time scales. The findings reflect global brain dynamics characterized by a loss of long-range integration in multiple frequency bands under both ketamine and propofol anesthesia, most pronounced in the beta (13–30 Hz) and low-gamma bands (30–80 Hz), and with strongly preserved local synchrony in all bands
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