Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Javier M. Buldú is active.

Publication


Featured researches published by Javier M. Buldú.


PLOS ONE | 2011

Reorganization of functional networks in mild cognitive impairment.

Javier M. Buldú; Ricardo Bajo; Fernando Maestú; Nazareth P. Castellanos; I. Leyva; Pablo Gil; I. Sendiña-Nadal; Juan A. Almendral; Angel Nevado; Francisco del-Pozo; Stefano Boccaletti

Whether the balance between integration and segregation of information in the brain is damaged in Mild Cognitive Impairment (MCI) subjects is still a matter of debate. Here we characterize the functional network architecture of MCI subjects by means of complex networks analysis. Magnetoencephalograms (MEG) time series obtained during a memory task were evaluated by synchronization likelihood (SL), to quantify the statistical dependence between MEG signals and to obtain the functional networks. Graphs from MCI subjects show an enhancement of the strength of connections, together with an increase in the outreach parameter, suggesting that memory processing in MCI subjects is associated with higher energy expenditure and a tendency toward random structure, which breaks the balance between integration and segregation. All features are reproduced by an evolutionary network model that simulates the degenerative process of a healthy functional network to that associated with MCI. Due to the high rate of conversion from MCI to Alzheimer Disease (AD), these results show that the analysis of functional networks could be an appropriate tool for the early detection of both MCI and AD.


Physical Review Letters | 2008

Synchronization interfaces and overlapping communities in complex networks.

Daqing Li; I. Leyva; Juan A. Almendral; I. Sendiña-Nadal; Javier M. Buldú; Shlomo Havlin; Stefano Boccaletti

We show that a complex network of phase oscillators may display interfaces between domains (clusters) of synchronized oscillations. The emergence and dynamics of these interfaces are studied for graphs composed of either dynamical domains (influenced by different forcing processes), or structural domains (modular networks). The obtained results allow us to give a functional definition of overlapping structures in modular networks, and suggest a practical method able to give information on overlapping clusters in both artificially constructed and real world modular networks.


NeuroImage | 2011

Principles of recovery from traumatic brain injury: Reorganization of functional networks

Nazareth P. Castellanos; I. Leyva; Javier M. Buldú; Ricardo Bajo; Nuria Paul; Pablo Cuesta; Victoria E. Ordóñez; Cristina L. Pascua; Stefano Boccaletti; Fernando Maestú; Francisco del-Pozo

Recovery after brain injury is an excellent platform to study the mechanism underlying brain plasticity, the reorganization of networks. Do complex network measures capture the physiological and cognitive alterations that occurred after a traumatic brain injury and its recovery? Patients as well as control subjects underwent resting-state MEG recording following injury and after neurorehabilitation. Next, network measures such as network strength, path length, efficiency, clustering and energetic cost were calculated. We show that these parameters restore, in many cases, to control ones after recovery, specifically in delta and alpha bands, and we design a model that gives some hints about how the functional networks modify their weights in the recovery process. Positive correlations between complex network measures and some of the general index of the WAIS-III test were found: changes in delta-based path-length and those in Performance IQ score, and alpha-based normalized global efficiency and Perceptual Organization Index. These results indicate that: 1) the principle of recovery depends on the spectral band, 2) the structure of the functional networks evolves in parallel to brain recovery with correlations with neuropsychological scales, and 3) energetic cost reveals an optimal principle of recovery.


Philosophical Transactions of the Royal Society B | 2014

Complex network theory and the brain

David Papo; Javier M. Buldú; Stefano Boccaletti; Edward T. Bullmore

The first clear, recognizably scientific representations of the human brain were the drawings and engravings of the Renaissance anatomists. These prototype anatomical maps of brain organization demonstrated a physical structure somewhat walnut-like in appearance: an approximately symmetrical pair of


Physical Review Letters | 2012

Explosive First-Order Transition to Synchrony in Networked Chaotic Oscillators

I. Leyva; R. Sevilla-Escoboza; Javier M. Buldú; I. Sendiña-Nadal; Jesús Gómez-Gardeñes; Alex Arenas; Yamir Moreno; Sergio Gómez; R. Jaimes-Reátegui; Stefano Boccaletti

Critical phenomena in complex networks, and the emergence of dynamical abrupt transitions in the macroscopic state of the system are currently a subject of the outmost interest. We report evidence of an explosive phase synchronization in networks of chaotic units. Namely, by means of both extensive simulations of networks made up of chaotic units, and validation with an experiment of electronic circuits in a star configuration, we demonstrate the existence of a first-order transition towards synchronization of the phases of the networked units. Our findings constitute the first prove of this kind of synchronization in practice, thus opening the path to its use in real-world applications.


Physical Review Letters | 2014

Synchronization of Interconnected Networks: The Role of Connector Nodes

Jacobo Aguirre; R. Sevilla-Escoboza; Ricardo Gutiérrez; David Papo; Javier M. Buldú

In this Letter we identify the general rules that determine the synchronization properties of interconnected networks. We study analytically, numerically, and experimentally how the degree of the nodes through which two networks are connected influences the ability of the whole system to synchronize. We show that connecting the high-degree (low-degree) nodes of each network turns out to be the most (least) effective strategy to achieve synchronization. We find the functional relation between synchronizability and size for a given network of networks, and report the existence of the optimal connector link weights for the different interconnection strategies. Finally, we perform an electronic experiment with two coupled star networks and conclude that the analytical results are indeed valid in the presence of noise and parameter mismatches.


Philosophical Transactions of the Royal Society B | 2014

Functional brain networks: great expectations, hard times and the big leap forward

David Papo; Massimiliano Zanin; José Ángel Pineda-Pardo; Stefano Boccaletti; Javier M. Buldú

Many physical and biological systems can be studied using complex network theory, a new statistical physics understanding of graph theory. The recent application of complex network theory to the study of functional brain networks has generated great enthusiasm as it allows addressing hitherto non-standard issues in the field, such as efficiency of brain functioning or vulnerability to damage. However, in spite of its high degree of generality, the theory was originally designed to describe systems profoundly different from the brain. We discuss some important caveats in the wholesale application of existing tools and concepts to a field they were not originally designed to describe. At the same time, we argue that complex network theory has not yet been taken full advantage of, as many of its important aspects are yet to make their appearance in the neuroscience literature. Finally, we propose that, rather than simply borrowing from an existing theory, functional neural networks can inspire a fundamental reformulation of complex network theory, to account for its exquisitely complex functioning mode.


PLOS ONE | 2011

Topological structure of the space of phenotypes: the case of RNA neutral networks.

Jacobo Aguirre; Javier M. Buldú; Michael Stich; Susanna C. Manrubia

The evolution and adaptation of molecular populations is constrained by the diversity accessible through mutational processes. RNA is a paradigmatic example of biopolymer where genotype (sequence) and phenotype (approximated by the secondary structure fold) are identified in a single molecule. The extreme redundancy of the genotype-phenotype map leads to large ensembles of RNA sequences that fold into the same secondary structure and can be connected through single-point mutations. These ensembles define neutral networks of phenotypes in sequence space. Here we analyze the topological properties of neutral networks formed by 12-nucleotides RNA sequences, obtained through the exhaustive folding of sequence space. A total of 412 sequences fragments into 645 subnetworks that correspond to 57 different secondary structures. The topological analysis reveals that each subnetwork is far from being random: it has a degree distribution with a well-defined average and a small dispersion, a high clustering coefficient, and an average shortest path between nodes close to its minimum possible value, i.e. the Hamming distance between sequences. RNA neutral networks are assortative due to the correlation in the composition of neighboring sequences, a feature that together with the symmetries inherent to the folding process explains the existence of communities. Several topological relationships can be analytically derived attending to structural restrictions and generic properties of the folding process. The average degree of these phenotypic networks grows logarithmically with their size, such that abundant phenotypes have the additional advantage of being more robust to mutations. This property prevents fragmentation of neutral networks and thus enhances the navigability of sequence space. In summary, RNA neutral networks show unique topological properties, unknown to other networks previously described.


Nature Physics | 2013

Successful strategies for competing networks

Jacobo Aguirre; David Papo; Javier M. Buldú

Networks competing for limited resources are often more vulnerable than isolated systems, but competition can also prove beneficial—and even prevent network failure in some cases. A new study identifies how best to link networks to capitalize on competition.


Scientific Reports | 2013

Explosive transitions to synchronization in networks of phase oscillators.

I. Leyva; A. Navas; Irene Sendiña-Nadal; J. A. Almendral; Javier M. Buldú; Massimiliano Zanin; David Papo; Stefano Boccaletti

The emergence of dynamical abrupt transitions in the macroscopic state of a system is currently a subject of the utmost interest. The occurrence of a first-order phase transition to synchronization of an ensemble of networked phase oscillators was reported, so far, for very particular network architectures. Here, we show how a sharp, discontinuous transition can occur, instead, as a generic feature of networks of phase oscillators. Precisely, we set conditions for the transition from unsynchronized to synchronized states to be first-order, and demonstrate how these conditions can be attained in a very wide spectrum of situations. We then show how the occurrence of such transitions is always accompanied by the spontaneous setting of frequency-degree correlation features. Third, we show that the conditions for abrupt transitions can be even softened in several cases. Finally, we discuss, as a possible application, the use of this phenomenon to express magnetic-like states of synchronization.

Collaboration


Dive into the Javier M. Buldú's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar

Stefano Boccaletti

King Juan Carlos University

View shared research outputs
Top Co-Authors

Avatar

M. C. Torrent

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar

David Papo

Technical University of Madrid

View shared research outputs
Top Co-Authors

Avatar

I. Leyva

King Juan Carlos University

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Claudio R. Mirasso

Spanish National Research Council

View shared research outputs
Top Co-Authors

Avatar

Juan A. Almendral

King Juan Carlos University

View shared research outputs
Top Co-Authors

Avatar

Johann H. Martínez

Technical University of Madrid

View shared research outputs
Top Co-Authors

Avatar

Massimiliano Zanin

Technical University of Madrid

View shared research outputs
Researchain Logo
Decentralizing Knowledge