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Dive into the research topics where Xavier Gigandet is active.

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Featured researches published by Xavier Gigandet.


PLOS Biology | 2008

Mapping the Structural Core of Human Cerebral Cortex

Patric Hagmann; Leila Cammoun; Xavier Gigandet; Reto Meuli; Christopher J. Honey; Van J. Wedeen; Olaf Sporns

Structurally segregated and functionally specialized regions of the human cerebral cortex are interconnected by a dense network of cortico-cortical axonal pathways. By using diffusion spectrum imaging, we noninvasively mapped these pathways within and across cortical hemispheres in individual human participants. An analysis of the resulting large-scale structural brain networks reveals a structural core within posterior medial and parietal cerebral cortex, as well as several distinct temporal and frontal modules. Brain regions within the structural core share high degree, strength, and betweenness centrality, and they constitute connector hubs that link all major structural modules. The structural core contains brain regions that form the posterior components of the human default network. Looking both within and outside of core regions, we observed a substantial correspondence between structural connectivity and resting-state functional connectivity measured in the same participants. The spatial and topological centrality of the core within cortex suggests an important role in functional integration.


Proceedings of the National Academy of Sciences of the United States of America | 2009

Predicting Human Resting-State Functional Connectivity from structural Connectivity

Ch. Honey; Olaf Sporns; Leila Cammoun; Xavier Gigandet; Jean-Philippe Thiran; Reto Meuli; Patric Hagmann

In the cerebral cortex, the activity levels of neuronal populations are continuously fluctuating. When neuronal activity, as measured using functional MRI (fMRI), is temporally coherent across 2 populations, those populations are said to be functionally connected. Functional connectivity has previously been shown to correlate with structural (anatomical) connectivity patterns at an aggregate level. In the present study we investigate, with the aid of computational modeling, whether systems-level properties of functional networks—including their spatial statistics and their persistence across time—can be accounted for by properties of the underlying anatomical network. We measured resting state functional connectivity (using fMRI) and structural connectivity (using diffusion spectrum imaging tractography) in the same individuals at high resolution. Structural connectivity then provided the couplings for a model of macroscopic cortical dynamics. In both model and data, we observed (i) that strong functional connections commonly exist between regions with no direct structural connection, rendering the inference of structural connectivity from functional connectivity impractical; (ii) that indirect connections and interregional distance accounted for some of the variance in functional connectivity that was unexplained by direct structural connectivity; and (iii) that resting-state functional connectivity exhibits variability within and across both scanning sessions and model runs. These empirical and modeling results demonstrate that although resting state functional connectivity is variable and is frequently present between regions without direct structural linkage, its strength, persistence, and spatial statistics are nevertheless constrained by the large-scale anatomical structure of the human cerebral cortex.


PLOS ONE | 2007

Mapping human whole-brain structural networks with diffusion MRI.

Patric Hagmann; Maciej Kurant; Xavier Gigandet; Patrick Thiran; Van J. Wedeen; Reto Meuli; Jean-Philippe Thiran

Understanding the large-scale structural network formed by neurons is a major challenge in system neuroscience. A detailed connectivity map covering the entire brain would therefore be of great value. Based on diffusion MRI, we propose an efficient methodology to generate large, comprehensive and individual white matter connectional datasets of the living or dead, human or animal brain. This non-invasive tool enables us to study the basic and potentially complex network properties of the entire brain. For two human subjects we find that their individual brain networks have an exponential node degree distribution and that their global organization is in the form of a small world.


Journal of Neuroscience Methods | 2010

MR connectomics: Principles and challenges

Patric Hagmann; Leila Cammoun; Xavier Gigandet; Stephan Gerhard; P. Ellen Grant; Van J. Wedeen; Reto Meuli; Jean-Philippe Thiran; Christopher J. Honey; Olaf Sporns

MR connectomics is an emerging framework in neuro-science that combines diffusion MRI and whole brain tractography methodologies with the analytical tools of network science. In the present work we review the current methods enabling structural connectivity mapping with MRI and show how such data can be used to infer new information of both brain structure and function. We also list the technical challenges that should be addressed in the future to achieve high-resolution maps of structural connectivity. From the resulting tremendous amount of data that is going to be accumulated soon, we discuss what new challenges must be tackled in terms of methods for advanced network analysis and visualization, as well data organization and distribution. This new framework is well suited to investigate key questions on brain complexity and we try to foresee what fields will most benefit from these approaches.


PLOS ONE | 2012

The Connectome Mapper: An Open-Source Processing Pipeline to Map Connectomes with MRI

Alessandro Daducci; Stephan Gerhard; Alessandra Griffa; Alia Lemkaddem; Leila Cammoun; Xavier Gigandet; Reto Meuli; Patric Hagmann; Jean-Philippe Thiran

Researchers working in the field of global connectivity analysis using diffusion magnetic resonance imaging (MRI) can count on a wide selection of software packages for processing their data, with methods ranging from the reconstruction of the local intra-voxel axonal structure to the estimation of the trajectories of the underlying fibre tracts. However, each package is generally task-specific and uses its own conventions and file formats. In this article we present the Connectome Mapper, a software pipeline aimed at helping researchers through the tedious process of organising, processing and analysing diffusion MRI data to perform global brain connectivity analyses. Our pipeline is written in Python and is freely available as open-source at www.cmtk.org.


PLOS ONE | 2008

Estimating the Confidence Level of White Matter Connections Obtained with MRI Tractography

Xavier Gigandet; Patric Hagmann; Maciej Kurant; Leila Cammoun; Reto Meuli; Jean-Philippe Thiran

Background Since the emergence of diffusion tensor imaging, a lot of work has been done to better understand the properties of diffusion MRI tractography. However, the validation of the reconstructed fiber connections remains problematic in many respects. For example, it is difficult to assess whether a connection is the result of the diffusion coherence contrast itself or the simple result of other uncontrolled parameters like for example: noise, brain geometry and algorithmic characteristics. Methodology/Principal Findings In this work, we propose a method to estimate the respective contributions of diffusion coherence versus other effects to a tractography result by comparing data sets with and without diffusion coherence contrast. We use this methodology to assign a confidence level to every gray matter to gray matter connection and add this new information directly in the connectivity matrix. Conclusions/Significance Our results demonstrate that whereas we can have a strong confidence in mid- and long-range connections obtained by a tractography experiment, it is difficult to distinguish between short connections traced due to diffusion coherence contrast from those produced by chance due to the other uncontrolled factors of the tractography methodology.


PLOS ONE | 2013

A Connectome-Based Comparison of Diffusion MRI Schemes

Xavier Gigandet; Alessandra Griffa; Tobias Kober; Alessandro Daducci; Alan Connelly; Patric Hagmann; Reto Meuli; Jean-Philippe Thiran; Gunnar Krueger

Diffusion MRI has evolved towards an important clinical diagnostic and research tool. Though clinical routine is using mainly diffusion weighted and tensor imaging approaches, Q-ball imaging and diffusion spectrum imaging techniques have become more widely available. They are frequently used in research-oriented investigations in particular those aiming at measuring brain network connectivity. In this work, we aim at assessing the dependency of connectivity measurements on various diffusion encoding schemes in combination with appropriate data modeling. We process and compare the structural connection matrices computed from several diffusion encoding schemes, including diffusion tensor imaging, q-ball imaging and high angular resolution schemes, such as diffusion spectrum imaging with a publically available processing pipeline for data reconstruction, tracking and visualization of diffusion MR imaging. The results indicate that the high angular resolution schemes maximize the number of obtained connections when applying identical processing strategies to the different diffusion schemes. Compared to the conventional diffusion tensor imaging, the added connectivity is mainly found for pathways in the 50–100mm range, corresponding to neighboring association fibers and long-range associative, striatal and commissural fiber pathways. The analysis of the major associative fiber tracts of the brain reveals striking differences between the applied diffusion schemes. More complex data modeling techniques (beyond tensor model) are recommended 1) if the tracts of interest run through large fiber crossings such as the centrum semi-ovale, or 2) if non-dominant fiber populations, e.g. the neighboring association fibers are the subject of investigation. An important finding of the study is that since the ground truth sensitivity and specificity is not known, the comparability between results arising from different strategies in data reconstruction and/or tracking becomes implausible to understand.


NeuroImage | 2009

Connectome alterations in schizophrenia

Leila Cammoun; Xavier Gigandet; Olaf Sporns; Jean-Philippe Thiran; P. Deppen; E Krieger; Philippe Maeder; Reto Meuli; Patric Hagmann; P. Bovet; Kim Q. Do

Keywords: LTS5 Reference EPFL-CONF-138672 Record created on 2009-05-29, modified on 2017-05-10


Schizophrenia Research | 2010

GLOBAL AND LOCAL CONNECTIVITY CHANGES IN SCHIZOPHRENIA INVESTIGATED BY DIFFUSION CONNECTOME

Leila Cammoun; Djalel Eddine Meskaldji; Xavier Gigandet; Jean-Philippe Thiran; Reto Meuli; Michel Cuenod; Patric Hagmann; Thi Kim Do

Keywords: Diffusion, LTS5 Reference EPFL-CONF-164457doi:10.1016/j.schres.2010.02.324View record in Web of Science Record created on 2011-03-25, modified on 2017-05-10


Proceedings of 16th Annual Meeting of the ISMRM | 2008

Quantitative Validation of MR Tractography Using the CoCoMac Database

Patric Hagmann; Xavier Gigandet; Reto Meuli; Rolf Kötter; Olaf Sporns; Van J. Wedeen

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Reto Meuli

University Hospital of Lausanne

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Jean-Philippe Thiran

École Polytechnique Fédérale de Lausanne

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Leila Cammoun

École Polytechnique Fédérale de Lausanne

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Olaf Sporns

Indiana University Bloomington

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Maciej Kurant

École Polytechnique Fédérale de Lausanne

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