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Read the latest posts

  • New paper: Virtual brain twins: from basic neuroscience to clinical use
  • Congratulations to Prof. Dr. McIntosh & Prof. Dr. Ritter for their new positions as chair & deputy chair of INCF
  • Virtual Brain Twin project funded by European Commission with 10 million €, addressing psychiatric diseases
  • TVB Co-Lead Petra Ritter heading € 60 Mill funded project TEF-Health
  • New Release: TVB version 2.7.1 integrates the siibra & BCT for Python!
  • eBRAIN-Health project awarded funding by European Union!
  • TVB on EBRAINS highlighted in the last CORDIS news!
  • Learn Bayesian Data Analysis with Michael Betancourt, a core developer of Stan & expert on Hamilton Monte Carlo
  • The Virtual Brain: Facility Hub is the official EBRAINS competence center for TVB
  • TVB co-lead Randy McIntosh to advance brain research through new SFU institute for Neuroscience and Neurotechnology!
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  • Published:December 8, 2020

    • Model construction

    LEARN: Human Brain Project (HBP) image processing pipeline for The Virtual Brain

    Tutorial on how to use the image processing pipeline with the HBP collab

    byMichael Burgstahler

  • Published:December 7, 2020

    • Model construction

    LEARN: An automated pipeline for constructing personalized virtual brains from multimodal neuroimaging data

    Related publication

    An automated pipeline for constructing personalized virtual brains from multimodal neuroimaging data, published in NeuroImage, August 2015, by Michael Schirner, Simon Rothmeier, Viktor K. Jirsa, Anthony Randal McIntosh, PetraRitter

    doi: 10.1016/j.neuroimage.2015.03.055

    Abstract

    Large amounts of multimodal neuroimaging data are acquired every year worldwide. In order to extract high-dimensional information for computational neuroscience applications standardized data fusion and efficient reduction into integrative data structures are required.

    Such self-consistent multimodal data sets can be used for computational brain modeling to constrain models with individual measurable features of the brain, such as done with The Virtual Brain (TVB). TVB is a simulation platform that uses empirical structural and functional data to build full brain models of individual humans.

    For convenient model construction, we developed a processing pipeline for structural, functional and diffusion-weighted magnetic resonance imaging (MRI) and optionally electroencephalography (EEG) data.

    The pipeline combines several state-of-the-art neuroinformatics tools to generate subject-specific cortical and subcortical parcellations, surface-tessellations, structural and functional connectomes, lead field matrices, electrical source activity estimates and region-wise aggregated blood oxygen level dependent (BOLD) functional MRI (fMRI) time-series.

    The output files of the pipeline can be directly uploaded to TVB to create and simulate individualized large-scale network models that incorporate intra- and intercortical interaction on the basis of cortical surface triangulations and white matter tractograpy.

    We detail the pitfalls of the individual processing streams and discuss ways of validation. With the pipeline we also introduce novel ways of estimating the transmission strengths of fiber tracts in whole-brain structural connectivity (SC) networks and compare the outcomes of different tractography or parcellation approaches.

    We tested the functionality of the pipeline on 50 multimodal data sets. In order to quantify the robustness of the connectome extraction part of the pipeline we computed several metrics that quantify its rescan reliability and compared them to other tractography approaches.

    Together with the pipeline we present several principles to guide future efforts to standardize brain model construction. The code of the pipeline and the fully processed data sets are made available to the public via The Virtual Brain website (thevirtualbrain.org) and via github (https://github.com/BrainModes/TVB-empirical-data-pipeline).

    Furthermore, the pipeline can be directly used with High Performance Computing (HPC) resources on the Neuroscience Gateway Portal (http://www.nsgportal.org) through a convenient web-interface.

    More resources for this lesson

    GitHub repository with code

    byMichael Burgstahler

  • Published:December 6, 2020

    • Model construction

    LEARN: Import Virtual Brain ready data into TVB and create a brain model

    This tutorial on importing and creating brain models in The Virtual Brain is part of the TVB Node 10 series, a 4 day workshop dedicated to learning about The Virtual Brain, brain imaging, brain simulation, personalised brain models, TVB use cases, etc... TVB is a full brain simulation platform.

    Topics covered in this lesson by Patrik Bey

    • Importing Virtual Brain ready data into TVB
    • Creating brain models in TVB

    byMichael Burgstahler

  • Published:December 5, 2020

    • Model construction

    LEARN: Generating Virtual Brain ready imaging data

    This lecture on generating TVB ready imaging data is part of the TVB Node 10 series, a 4 day workshop dedicated to learning about The Virtual Brain, brain imaging, brain simulation, personalised brain models, TVB use cases, etc. TVB is a full brain simulation platform.

    Topics covered in this lesson by Paul Triebkorn

    • Pipeline overview
    • Structural pre-processing
    • Diffusion pre-processing
    • Functional pre-processing
    • Cortical parcellation
    • MEG/EEG modeling
    • Software and tools

    byMichael Burgstahler

  • Published:December 4, 2020

    • Model construction

    LEARN: Integrated workflows: Image processing pipeline

    Walk through of the Image Processing Pipeline, an integral part of the TVB on EBRAINS integrated workflows

    Topics covered in this lesson by Michael Schirner

    • TVB processing pipelines with KG annotated outputs
    • Software architecture
    • Pipeline APIs
    • Software maturity, integration, testing, versioning & deployment
    • MINDS format
    • Computing requirements
    • Security requirements

    byMichael Burgstahler

  • Published:December 3, 2020

    • Model construction

    LEARN: Automatic TVB model generation workflow

    An overview of the process of constructing models for TVB automatically on the EBRAINS infrastructure

    Topics covered in this lesson by Michiel Van der Vlag and Sandra Diaz

    • RateML
    • Python vs CUDA models XML implementation
    • Parameter Space Exploration on the GPU
    • Current status

    byMichael Burgstahler

  • Published:December 2, 2020

    • Model construction

    LEARN: Constructing personalized models from empirical data

    Brain network reconstruction from empirical data is of key importance to generate personalized virtual brain models. This lecture will introduce the basic concepts of preprocessing structural, functional and diffusion weighted neuroimages. It highlights the latest methods and pipelines to extract structural as well as functional connectomes according to a multimodal parcellation.

    Topics covered in this lesson by Michael Schirner

    • Techniques for neuroimage preprocessing
    • Structural and functional connectome extraction
    • EEG forward modelling

    byMichael Burgstahler

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