Connectionists: CfP: Call for Paper Frontiers in Neuroscience: Special Issue "Graph Learning for Brain Imaging"

Feng Liu liufengchaos at gmail.com
Tue Aug 17 10:15:03 EDT 2021


Dear Colleague,

We are writing to you know that we are organizing a special issue "Graph
Learning for Brain Imaging" in Frontiers in Neuroscience (impact factor
4.7). We believe this is a timely issue to showcase the new developments
using graph representation, deep learning on graph-structured data to
address important brain imaging and computational neuroscience problems.

*Link*:
https://www.frontiersin.org/research-topics/23683/graph-learning-for-brain-imaging


*Keywords*: Brain Networks, Graph Neural Networks, Brain Imaging, Graph
Embedding, Multi-Modal Imaging.


*Topics*: We are looking for original, high-quality submissions on
innovative research and developments in the analysis of brain imaging using
graph learning techniques. Topics of interest include (but are not limited
to):

• Graph neural networks (GNN) for network neuroscience applications
• Graph neural network for brain mapping and data integration
• Graph convolution network (GCN) for brain disorder classification
• (Dynamic) Functional brain networks
• Brain networks development trajectories
• Graphical model for brain imaging data analysis
• Spatial-temporal brain network modeling
• Graph embedding and graph representation learning
• Information fusion for brain networks from multiple modalities or scales
(fMRI, M/EEG, DTI, PET, genetics)
• Generative graph models in brain imaging
• Brain network inference: scalable, online, and from non-linear
relationships
• Machine learning over graphs: kernel-based techniques, clustering
methods, scalable algorithms for brain imaging
• A few-shot learning for learning from limited brain data
• Graph federated learning for brain imaging

*Important Dates*:
Abstract: 30-Sep-2021
Full paper: 30-Dec-2021

*Background:*

Unprecedented collections of large-scale brain imaging data, such as MRI,
PET, fMRI, M/EEG, DTI, etc. provide a unique opportunity to deepen our
understanding of the brain working mechanisms, improve prognostic
predictions for mental disorders, and tailor personalized treatment plans
for brain diseases. Recent advances in machine learning and large-scale
brain imaging data collection, storage, and sharing lead to a series of
novel interdisciplinary approaches among the fields of computational
neuroscience, signal processing, deep learning, brain imaging, cognitive
science, and computational psychiatry, among which graph learning provides
a valuable means to address important questions in brain imaging.

Graph learning refers to designing effective machine learning and deep
learning methods extracting important information from graphs or exploiting
the graph structure in the data to guide the knowledge discovery. Given the
complex data structure in different imaging modalities as well as the
networked organizational structure of the human brain, novel learning
methods based on graphs inferred from imaging data, graph regularizations
for the data, and graph embedding of the recorded data, have shown great
promise in modeling the interactions of multiple brain regions, information
fusion among networks derived from different brain imaging modalities,
latent space modeling of the high dimensional brain networks, and
quantifying topological neurobiomarkers. The goal of this Research Topic is
to synergize the start-of-the-art discoveries in terms of new computational
brain imaging models and insights of brain mechanisms through the lens of
brain networks and graph learning.


--On Behalf of all the Guest Editors

Feng Liu, Stevens Institute of Technology, Hoboken, NJ, USA

Yu Zhang, Lehigh University, Bethlehem, PA, USA
Jordi Solé-Casals, Universitat de Vic - Universitat Central de
Catalunya, Barcelona, SpainIslem Rekik, Istanbul Technical University,
Istanbul, TurkeyYehia Massoud, King Abdullah University of Science and
Technology, Thuwal, Saudi Arabia
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