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** Apologies for cross-posting** CFP:

Special Session on "Deep learning for brain data"
2019 International Joint Conference on Neural Networks (IJCNN)
July 14-19 2019, Budapest, Hungary
https://sites.google.com/view/dl4brain

Important Dates:
Paper submission: 15 December 2018
Notification of acceptance: 30 January 2019

Aims and Scope:
Structural and Functional techniques to investigate brain, such as MRI, CT
scan, fMRI, EEG, PET, are nowadays widely used both for basic research (for
instance on cognition) or for clinical purposes (for instance diagnosis of
brain based disorders). In the past two decades, scientists have tried to
use these techniques to study brain functioning, to investigate human
cognition, to assist the diagnosis of brain-based disorders, and to try to
predict the prognosis of patients.
Unfortunately, the attempts to find a technique that achieve results with
the potential to be translated to daily practice have not succeeded due to
the presence of complex, distributed and subtle individual differences that
are difficult to detect using standard statistical techniques.
Very recently, this research field witnessed an exponential increased
interest in the application of Machine Learning (ML) methods, and in
particular of Deep Learning (DL), to brain data to support researchers in
the study of cognition and to support clinicians in the diagnosis and
prognosis of brain-based disorders. To date, applications of ML/DL
techniques to brain data is still an under-investigated field of research.

The aim of this special session is twofold: first, it provides a point of
contact between scientists and researchers from the machine learning and
medical communities (medicine, neuroscience, psychology, psychophysiology,
etc.), encouraging a multidisciplinary view on open problems.
Second, it provides a forum to present original ideas, theories and novel
applications of ML/DL to brain data, and to find solutions to open issues.
Topics that are of interest to this session include, but are not limited to:
- Presentation of new structural and functional brain data databases;
- Computer vision applied to MRI, fMRI, DTI, PET;
- Time series analysis applied to EEG;
- New advancement in Deep Learning algorithms for brain data;
- Application of Deep Learning to brain data to study cognition (e.g.,
attention, language, memory, decision making, problem solving, spatial
abilities);
- Application of Deep Learning to brain data for clinical diagnosis and
prognosis of psychiatric and neurologic disorders;
- Application of Deep Learning to brain data for identification of risk
factors of neurologic and psychiatric disorders;
- Application of Deep Learning to evaluate the impact of inter-scanner
variability on the results;
- Multicentric studies on brain MRI data;
- Integrating functional and structural information to enhance clinical
diagnosis and prognosis;
- Integrating functional and structural information to enhance the
understanding of cognitive processes;

Submission:
- For paper guidelines please visit
https://www.ijcnn.org/paper-submission-guidelines
- For submissions please select the single topic "S10. Deep learning for
brain data" from the "S. SPECIAL SESSIONS" category as the main research
topic on https://ieee-cis.org/conferences/ijcnn2019/upload.php

Organisers:
- Nicolò Navarin, University of Padova, Italy ([log in to unmask])
- Cristina Scarpazza, University of Padova, Italy (
[log in to unmask])
- Merylin Monaro, University of Padova, Italy ([log in to unmask])
For any enquire, please write to: nnavarin [at] math.unipd.it,
cristina.scarpazza [at] unipd.it or merylin.monaro [at] unipd.it

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