Learning Generative Factors of Neuroimaging Data with Variational
auto-encoders
- URL: http://arxiv.org/abs/2206.01939v1
- Date: Sat, 4 Jun 2022 08:23:25 GMT
- Title: Learning Generative Factors of Neuroimaging Data with Variational
auto-encoders
- Authors: Maksim Zhdanov, Saskia Steinmann and Nico Hoffmann
- Abstract summary: We apply the framework of generative modelling to classify multiple pathologies and recover neurological mechanisms of those pathologies in a data-driven manner.
We demonstrate the ability of the framework to learn disease-related mechanisms consistent with current domain knowledge.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Neuroimaging techniques produce high-dimensional, stochastic data from which
it might be challenging to extract high-level knowledge about the phenomena of
interest. We address this challenge by applying the framework of generative
modelling to 1) classify multiple pathologies, 2) recover neurological
mechanisms of those pathologies in a data-driven manner and 3) learn robust
representations of neuroimaging data. We illustrate the applicability of the
proposed approach to identifying schizophrenia, either followed or not by
auditory verbal hallucinations. We further demonstrate the ability of the
framework to learn disease-related mechanisms that are consistent with current
domain knowledge. We also compare the proposed framework with several benchmark
approaches and indicate its advantages.
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