Deep fMRI: AN end-to-end deep network for classification of fMRI data

Published: Apr 1, 2018
Abstract
With recent advancements in machine learning, the research community has made tremendous advances towards the classification of neurological disorders from time-series functional MRI signals. However, existing classification techniques rely on hand-crafted features and classical machine learning models. In this paper, we propose an end-to-end model that utilizes the representation learning capability of deep learning to classify a neurological...
Paper Details
Title
Deep fMRI: AN end-to-end deep network for classification of fMRI data
Published Date
Apr 1, 2018
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