Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD
Deep learning algorithms have been successful in tackling a wide range of problems in different fields, but lack of interpretability and their reliance on large data limits their performance on brain imaging applications. Tailored deep learning solutions need to be developed for the analysis of bo...
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sg-ntu-dr.10356-1549862022-02-02T08:01:58Z Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD Abhay Mallikarjun Somaradhya Aradhya Mahardhika Pratama School of Computer Science and Engineering mpratama@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Deep learning algorithms have been successful in tackling a wide range of problems in different fields, but lack of interpretability and their reliance on large data limits their performance on brain imaging applications. Tailored deep learning solutions need to be developed for the analysis of both the spatial and temporal activities of the brain. In this thesis, novel data driven deep learning approaches have been proposed to increase feature separability, optimize deep learning network topology, improve classification performance and provide interpretability. The proposed approaches have achieved a 10% improvement in classification performance over previous methods on the ADHD200 dataset. Further, the spatio-temporal relationship between the independent brain regions have been analyzed to determine the causal factors of ADHD. The deep learning approaches proposed in this thesis play a vital role in the analysis of spatio-temporal data and can be adapted in other fields with similar challenges. Doctor of Philosophy 2022-01-24T02:43:11Z 2022-01-24T02:43:11Z 2022 Thesis-Doctor of Philosophy Abhay Mallikarjun Somaradhya Aradhya (2022). Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/154986 https://hdl.handle.net/10356/154986 10.32657/10356/154986 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Abhay Mallikarjun Somaradhya Aradhya Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
description |
Deep learning algorithms have been successful in tackling a wide range of problems in different fields,
but lack of interpretability and their reliance on large data limits their performance on brain imaging
applications. Tailored deep learning solutions need to be developed for the analysis of both the spatial
and temporal activities of the brain. In this thesis, novel data driven deep learning approaches have been
proposed to increase feature separability, optimize deep learning network topology, improve
classification performance and provide interpretability. The proposed approaches have achieved a 10%
improvement in classification performance over previous methods on the ADHD200 dataset. Further,
the spatio-temporal relationship between the independent brain regions have been analyzed to determine
the causal factors of ADHD. The deep learning approaches proposed in this thesis play a vital role in
the analysis of spatio-temporal data and can be adapted in other fields with similar challenges. |
author2 |
Mahardhika Pratama |
author_facet |
Mahardhika Pratama Abhay Mallikarjun Somaradhya Aradhya |
format |
Thesis-Doctor of Philosophy |
author |
Abhay Mallikarjun Somaradhya Aradhya |
author_sort |
Abhay Mallikarjun Somaradhya Aradhya |
title |
Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
title_short |
Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
title_full |
Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
title_fullStr |
Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
title_full_unstemmed |
Deep neural networks for spatio-temporal analysis of rs-fMRI in ADHD |
title_sort |
deep neural networks for spatio-temporal analysis of rs-fmri in adhd |
publisher |
Nanyang Technological University |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/154986 |
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1724626863143256064 |