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Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning

Substantial information related to human cerebral conditions can be decoded through various noninvasive evaluating techniques like fMRI. Exploration of the neuronal activity of the human brain can divulge the thoughts of a person like what the subject is perceiving, thinking, or visualizing. Further...

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Autores principales: Qureshi, Muhammad Bilal, Azad, Laraib, Qureshi, Muhammad Shuaib, Aslam, Sheraz, Aljarbouh, Ayman, Fayaz, Muhammad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8904097/
https://www.ncbi.nlm.nih.gov/pubmed/35273647
http://dx.doi.org/10.1155/2022/1124927
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author Qureshi, Muhammad Bilal
Azad, Laraib
Qureshi, Muhammad Shuaib
Aslam, Sheraz
Aljarbouh, Ayman
Fayaz, Muhammad
author_facet Qureshi, Muhammad Bilal
Azad, Laraib
Qureshi, Muhammad Shuaib
Aslam, Sheraz
Aljarbouh, Ayman
Fayaz, Muhammad
author_sort Qureshi, Muhammad Bilal
collection PubMed
description Substantial information related to human cerebral conditions can be decoded through various noninvasive evaluating techniques like fMRI. Exploration of the neuronal activity of the human brain can divulge the thoughts of a person like what the subject is perceiving, thinking, or visualizing. Furthermore, deep learning techniques can be used to decode the multifaceted patterns of the brain in response to external stimuli. Existing techniques are capable of exploring and classifying the thoughts of the human subject acquired by the fMRI imaging data. fMRI images are the volumetric imaging scans which are highly dimensional as well as require a lot of time for training when fed as an input in the deep learning network. However, the hassle for more efficient learning of highly dimensional high-level features in less training time and accurate interpretation of the brain voxels with less misclassification error is needed. In this research, we propose an improved CNN technique where features will be functionally aligned. The optimal features will be selected after dimensionality reduction. The highly dimensional feature vector will be transformed into low dimensional space for dimensionality reduction through autoadjusted weights and combination of best activation functions. Furthermore, we solve the problem of increased training time by using Swish activation function, making it denser and increasing efficiency of the model in less training time. Finally, the experimental results are evaluated and compared with other classifiers which demonstrated the supremacy of the proposed model in terms of accuracy.
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spelling pubmed-89040972022-03-09 Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning Qureshi, Muhammad Bilal Azad, Laraib Qureshi, Muhammad Shuaib Aslam, Sheraz Aljarbouh, Ayman Fayaz, Muhammad Comput Math Methods Med Research Article Substantial information related to human cerebral conditions can be decoded through various noninvasive evaluating techniques like fMRI. Exploration of the neuronal activity of the human brain can divulge the thoughts of a person like what the subject is perceiving, thinking, or visualizing. Furthermore, deep learning techniques can be used to decode the multifaceted patterns of the brain in response to external stimuli. Existing techniques are capable of exploring and classifying the thoughts of the human subject acquired by the fMRI imaging data. fMRI images are the volumetric imaging scans which are highly dimensional as well as require a lot of time for training when fed as an input in the deep learning network. However, the hassle for more efficient learning of highly dimensional high-level features in less training time and accurate interpretation of the brain voxels with less misclassification error is needed. In this research, we propose an improved CNN technique where features will be functionally aligned. The optimal features will be selected after dimensionality reduction. The highly dimensional feature vector will be transformed into low dimensional space for dimensionality reduction through autoadjusted weights and combination of best activation functions. Furthermore, we solve the problem of increased training time by using Swish activation function, making it denser and increasing efficiency of the model in less training time. Finally, the experimental results are evaluated and compared with other classifiers which demonstrated the supremacy of the proposed model in terms of accuracy. Hindawi 2022-03-01 /pmc/articles/PMC8904097/ /pubmed/35273647 http://dx.doi.org/10.1155/2022/1124927 Text en Copyright © 2022 Muhammad Bilal Qureshi et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Qureshi, Muhammad Bilal
Azad, Laraib
Qureshi, Muhammad Shuaib
Aslam, Sheraz
Aljarbouh, Ayman
Fayaz, Muhammad
Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title_full Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title_fullStr Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title_full_unstemmed Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title_short Brain Decoding Using fMRI Images for Multiple Subjects through Deep Learning
title_sort brain decoding using fmri images for multiple subjects through deep learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8904097/
https://www.ncbi.nlm.nih.gov/pubmed/35273647
http://dx.doi.org/10.1155/2022/1124927
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