A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao

Predicting biological soft tissue interaction is of great interest for developing computer-aided decision systems. This study aims to develop and evaluate a novel deep-learning approach based on the recurrent neural network for predicting facial soft tissue impact with a rubber ball. A computational...

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Main Authors: Nguyen, Ho-Quang, Nguyen, Tan-Nhu, Dao, Tien-Tuan
Format: Article
Language:English
Published: UiTM Press 2024
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Online Access:https://ir.uitm.edu.my/id/eprint/101336/1/101336.pdf
https://ir.uitm.edu.my/id/eprint/101336/
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Institution: Universiti Teknologi Mara
Language: English
id my.uitm.ir.101336
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spelling my.uitm.ir.1013362024-09-03T22:30:20Z https://ir.uitm.edu.my/id/eprint/101336/ A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao jmeche Nguyen, Ho-Quang Nguyen, Tan-Nhu Dao, Tien-Tuan Neural networks (Computer science) QM Human anatomy Predicting biological soft tissue interaction is of great interest for developing computer-aided decision systems. This study aims to develop and evaluate a novel deep-learning approach based on the recurrent neural network for predicting facial soft tissue impact with a rubber ball. A computational workflow was established including a subject-specific finite element model of the facial soft tissue under interaction with the rubber ball. A series of simulations under different ball velocities was performed to build the learning database. We implemented a long-short-term memory (LSTM) model and then evaluated its performance using root mean square error (RMSE) and regression coefficient metrics. The obtained results showed a RMSE of 3.13 mm and a Pearson correlation coefficient of 0.98 for soft tissue displacement prediction. A RMSE of 0.001 MPa and a Pearson correlation coefficient of 0.94 was also obtained for soft tissue von Mises stress prediction. The present study showed the robustness and accuracy of the recurrent neural network for predicting complex soft tissue interaction behaviours. Our findings open new avenues for deploying novel deep learning workflow for human-facial soft tissue interaction. As perspective, this workflow will be integrated into our interactive facial analysis and rehabilitation system. UiTM Press 2024-09 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/101336/1/101336.pdf A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao. (2024) Journal of Mechanical Engineering (JMechE) <https://ir.uitm.edu.my/view/publication/Journal_of_Mechanical_Engineering_=28JMechE=29/>, 21 (3): 12. pp. 199-214. ISSN 1823-5514 ; 2550-164X
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Neural networks (Computer science)
QM Human anatomy
spellingShingle Neural networks (Computer science)
QM Human anatomy
Nguyen, Ho-Quang
Nguyen, Tan-Nhu
Dao, Tien-Tuan
A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
description Predicting biological soft tissue interaction is of great interest for developing computer-aided decision systems. This study aims to develop and evaluate a novel deep-learning approach based on the recurrent neural network for predicting facial soft tissue impact with a rubber ball. A computational workflow was established including a subject-specific finite element model of the facial soft tissue under interaction with the rubber ball. A series of simulations under different ball velocities was performed to build the learning database. We implemented a long-short-term memory (LSTM) model and then evaluated its performance using root mean square error (RMSE) and regression coefficient metrics. The obtained results showed a RMSE of 3.13 mm and a Pearson correlation coefficient of 0.98 for soft tissue displacement prediction. A RMSE of 0.001 MPa and a Pearson correlation coefficient of 0.94 was also obtained for soft tissue von Mises stress prediction. The present study showed the robustness and accuracy of the recurrent neural network for predicting complex soft tissue interaction behaviours. Our findings open new avenues for deploying novel deep learning workflow for human-facial soft tissue interaction. As perspective, this workflow will be integrated into our interactive facial analysis and rehabilitation system.
format Article
author Nguyen, Ho-Quang
Nguyen, Tan-Nhu
Dao, Tien-Tuan
author_facet Nguyen, Ho-Quang
Nguyen, Tan-Nhu
Dao, Tien-Tuan
author_sort Nguyen, Ho-Quang
title A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
title_short A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
title_full A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
title_fullStr A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
title_full_unstemmed A deep recurrent neural network for predicting subject-specific facial soft tissue interaction / Ho-Quang Nguyen, Tan-Nhu Nguyen and Tien-Tuan Dao
title_sort deep recurrent neural network for predicting subject-specific facial soft tissue interaction / ho-quang nguyen, tan-nhu nguyen and tien-tuan dao
publisher UiTM Press
publishDate 2024
url https://ir.uitm.edu.my/id/eprint/101336/1/101336.pdf
https://ir.uitm.edu.my/id/eprint/101336/
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