Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data

Abstract Parkinson's disease (PD) is currently an ongoing challenge in daily clinical medicine. To reduce diagnosis time and arduousness and even assess PD levels, a temporal pyramid attention‐based spatiotemporal (PAST) fusion model for diagnosis of PD is produced by using gait data from groun...

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Main Authors: Xiaomin Pei, Huijie Fan, Yandong Tang
Format: Article
Language:English
Published: Wiley 2021-04-01
Series:IET Signal Processing
Online Access:https://doi.org/10.1049/sil2.12018
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spelling doaj-58ee7f85ae764565a2b9de9bd94c32c92021-08-02T08:25:06ZengWileyIET Signal Processing1751-96751751-96832021-04-01152808710.1049/sil2.12018Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait dataXiaomin Pei0Huijie Fan1Yandong Tang2School of Information and Control Engineering Liaoning Shihua University Fushun ChinaState Key Laboratory of Robotics Shenyang Institute of Automation Chinese Academy of Sciences Shenyang ChinaState Key Laboratory of Robotics Shenyang Institute of Automation Chinese Academy of Sciences Shenyang ChinaAbstract Parkinson's disease (PD) is currently an ongoing challenge in daily clinical medicine. To reduce diagnosis time and arduousness and even assess PD levels, a temporal pyramid attention‐based spatiotemporal (PAST) fusion model for diagnosis of PD is produced by using gait data from ground reaction forces. This model is innovative in two aspects. First, by using the temporal pyramid attention module, multiscale temporal attention is obtained from raw sequences. Second, 1D convolutional neural network and bidirectional long short‐term memory layers are used together to learn spatial fusion features from multiple channels in the spatial domain to obtain multichannel, multiscale fusion features. Experiments are performed on the PhysioBank data set, and the results show that the proposed PAST model outperforms other state‐of‐the‐art methods on classification results. This model can assist in the diagnosis and treatment of PD by using gait data.https://doi.org/10.1049/sil2.12018
collection DOAJ
language English
format Article
sources DOAJ
author Xiaomin Pei
Huijie Fan
Yandong Tang
spellingShingle Xiaomin Pei
Huijie Fan
Yandong Tang
Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
IET Signal Processing
author_facet Xiaomin Pei
Huijie Fan
Yandong Tang
author_sort Xiaomin Pei
title Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
title_short Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
title_full Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
title_fullStr Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
title_full_unstemmed Temporal pyramid attention‐based spatiotemporal fusion model for Parkinson's disease diagnosis from gait data
title_sort temporal pyramid attention‐based spatiotemporal fusion model for parkinson's disease diagnosis from gait data
publisher Wiley
series IET Signal Processing
issn 1751-9675
1751-9683
publishDate 2021-04-01
description Abstract Parkinson's disease (PD) is currently an ongoing challenge in daily clinical medicine. To reduce diagnosis time and arduousness and even assess PD levels, a temporal pyramid attention‐based spatiotemporal (PAST) fusion model for diagnosis of PD is produced by using gait data from ground reaction forces. This model is innovative in two aspects. First, by using the temporal pyramid attention module, multiscale temporal attention is obtained from raw sequences. Second, 1D convolutional neural network and bidirectional long short‐term memory layers are used together to learn spatial fusion features from multiple channels in the spatial domain to obtain multichannel, multiscale fusion features. Experiments are performed on the PhysioBank data set, and the results show that the proposed PAST model outperforms other state‐of‐the‐art methods on classification results. This model can assist in the diagnosis and treatment of PD by using gait data.
url https://doi.org/10.1049/sil2.12018
work_keys_str_mv AT xiaominpei temporalpyramidattentionbasedspatiotemporalfusionmodelforparkinsonsdiseasediagnosisfromgaitdata
AT huijiefan temporalpyramidattentionbasedspatiotemporalfusionmodelforparkinsonsdiseasediagnosisfromgaitdata
AT yandongtang temporalpyramidattentionbasedspatiotemporalfusionmodelforparkinsonsdiseasediagnosisfromgaitdata
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