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Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning

Recent advances in stroke treatment have provided effective tools to successfully treat ischemic stroke, but still a majority of patients are not treated due to late arrival to hospital. With modern stroke treatment, earlier arrival would greatly improve the overall treatment results. This prospecti...

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Autores principales: Wasselius, Johan, Lyckegård Finn, Eric, Persson, Emma, Ericson, Petter, Brogårdh, Christina, Lindgren, Arne G., Ullberg, Teresa, Åström, Kalle
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8659933/
https://www.ncbi.nlm.nih.gov/pubmed/34883800
http://dx.doi.org/10.3390/s21237784
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author Wasselius, Johan
Lyckegård Finn, Eric
Persson, Emma
Ericson, Petter
Brogårdh, Christina
Lindgren, Arne G.
Ullberg, Teresa
Åström, Kalle
author_facet Wasselius, Johan
Lyckegård Finn, Eric
Persson, Emma
Ericson, Petter
Brogårdh, Christina
Lindgren, Arne G.
Ullberg, Teresa
Åström, Kalle
author_sort Wasselius, Johan
collection PubMed
description Recent advances in stroke treatment have provided effective tools to successfully treat ischemic stroke, but still a majority of patients are not treated due to late arrival to hospital. With modern stroke treatment, earlier arrival would greatly improve the overall treatment results. This prospective study was performed to asses the capability of bilateral accelerometers worn in bracelets 24/7 to detect unilateral arm paralysis, a hallmark symptom of stroke, early enough to receive treatment. Classical machine learning algorithms as well as state-of-the-art deep neural networks were evaluated on detection times between 15 min and 120 min. Motion data were collected using triaxial accelerometer bracelets worn on both arms for 24 h. Eighty-four stroke patients with unilateral arm motor impairment and 101 healthy subjects participated in the study. Accelerometer data were divided into data windows of different lengths and analyzed using multiple machine learning algorithms. The results show that all algorithms performed well in separating the two groups early enough to be clinically relevant, based on wrist-worn accelerometers. The two evaluated deep learning models, fully convolutional network and InceptionTime, performed better than the classical machine learning models with an AUC score between 0.947–0.957 on 15 min data windows and up to 0.993–0.994 on 120 min data windows. Window lengths longer than 90 min only marginally improved performance. The difference in performance between the deep learning models and the classical models was statistically significant according to a non-parametric Friedman test followed by a post-hoc Nemenyi test. Introduction of wearable stroke detection devices may dramatically increase the portion of stroke patients eligible for revascularization and shorten the time to treatment. Since the treatment effect is highly time-dependent, early stroke detection may dramatically improve stroke outcomes.
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spelling pubmed-86599332021-12-10 Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning Wasselius, Johan Lyckegård Finn, Eric Persson, Emma Ericson, Petter Brogårdh, Christina Lindgren, Arne G. Ullberg, Teresa Åström, Kalle Sensors (Basel) Article Recent advances in stroke treatment have provided effective tools to successfully treat ischemic stroke, but still a majority of patients are not treated due to late arrival to hospital. With modern stroke treatment, earlier arrival would greatly improve the overall treatment results. This prospective study was performed to asses the capability of bilateral accelerometers worn in bracelets 24/7 to detect unilateral arm paralysis, a hallmark symptom of stroke, early enough to receive treatment. Classical machine learning algorithms as well as state-of-the-art deep neural networks were evaluated on detection times between 15 min and 120 min. Motion data were collected using triaxial accelerometer bracelets worn on both arms for 24 h. Eighty-four stroke patients with unilateral arm motor impairment and 101 healthy subjects participated in the study. Accelerometer data were divided into data windows of different lengths and analyzed using multiple machine learning algorithms. The results show that all algorithms performed well in separating the two groups early enough to be clinically relevant, based on wrist-worn accelerometers. The two evaluated deep learning models, fully convolutional network and InceptionTime, performed better than the classical machine learning models with an AUC score between 0.947–0.957 on 15 min data windows and up to 0.993–0.994 on 120 min data windows. Window lengths longer than 90 min only marginally improved performance. The difference in performance between the deep learning models and the classical models was statistically significant according to a non-parametric Friedman test followed by a post-hoc Nemenyi test. Introduction of wearable stroke detection devices may dramatically increase the portion of stroke patients eligible for revascularization and shorten the time to treatment. Since the treatment effect is highly time-dependent, early stroke detection may dramatically improve stroke outcomes. MDPI 2021-11-23 /pmc/articles/PMC8659933/ /pubmed/34883800 http://dx.doi.org/10.3390/s21237784 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wasselius, Johan
Lyckegård Finn, Eric
Persson, Emma
Ericson, Petter
Brogårdh, Christina
Lindgren, Arne G.
Ullberg, Teresa
Åström, Kalle
Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title_full Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title_fullStr Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title_full_unstemmed Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title_short Detection of Unilateral Arm Paresis after Stroke by Wearable Accelerometers and Machine Learning
title_sort detection of unilateral arm paresis after stroke by wearable accelerometers and machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8659933/
https://www.ncbi.nlm.nih.gov/pubmed/34883800
http://dx.doi.org/10.3390/s21237784
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