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Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease

Dynamic posturography combined with wearable sensors has high sensitivity in recognizing subclinical balance abnormalities in patients with Parkinson’s disease (PD). However, this approach is burdened by a high analytical load for motion analysis, potentially limiting a routine application in clinic...

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Autores principales: Castelli Gattinara Di Zubiena, Francesco, Menna, Greta, Mileti, Ilaria, Zampogna, Alessandro, Asci, Francesco, Paoloni, Marco, Suppa, Antonio, Del Prete, Zaccaria, Palermo, Eduardo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782434/
https://www.ncbi.nlm.nih.gov/pubmed/36560278
http://dx.doi.org/10.3390/s22249903
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author Castelli Gattinara Di Zubiena, Francesco
Menna, Greta
Mileti, Ilaria
Zampogna, Alessandro
Asci, Francesco
Paoloni, Marco
Suppa, Antonio
Del Prete, Zaccaria
Palermo, Eduardo
author_facet Castelli Gattinara Di Zubiena, Francesco
Menna, Greta
Mileti, Ilaria
Zampogna, Alessandro
Asci, Francesco
Paoloni, Marco
Suppa, Antonio
Del Prete, Zaccaria
Palermo, Eduardo
author_sort Castelli Gattinara Di Zubiena, Francesco
collection PubMed
description Dynamic posturography combined with wearable sensors has high sensitivity in recognizing subclinical balance abnormalities in patients with Parkinson’s disease (PD). However, this approach is burdened by a high analytical load for motion analysis, potentially limiting a routine application in clinical practice. In this study, we used machine learning to distinguish PD patients from controls, as well as patients under and not under dopaminergic therapy (i.e., ON and OFF states), based on kinematic measures recorded during dynamic posturography through portable sensors. We compared 52 different classifiers derived from Decision Tree, K-Nearest Neighbor, Support Vector Machine and Artificial Neural Network with different kernel functions to automatically analyze reactive postural responses to yaw perturbations recorded through IMUs in 20 PD patients and 15 healthy subjects. To identify the most efficient machine learning algorithm, we applied three threshold-based selection criteria (i.e., accuracy, recall and precision) and one evaluation criterion (i.e., goodness index). Twenty-one out of 52 classifiers passed the three selection criteria based on a threshold of 80%. Among these, only nine classifiers were considered “optimum” in distinguishing PD patients from healthy subjects according to a goodness index ≤ 0.25. The Fine K-Nearest Neighbor was the best-performing algorithm in the automatic classification of PD patients and healthy subjects, irrespective of therapeutic condition. By contrast, none of the classifiers passed the three threshold-based selection criteria in the comparison of patients in ON and OFF states. Overall, machine learning is a suitable solution for the early identification of balance disorders in PD through the automatic analysis of kinematic data from dynamic posturography.
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spelling pubmed-97824342022-12-24 Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease Castelli Gattinara Di Zubiena, Francesco Menna, Greta Mileti, Ilaria Zampogna, Alessandro Asci, Francesco Paoloni, Marco Suppa, Antonio Del Prete, Zaccaria Palermo, Eduardo Sensors (Basel) Article Dynamic posturography combined with wearable sensors has high sensitivity in recognizing subclinical balance abnormalities in patients with Parkinson’s disease (PD). However, this approach is burdened by a high analytical load for motion analysis, potentially limiting a routine application in clinical practice. In this study, we used machine learning to distinguish PD patients from controls, as well as patients under and not under dopaminergic therapy (i.e., ON and OFF states), based on kinematic measures recorded during dynamic posturography through portable sensors. We compared 52 different classifiers derived from Decision Tree, K-Nearest Neighbor, Support Vector Machine and Artificial Neural Network with different kernel functions to automatically analyze reactive postural responses to yaw perturbations recorded through IMUs in 20 PD patients and 15 healthy subjects. To identify the most efficient machine learning algorithm, we applied three threshold-based selection criteria (i.e., accuracy, recall and precision) and one evaluation criterion (i.e., goodness index). Twenty-one out of 52 classifiers passed the three selection criteria based on a threshold of 80%. Among these, only nine classifiers were considered “optimum” in distinguishing PD patients from healthy subjects according to a goodness index ≤ 0.25. The Fine K-Nearest Neighbor was the best-performing algorithm in the automatic classification of PD patients and healthy subjects, irrespective of therapeutic condition. By contrast, none of the classifiers passed the three threshold-based selection criteria in the comparison of patients in ON and OFF states. Overall, machine learning is a suitable solution for the early identification of balance disorders in PD through the automatic analysis of kinematic data from dynamic posturography. MDPI 2022-12-16 /pmc/articles/PMC9782434/ /pubmed/36560278 http://dx.doi.org/10.3390/s22249903 Text en © 2022 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
Castelli Gattinara Di Zubiena, Francesco
Menna, Greta
Mileti, Ilaria
Zampogna, Alessandro
Asci, Francesco
Paoloni, Marco
Suppa, Antonio
Del Prete, Zaccaria
Palermo, Eduardo
Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title_full Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title_fullStr Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title_full_unstemmed Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title_short Machine Learning and Wearable Sensors for the Early Detection of Balance Disorders in Parkinson’s Disease
title_sort machine learning and wearable sensors for the early detection of balance disorders in parkinson’s disease
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782434/
https://www.ncbi.nlm.nih.gov/pubmed/36560278
http://dx.doi.org/10.3390/s22249903
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