Machine Learning Approach to Classify Postural Sway Instabilities

Wearable sensing devices have been extensively proposed for monitoring frailty subjects' mobility and related risk of falls. Considering the key-value of instability to assess degenerative diseases such as Parkinson's disease and its impact on the life quality for this class of end-users,...

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Published inIEEE International Instrumentation and Measurement Technology Conference (Online) pp. 01 - 06
Main Authors Ando, Bruno, Baglio, Salvatore, Finocchiaro, Valeria, Marletta, Vincenzo, Rajan, Sreeraman, Nehary, Ebrahim Ali, Dibilio, Valeria, Mostile, Giovanni, Zappia, Mario
Format Conference Proceeding
LanguageEnglish
Published IEEE 22.05.2023
Subjects
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ISSN2642-2077
DOI10.1109/I2MTC53148.2023.10176004

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Abstract Wearable sensing devices have been extensively proposed for monitoring frailty subjects' mobility and related risk of falls. Considering the key-value of instability to assess degenerative diseases such as Parkinson's disease and its impact on the life quality for this class of end-users, reliable solutions that enable a continuous and real time estimation of postural sway might play a fundamental role. In this paper a machine learning approach to classify among 4 different classes of postural behaviors (Standing, Antero-Posterior sway, Medio-Lateral sway, Unstable) is investigated. The classification algorithm is compliant with its implementation in the adopted embedded architecture, which is equipped with sensors and an Artificial Intelligence core. The proposed approach demonstrates suitable performances in terms of accuracy in correctly classifying unknown patterns as belonging to the right postural sway class. An accuracy index higher than 98% and a very promising reliability index better than 98% have been obtained. The robustness of the algorithm with respect to the dataset organization has been also assessed, and a comparative analysis against threshold-based approaches is also presented.
AbstractList Wearable sensing devices have been extensively proposed for monitoring frailty subjects' mobility and related risk of falls. Considering the key-value of instability to assess degenerative diseases such as Parkinson's disease and its impact on the life quality for this class of end-users, reliable solutions that enable a continuous and real time estimation of postural sway might play a fundamental role. In this paper a machine learning approach to classify among 4 different classes of postural behaviors (Standing, Antero-Posterior sway, Medio-Lateral sway, Unstable) is investigated. The classification algorithm is compliant with its implementation in the adopted embedded architecture, which is equipped with sensors and an Artificial Intelligence core. The proposed approach demonstrates suitable performances in terms of accuracy in correctly classifying unknown patterns as belonging to the right postural sway class. An accuracy index higher than 98% and a very promising reliability index better than 98% have been obtained. The robustness of the algorithm with respect to the dataset organization has been also assessed, and a comparative analysis against threshold-based approaches is also presented.
Author Finocchiaro, Valeria
Rajan, Sreeraman
Mostile, Giovanni
Marletta, Vincenzo
Nehary, Ebrahim Ali
Ando, Bruno
Zappia, Mario
Dibilio, Valeria
Baglio, Salvatore
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Snippet Wearable sensing devices have been extensively proposed for monitoring frailty subjects' mobility and related risk of falls. Considering the key-value of...
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StartPage 01
SubjectTerms Behavioral sciences
Estimation
inertial sensor
Machine learning
multi-layer perceptron
Parkinson's disease
postural sway behavior classification
Real-time systems
Robustness
Surveys
system assessment
Title Machine Learning Approach to Classify Postural Sway Instabilities
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