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      Accuracy of gait and posture classification using movement sensors in individuals with mobility impairment after stroke

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          Abstract

          Background: Stroke leads to motor impairment which reduces physical activity, negatively affects social participation, and increases the risk of secondary cardiovascular events. Continuous monitoring of physical activity with motion sensors is promising to allow the prescription of tailored treatments in a timely manner. Accurate classification of gait activities and body posture is necessary to extract actionable information for outcome measures from unstructured motion data. We here develop and validate a solution for various sensor configurations specifically for a stroke population.

          Methods: Video and movement sensor data (locations: wrists, ankles, and chest) were collected from fourteen stroke survivors with motor impairment who performed real-life activities in their home environment. Video data were labeled for five classes of gait and body postures and three classes of transitions that served as ground truth. We trained support vector machine (SVM), logistic regression (LR), and k-nearest neighbor (kNN) models to identify gait bouts only or gait and posture. Model performance was assessed by the nested leave-one-subject-out protocol and compared across five different sensor placement configurations.

          Results: Our method achieved very good performance when predicting real-life gait versus non-gait ( Gait classification) with an accuracy between 85% and 93% across sensor configurations, using SVM and LR modeling. On the much more challenging task of discriminating between the body postures lying, sitting, and standing as well as walking, and stair ascent/descent ( Gait and postures classification), our method achieves accuracies between 80% and 86% with at least one ankle and wrist sensor attached unilaterally. The Gait and postures classification performance between SVM and LR was equivalent but superior to kNN.

          Conclusion: This work presents a comparison of performance when classifying Gait and body postures in post-stroke individuals with different sensor configurations, which provide options for subsequent outcome evaluation. We achieved accurate classification of gait and postures performed in a real-life setting by individuals with a wide range of motor impairments due to stroke. This validated classifier will hopefully prove a useful resource to researchers and clinicians in the increasingly important field of digital health in the form of remote movement monitoring using motion sensors.

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          Most cited references71

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          Evolution of accelerometer methods for physical activity research.

          The technology and application of current accelerometer-based devices in physical activity (PA) research allow the capture and storage or transmission of large volumes of raw acceleration signal data. These rich data not only provide opportunities to improve PA characterisation, but also bring logistical and analytic challenges. We discuss how researchers and developers from multiple disciplines are responding to the analytic challenges and how advances in data storage, transmission and big data computing will minimise logistical challenges. These new approaches also bring the need for several paradigm shifts for PA researchers, including a shift from count-based approaches and regression calibrations for PA energy expenditure (PAEE) estimation to activity characterisation and EE estimation based on features extracted from raw acceleration signals. Furthermore, a collaborative approach towards analytic methods is proposed to facilitate PA research, which requires a shift away from multiple independent calibration studies. Finally, we make the case for a distinction between PA represented by accelerometer-based devices and PA assessed by self-report. Published by the BMJ Publishing Group Limited. For permission to use (where not already granted under a licence) please go to http://group.bmj.com/group/rights-licensing/permissions.
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            Activity identification using body-mounted sensors--a review of classification techniques.

            With the advent of miniaturized sensing technology, which can be body-worn, it is now possible to collect and store data on different aspects of human movement under the conditions of free living. This technology has the potential to be used in automated activity profiling systems which produce a continuous record of activity patterns over extended periods of time. Such activity profiling systems are dependent on classification algorithms which can effectively interpret body-worn sensor data and identify different activities. This article reviews the different techniques which have been used to classify normal activities and/or identify falls from body-worn sensor data. The review is structured according to the different analytical techniques and illustrates the variety of approaches which have previously been applied in this field. Although significant progress has been made in this important area, there is still significant scope for further work, particularly in the application of advanced classification techniques to problems involving many different activities.
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              Human movement variability, nonlinear dynamics, and pathology: is there a connection?

              Fields studying movement generation, including robotics, psychology, cognitive science, and neuroscience utilize concepts and tools related to the pervasiveness of variability in biological systems. The concept of variability and the measures for nonlinear dynamics used to evaluate this concept open new vistas for research in movement dysfunction of many types. This review describes innovations in the exploration of variability and their potential importance in understanding human movement. Far from being a source of error, evidence supports the presence of an optimal state of variability for healthy and functional movement. This variability has a particular organization and is characterized by a chaotic structure. Deviations from this state can lead to biological systems that are either overly rigid and robotic or noisy and unstable. Both situations result in systems that are less adaptable to perturbations, such as those associated with unhealthy pathological states or absence of skillfulness. Copyright © 2011 Elsevier B.V. All rights reserved.
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                Author and article information

                Contributors
                Journal
                Front Physiol
                Front Physiol
                Front. Physiol.
                Frontiers in Physiology
                Frontiers Media S.A.
                1664-042X
                26 September 2022
                2022
                : 13
                : 933987
                Affiliations
                [1] 1 Department of Neurology , University of Zurich and University Hospital Zurich , Zurich, Switzerland
                [2] 2 Department of Rehabilitation Sciences , KU Leuven—University of Leuven , Leuven, Belgium
                [3] 3 Department of Computer Science , ETH Zurich , Zurich, Switzerland
                [4] 4 Neurocenter, Luzerner Kantonsspital , Lucerne, Switzerland
                [5] 5 Cereneo, Center for Neurology and Rehabilitation , Vitznau, Switzerland
                [6] 6 Cereneo Foundation , Center for Interdisciplinary Research (CEFIR) , Vitznau, Switzerland
                Author notes

                Edited by: Mohamed Irfan Mohamed Refai, University of Twente, Netherlands

                Reviewed by: Mannes Poel, University of Twente, Netherlands

                Pablo Monteagudo, University of Jaume I, Spain

                Stephen Redmond, University College Dublin, Ireland

                *Correspondence: Johannes Pohl, johannes.pohl@ 123456usz.ch
                [ † ]

                These authors share first authorship

                [ ‡ ]

                These authors have contributed equally to this work and share last authorship

                This article was submitted to Physio-logging, a section of the journal Frontiers in Physiology

                Article
                933987
                10.3389/fphys.2022.933987
                9549863
                36225292
                08f68f0c-33f7-4756-bb8b-d4c4b98fb750
                Copyright © 2022 Pohl, Ryser, Veerbeek, Verheyden, Vogt, Luft and Easthope.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 01 May 2022
                : 29 August 2022
                Categories
                Physiology
                Original Research

                Anatomy & Physiology
                physical activity,body posture,gait,real-life,movement sensor,stroke
                Anatomy & Physiology
                physical activity, body posture, gait, real-life, movement sensor, stroke

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