Cargando…

Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back

INTRODUCTION: Inertial measurement units (IMUs) positioned on various body locations allow detailed gait analysis even under unconstrained conditions. From a medical perspective, the assessment of vulnerable populations is of particular relevance, especially in the daily-life environment. Gait analy...

Descripción completa

Detalles Bibliográficos
Autores principales: Pham, Minh H., Elshehabi, Morad, Haertner, Linda, Del Din, Silvia, Srulijes, Karin, Heger, Tanja, Synofzik, Matthis, Hobert, Markus A., Faber, Gert S., Hansen, Clint, Salkovic, Dina, Ferreira, Joaquim J., Berg, Daniela, Sanchez-Ferro, Álvaro, van Dieën, Jaap H., Becker, Clemens, Rochester, Lynn, Schmidt, Gerhard, Maetzler, Walter
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5591331/
https://www.ncbi.nlm.nih.gov/pubmed/28928711
http://dx.doi.org/10.3389/fneur.2017.00457
_version_ 1783262692501356544
author Pham, Minh H.
Elshehabi, Morad
Haertner, Linda
Del Din, Silvia
Srulijes, Karin
Heger, Tanja
Synofzik, Matthis
Hobert, Markus A.
Faber, Gert S.
Hansen, Clint
Salkovic, Dina
Ferreira, Joaquim J.
Berg, Daniela
Sanchez-Ferro, Álvaro
van Dieën, Jaap H.
Becker, Clemens
Rochester, Lynn
Schmidt, Gerhard
Maetzler, Walter
author_facet Pham, Minh H.
Elshehabi, Morad
Haertner, Linda
Del Din, Silvia
Srulijes, Karin
Heger, Tanja
Synofzik, Matthis
Hobert, Markus A.
Faber, Gert S.
Hansen, Clint
Salkovic, Dina
Ferreira, Joaquim J.
Berg, Daniela
Sanchez-Ferro, Álvaro
van Dieën, Jaap H.
Becker, Clemens
Rochester, Lynn
Schmidt, Gerhard
Maetzler, Walter
author_sort Pham, Minh H.
collection PubMed
description INTRODUCTION: Inertial measurement units (IMUs) positioned on various body locations allow detailed gait analysis even under unconstrained conditions. From a medical perspective, the assessment of vulnerable populations is of particular relevance, especially in the daily-life environment. Gait analysis algorithms need thorough validation, as many chronic diseases show specific and even unique gait patterns. The aim of this study was therefore to validate an acceleration-based step detection algorithm for patients with Parkinson’s disease (PD) and older adults in both a lab-based and home-like environment. METHODS: In this prospective observational study, data were captured from a single 6-degrees of freedom IMU (APDM) (3DOF accelerometer and 3DOF gyroscope) worn on the lower back. Detection of heel strike (HS) and toe off (TO) on a treadmill was validated against an optoelectronic system (Vicon) (11 PD patients and 12 older adults). A second independent validation study in the home-like environment was performed against video observation (20 PD patients and 12 older adults) and included step counting during turning and non-turning, defined with a previously published algorithm. RESULTS: A continuous wavelet transform (cwt)-based algorithm was developed for step detection with very high agreement with the optoelectronic system. HS detection in PD patients/older adults, respectively, reached 99/99% accuracy. Similar results were obtained for TO (99/100%). In HS detection, Bland–Altman plots showed a mean difference of 0.002 s [95% confidence interval (CI) −0.09 to 0.10] between the algorithm and the optoelectronic system. The Bland–Altman plot for TO detection showed mean differences of 0.00 s (95% CI −0.12 to 0.12). In the home-like assessment, the algorithm for detection of occurrence of steps during turning reached 90% (PD patients)/90% (older adults) sensitivity, 83/88% specificity, and 88/89% accuracy. The detection of steps during non-turning phases reached 91/91% sensitivity, 90/90% specificity, and 91/91% accuracy. CONCLUSION: This cwt-based algorithm for step detection measured at the lower back is in high agreement with the optoelectronic system in both PD patients and older adults. This approach and algorithm thus could provide a valuable tool for future research on home-based gait analysis in these vulnerable cohorts.
format Online
Article
Text
id pubmed-5591331
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-55913312017-09-19 Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back Pham, Minh H. Elshehabi, Morad Haertner, Linda Del Din, Silvia Srulijes, Karin Heger, Tanja Synofzik, Matthis Hobert, Markus A. Faber, Gert S. Hansen, Clint Salkovic, Dina Ferreira, Joaquim J. Berg, Daniela Sanchez-Ferro, Álvaro van Dieën, Jaap H. Becker, Clemens Rochester, Lynn Schmidt, Gerhard Maetzler, Walter Front Neurol Neuroscience INTRODUCTION: Inertial measurement units (IMUs) positioned on various body locations allow detailed gait analysis even under unconstrained conditions. From a medical perspective, the assessment of vulnerable populations is of particular relevance, especially in the daily-life environment. Gait analysis algorithms need thorough validation, as many chronic diseases show specific and even unique gait patterns. The aim of this study was therefore to validate an acceleration-based step detection algorithm for patients with Parkinson’s disease (PD) and older adults in both a lab-based and home-like environment. METHODS: In this prospective observational study, data were captured from a single 6-degrees of freedom IMU (APDM) (3DOF accelerometer and 3DOF gyroscope) worn on the lower back. Detection of heel strike (HS) and toe off (TO) on a treadmill was validated against an optoelectronic system (Vicon) (11 PD patients and 12 older adults). A second independent validation study in the home-like environment was performed against video observation (20 PD patients and 12 older adults) and included step counting during turning and non-turning, defined with a previously published algorithm. RESULTS: A continuous wavelet transform (cwt)-based algorithm was developed for step detection with very high agreement with the optoelectronic system. HS detection in PD patients/older adults, respectively, reached 99/99% accuracy. Similar results were obtained for TO (99/100%). In HS detection, Bland–Altman plots showed a mean difference of 0.002 s [95% confidence interval (CI) −0.09 to 0.10] between the algorithm and the optoelectronic system. The Bland–Altman plot for TO detection showed mean differences of 0.00 s (95% CI −0.12 to 0.12). In the home-like assessment, the algorithm for detection of occurrence of steps during turning reached 90% (PD patients)/90% (older adults) sensitivity, 83/88% specificity, and 88/89% accuracy. The detection of steps during non-turning phases reached 91/91% sensitivity, 90/90% specificity, and 91/91% accuracy. CONCLUSION: This cwt-based algorithm for step detection measured at the lower back is in high agreement with the optoelectronic system in both PD patients and older adults. This approach and algorithm thus could provide a valuable tool for future research on home-based gait analysis in these vulnerable cohorts. Frontiers Media S.A. 2017-09-04 /pmc/articles/PMC5591331/ /pubmed/28928711 http://dx.doi.org/10.3389/fneur.2017.00457 Text en Copyright © 2017 Pham, Elshehabi, Haertner, Del Din, Srulijes, Heger, Synofzik, Hobert, Faber, Hansen, Salkovic, Ferreira, Berg, Sanchez-Ferro, van Dieën, Becker, Rochester, Schmidt and Maetzler. http://creativecommons.org/licenses/by/4.0/ 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) or licensor 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.
spellingShingle Neuroscience
Pham, Minh H.
Elshehabi, Morad
Haertner, Linda
Del Din, Silvia
Srulijes, Karin
Heger, Tanja
Synofzik, Matthis
Hobert, Markus A.
Faber, Gert S.
Hansen, Clint
Salkovic, Dina
Ferreira, Joaquim J.
Berg, Daniela
Sanchez-Ferro, Álvaro
van Dieën, Jaap H.
Becker, Clemens
Rochester, Lynn
Schmidt, Gerhard
Maetzler, Walter
Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title_full Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title_fullStr Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title_full_unstemmed Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title_short Validation of a Step Detection Algorithm during Straight Walking and Turning in Patients with Parkinson’s Disease and Older Adults Using an Inertial Measurement Unit at the Lower Back
title_sort validation of a step detection algorithm during straight walking and turning in patients with parkinson’s disease and older adults using an inertial measurement unit at the lower back
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5591331/
https://www.ncbi.nlm.nih.gov/pubmed/28928711
http://dx.doi.org/10.3389/fneur.2017.00457
work_keys_str_mv AT phamminhh validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT elshehabimorad validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT haertnerlinda validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT deldinsilvia validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT srulijeskarin validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT hegertanja validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT synofzikmatthis validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT hobertmarkusa validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT fabergerts validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT hansenclint validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT salkovicdina validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT ferreirajoaquimj validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT bergdaniela validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT sanchezferroalvaro validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT vandieenjaaph validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT beckerclemens validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT rochesterlynn validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT schmidtgerhard validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback
AT maetzlerwalter validationofastepdetectionalgorithmduringstraightwalkingandturninginpatientswithparkinsonsdiseaseandolderadultsusinganinertialmeasurementunitatthelowerback