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Measuring gait quality in Parkinson’s disease through real-time gait phase recognition

Articolo
Data di Pubblicazione:
2018
Citazione:
Mileti, I., Germanotta, M., Di Sipio, E., Imbimbo, I., Pacilli, A., Erra, C., Petracca, M., Rossi, S. F., Del Prete, Z., Bentivoglio, A. R., Padua, L., Palermo, E., Measuring gait quality in Parkinson’s disease through real-time gait phase recognition, <>, 2018; 18 (3): 1-16. [doi:10.3390/s18030919] [http://hdl.handle.net/10807/119057]
Abstract:
Monitoring gait quality in daily activities through wearable sensors has the potential to improve medical assessment in Parkinson’s Disease (PD). In this study, four gait partitioning methods, two based on thresholds and two based on a machine learning approach, considering the four-phase model, were compared. The methods were tested on 26 PD patients, both in OFF and ON levodopa conditions, and 11 healthy subjects, during walking tasks. All subjects were equipped with inertial sensors placed on feet. Force resistive sensors were used to assess reference time sequence of gait phases. Goodness Index (G) was evaluated to assess accuracy in gait phases estimation. A novel synthetic index called Gait Phase Quality Index (GPQI) was proposed for gait quality assessment. Results revealed optimum performance (G < 0.25) for three tested methods and good performance (0.25 < G < 0.70) for one threshold method. The GPQI resulted significantly higher in PD patients than in healthy subjects, showing a moderate correlation with clinical scales score. Furthermore, in patients with severe gait impairment, GPQI was found higher in OFF than in ON state. Our results unveil the possibility of monitoring gait quality in PD through real-time gait partitioning based on wearable sensors.
Tipologia CRIS:
Articolo in rivista, Nota a sentenza
Keywords:
Gait phases recognition; Gait quality; Machine learning; Motor fluctuations; Parkinson’s disease; Wearable sensor system; Analytical Chemistry; Atomic and Molecular Physics, and Optics; Biochemistry; Instrumentation; Electrical and Electronic Engineering
Elenco autori:
Mileti, Ilaria; Germanotta, Marco; Di Sipio, Enrica; Imbimbo, Isabella; Pacilli, Alessandra; Erra, Carmen; Petracca, Martina; Rossi, Stefano Fabio; Del Prete, Zaccaria; Bentivoglio, Anna Rita; Padua, Luca; Palermo, Eduardo
Link alla scheda completa:
https://publicatt.unicatt.it/handle/10807/119057
Link al Full Text:
https://publicatt.unicatt.it//retrieve/handle/10807/119057/682652/sensors-18-00919.pdf
Pubblicato in:
SENSORS
Journal
  • Dati Generali
  • Aree Di Ricerca

Dati Generali

URL

http://www.mdpi.com/1424-8220/18/3/919/pdf

Aree Di Ricerca

Settori (2)


LS5_11 - Neurological disorders (e.g. Alzheimer's disease, Huntington's disease, Parkinson's disease) - (2011)

Settore MED/26 - NEUROLOGIA
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