Autores
Sánchez Fernández Luis Pastor
Ornelas Vences Christopher
Sánchez Pérez Luis Alejandro
Garza Rodríguez Alejandro
Título Fuzzy inference model evaluating turn for Parkinson’s disease patients
Tipo Revista
Sub-tipo JCR
Descripción Computers in Biology and Medicine, Elsevier
Resumen Parkinson's disease is a chronic illness that affects motor skills. The Unified Parkinson's Disease Rating Scale sponsored by the Movement Disorder Society (MDS-UPDRS) quantifies the current state of the disease based on clinician's observations. In this scale, turning is part of the gait assessment, yet specific guidelines on which features to observe and rate are still unclear. What is more, only visual impairment detection is used as the main subjective rating tool. In this respect, four biomechanical features are extracted from sensors worn on the lower limbs in this work. Afterwards, a turning assessment score is computed by means of a fuzzy inference model constructed based on the examiners knowledge. Overall, 46 patients with varying motor impairment severity underwent a full MDS-UPDRS motor examination and were monitored using a measurement system that includes inertial sensors on each ankle. Turning rating scores computed are reasonably consistent with examiners opinions.Nevertheless, the model proposed herein will always output the same score given the same inputs; whereas the subjective nature of examiners observations translates into uncertainty and variability in the rating scores. Furthermore, the continuous scale implemented in this work prevents the floor/ceiling effect inherent of discrete scales
Observaciones DOI 10.1016/j.compbiomed.2017.08.026
Lugar Oxford
País Reino Unido
No. de páginas 379-388
Vol. / Cap. v. 89
Inicio 2017-10-01
Fin
ISBN/ISSN