OBJECTIVE: In this study, a methodology is presented for an automated levodopa-induced dyskinesia (LID) assessment in patients suffering from Parkinson's disease (PD) under real-life conditions. METHODS AND MATERIAL: The methodology is based on the analysis of signals recorded from several accelerometers and gyroscopes, which are placed on the subjects' body while they were performing a series of standardised motor tasks as well as voluntary movements. Sixteen subjects were enrolled in the study. The recordings were analysed in order to extract several features and, based on these features, a classification technique was used for LID assessment, i.e. detection of LID symptoms and classification of their severity. RESULTS: The results were compared with the clinical annotation of the signals, provided by two expert neurologists. The analysis was performed related to the number and topology of sensors used; several different experimental settings were evaluated while a 10-fold stratified cross validation technique was employed in all cases. Moreover, several different classification techniques were examined. The ability of the methodology to be generalised was also evaluated using leave-one-patient-out cross validation. The sensitivity and positive predictive values (average for all LID severities) were 80.35% and 76.84%, respectively. CONCLUSIONS: The proposed methodology can be applied in real-life conditions since it can perform LID assessment in recordings which include various PD symptoms (such as tremor, dyskinesia and freezing of gait) of several motor tasks and random voluntary movements.
OBJECTIVE: In this study, a methodology is presented for an automated levodopa-induced dyskinesia (LID) assessment in patients suffering from Parkinson's disease (PD) under real-life conditions. METHODS AND MATERIAL: The methodology is based on the analysis of signals recorded from several accelerometers and gyroscopes, which are placed on the subjects' body while they were performing a series of standardised motor tasks as well as voluntary movements. Sixteen subjects were enrolled in the study. The recordings were analysed in order to extract several features and, based on these features, a classification technique was used for LID assessment, i.e. detection of LID symptoms and classification of their severity. RESULTS: The results were compared with the clinical annotation of the signals, provided by two expert neurologists. The analysis was performed related to the number and topology of sensors used; several different experimental settings were evaluated while a 10-fold stratified cross validation technique was employed in all cases. Moreover, several different classification techniques were examined. The ability of the methodology to be generalised was also evaluated using leave-one-patient-out cross validation. The sensitivity and positive predictive values (average for all LID severities) were 80.35% and 76.84%, respectively. CONCLUSIONS: The proposed methodology can be applied in real-life conditions since it can perform LID assessment in recordings which include various PD symptoms (such as tremor, dyskinesia and freezing of gait) of several motor tasks and random voluntary movements.
Authors: M Kelley Erb; Daniel R Karlin; Bryan K Ho; Kevin C Thomas; Federico Parisi; Gloria P Vergara-Diaz; Jean-Francois Daneault; Paul W Wacnik; Hao Zhang; Tairmae Kangarloo; Charmaine Demanuele; Chris R Brooks; Craig N Detheridge; Nina Shaafi Kabiri; Jaspreet S Bhangu; Paolo Bonato Journal: NPJ Digit Med Date: 2020-01-17
Authors: Christopher L Pulliam; Dustin A Heldman; Elizabeth B Brokaw; Thomas O Mera; Zoltan K Mari; Michelle A Burack Journal: IEEE Trans Biomed Eng Date: 2017-04-25 Impact factor: 4.538
Authors: Christiana Ossig; Angelo Antonini; Carsten Buhmann; Joseph Classen; Ilona Csoti; Björn Falkenburger; Michael Schwarz; Jürgen Winkler; Alexander Storch Journal: J Neural Transm (Vienna) Date: 2015-08-08 Impact factor: 3.575
Authors: Stephen L Smith; Michael A Lones; Matthew Bedder; Jane E Alty; Jeremy Cosgrove; Richard J Maguire; Mary Elizabeth Pownall; Diana Ivanoiu; Camille Lyle; Amy Cording; Christopher J H Elliott Journal: IET Syst Biol Date: 2015-12 Impact factor: 1.615