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Task-Oriented Intelligent Solution to Measure Parkinson’s Disease Tremor Severity

2021· article· en· 6 citations· W3201221629 sur OpenAlex· 10.1155/2021/9624386

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Dossier post-publication

Nature
Retraction
Motif
Concerns/Issues about Data;Concerns/Issues about Results and/or Conclusions;Concerns/Issues about Referencing/Attributions;Concerns/Issues about Peer Review;Investigation by Journal/Publisher;Investigation by Third Party;Paper Mill;Computer-Aided Content or Computer-Generated Content;Unreliable Results and/or Conclusions;
Date
11/1/2023 0:00
Signalé par OpenAlex ?
Oui

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Résumé

Tremor is a common symptom of Parkinson's disease (PD). Currently, tremor is evaluated clinically based on MDS-UPDRS Rating Scale, which is inaccurate, subjective, and unreliable. Precise assessment of tremor severity is the key to effective treatment to alleviate the symptom. Therefore, several objective methods have been proposed for measuring and quantifying PD tremor from data collected while patients performing scripted and unscripted tasks. However, up to now, the literature appears to focus on suggesting tremor severity classification methods without discrimination tasks effect on classification and tremor severity measurement. In this study, a novel approach to identify a recommended system is used to measure tremor severity, including the influence of tasks performed during data collection on classification performance. The recommended system comprises recommended tasks, classifier, classifier hyperparameters, and resampling technique. The proposed approach is based on the above-average rule of five advanced metrics results of four subdatasets, six resampling techniques, six classifiers besides signal processing, and features extraction techniques. The results of this study indicate that tasks that do not involve direct wrist movements are better than tasks that involve direct wrist movements for tremor severity measurements. Furthermore, resampling techniques improve classification performance significantly. The findings of this study suggest that a recommended system consists of support vector machine (SVM) classifier combined with BorderlineSMOTE oversampling technique and data collection while performing set of recommended tasks, which are sitting, stairs up and down, walking straight, walking while counting, and standing.

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La notice

Revue
Journal of Healthcare Engineering
Thématique
Parkinson's Disease Mechanisms and Treatments
Domaine
Medicine
Établissements canadiens
Organismes subventionnaires
Trent UniversityNottingham Trent UniversityMichael J. Fox Foundation for Parkinson's Research
Mots-clés
Computer sciencePhysical medicine and rehabilitationArtificial intelligenceSupport vector machineResamplingMachine learningMedicine
Résumé présent dans OpenAlex
oui