Supervised classification of bradykinesia in Parkinson's disease from smartphone videos
Williams, Stefan and Relton, Samuel D. and Fang, Hui and Alty, Jane and Qahwaji, Rami and Graham, Christopher D. and Wong, David C. (2020) Supervised classification of bradykinesia in Parkinson's disease from smartphone videos. Artificial Intelligence in Medicine, 110. 101966. ISSN 1873-2860 (https://doi.org/10.1016/j.artmed.2020.101966)
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Abstract
Background: Slowness of movement, known as bradykinesia, is the core clinical sign of Parkinson's and fundamental to its diagnosis. Clinicians commonly assess bradykinesia by making a visual judgement of the patient tapping finger and thumb together repetitively. However, inter-rater agreement of expert assessments has been shown to be only moderate, at best. Aim: We propose a low-cost, contactless system using smartphone videos to automatically determine the presence of bradykinesia. Methods: We collected 70 videos of finger-tap assessments in a clinical setting (40 Parkinson's hands, 30 control hands). Two clinical experts in Parkinson's, blinded to the diagnosis, evaluated the videos to give a grade of bradykinesia severity between 0 and 4 using the Unified Pakinson's Disease Rating Scale (UPDRS). We developed a computer vision approach that identifies regions related to hand motion and extracts clinically-relevant features. Dimensionality reduction was undertaken using principal component analysis before input to classification models (Naïve Bayes, Logistic Regression, Support Vector Machine) to predict no/slight bradykinesia (UPDRS = 0–1) or mild/moderate/severe bradykinesia (UPDRS = 2–4), and presence or absence of Parkinson's diagnosis. Results: A Support Vector Machine with radial basis function kernels predicted presence of mild/moderate/severe bradykinesia with an estimated test accuracy of 0.8. A Naïve Bayes model predicted the presence of Parkinson's disease with estimated test accuracy 0.67. Conclusion: The method described here presents an approach for predicting bradykinesia from videos of finger-tapping tests. The method is robust to lighting conditions and camera positioning. On a set of pilot data, accuracy of bradykinesia prediction is comparable to that recorded by blinded human experts.
ORCID iDs
Williams, Stefan, Relton, Samuel D., Fang, Hui, Alty, Jane, Qahwaji, Rami, Graham, Christopher D. ORCID: https://orcid.org/0000-0001-8456-9154 and Wong, David C.;-
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Item type: Article ID code: 84714 Dates: DateEvent30 November 2020Published6 October 2020Published Online2 October 2020AcceptedNotes: Publisher Copyright: © 2020 Elsevier B.V. Subjects: Medicine > Internal medicine > Neuroscience. Biological psychiatry. Neuropsychiatry Department: Faculty of Humanities and Social Sciences (HaSS) > Psychological Sciences and Health > Psychology Depositing user: Pure Administrator Date deposited: 14 Mar 2023 17:24 Last modified: 18 Dec 2024 01:35 Related URLs: URI: https://strathprints.strath.ac.uk/id/eprint/84714