Abstract
Goal: In this paper we investigated the use of smartphone sensors and Artificial Intelligence techniques for the automatic quantification of the MDS-UPDRS-Part III Leg Agility (LA) task, representative of lower limb bradykinesia. Methods: We collected inertial data from 93 PD subjects. Four expert neurologists provided clinical evaluations. We employed a novel Artificial Neural Network approach in order to get a continuous output, going beyond the MDS-UPDRS score discretization. Results: We found a Pearson correlation of 0.92 between algorithm output and average clinical score, compared to an inter-rater agreement index of 0.88. Furthermore, the classification error was less than 0.5 scale point in about 80% cases. Conclusions: We proposed an objective and reliable tool for the automatic quantification of the MDS-UPDRS Leg Agility task. In perspective, this tool is part of a larger monitoring program to be carried out during activities of daily living, and managed by the patients themselves.
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Borzì, L., Varrecchia, M., Sibille, S., Olmo, G., Artusi, C. A., Fabbri, M., … Lopiano, L. (2020). Smartphone-based estimation of item 3.8 of the MDS-UPDRS-III for assessing leg agility in people with parkinson’s disease. IEEE Open Journal of Engineering in Medicine and Biology, 1, 140–147. https://doi.org/10.1109/OJEMB.2020.2993463
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