Applying federated learning in the detection of freezing of gait in Parkinson’s disease
J. Jorge, P. H. Barros, R. Yokoyama, D. Guidoni, H. S. Ramos, N. Fonseca, L. Villas
ARTIGO
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Agradecimentos: "Part of the results presented in this article were camed out as part of the project "Hub de Inteligência Artificial em Saúdee Bem-Estar– VIVA BEM" funded by Samsung Eletrônica da Amazônia Ltda, under the terms of IT Law (Federal Law 8.248/91)." "Part of the results presented in this...
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Agradecimentos: "Part of the results presented in this article were camed out as part of the project "Hub de Inteligência Artificial em Saúdee Bem-Estar– VIVA BEM" funded by Samsung Eletrônica da Amazônia Ltda, under the terms of IT Law (Federal Law 8.248/91)." "Part of the results presented in this article were camed out as part of the project "Hub de Inteligência Artificial em Saúdee Bem-Estar– VIVA BEM" funded by Samsung Eletrônica da Amazônia Ltda, under the terms of IT Law (Federal Law 8.248/91)"
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Este artigo foi apresentado no evento IEEE/ACM 15th International Conference on Utility and Cloud Computing (UCC), 2022
Abstract: Freezing of Gait (FoG) is a motor symptom of Parkinson’s disease, which causes an episodic inability to move in patients, negatively affecting their daily activities. So, it is vital to monitor and alert the FoG manifestation to help these patients. This study considers two major...
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Abstract: Freezing of Gait (FoG) is a motor symptom of Parkinson’s disease, which causes an episodic inability to move in patients, negatively affecting their daily activities. So, it is vital to monitor and alert the FoG manifestation to help these patients. This study considers two major constraints for developing a healthcare application for FoG: the difficulty of collecting enough representative data and the privacy of the data collected from these participants. Therefore, we propose a Federated Learning (FL) healthcare application for wearable devices to detect FoG symptoms. We evaluate and compare the proposed model to a centralized machine learning approach. We employed a dataset with imbalanced classes of 10 patients with PD to train and test both models. The results show that the accuracy differs by just 1% from that of the centralized model and by 5% from when using the imbalanced training subsets after applying the SMOTETomek’s balanced technique
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DOI: https://doi.org/10.1109/ucc56403.2022.00037
Texto completo: https://ieeexplore.ieee.org/document/10061806
Applying federated learning in the detection of freezing of gait in Parkinson’s disease
J. Jorge, P. H. Barros, R. Yokoyama, D. Guidoni, H. S. Ramos, N. Fonseca, L. Villas
Applying federated learning in the detection of freezing of gait in Parkinson’s disease
J. Jorge, P. H. Barros, R. Yokoyama, D. Guidoni, H. S. Ramos, N. Fonseca, L. Villas
Fontes
Proceedings of the 15th International Conference on Utility and Cloud Computing - Fonte avulsa) Piscataway, NJ : Institute of Electrical and Electronics Engineers, 2022. |