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Sökning: id:"swepub:oai:lup.lub.lu.se:dfa00e67-b9b4-475c-b673-0f7467c02374" > Decentralized Feder...

Decentralized Federated Learning for Epileptic Seizures Detection in Low-Power Wearable Systems

Baghersalimi, Saleh (författare)
Swiss Federal Institute of Technology
Teijeiro, Tomas (författare)
Basque Center of Applied Mathematics
Aminifar, Amir (författare)
Lund University,Lunds universitet,Bredbandskommunikation,Forskargrupper vid Lunds universitet,LTH profilområde: AI och digitalisering,LTH profilområden,Lunds Tekniska Högskola,LTH profilområde: Teknik för hälsa,LU profilområde: Naturlig och artificiell kognition,Lunds universitets profilområden,LTH profilområde: Vatten,Broadband Communication,Lund University Research Groups,LTH Profile Area: AI and Digitalization,LTH Profile areas,Faculty of Engineering, LTH,LTH Profile Area: Engineering Health,Faculty of Engineering, LTH,LU Profile Area: Natural and Artificial Cognition,Lund University Profile areas,LTH Profile Area: Water,Faculty of Engineering, LTH
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Atienza, David (författare)
Swiss Federal Institute of Technology
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 (creator_code:org_t)
2023
2023
Engelska 16 s.
Ingår i: IEEE Transactions on Mobile Computing. - 1536-1233. ; , s. 1-16
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
Stäng  
  • In healthcare, data privacy of patients regulations prohibits data from being moved outside the hospital, preventing international medical datasets from being centralized for AI training. Federated learning (FL) is a data privacy-focused method that trains a global model by aggregating local models from hospitals. Existing FL techniques adopt a central server-based network topology, where the server assembles the local models trained in each hospital to create a global model. However, the server could be a point of failure, and models trained in FL usually have worse performance than those trained in the centralized learning manner when the patient's data are not independent and identically distributed (Non-IID) in the hospitals. This paper presents a decentralized FL framework, including training with adaptive ensemble learning and a deployment phase using knowledge distillation. The adaptive ensemble learning step in the training phase leads to the acquisition of a specific model for each hospital that is the optimal combination of local models and models from other available hospitals. This step solves the non-IID challenges in each hospital. The deployment phase adjusts the model's complexity to meet the resource constraints of wearable systems. We evaluated the performance of our approach on edge computing platforms using EPILEPSIAE and TUSZ databases, which are public epilepsy datasets.

Ämnesord

NATURVETENSKAP  -- Data- och informationsvetenskap -- Annan data- och informationsvetenskap (hsv//swe)
NATURAL SCIENCES  -- Computer and Information Sciences -- Other Computer and Information Science (hsv//eng)

Nyckelord

Brain modeling
Data models
Deep learning
Electrocardiogram
Electrocardiography
Electroencephalography
Epilepsy
Federated Learning
Hospitals
Knowledge distillation
Multi-biosignal processing
Seizure detection
Servers
Training
Wearable systems

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