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Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation

Smart healthcare relies on artificial intelligence (AI) functions for learning and analysis of patient data. Since large and diverse datasets for training of Machine Learning (ML) models can rarely be found in individual medical centers, classical centralized AI requires moving privacy-sensitive dat...

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Autores principales: Camajori Tedeschini, Bernardo, Savazzi, Stefano, Stoklasa, Roman, Barbieri, Luca, Stathopoulos, Ioannis, Nicoli, Monica, Serio, Luigi
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1109/access.2022.3141913
http://cds.cern.ch/record/2842572
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author Camajori Tedeschini, Bernardo
Savazzi, Stefano
Stoklasa, Roman
Barbieri, Luca
Stathopoulos, Ioannis
Nicoli, Monica
Serio, Luigi
author_facet Camajori Tedeschini, Bernardo
Savazzi, Stefano
Stoklasa, Roman
Barbieri, Luca
Stathopoulos, Ioannis
Nicoli, Monica
Serio, Luigi
author_sort Camajori Tedeschini, Bernardo
collection CERN
description Smart healthcare relies on artificial intelligence (AI) functions for learning and analysis of patient data. Since large and diverse datasets for training of Machine Learning (ML) models can rarely be found in individual medical centers, classical centralized AI requires moving privacy-sensitive data from medical institutions to data centers that process the fused information. Training on data centers thus requires higher communication resource/energy demands while violating privacy. This is considered today as a significant bottleneck in pursuing scientific collaboration across trans-national clinical medical research centers. Recently, federated learning (FL) has emerged as a distributed AI approach that enables the cooperative training of ML models, without the need of sharing patient data. This paper dives into the analysis of different FL methods and proposes a real-time distributed networking framework based on the Message Queuing Telemetry Transport (MQTT) protocol. In particular, we design a number of solutions for ML over networks, based on FL tools relying on a parameter server (PS) and fully decentralized paradigms driven by consensus methods. The proposed approach is validated in the context of brain tumor segmentation, using a modified version of the popular U-NET model with representative clinical datasets obtained from the daily clinical workflow. The FL process is implemented on multiple physically separated machines located in different countries and communicating over the Internet. The real-time test-bed is used to obtain measurements of training accuracy vs. latency trade-offs, and to highlight key operational conditions that affect the performance in real deployments.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28425722023-03-22T13:24:18Zdoi:10.1109/access.2022.3141913http://cds.cern.ch/record/2842572engCamajori Tedeschini, BernardoSavazzi, StefanoStoklasa, RomanBarbieri, LucaStathopoulos, IoannisNicoli, MonicaSerio, LuigiDecentralized Federated Learning for Healthcare Networks: A Case Study on Tumor SegmentationHealth Physics and Radiation EffectsSmart healthcare relies on artificial intelligence (AI) functions for learning and analysis of patient data. Since large and diverse datasets for training of Machine Learning (ML) models can rarely be found in individual medical centers, classical centralized AI requires moving privacy-sensitive data from medical institutions to data centers that process the fused information. Training on data centers thus requires higher communication resource/energy demands while violating privacy. This is considered today as a significant bottleneck in pursuing scientific collaboration across trans-national clinical medical research centers. Recently, federated learning (FL) has emerged as a distributed AI approach that enables the cooperative training of ML models, without the need of sharing patient data. This paper dives into the analysis of different FL methods and proposes a real-time distributed networking framework based on the Message Queuing Telemetry Transport (MQTT) protocol. In particular, we design a number of solutions for ML over networks, based on FL tools relying on a parameter server (PS) and fully decentralized paradigms driven by consensus methods. The proposed approach is validated in the context of brain tumor segmentation, using a modified version of the popular U-NET model with representative clinical datasets obtained from the daily clinical workflow. The FL process is implemented on multiple physically separated machines located in different countries and communicating over the Internet. The real-time test-bed is used to obtain measurements of training accuracy vs. latency trade-offs, and to highlight key operational conditions that affect the performance in real deployments.oai:cds.cern.ch:28425722022
spellingShingle Health Physics and Radiation Effects
Camajori Tedeschini, Bernardo
Savazzi, Stefano
Stoklasa, Roman
Barbieri, Luca
Stathopoulos, Ioannis
Nicoli, Monica
Serio, Luigi
Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title_full Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title_fullStr Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title_full_unstemmed Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title_short Decentralized Federated Learning for Healthcare Networks: A Case Study on Tumor Segmentation
title_sort decentralized federated learning for healthcare networks: a case study on tumor segmentation
topic Health Physics and Radiation Effects
url https://dx.doi.org/10.1109/access.2022.3141913
http://cds.cern.ch/record/2842572
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