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A systematic review of federated learning applications for biomedical data

OBJECTIVES: Federated learning (FL) allows multiple institutions to collaboratively develop a machine learning algorithm without sharing their data. Organizations instead share model parameters only, allowing them to benefit from a model built with a larger dataset while maintaining the privacy of t...

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Autores principales: Crowson, Matthew G., Moukheiber, Dana, Arévalo, Aldo Robles, Lam, Barbara D., Mantena, Sreekar, Rana, Aakanksha, Goss, Deborah, Bates, David W., Celi, Leo Anthony
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931322/
https://www.ncbi.nlm.nih.gov/pubmed/36812504
http://dx.doi.org/10.1371/journal.pdig.0000033
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author Crowson, Matthew G.
Moukheiber, Dana
Arévalo, Aldo Robles
Lam, Barbara D.
Mantena, Sreekar
Rana, Aakanksha
Goss, Deborah
Bates, David W.
Celi, Leo Anthony
author_facet Crowson, Matthew G.
Moukheiber, Dana
Arévalo, Aldo Robles
Lam, Barbara D.
Mantena, Sreekar
Rana, Aakanksha
Goss, Deborah
Bates, David W.
Celi, Leo Anthony
author_sort Crowson, Matthew G.
collection PubMed
description OBJECTIVES: Federated learning (FL) allows multiple institutions to collaboratively develop a machine learning algorithm without sharing their data. Organizations instead share model parameters only, allowing them to benefit from a model built with a larger dataset while maintaining the privacy of their own data. We conducted a systematic review to evaluate the current state of FL in healthcare and discuss the limitations and promise of this technology. METHODS: We conducted a literature search using PRISMA guidelines. At least two reviewers assessed each study for eligibility and extracted a predetermined set of data. The quality of each study was determined using the TRIPOD guideline and PROBAST tool. RESULTS: 13 studies were included in the full systematic review. Most were in the field of oncology (6 of 13; 46.1%), followed by radiology (5 of 13; 38.5%). The majority evaluated imaging results, performed a binary classification prediction task via offline learning (n = 12; 92.3%), and used a centralized topology, aggregation server workflow (n = 10; 76.9%). Most studies were compliant with the major reporting requirements of the TRIPOD guidelines. In all, 6 of 13 (46.2%) of studies were judged at high risk of bias using the PROBAST tool and only 5 studies used publicly available data. CONCLUSION: Federated learning is a growing field in machine learning with many promising uses in healthcare. Few studies have been published to date. Our evaluation found that investigators can do more to address the risk of bias and increase transparency by adding steps for data homogeneity or sharing required metadata and code.
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spelling pubmed-99313222023-02-16 A systematic review of federated learning applications for biomedical data Crowson, Matthew G. Moukheiber, Dana Arévalo, Aldo Robles Lam, Barbara D. Mantena, Sreekar Rana, Aakanksha Goss, Deborah Bates, David W. Celi, Leo Anthony PLOS Digit Health Research Article OBJECTIVES: Federated learning (FL) allows multiple institutions to collaboratively develop a machine learning algorithm without sharing their data. Organizations instead share model parameters only, allowing them to benefit from a model built with a larger dataset while maintaining the privacy of their own data. We conducted a systematic review to evaluate the current state of FL in healthcare and discuss the limitations and promise of this technology. METHODS: We conducted a literature search using PRISMA guidelines. At least two reviewers assessed each study for eligibility and extracted a predetermined set of data. The quality of each study was determined using the TRIPOD guideline and PROBAST tool. RESULTS: 13 studies were included in the full systematic review. Most were in the field of oncology (6 of 13; 46.1%), followed by radiology (5 of 13; 38.5%). The majority evaluated imaging results, performed a binary classification prediction task via offline learning (n = 12; 92.3%), and used a centralized topology, aggregation server workflow (n = 10; 76.9%). Most studies were compliant with the major reporting requirements of the TRIPOD guidelines. In all, 6 of 13 (46.2%) of studies were judged at high risk of bias using the PROBAST tool and only 5 studies used publicly available data. CONCLUSION: Federated learning is a growing field in machine learning with many promising uses in healthcare. Few studies have been published to date. Our evaluation found that investigators can do more to address the risk of bias and increase transparency by adding steps for data homogeneity or sharing required metadata and code. Public Library of Science 2022-05-19 /pmc/articles/PMC9931322/ /pubmed/36812504 http://dx.doi.org/10.1371/journal.pdig.0000033 Text en © 2022 Crowson et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Crowson, Matthew G.
Moukheiber, Dana
Arévalo, Aldo Robles
Lam, Barbara D.
Mantena, Sreekar
Rana, Aakanksha
Goss, Deborah
Bates, David W.
Celi, Leo Anthony
A systematic review of federated learning applications for biomedical data
title A systematic review of federated learning applications for biomedical data
title_full A systematic review of federated learning applications for biomedical data
title_fullStr A systematic review of federated learning applications for biomedical data
title_full_unstemmed A systematic review of federated learning applications for biomedical data
title_short A systematic review of federated learning applications for biomedical data
title_sort systematic review of federated learning applications for biomedical data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931322/
https://www.ncbi.nlm.nih.gov/pubmed/36812504
http://dx.doi.org/10.1371/journal.pdig.0000033
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