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Continual learning framework for a multicenter study with an application to electrocardiogram

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dc.contributor.authorKim, Junmo-
dc.contributor.authorLim, Min Hyuk-
dc.contributor.authorKim, Kwangsoo-
dc.contributor.authorYoon, Hyung-Jin-
dc.date.accessioned2024-03-13T02:27:22Z-
dc.date.available2024-03-13T11:28:26Z-
dc.date.issued2024-03-06-
dc.identifier.citationBMC Medical Informatics and Decision Making, Vol.24 no.67ko_KR
dc.identifier.issn1472-6947-
dc.identifier.urihttps://hdl.handle.net/10371/199115-
dc.description.abstractDeep learning has been increasingly utilized in the medical field and achieved many goals. Since the size of data dominates the performance of deep learning, several medical institutions are conducting joint research to obtain as much data as possible. However, sharing data is usually prohibited owing to the risk of privacy invasion. Federated learning is a reasonable idea to train distributed multicenter data without direct access; however, a central server to merge and distribute models is needed, which is expensive and hardly approved due to various legal regulations. This paper proposes a continual learning framework for a multicenter study, which does not require a central server and can prevent catastrophic forgetting of previously trained knowledge. The proposed framework contains the continual learning method selection process, assuming that a single method is not omnipotent for all involved datasets in a real-world setting and that there could be a proper method to be selected for specific data. We utilized the fake data based on a generative adversarial network to evaluate methods prospectively, not ex post facto. We used four independent electrocardiogram datasets for a multicenter study and trained the arrhythmia detection model. Our proposed framework was evaluated against supervised and federated learning methods, as well as finetuning approaches that do not include any regulation to preserve previous knowledge. Even without a central server and access to the past data, our framework achieved stable performance (AUROC 0.897) across all involved datasets, achieving comparable performance to federated learning (AUROC 0.901).ko_KR
dc.language.isoenko_KR
dc.publisherBMCko_KR
dc.subjectMulticenter study-
dc.subjectDeep learning-
dc.subjectContinual learning-
dc.subjectElectrocardiogram-
dc.titleContinual learning framework for a multicenter study with an application to electrocardiogramko_KR
dc.typeArticleko_KR
dc.identifier.doi10.1186/s12911-024-02464-9ko_KR
dc.citation.journaltitleBMC Medical Informatics and Decision Makingko_KR
dc.language.rfc3066en-
dc.rights.holderThe Author(s)-
dc.date.updated2024-03-10T04:09:08Z-
dc.citation.endpage13ko_KR
dc.citation.number67ko_KR
dc.citation.startpage1ko_KR
dc.citation.volume24ko_KR
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