Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/106023
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dc.contributorDepartment of Industrial and Systems Engineeringen_US
dc.contributorResearch Institute for Advanced Manufacturingen_US
dc.creatorLi, Zen_US
dc.creatorLi, Men_US
dc.creatorLi, Aen_US
dc.creatorLin, Zen_US
dc.date.accessioned2024-04-29T06:12:14Z-
dc.date.available2024-04-29T06:12:14Z-
dc.identifier.issn0360-8352en_US
dc.identifier.urihttp://hdl.handle.net/10397/106023-
dc.language.isoenen_US
dc.publisherElsevier Ltden_US
dc.subjectBlockchainen_US
dc.subjectPrivacy protectionen_US
dc.subjectSmart contracten_US
dc.subjectWorkflow modelingen_US
dc.titleBlockchain-based collaborative data analysis framework for distributed medical knowledge extractionen_US
dc.typeJournal/Magazine Articleen_US
dc.identifier.volume190en_US
dc.identifier.doi10.1016/j.cie.2024.110099en_US
dcterms.abstractTo ensure the privacy preservation and transparent use of regulated medical big data at decentralized and distributed medical institutions, this paper proposes a blockchain-based collaborative data analysis framework to realize multiparty secure data sharing and cooperative medical knowledge extraction through a transparent and regulatory machine learning approach. A smart contract is employed on the blockchain as the underlying technique to realize autonomous control and transparent regulation of closed-loop data acquisition and analysis. Considering the execution complexity of smart contracts for analysis collaboration, Petri net is adopted to formulize the workflows of smart contracts, and it acts as the underlying on-chain learning (OcL) approach. Finally, an experimental case study is conducted using real-life medical data to verify and evaluate the effectiveness and efficiency of our framework. A prototype system is established to demonstrate the real-life distributed knowledge extraction demand of our cooperating company. Four groups of experiments are designed and conducted to determine the effectiveness and efficiency of the learning process. The results show that the proposed framework significantly outperforms federated learning (FL) in terms of accuracy on small datasets, where the framework achieves an accuracy of 55.050% compared to FL. Meanwhile, the framework exhibits superior convergence in loss compared to FL, with a difference of 76.663%. In the case of big datasets, the framework achieves a faster completion of model training by 58.883%, with lower CPU utilization by 44.023% and lower memory utilization by 16.227% compared to FL.en_US
dcterms.accessRightsembargoed accessen_US
dcterms.bibliographicCitationComputers and industrial engineering, Apr. 2024, v. 190, 110099en_US
dcterms.isPartOfComputers and industrial engineeringen_US
dcterms.issued2024-04-
dc.identifier.eissn1879-0550en_US
dc.identifier.artn110099en_US
dc.description.validate202404 bcchen_US
dc.description.oaNot applicableen_US
dc.identifier.FolderNumbera2690-
dc.identifier.SubFormID48062-
dc.description.fundingSourceRGCen_US
dc.description.fundingSourceOthersen_US
dc.description.fundingTextNatural Science Foundation of Guangdong Province; National Natural Science Foundation of China; Guangzhou Philosophy and Social Science Programen_US
dc.description.pubStatusPublisheden_US
dc.date.embargo2027-04-30en_US
dc.description.oaCategoryGreen (AAM)en_US
Appears in Collections:Journal/Magazine Article
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Embargo End Date 2027-04-30
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