A scalable federated learning solution for secondary care using low-cost microcomputing: privacy-preserving development and evaluation of a COVID-19 screening test in UK hospitals
<p><b>Background</b></p> Multicentre training could reduce biases in medical artificial intelligence (AI); however, ethical, legal, and technical considerations can constrain the ability of hospitals to share data. Federated learning enables institutions to participate in alg...
Egile Nagusiak: | Soltan, AS, Thakur, A, Yang, J, Chauhan, A, D'Cruz, LG, Dickson, P, Soltan, MA, Thickett, DR, Eyre, DW, Zhu, T, Clifton, DA |
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Formatua: | Journal article |
Hizkuntza: | English |
Argitaratua: |
Elsevier
2024
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