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dc.contributor.authorDimitriou, Neofytos
dc.contributor.authorArandelovic, Oggie
dc.contributor.authorHarrison, David James
dc.date.accessioned2024-03-01T14:30:04Z
dc.date.available2024-03-01T14:30:04Z
dc.date.issued2024-03-01
dc.identifier299561061
dc.identifier005dd15c-1e9e-4a5b-b317-aee286972b2d
dc.identifier85187442795
dc.identifier.citationDimitriou , N , Arandelovic , O & Harrison , D J 2024 , ' Magnifying networks for histopathological images with billions of pixels ' , Diagnostics , vol. 14 , no. 5 , 524 . https://doi.org/10.3390/diagnostics14050524en
dc.identifier.issn2075-4418
dc.identifier.otherORCID: /0000-0001-9041-9988/work/154531735
dc.identifier.urihttps://hdl.handle.net/10023/29400
dc.description.abstractAmongst the other benefits conferred by the shift from traditional to digital pathology is the potential to use machine learning for diagnosis, prognosis, and personalization. A major challenge in the realization of this potential emerges from the extremely large size of digitized images, which are often in excess of 100,000 × 100,000 pixels. In this paper, we tackle this challenge head-on by diverging from the existing approaches in the literature—which rely on the splitting of the original images into small patches—and introducing magnifying networks (MagNets). By using an attention mechanism, MagNets identify the regions of the gigapixel image that benefit from an analysis on a finer scale. This process is repeated, resulting in an attention-driven coarse-to-fine analysis of only a small portion of the information contained in the original whole-slide images. Importantly, this is achieved using minimal ground truth annotation, namely, using only global, slide-level labels. The results from our tests on the publicly available Camelyon16 and Camelyon17 datasets demonstrate the effectiveness of MagNets—as well as the proposed optimization framework—in the task of whole-slide image classification. Importantly, MagNets process at least five times fewer patches from each whole-slide image than any of the existing end-to-end approaches.
dc.format.extent21
dc.format.extent24688206
dc.language.isoeng
dc.relation.ispartofDiagnosticsen
dc.subjectHistologyen
dc.subjectHistopathologyen
dc.subjectDeep learningen
dc.subjectWhole slide imageen
dc.subjectDigital pathologyen
dc.subjectGigapixel imagesen
dc.subjectTissue heterogeneityen
dc.subjectPrecision medicineen
dc.subjectR Medicineen
dc.subject3rd-DASen
dc.subject.lccRen
dc.titleMagnifying networks for histopathological images with billions of pixelsen
dc.typeJournal articleen
dc.contributor.institutionUniversity of St Andrews. Sir James Mackenzie Institute for Early Diagnosisen
dc.contributor.institutionUniversity of St Andrews. Cellular Medicine Divisionen
dc.contributor.institutionUniversity of St Andrews. School of Medicineen
dc.contributor.institutionUniversity of St Andrews. School of Computer Scienceen
dc.identifier.doi10.3390/diagnostics14050524
dc.description.statusPeer revieweden


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