Show simple item record

dc.contributor.authorPuglisi, Lemuel
dc.contributor.authorBarkhof, Frederik
dc.contributor.authorAlexander, Daniel C.
dc.contributor.authorParker, Geoffrey JM
dc.contributor.authorEshaghi, Arman
dc.contributor.authorRavi, Daniele
dc.contributor.editorOguz, Ipek
dc.contributor.editorNoble, Jack
dc.contributor.editorLi, Xiaoxiao
dc.contributor.editorStyner, Martin
dc.contributor.editorBaumgartner, Christian
dc.contributor.editorRusu, Mirabela
dc.contributor.editorHeinmann, Tobias
dc.contributor.editorKontos, Despina
dc.contributor.editorLandman, Bennett
dc.contributor.editorDawant, Benoit
dc.date.accessioned2024-09-23T15:45:00Z
dc.date.available2024-09-23T15:45:00Z
dc.date.issued2023-07-12
dc.identifier.citationPuglisi , L , Barkhof , F , Alexander , D C , Parker , G JM , Eshaghi , A & Ravi , D 2023 , DeepBrainPrint: A Novel Contrastive Framework for Brain MRI Re-Identification . in I Oguz , J Noble , X Li , M Styner , C Baumgartner , M Rusu , T Heinmann , D Kontos , B Landman & B Dawant (eds) , Proceedings of Machine Learning Research : Medical Imaging with Deep Learning . vol. 227 , Proceedings of Machine Learning Research , USA , pp. 716-729 . < http://chrome-extension://efaidnbmnnnibpcajpcglclefindmkaj/https://proceedings.mlr.press/v227/puglisi24a/puglisi24a.pdf >
dc.identifier.issn2640-3498
dc.identifier.otherORCID: /0000-0003-0372-2677/work/158538105
dc.identifier.urihttp://hdl.handle.net/2299/28213
dc.description.abstractRecent advances in MRI have led to the creation of large datasets. With the increase in data volume, it has become difficult to locate previous scans of the same patient within these datasets (a process known as re-identification). To address this issue, we propose an AI-powered medical imaging retrieval framework called DeepBrainPrint, which is designed to retrieve brain MRI scans of the same patient. Our framework is a semi-self-supervised contrastive deep learning approach with three main innovations. First, we use a combination of self-supervised and supervised paradigms to create an effective brain fingerprint from MRI scans that can be used for real-time image retrieval. Second, we use a special weighting function to guide the training and improve model convergence. Third, we introduce new imaging transformations to improve retrieval robustness in the presence of intensity variations (i.e. different scan contrasts), and to account for age and disease progression in patients. We tested DeepBrainPrint on a large dataset of T1-weighted brain MRIs from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) and on a synthetic dataset designed to evaluate retrieval performance with different image modalities. Our results show that DeepBrainPrint outperforms previous methods, including simple similarity metrics and more advanced contrastive deep learning frameworks.en
dc.format.extent14
dc.format.extent16808010
dc.language.isoeng
dc.relation.ispartofProceedings of Machine Learning Research
dc.relation.ispartofseriesProceedings of Machine Learning Research
dc.titleDeepBrainPrint: A Novel Contrastive Framework for Brain MRI Re-Identificationen
dc.contributor.institutionCommunications and Intelligent Systems
dc.contributor.institutionCentre for Engineering Research
dc.contributor.institutionDepartment of Engineering and Technology
dc.contributor.institutionSchool of Physics, Engineering & Computer Science
dc.identifier.urlhttp://chrome-extension://efaidnbmnnnibpcajpcglclefindmkaj/https://proceedings.mlr.press/v227/puglisi24a/puglisi24a.pdf
rioxxterms.typeOther
herts.preservation.rarelyaccessedtrue


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record