Publication:
ALFREDO: Active Learning with FeatuRe disEntangelement and DOmain adaptation for medical image classification.

cris.virtualsource.author-orcid906070e9-5f44-4fcf-b26c-5e36f8e66f58
dc.contributor.authorMahapatra, Dwarikanath
dc.contributor.authorTennakoon, Ruwan
dc.contributor.authorGeorge, Yasmeen
dc.contributor.authorRoy, Sudipta
dc.contributor.authorBozorgtabar, Behzad
dc.contributor.authorGe, Zongyuan
dc.contributor.authorReyes, Mauricio
dc.date.accessioned2024-10-26T18:33:41Z
dc.date.available2024-10-26T18:33:41Z
dc.date.issued2024-10
dc.description.abstractState-of-the-art deep learning models often fail to generalize in the presence of distribution shifts between training (source) data and test (target) data. Domain adaptation methods are designed to address this issue using labeled samples (supervised domain adaptation) or unlabeled samples (unsupervised domain adaptation). Active learning is a method to select informative samples to obtain maximum performance from minimum annotations. Selecting informative target domain samples can improve model performance and robustness, and reduce data demands. This paper proposes a novel pipeline called ALFREDO (Active Learning with FeatuRe disEntangelement and DOmain adaptation) that performs active learning under domain shift. We propose a novel feature disentanglement approach to decompose image features into domain specific and task specific components. Domain specific components refer to those features that provide source specific information, e.g., scanners, vendors or hospitals. Task specific components are discriminative features for classification, segmentation or other tasks. Thereafter we define multiple novel cost functions that identify informative samples under domain shift. We test our proposed method for medical image classification using one histopathology dataset and two chest X-ray datasets. Experiments show our method achieves state-of-the-art results compared to other domain adaptation methods, as well as state of the art active domain adaptation methods.
dc.description.sponsorshipARTORG Center for Biomedical Engineering Research - Medical Image Analysis
dc.identifier.doi10.48350/199081
dc.identifier.pmid39018722
dc.identifier.publisherDOI10.1016/j.media.2024.103261
dc.identifier.urihttps://boris-portal.unibe.ch/handle/20.500.12422/179217
dc.language.isoen
dc.publisherElsevier
dc.relation.ispartofMedical image analysis
dc.relation.issn1361-8415
dc.relation.organizationDCD5A442BAD6E17DE0405C82790C4DE2
dc.subjectActive learning Domain adaptation Feature disentanglement Histopathology X-ray
dc.subject.ddc600 - Technology::610 - Medicine & health
dc.titleALFREDO: Active Learning with FeatuRe disEntangelement and DOmain adaptation for medical image classification.
dc.typearticle
dspace.entity.typePublication
dspace.file.typetext
oaire.citation.issue103261
oaire.citation.startPage103261
oaire.citation.volume97
oairecerif.author.affiliationARTORG Center for Biomedical Engineering Research - Medical Image Analysis
oairecerif.author.affiliation2Universitätsklinik für Radio-Onkologie
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unibe.date.licenseChanged2024-07-19 02:11:35
unibe.description.ispublishedpub
unibe.eprints.legacyId199081
unibe.journal.abbrevTitleMED IMAGE ANAL
unibe.refereedTRUE
unibe.subtype.articlejournal

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