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dc.contributor.authorKhadka, Rabindra
dc.contributor.authorJha, Debesh
dc.contributor.authorRiegler, Michael A.
dc.contributor.authorHicks, Steven
dc.contributor.authorThambawita, Vajira
dc.contributor.authorAli, Sharib
dc.contributor.authorHalvorsen, Pål
dc.date.accessioned2022-04-12T07:53:25Z
dc.date.available2022-04-12T07:53:25Z
dc.date.issued2022-01-12
dc.description.abstractWidely used traditional supervised deep learning methods require a large number of training samples but often fail to generalize on unseen datasets. Therefore, a more general application of any trained model is quite limited for medical imaging for clinical practice. Using separately trained models for each unique lesion category or a unique patient population will require sufficiently large curated datasets, which is not practical to use in a real-world clinical set-up. Few-shot learning approaches can not only minimize the need for an enormous number of reliable ground truth labels that are labour-intensive and expensive, but can also be used to model on a dataset coming from a new population. To this end, we propose to exploit an optimization-based implicit model agnostic meta-learning (iMAML) algorithm under few-shot settings for medical image segmentation. Our approach can leverage the learned weights from diverse but small training samples to perform analysis on unseen datasets with high accuracy. We show that, unlike classical few-shot learning approaches, our method improves generalization capability. To our knowledge, this is the first work that exploits iMAML for medical image segmentation and explores the strength of the model on scenarios such as meta-training on unique and mixed instances of lesion datasets. Our quantitative results on publicly available skin and polyp datasets show that the proposed method outperforms the naive supervised baseline model and two recent few-shot segmentation approaches by large margins. In addition, our iMAML approach shows an improvement of 2%–4% in dice score compared to its counterpart MAML for most experiments.en_US
dc.identifier.citationKhadka R, Jha D, Riegler MA, Hicks S, Thambawita V, Ali S, Halvorsen P. Meta-learning with implicit gradients in a few-shot setting for medical image segmentation. Computers in Biology and Medicine. 2022;143en_US
dc.identifier.cristinIDFRIDAID 1992702
dc.identifier.issn0010-4825
dc.identifier.issn1879-0534
dc.identifier.urihttps://hdl.handle.net/10037/24761
dc.language.isoengen_US
dc.publisherElsevieren_US
dc.relation.journalComputers in Biology and Medicine
dc.rights.accessRightsopenAccessen_US
dc.rights.holderCopyright 2022 The Author(s)en_US
dc.titleMeta-learning with implicit gradients in a few-shot setting for medical image segmentationen_US
dc.type.versionpublishedVersionen_US
dc.typeJournal articleen_US
dc.typeTidsskriftartikkelen_US
dc.typePeer revieweden_US


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