Anatomy-Aware Contrastive Representation Learning for Fetal Ultrasound.

Contrastive learning Representation learning Ultrasound

Journal

Computer vision - ECCV ... : ... European Conference on Computer Vision : proceedings. European Conference on Computer Vision
Titre abrégé: Comput Vis ECCV
Pays: Germany
ID NLM: 101151802

Informations de publication

Date de publication:
Oct 2022
Historique:
medline: 30 5 2023
pubmed: 30 5 2023
entrez: 30 5 2023
Statut: ppublish

Résumé

Self-supervised contrastive representation learning offers the advantage of learning meaningful visual representations from unlabeled medical datasets for transfer learning. However, applying current contrastive learning approaches to medical data without considering its domain-specific anatomical characteristics may lead to visual representations that are inconsistent in appearance and semantics. In this paper, we propose to improve visual representations of medical images via anatomy-aware contrastive learning (AWCL), which incorporates anatomy information to augment the positive/negative pair sampling in a contrastive learning manner. The proposed approach is demonstrated for automated fetal ultrasound imaging tasks, enabling the positive pairs from the same or different ultrasound scans that are anatomically similar to be pulled together and thus improving the representation learning. We empirically investigate the effect of inclusion of anatomy information with coarse- and fine-grained granularity, for contrastive learning and find that learning with fine-grained anatomy information which preserves intra-class difference is more effective than its counterpart. We also analyze the impact of anatomy ratio on our AWCL framework and find that using more distinct but anatomically similar samples to compose positive pairs results in better quality representations. Extensive experiments on a large-scale fetal ultrasound dataset demonstrate that our approach is effective for learning representations that transfer well to three clinical downstream tasks, and achieves superior performance compared to ImageNet supervised and the current state-of-the-art contrastive learning methods. In particular, AWCL outperforms ImageNet supervised method by 13.8% and state-of-the-art contrastive-based method by 7.1% on a cross-domain segmentation task. The code is available at https://github.com/JianboJiao/AWCL.

Identifiants

pubmed: 37250853
doi: 10.1007/978-3-031-25066-8_23
pmc: PMC7614575
mid: EMS176131
doi:

Types de publication

Journal Article

Langues

eng

Pagination

422-436

Subventions

Organisme : NIAAA NIH HHS
ID : U01 AA014809
Pays : United States

Références

Med Image Anal. 2021 Apr;69:101973
pubmed: 33550004
Med Image Comput Comput Assist Interv. 2020 Oct;12263:534-543
pubmed: 33103162
Med Image Anal. 2020 Oct;65:101762
pubmed: 32623278
Med Image Comput Comput Assist Interv. 2020 Oct;12261:137-147
pubmed: 35695848
Med Image Comput Comput Assist Interv. 2019 Oct;11767:384-393
pubmed: 32766570
IEEE Trans Med Imaging. 2017 Nov;36(11):2204-2215
pubmed: 28708546
Sci Rep. 2021 Jul 8;11(1):14109
pubmed: 34238950
Proc IEEE Int Symp Biomed Imaging. 2020 Apr 3;2020:1847-1850
pubmed: 32489519
Domain Adapt Represent Transf Afford Healthc AI Resour Divers Glob Health (2021). 2021 Sep-Oct;12968:3-13
pubmed: 35713581
Inf Process Med Imaging. 2019 Jun;26:592-604
pubmed: 31992944

Auteurs

Zeyu Fu (Z)

Department of Engineering Science, University of Oxford, Oxford, UK.

Jianbo Jiao (J)

Department of Engineering Science, University of Oxford, Oxford, UK.

Robail Yasrab (R)

Department of Engineering Science, University of Oxford, Oxford, UK.

Lior Drukker (L)

Nuffield Department of Women's and Reproductive Health, University of Oxford, Oxford, UK.
Department of Obstetrics and Gynecology, Tel-Aviv University, Israel.

Aris T Papageorghiou (AT)

Nuffield Department of Women's and Reproductive Health, University of Oxford, Oxford, UK.

J Alison Noble (JA)

Department of Engineering Science, University of Oxford, Oxford, UK.

Classifications MeSH