English

Leveraging multi-view data without annotations for prostate MRI segmentation: A contrastive approach

Image and Video Processing 2023-09-18 v2 Computer Vision and Pattern Recognition

Abstract

An accurate prostate delineation and volume characterization can support the clinical assessment of prostate cancer. A large amount of automatic prostate segmentation tools consider exclusively the axial MRI direction in spite of the availability as per acquisition protocols of multi-view data. Further, when multi-view data is exploited, manual annotations and availability at test time for all the views is commonly assumed. In this work, we explore a contrastive approach at training time to leverage multi-view data without annotations and provide flexibility at deployment time in the event of missing views. We propose a triplet encoder and single decoder network based on U-Net, tU-Net (triplet U-Net). Our proposed architecture is able to exploit non-annotated sagittal and coronal views via contrastive learning to improve the segmentation from a volumetric perspective. For that purpose, we introduce the concept of inter-view similarity in the latent space. To guide the training, we combine a dice score loss calculated with respect to the axial view and its manual annotations together with a multi-view contrastive loss. tU-Net shows statistical improvement in dice score coefficient (DSC) with respect to only axial view (91.25+-0.52% compared to 86.40+-1.50%,P<.001). Sensitivity analysis reveals the volumetric positive impact of the contrastive loss when paired with tU-Net (2.85+-1.34% compared to 3.81+-1.88%,P<.001). Further, our approach shows good external volumetric generalization in an in-house dataset when tested with multi-view data (2.76+-1.89% compared to 3.92+-3.31%,P=.002), showing the feasibility of exploiting non-annotated multi-view data through contrastive learning whilst providing flexibility at deployment in the event of missing views.

Keywords

Cite

@article{arxiv.2308.06477,
  title  = {Leveraging multi-view data without annotations for prostate MRI segmentation: A contrastive approach},
  author = {Tim Nikolass Lindeijer and Tord Martin Ytredal and Trygve Eftestøl and Tobias Nordström and Fredrik Jäderling and Martin Eklund and Alvaro Fernandez-Quilez},
  journal= {arXiv preprint arXiv:2308.06477},
  year   = {2023}
}

Comments

Under review

R2 v1 2026-06-28T11:54:10.629Z