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Contrast-Invariant Self-supervised Segmentation for Quantitative Placental MRI

30 May 2025
Xinliu Zhong
Ruiying Liu
Emily S. Nichols
Xuzhe Zhang
Andrew F. Laine
Emma G. Duerden
Yun Wang
ArXiv (abs)PDFHTML
Main:6 Pages
4 Figures
Bibliography:2 Pages
2 Tables
Abstract

Accurate placental segmentation is essential for quantitative analysis of the placenta. However, this task is particularly challenging in T2*-weighted placental imaging due to: (1) weak and inconsistent boundary contrast across individual echoes; (2) the absence of manual ground truth annotations for all echo times; and (3) motion artifacts across echoes caused by fetal and maternal movement. In this work, we propose a contrast-augmented segmentation framework that leverages complementary information across multi-echo T2*-weighted MRI to learn robust, contrast-invariant representations. Our method integrates: (i) masked autoencoding (MAE) for self-supervised pretraining on unlabeled multi-echo slices; (ii) masked pseudo-labeling (MPL) for unsupervised domain adaptation across echo times; and (iii) global-local collaboration to align fine-grained features with global anatomical context. We further introduce a semantic matching loss to encourage representation consistency across echoes of the same subject. Experiments on a clinical multi-echo placental MRI dataset demonstrate that our approach generalizes effectively across echo times and outperforms both single-echo and naive fusion baselines. To our knowledge, this is the first work to systematically exploit multi-echo T2*-weighted MRI for placental segmentation.

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@article{zhong2025_2505.24739,
  title={ Contrast-Invariant Self-supervised Segmentation for Quantitative Placental MRI },
  author={ Xinliu Zhong and Ruiying Liu and Emily S. Nichols and Xuzhe Zhang and Andrew F. Laine and Emma G. Duerden and Yun Wang },
  journal={arXiv preprint arXiv:2505.24739},
  year={ 2025 }
}
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