Accurate tissue segmentation of thick-slice fetal brain magnetic resonance
(MR) scans is crucial for both reconstruction of isotropic brain MR volumes and
the quantification of fetal brain development. However, this task is
challenging due to the use of thick-slice scans in clinically-acquired fetal
brain data. To address this issue, we propose to leverage high-quality
isotropic fetal brain MR volumes (and also their corresponding annotations) as
guidance for segmentation of thick-slice scans. Due to existence of significant
domain gap between high-quality isotropic volume (i.e., source data) and
thick-slice scans (i.e., target data), we employ a domain adaptation technique
to achieve the associated knowledge transfer (from high-quality
volumes to thick-slice scans). Specifically, we first register the
available high-quality isotropic fetal brain MR volumes across different
gestational weeks to construct longitudinally-complete source data. To capture
domain-invariant information, we then perform Fourier decomposition to extract
image content and style codes. Finally, we propose a novel Cycle-Consistent
Domain Adaptation Network (C2DA-Net) to efficiently transfer the knowledge
learned from high-quality isotropic volumes for accurate tissue segmentation of
thick-slice scans. Our C2DA-Net can fully utilize a small set of annotated
isotropic volumes to guide tissue segmentation on unannotated thick-slice
scans. Extensive experiments on a large-scale dataset of 372 clinically
acquired thick-slice MR scans demonstrate that our C2DA-Net achieves much
better performance than cutting-edge methods quantitatively and qualitatively.Comment: 10 pages, 9 figures, 5 tables, Fetal MRI, Brain tissue segmentation,
Unsupervised domain adaptation, Cycle-consistenc