Hybrid Attention for Automatic Segmentation of Whole Fetal Head in Prenatal Ultrasound Volumes
Xin Yang, Xu Wang, Yi Wang, Haoran Dou, Shengli Li, Huaxuan Wen, Yi, Lin, Pheng-Ann Heng, Dong Ni

TL;DR
This paper introduces a fully-automated deep learning method with hybrid attention for precise segmentation of the entire fetal head in 3D ultrasound volumes, addressing challenges like poor image quality and boundary ambiguity.
Contribution
It presents the first end-to-end volumetric segmentation approach using hybrid attention and cascaded refinement, significantly improving accuracy and robustness in fetal head segmentation.
Findings
Achieved 96.05% DSC in segmentation accuracy.
Demonstrated high reproducibility across scan variations.
Validated on large datasets with expert-level agreement.
Abstract
Background and Objective: Biometric measurements of fetal head are important indicators for maternal and fetal health monitoring during pregnancy. 3D ultrasound (US) has unique advantages over 2D scan in covering the whole fetal head and may promote the diagnoses. However, automatically segmenting the whole fetal head in US volumes still pends as an emerging and unsolved problem. The challenges that automated solutions need to tackle include the poor image quality, boundary ambiguity, long-span occlusion, and the appearance variability across different fetal poses and gestational ages. In this paper, we propose the first fully-automated solution to segment the whole fetal head in US volumes. Methods: The segmentation task is firstly formulated as an end-to-end volumetric mapping under an encoder-decoder deep architecture. We then combine the segmentor with a proposed hybrid attention…
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Taxonomy
TopicsFetal and Pediatric Neurological Disorders · Cleft Lip and Palate Research · Domain Adaptation and Few-Shot Learning
