Chen Zhensen, Lu Yaosheng, Long Shun, Campello Victor M, Bai Jieyun, Lekadir Karim
IEEE J Biomed Health Inform. 2024 Aug;28(8):4648-4659. doi: 10.1109/JBHI.2024.3399762. Epub 2024 Aug 6.
Accurate segmentation of the fetal head and pubic symphysis in intrapartum ultrasound images and measurement of fetal angle of progression (AoP) are critical to both outcome prediction and complication prevention in delivery. However, due to poor quality of perinatal ultrasound imaging with blurred target boundaries and the relatively small target of the public symphysis, fully automated and accurate segmentation remains challenging. In this paper, we propse a dual-path boundary-guided residual network (DBRN), which is a novel approach to tackle these challenges. The model contains a multi-scale weighted module (MWM) to gather global context information, and enhance the feature response within the target region by weighting the feature map. The model also incorporates an enhanced boundary module (EBM) to obtain more precise boundary information. Furthermore, the model introduces a boundary-guided dual-attention residual module (BDRM) for residual learning. BDRM leverages boundary information as prior knowledge and employs spatial attention to simultaneously focus on background and foreground information, in order to capture concealed details and improve segmentation accuracy. Extensive comparative experiments have been conducted on three datasets. The proposed method achieves average Dice score of 0.908 ±0.05 and average Hausdorff distance of 3.396 ±0.66 mm. Compared with state-of-the-art competitors, the proposed DBRN achieves better results. In addition, the average difference between the automatic measurement of AoPs based on this model and the manual measurement results is 6.157 , which has good consistency and has broad application prospects in clinical practice.
在产时超声图像中准确分割胎儿头部和耻骨联合,并测量胎儿进展角度(AoP)对于分娩结局预测和并发症预防都至关重要。然而,由于围产期超声成像质量较差,目标边界模糊,且耻骨联合目标相对较小,完全自动化且准确的分割仍然具有挑战性。在本文中,我们提出了一种双路径边界引导残差网络(DBRN),这是一种应对这些挑战的新方法。该模型包含一个多尺度加权模块(MWM),用于收集全局上下文信息,并通过对特征图加权来增强目标区域内的特征响应。该模型还集成了一个增强边界模块(EBM)以获得更精确的边界信息。此外,该模型引入了一个边界引导双注意力残差模块(BDRM)用于残差学习。BDRM将边界信息作为先验知识,并利用空间注意力同时关注背景和前景信息,以便捕捉隐藏细节并提高分割精度。我们在三个数据集上进行了广泛的对比实验。所提出的方法实现了平均Dice分数为0.908±0.05,平均豪斯多夫距离为3.396±0.66毫米。与现有最先进的竞争对手相比,所提出的DBRN取得了更好的结果。此外,基于该模型的AoP自动测量结果与手动测量结果的平均差异为6.157,具有良好的一致性,在临床实践中具有广阔的应用前景。