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Towards Automatic Semantic Segmentation in Volumetric Ultrasound

机译:走向体积超声中的自动语义分割

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3D ultrasound is rapidly emerging as a viable imaging modality for routine prenatal examinations. However, lacking of efficient tools to decompose the volumetric data greatly limits its widespread. In this paper, we are looking at the problem of volumetric segmentation in ultrasound to promote the volume-based, precise maternal and fetal health monitoring. Our contribution is threefold. First, we propose the first and fully automatic framework for the simultaneous segmentation of multiple objects, including fetus, gestational sac and placenta, in ultrasound volumes, which remains as a rarely-studied but great challenge. Second, based on our customized 3D Fully Convolutional Network, we propose to inject a Recurrent Neural Network (RNN) to flexibly explore 3D semantic knowledge from a novel, sequential perspective, and therefore significantly refine the local segmentation result which is initially corrupted by the ubiquitous boundary uncertainty in ultrasound volumes. Third, considering sequence hierarchy, we introduce a hierarchical deep supervision mechanism to effectively boost the information flow within RNN and further improve the semantic segmentation results. Extensively validated on our in-house large datasets, our approach achieves superior performance and presents to be promising in boosting the interpretation of prenatal ultrasound volumes. Our framework is general and can be easily extended to other volumetric ultrasound segmentation tasks.
机译:3D超声正迅速成为常规的产前检查的可行成像方式。然而,缺乏有效的工具来分解体积数据极大地限制了它的广泛使用。在本文中,我们正在研究超声中的体积分割问题,以促进基于体积的精确母婴健康监测。我们的贡献是三倍。首先,我们提出了第一个全自动框架,可以同时分割超声范围内的多个对象,包括胎儿,妊娠囊和胎盘,这仍然是一项鲜有研究但又充满挑战的工作。其次,基于我们定制的3D全卷积网络,我们建议注入一个递归神经网络(RNN),以一种新颖的顺序视角灵活地探索3D语义知识,从而显着改善最初被普遍存在所破坏的局部分割结果超声体积的边界不确定性。第三,考虑到序列层次结构,我们引入了层次化的深度监督机制,以有效地促进RNN内的信息流,进一步改善语义分割的结果。经过我们内部大型数据集的广泛验证,我们的方法取得了卓越的性能,并且在增强对产前超声量的解释方面具有广阔的前景。我们的框架是通用的,可以轻松扩展到其他体积超声分割任务。

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