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Volumetric Segmentation of Key Fetal Brain Structures in 3D Ultrasound

机译:3D超声中胎儿关键大脑结构的体积分割

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Neurosonography is the most widely used imaging technique for assessing neuro-development of the growing fetus in clinical practice. 3D neurosonography has an advantage of quick acquisition but is yet to demonstrate improvements in clinical workflow. In this paper we propose an automatic technique to segment four important fetal brain structures in 3D ultrasound. The technique is built within a Random Decision Forests framework. Our solution includes novel pre-processing and new features. The pre-processing step makes sure that all volumes are in the same coordinate. The new features constrain the appearance framework by adding a novel distance feature. Validation on 51 3D fetal neurosonography images shows that the proposed technique is capable of segmenting fetal brain structures and providing promising qualitative and quantitative results.
机译:神经超声检查是在临床实践中用于评估正在成长的胎儿的神经发育的最广泛使用的成像技术。 3D神经超声检查具有快速获取的优势,但尚未证明其在临床工作流程方面的改进。在本文中,我们提出了一种自动技术,用于在3D超声中分割四个重要的胎儿大脑结构。该技术建立在随机决策森林框架内。我们的解决方案包括新颖的预处理和新功能。预处理步骤确保所有体积都在同一坐标中。新功能通过添加新颖的距离功能来约束外观框架。对51张3D胎儿神经超声图像的验证表明,所提出的技术能够分割胎儿的大脑结构,并提供有希望的定性和定量结果。

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