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Automatic segmentation approach to extracting neonatal cerebral ventricles from 3D ultrasound images

机译:从3D超声图像中提取新生儿脑室的自动分割方法

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摘要

Preterm neonates with a very low birth weight of less than 1,500 g are at increased risk for developing intraventricular hemorrhage (IVH). Progressive ventricle dilatation of IVH patients may cause increased intracranial pressure, leading to neurological damage, such as neurodevelopmental delay and cerebral palsy. The technique of 3D ultrasound (US) imaging has been used to quantitatively monitor the ventricular volume in IVH neonates, which may elucidate the ambiguity surrounding the timing of interventions in these patients as 2D clinical US imaging relies on linear measurement and visual estimation of ventricular dilation from a series of 2D slices. To translate 3D US imaging into the clinical setting, a fully automated segmentation algorithm is necessary to extract the ventricular system from 3D neonatal brain US images. In this paper, an automatic segmentation approach is proposed to delineate lateral ventricles of preterm neonates from 3D US images. The proposed segmentation approach makes use of phase congruency map, multi-atlas initialization technique, atlas selection strategy, and a multiphase geodesic level-sets (MGLS) evolution combined with a spatial shape prior derived from multiple pre-segmented atlases. Experimental results using 30 IVH patient images show that the proposed GPU-implemented approach is accurate in terms of the Dice similarity coefficient (DSC), the mean absolute surface distance (MAD), and maximum absolute surface distance (MAXD). To the best of our knowledge, this paper reports the first study on automatic segmentation of the ventricular system of premature neonatal brains from 3D US images. (C) 2016 Elsevier B.V. All rights reserved.
机译:出生体重低于1,500g的早产新毒素在发育腔内出血(IVH)的风险增加。 IVH患者的进步性心室扩张可能导致颅内压增加,导致神经发育延迟和脑瘫等神经系统损伤。 3D超声(US)成像技术已被用于定量监测IVH新生儿中的心室体积,这可以阐明这些患者中干预措施的模糊性,因为2D临床美国成像依赖于心室扩张的线性测量和视觉估计从一系列2D切片。为了将3D美国成像转化为临床环境,必须完全自动化的分割算法从3D新生儿脑中图像中提取心室系统。在本文中,提出了一种自动分割方法,用于从3D美国图像中描绘早产儿的侧脑室。所提出的分割方法利用相中图,多标准初始化技术,阿特拉斯选择策略和多相测地电平集(MGLS)演变,与从多个预分段的atlase导出之前的空间形状。使用30 IVH患者图像的实验结果表明,在骰子相似度系数(DSC)方面,所提出的GPU实施方法是准确的,平均绝对的表面距离(MAD)和最大绝对表面距离(MAXD)。本文据我们所知,本文报告了第一次研究3D美国图像的早产新生大脑室内系统的自动分割研究。 (c)2016年Elsevier B.v.保留所有权利。

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