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适应性新生儿脑部分割

Adaptive neonate brain segmentation.

作者信息

Cardoso M Jorge, Melbourne Andrew, Kendall Giles S, Modat Marc, Hagmann Cornelia F, Robertson Nicola J, Marlow Neil, Ourselin Sebastien

机构信息

Centre for Medical Image Computing (CMIC), University College London, UK.

出版信息

Med Image Comput Comput Assist Interv. 2011;14(Pt 3):378-86. doi: 10.1007/978-3-642-23626-6_47.

DOI:10.1007/978-3-642-23626-6_47
PMID:22003722
Abstract

Babies born prematurely are at increased risk of adverse neurodevelopmental outcomes. Recent advances suggest that measurement of brain volumes can help in defining biomarkers for neurodevelopmental outcome. These techniques rely on an accurate segmentation of the MRI data. However, due to lack of contrast, partial volume (PV) effect, the existence of both hypo- and hyper-intensities and significant natural and pathological anatomical variability, the segmentation of neonatal brain MRI is challenging. We propose a pipeline for image segmentation that uses a novel multi-model Maximum a posteriori Expectation Maximisation (MAP-EM) segmentation algorithm with a prior over both intensities and the tissue proportions, a B0 inhomogeneity correction, and a spatial homogeneity term through the use of a Markov Random Field. This robust and adaptive technique enables the segmentation of images with high anatomical disparity from a normal population. Furthermore, the proposed method implicitly models Partial Volume, mitigating the problem of neonatal white/grey matter intensity inversion. Experiments performed on a clinical cohort show expected statistically significant correlations with gestational age at birth and birthweight. Furthermore, the proposed method obtains statistically significant improvements in Dice scores when compared to the a Maximum Likelihood EM algorithm.

摘要

早产婴儿出现不良神经发育结局的风险增加。最近的进展表明,脑容量测量有助于确定神经发育结局的生物标志物。这些技术依赖于对MRI数据的准确分割。然而,由于缺乏对比度、部分容积(PV)效应、存在低强度和高强度区域以及显著的自然和病理解剖变异,新生儿脑MRI的分割具有挑战性。我们提出了一种图像分割流程,该流程使用一种新颖的多模型最大后验期望最大化(MAP-EM)分割算法,该算法对强度和组织比例都有先验信息,进行B0不均匀性校正,并通过使用马尔可夫随机场引入空间均匀性项。这种强大且自适应的技术能够对与正常人群存在高度解剖差异的图像进行分割。此外,所提出的方法隐式地对部分容积进行建模,减轻了新生儿白质/灰质强度反转的问题。在一个临床队列上进行的实验表明,与出生时的胎龄和出生体重存在预期的统计学显著相关性。此外,与最大似然期望最大化算法相比,所提出的方法在Dice分数上获得了统计学显著的改善。

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