Centre for Medical Image Computing, University College London, UK.
Neuroimage. 2013 Jan 15;65:97-108. doi: 10.1016/j.neuroimage.2012.08.009. Epub 2012 Aug 14.
Advances in neonatal care have improved the survival of infants born prematurely although these infants remain at increased risk of adverse neurodevelopmental outcome. The measurement of white matter structure and features of the cortical surface can help define biomarkers that predict this risk. The measurement of these structures relies upon accurate automated segmentation routines, but these are often confounded by neonatal-specific imaging difficulties including poor contrast, low resolution, partial volume effects and the presence of significant natural and pathological anatomical variability. In this work we develop and evaluate an adaptive preterm multi-modal maximum a posteriori expectation-maximisation segmentation algorithm (AdaPT) incorporating an iterative relaxation strategy that adapts the tissue proportion priors toward the subject data. Also incorporated are intensity non-uniformity correction, a spatial homogeneity term in the form of a Markov random field and furthermore, the proposed method explicitly models the partial volume effect specifically mitigating the neonatal specific grey and white matter contrast inversion. Spatial priors are iteratively relaxed, enabling the segmentation of images with high anatomical disparity from a normal population. Experiments performed on a clinical cohort of 92 infants are validated against manual segmentation of normal and pathological cortical grey matter, cerebellum and ventricular volumes. Dice overlap scores increase significantly when compared to a widely-used maximum likelihood expectation maximisation algorithm for pathological cortical grey matter, cerebellum and ventricular volumes. Adaptive maximum a posteriori expectation maximisation is shown to be a useful tool for accurate and robust neonatal brain segmentation.
新生儿护理的进步提高了早产儿的存活率,尽管这些婴儿仍然面临着不良神经发育结果的风险增加。测量脑白质结构和皮质表面特征可以帮助确定预测这种风险的生物标志物。这些结构的测量依赖于准确的自动分割程序,但这些程序往往受到新生儿特定成像困难的影响,包括对比度差、分辨率低、部分容积效应以及存在显著的自然和病理解剖变异性。在这项工作中,我们开发并评估了一种自适应早产儿多模态最大后验期望最大化分割算法(AdaPT),该算法结合了一种迭代松弛策略,该策略将组织比例先验适应于主体数据。还包括强度非均匀性校正、马尔可夫随机场形式的空间均匀性项,此外,所提出的方法还明确地模拟了部分容积效应,特别是减轻了新生儿特定的灰白质对比度反转。空间先验被迭代地松弛,从而能够对来自正常人群的具有高解剖差异的图像进行分割。在 92 名婴儿的临床队列上进行的实验与正常和病理性皮质灰质、小脑和脑室体积的手动分割进行了验证。与广泛使用的用于病理性皮质灰质、小脑和脑室体积的最大似然期望最大化算法相比,重叠分数显著增加。自适应最大后验期望最大化被证明是一种用于准确和稳健的新生儿脑分割的有用工具。