IDEA Lab, Department of Radiology and BRIC, University of North Carolina at Chapel Hill, NC 27599, USA.
Neuroimage. 2010 Jun;51(2):684-93. doi: 10.1016/j.neuroimage.2010.02.025. Epub 2010 Feb 17.
Neonatal brain MRI segmentation is a challenging problem due to its poor image quality. Atlas-based segmentation approaches have been widely used for guiding brain tissue segmentation. Existing brain atlases are usually constructed by equally averaging pre-segmented images in a population. However, such approaches diminish local inter-subject structural variability and thus lead to lower segmentation guidance capability. To deal with this problem, we propose a multi-region-multi-reference framework for atlas-based neonatal brain segmentation. For each region of a brain parcellation, a population of spatially normalized pre-segmented images is clustered into a number of sub-populations. Each sub-population of a region represents an independent distribution from which a regional probability atlas can be generated. A selection of these regional atlases, across different sub-regions, will in the end be adaptively combined to form an overall atlas specific to the query image. Given a query image, the determination of the appropriate set of regional atlases is achieved by comparing the query image regionally with the reference, or exemplar, of each sub-population. Upon obtaining an overall atlas, an atlas-based joint registration-segmentation strategy is employed to segment the query image. Since the proposed method generates an atlas which is significant more similar to the query image than the traditional average-shape atlas, better tissue segmentation results can be expected. This is validated by applying the proposed method on a large set of neonatal brain images available in our institute. Experimental results on a randomly selected set of 10 neonatal brain images indicate that the proposed method achieves higher tissue overlap rates and lower standard deviations (SDs) in comparison with manual segmentations, i.e., 0.86 (SD 0.02) for GM, 0.83 (SD 0.03) for WM, and 0.80 (SD 0.05) for CSF. The proposed method also outperforms two other average-shape atlas-based segmentation methods.
新生儿脑 MRI 分割是一个具有挑战性的问题,因为其图像质量较差。基于图谱的分割方法已广泛用于指导脑组织分割。现有的脑图谱通常是通过在人群中平均分割预分割的图像来构建的。然而,这种方法会降低局部个体间结构的可变性,从而导致分割指导能力降低。为了解决这个问题,我们提出了一种基于图谱的新生儿脑分割的多区域多参考框架。对于脑分割的每个区域,将一群空间归一化的预分割图像聚类为多个子群体。每个区域的子群体代表一个独立的分布,可以从中生成一个区域概率图谱。这些区域图谱的选择,跨越不同的子区域,最终将自适应地组合形成一个特定于查询图像的整体图谱。对于一个查询图像,通过将查询图像与每个子群体的参考或范例在区域上进行比较,确定适当的区域图谱集。在获得整体图谱后,采用基于图谱的联合配准-分割策略对查询图像进行分割。由于所提出的方法生成的图谱与查询图像比传统的平均形状图谱更为相似,因此可以预期得到更好的组织分割结果。这通过在我们研究所提供的一组大型新生儿脑图像上应用所提出的方法得到了验证。在随机选择的 10 个新生儿脑图像的一组实验结果表明,与手动分割相比,所提出的方法在组织重叠率和标准偏差(SD)方面具有更高的性能,即 GM 为 0.86(SD 0.02),WM 为 0.83(SD 0.03),CSF 为 0.80(SD 0.05)。所提出的方法也优于另外两种基于平均形状图谱的分割方法。