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Segmentation of brain magnetic resonance images based on multi-atlas likelihood fusion: testing using data with a broad range of anatomical and photometric profiles

机译:基于多图谱似然融合的脑磁共振图像分割:使用具有广泛解剖学和光度学特征的数据进行测试

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摘要

We propose a hierarchical pipeline for skull-stripping and segmentation of anatomical structures of interest from T1-weighted images of the human brain. The pipeline is constructed based on a two-level Bayesian parameter estimation algorithm called multi-atlas likelihood fusion (MALF). In MALF, estimation of the parameter of interest is performed via maximum a posteriori estimation using the expectation-maximization (EM) algorithm. The likelihoods of multiple atlases are fused in the E-step while the optimal estimator, a single maximizer of the fused likelihoods, is then obtained in the M-step. There are two stages in the proposed pipeline; first the input T1-weighted image is automatically skull-stripped via a fast MALF, then internal brain structures of interest are automatically extracted using a regular MALF. We assess the performance of each of the two modules in the pipeline based on two sets of images with markedly different anatomical and photometric contrasts; 3T MPRAGE scans of pediatric subjects with developmental disorders vs. 1.5T SPGR scans of elderly subjects with dementia. Evaluation is performed quantitatively using the Dice overlap as well as qualitatively via visual inspections. As a result, we demonstrate subject-level differences in the performance of the proposed pipeline, which may be accounted for by age, diagnosis, or the imaging parameters (particularly the field strength). For the subcortical and ventricular structures of the two datasets, the hierarchical pipeline is capable of producing automated segmentations with Dice overlaps ranging from 0.8 to 0.964 when compared with the gold standard. Comparisons with other representative segmentation algorithms are presented, relative to which the proposed hierarchical pipeline demonstrates comparative or superior accuracy.
机译:我们提出了一个分层的管道,用于从人脑的T1加权图像中剥离感兴趣的解剖结构并进行头骨分割。管道是基于称为多图集似然融合(MALF)的两级贝叶斯参数估计算法构建的。在MALF中,使用期望最大化(EM)算法通过最大后验估计来执行感兴趣参数的估计。在E步中融合了多个地图集的可能性,而在M步中则获得了最优估计量,即融合似然的单个最大化器。拟议中的流程分为两个阶段:首先,通过快速的MALF自动对输入的T1加权图像进行颅骨剥离,然后使用常规的MALF自动提取感兴趣的内部大脑结构。我们基于两组解剖学和光度学对比度明显不同的图像,评估管道中两个模块的性能。发育障碍儿科患者的3T MPRAGE扫描与老年痴呆症患者的1.5T SPGR扫描相比。使用骰子重叠进行定量评估,并通过视觉检查定性评估。结果,我们证明了拟议管道的性能在受试者水平上的差异,这可能是由年龄,诊断或成像参数(尤其是场强)造成的。对于两个数据集的皮层下和心室结构,与黄金标准相比,分层管道能够生成Dice重叠范围为0.8到0.964的自动分割。提出了与其他代表性分割算法的比较,相对于此,建议的分层管道展示了比较或更高的准确性。

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