Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Richards Building, 3700 Hamilton Walk, 7th Floor, Philadelphia, PA 19104, United States.
Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Richards Building, 3700 Hamilton Walk, 7th Floor, Philadelphia, PA 19104, United States.
Neuroimage. 2020 Dec;223:117248. doi: 10.1016/j.neuroimage.2020.117248. Epub 2020 Aug 27.
Automatic segmentation of brain anatomy has been a key processing step in quantitative neuroimaging analyses. An extensive body of literature has relied on Freesurfer segmentations. Yet, in recent years, the multi-atlas segmentation framework has consistently obtained results with superior accuracy in various evaluations. We compared brain anatomy segmentations from Freesurfer, which uses a single probabilistic atlas strategy, against segmentations from Multi-atlas region Segmentation utilizing Ensembles of registration algorithms and parameters and locally optimal atlas selection (MUSE), one of the leading ensemble-based methods that calculates a consensus segmentation through fusion of anatomical labels from multiple atlases and registrations. The focus of our evaluation was twofold. First, using manual ground-truth hippocampus segmentations, we found that Freesurfer segmentations showed a bias towards over-segmentation of larger hippocampi, and under-segmentation in older age. This bias was more pronounced in Freesurfer-v5.3, which has been used in multiple previous studies of aging, while the effect was mitigated in more recent Freesurfer-v6.0, albeit still present. Second, we evaluated inter-scanner segmentation stability using same day scan pairs from ADNI acquired on 1.5T and 3T scanners. We also found that MUSE obtains more consistent segmentations across scanners compared to Freesurfer, particularly in the deep structures.
脑解剖结构的自动分割一直是定量神经影像学分析的关键处理步骤。大量文献依赖于 Freesurfer 分割。然而,近年来,多图谱分割框架在各种评估中始终以更高的准确性获得了结果。我们比较了 Freesurfer 的脑解剖结构分割,它使用单一的概率图谱策略,与多图谱区域分割的分割进行了比较,该分割使用了基于注册算法和参数的集合的图谱和局部最优图谱选择(MUSE),这是领先的基于集合的方法之一,通过融合来自多个图谱和注册的解剖标签来计算共识分割。我们评估的重点有两个。首先,使用手动的海马体分割的真实数据,我们发现 Freesurfer 分割存在较大的海马体过度分割和老年人海马体分割不足的偏差。这种偏差在用于多个衰老研究的 Freesurfer-v5.3 中更为明显,而在更新的 Freesurfer-v6.0 中有所缓解,但仍然存在。其次,我们使用 ADNI 同一天采集的 1.5T 和 3T 扫描仪的扫描对评估了扫描仪间分割的稳定性。我们还发现,与 Freesurfer 相比,MUSE 在扫描仪间获得了更一致的分割,特别是在深部结构中。