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Improving Cerebellar Segmentation with Statistical Fusion

机译:通过统计融合改善小脑分割

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The cerebellum is a somatotopically organized central component of the central nervous system well known to be involved with motor coordination and increasingly recognized roles in cognition and planning. Recent work in multi-atlas labeling has created methods that offer the potential for fully automated 3-D parcellation of the cerebellar lobules and vermis (which are organizationally equivalent to cortical gray matter areas). This work explores the trade offs of using different statistical fusion techniques and post hoc optimizations in two datasets with distinct imaging protocols. We offer a novel fusion technique by extending the ideas of the Selective and Iterative Method for Performance Level Estimation (SIMPLE) to a patch-based performance model. We demonstrate the effectiveness of our algorithm, Non-Local SIMPLE, for segmentation of a mixed population of healthy subjects and patients with severe cerebellar anatomy. Under the first imaging protocol, we show that Non-Local SIMPLE outperforms previous gold-standard segmentation techniques. In the second imaging protocol, we show that Non-Local SIMPLE outperforms previous gold standard techniques but is outperformed by a non-locally weighted vote with the deeper population of atlases available. This work advances the state of the art in open source cerebellar segmentation algorithms and offers the opportunity for routinely including cerebellar segmentation in magnetic resonance imaging studies that acquire whole brain Tl-weighted volumes with approximately 1 mm isotropic resolution.
机译:小脑是中枢神经系统的一个体位组织的中央组成部分,众所周知,它与运动协调有关,并且在认知和计划中的作用日益得到认可。最近在多图谱标记中的工作已经创造了一些方法,这些方法为小脑小叶和ver(组织上等同于皮质灰质区域)的3D立体分解提供了可能。这项工作探讨了在具有不同成像协议的两个数据集中使用不同的统计融合技术和事后优化的折衷方案。通过将性能水平估计的选择性和迭代方法(SIMPLE)的思想扩展到基于补丁的性能模型,我们提供了一种新颖的融合技术。我们证明了我们的算法(非局部SIMPLE)对于健康受试者和小脑解剖严重患者的混合人群分割的有效性。在第一个成像协议下,我们显示了非本地SIMPLE优于以前的黄金标准分割技术。在第二个成像协议中,我们显示了非本地SIMPLE优于以前的金标准技术,但是在非本地加权投票中表现更好,并且拥有更多的地图集。这项工作推动了开源小脑分割算法的发展,并为常规磁共振成像研究中包括小脑分割提供了机会,磁共振成像研究以约1 mm的各向同性分辨率获取全脑T1加权体积。

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