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Validation of Alternating Kernel Mixture Method: Application to Tissue Segmentation of Cortical and Subcortical Structures

机译:核仁混合法的验证:在皮层和皮层下组织的组织分割中的应用

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This paper describes the application of the alternating Kernel mixture (AKM) segmentation algorithm to high resolution MRI subvolumes acquired from a 1.5T scanner (hippocampus,n=10and prefrontal cortex,n=9) and a 3T scanner (hippocampus,n=10and occipital lobe,n=10). Segmentation of the subvolumes into cerebrospinal fluid, gray matter, and white matter tissue is validated by comparison with manual segmentation. When compared with other segmentation methods that use traditional Bayesian segmentation, AKM yields smaller errors (P<.005, exact Wilcoxon signed rank test) demonstrating the robustness and wide applicability of AKM across different structures. By generating multiple mixtures for each tissue compartment, AKM mimics the increased variation of manual segmentation in partial volumes due to the highly folded tissues. AKM's superior performance makes it useful for tissue segmentation of subcortical and cortical structures in large-scale neuroimaging studies.
机译:本文介绍了交替内核混合(AKM)分割算法在从1.5T扫描仪(海马,n = 10和前额叶皮层,n = 9)和3T扫描仪(海马,n = 10和枕骨)获取的高分辨率MRI子量中的应用瓣,n = 10)。通过与手动分割进行比较,可以将子体积分割为脑脊液,灰质和白质组织。与使用传统贝叶斯分割的其他分割方法相比,AKM产生的误差较小(P <.005,精确的Wilcoxon符号秩检验),证明了AKM在不同结构上的稳健性和广泛的适用性。通过为每个组织隔室生成多种混合物,AKM可以模拟由于高度折叠的组织而导致的手动分割局部体积变化的增加。 AKM的卓越性能使其可用于大规模神经影像研究中的皮质下和皮质结构的组织分割。

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