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Adaptive Image Segmentation for Robust Measurement of Longitudinal Brain Tissue Change

机译:用于纵向脑组织变化的鲁棒测量的自适应图像分割

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We present a method that significantly improves magnetic resonance imaging (MRI) based brain tissue segmentation by modeling the topography of boundaries between tissue compartments. Edge operators are used to identify tissue interfaces and thereby more realistically model tissue label dependencies between adjacent voxels on opposite sides of an interface. When applied to a synthetic MRI template corrupted by additive noise, it provided more consistent tissue labeling across noise levels than two commonly used methods (FAST and SPM5). When applied to longitudinal MRI series it provided lesser variability in individual trajectories of tissue change, suggesting superior ability to discriminate real tissue change from noise. These results suggest that this method may be useful for robust longitudinal brain tissue change estimation.
机译:我们介绍一种方法,通过建模组织隔室之间的界限地形来显着改善基于磁共振成像(MRI)的脑组织分割。边缘运营商用于识别组织接口,从而更现实地模型在接口的相对侧的相邻体素之间的组织标记依赖性。当应用于因加附加噪声损坏的合成MRI模板时,它提供比噪声水平更一致的组织标记,而不是两个常用的方法(快速和SPM5)。当应用于纵向MRI系列时,它为组织变化的个体轨迹提供了较小的变化,这表明卓越的区分真实组织变化从噪声变化的能力。这些结果表明该方法可用于稳健的纵向脑组织变化估计。

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