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Nonlocal regularization for active appearance model: Application to medial temporal lobe segmentation

机译:活动外观模型的非局部正则化:在内侧颞叶分割中的应用

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摘要

The human medial temporal lobe (MTL) is an important part of the limbic system, and its substructures play key roles in learning, memory, and neurodegeneration. The MTL includes the hippocampus (HC), amygdala (AG), parahippocampal cortex (PHC), entorhinal cortex, and perirhinal cortex—structures that are complex in shape and have low between‐structure intensity contrast, making them difficult to segment manually in magnetic resonance images. This article presents a new segmentation method that combines active appearance modeling and patch‐based local refinement to automatically segment specific substructures of the MTL including HC, AG, PHC, and entorhinal/perirhinal cortex from MRI data. Appearance modeling, relying on eigend‐ecomposition to analyze statistical variations in image intensity and shape information in study population, is used to capture global shape characteristics of each structure of interest with a generative model. Patch‐based local refinement, using nonlocal means to compare the image local intensity properties, is applied to locally refine the segmentation results along the structure borders to improve structure delimitation. In this manner, nonlocal regularization and global shape constraints could allow more accurate segmentations of structures. Validation experiments against manually defined labels demonstrate that this new segmentation method is computationally efficient, robust, and accurate. In a leave‐one‐out validation on 54 normal young adults, the method yielded a mean Dice κ of 0.87 for the HC, 0.81 for the AG, 0.73 for the anterior parts of the parahippocampal gyrus (entorhinal and perirhinal cortex), and 0.73 for the posterior parahippocampal gyrus. Hum Brain Mapp 35:377–395, 2014. © 2012 Wiley Periodicals, Inc.
机译:人内侧颞叶(MTL)是边缘系统的重要组成部分,其亚结构在学习,记忆和神经退行性变中起关键作用。 MTL包括海马(HC),杏仁核(AG),海马旁皮质(PHC),内嗅皮层和周围神经皮层-形状复杂且结构间强度对比低的结构,使其难以在磁场中手动分割共振图像。本文介绍了一种新的分割方法,该方法结合了主动外观模型和基于补丁的局部细化功能,可以根据MRI数据自动分割MTL的特定子结构,包括HC,AG,PHC和内嗅/周围神经皮质。外观建模依赖于eigend合成来分析研究人群中图像强度和形状信息的统计变化,用于通过生成模型捕获每个感兴趣结构的全局形状特征。基于补丁的局部细化,使用非局部方法比较图像的局部强度属性,可用于沿结构边界局部细化分割结果,以改善结构定界。以这种方式,非局部正则化和整体形状约束可以允许更精确的结构分割。针对手动定义的标签进行的验证实验表明,这种新的细分方法具有计算效率高,功能强大且准确的特点。在对54名正常年轻人进行的一劳永逸验证中,该方法得出HC的平均Diceκ为0.87,AG的平均Diceκ为0.81,海马旁回的前部(肠胃和皮层的皮质)的平均Dice值为0.73,0.73后海马旁回。嗡嗡声脑图,2014年35:377–395。©2012 Wiley Periodicals,Inc.

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