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A New Statistical Image Analysis Approach and Its Application to Hippocampal Morphometry

机译:一种新的统计图像分析方法及其在海马形态学的应用

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In this work, we propose a novel and powerful image analysis framework for hippocampal morphometry in early mild cognitive impairment (EMCI), an early prodromal stage of Alzheimer's disease (AD). We create a hippocampal surface atlas with subfield information, model each hippocampus using the SPHARM technique, and register it to the atlas to extract surface deformation signals. We propose a new alternative to standard random field theory (RFT) and permutation image analysis methods, Statistical Parametric Mapping (SPM) Distribution Analysis or SPM-DA, to perform statistical shape analysis and compare its performance with that of RFT methods on both simulated and real hippocampal surface data. The major strengths of our framework are twofold: (a) SPM-DA provides potentially more powerful algorithms than standard RFT methods for detecting weak signals, and (b) the framework embraces the important hippocampal subfield information for improved biological interpretation. We demonstrate the effectiveness of our method via an application to an AD cohort, where an SPM-DA method detects meaningful hippocampal shape differences in EMCI that are undetected by standard RFT methods.
机译:在这项工作中,我们提出了一种新的和强大的图像分析框架,用于早期轻度认知障碍(EMCI),早期的阿尔茨海默病(AD)的早期前驱阶段进行海马形态学。我们使用Subfield信息创建一个海马表面图集,使用Spharm技术模拟每个海马,并将其注册到Atlas以提取表面变形信号。我们提出了一种新的替代标准随机场理论(RFT)和置换图像分析方法,统计参数映射(SPM)分布分析或SPM-DA,以执行统计形状分析,并将其性能与模拟和模拟两者的RFT方法进行比较真正的海马表面数据。我们的框架的主要优势是双重的:(a)SPM-DA提供比标准RFT方法提供更强大的算法,用于检测弱信号,并且(B)该框架包括改进生物解释的重要海马子场信息。我们通过应用于AD队列的应用程序展示了方法的有效性,其中SPM-DA方法检测到由标准RFT方法未检测到的EMCI中的有意义的海马形状差异。

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