QUANTIFYING HIPPOCAMPAL SHAPE ASYMMETRY IN ALZHEIMER'S DISEASE USING OPTIMAL SHAPE CORRESPONDENCES.

Shen Zhu, Ifrah Zawar, Jaideep Kapur, P Thomas Fletcher
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Abstract

Hippocampal atrophy in Alzheimer's disease (AD) is asymmetric and spatially inhomogeneous. While extensive work has been done on volume and shape analysis of atrophy of the hippocampus in AD, less attention has been given to hippocampal asymmetry specifically. Previous studies of hippocampal asymmetry are limited to global volume or shape measures, which don't localize shape asymmetry at the point level. In this paper, we propose to quantify localized shape asymmetry by optimizing point correspondences between left and right hippocampi within a subject, while simultaneously favoring a compact statistical shape model of the entire sample. To account for related variables that have an impact on AD and healthy subject differences, we build linear models with other confounding factors. Our results on the OASIS3 dataset demonstrate that compared to volumetric information, shape asymmetry reveals fine-grained, localized differences that inform us about the hippocampal regions of most significant shape asymmetry in AD patients.

利用最佳形状对应关系量化阿尔茨海默病的海马形状不对称。
阿尔茨海默病(AD)的海马体萎缩是不对称和空间不均匀的。虽然对阿尔茨海默病海马体萎缩的体积和形状分析已经做了大量工作,但对海马体不对称性的具体研究关注较少。以往对海马体不对称性的研究仅限于整体体积或形状测量,无法在点水平上定位形状不对称性。在本文中,我们建议通过优化受试者左右海马之间的点对应关系来量化局部形状不对称性,同时偏向于整个样本的紧凑统计形状模型。为了考虑对注意力缺失症和健康受试者差异有影响的相关变量,我们建立了包含其他混杂因素的线性模型。我们对 OASIS3 数据集的研究结果表明,与体积信息相比,形状不对称性揭示了细粒度的局部差异,让我们了解到在 AD 患者中形状不对称性最显著的海马区。
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