Cortical Morphometry Analysis based on Worst Transportation Theory.

Min Zhang, Dongsheng An, Na Lei, Jianfeng Wu, Tong Zhao, Xiaoyin Xu, Yalin Wang, Xianfeng Gu
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Abstract

Biomarkers play an important role in early detection and intervention in Alzheimer's disease (AD). However, obtaining effective biomarkers for AD is still a big challenge. In this work, we propose to use the worst transportation cost as a univariate biomarker to index cortical morphometry for tracking AD progression. The worst transportation (WT) aims to find the least economical way to transport one measure to the other, which contrasts to the optimal transportation (OT) that finds the most economical way between measures. To compute the WT cost, we generalize the Brenier theorem for the OT map to the WT map, and show that the WT map is the gradient of a concave function satisfying the Monge-Ampere equation. We also develop an efficient algorithm to compute the WT map based on computational geometry. We apply the algorithm to analyze cortical shape difference between dementia due to AD and normal aging individuals. The experimental results reveal the effectiveness of our proposed method which yields better statistical performance than other competiting methods including the OT.

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基于最坏运输理论的皮质形态计量学分析。
生物标志物在阿尔茨海默病(AD)的早期发现和干预中发挥着重要作用。然而,获得有效的AD生物标志物仍然是一个很大的挑战。在这项工作中,我们建议使用最差运输成本作为单变量生物标志物来索引皮质形态测量,以跟踪AD的进展。最差运输(WT)的目标是寻找最不经济的方式将一个措施运输到另一个措施,而最优运输(OT)是寻找最经济的方式在措施之间。为了计算WT代价,我们将OT映射的Brenier定理推广到WT映射,并证明WT映射是满足Monge-Ampere方程的凹函数的梯度。我们还开发了一种基于计算几何的高效算法来计算WT映射。我们应用该算法分析了阿尔茨海默氏症引起的痴呆与正常衰老个体之间皮层形状的差异。实验结果表明了该方法的有效性,其统计性能优于包括OT在内的其他竞争方法。
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