Brain pathologies often manifest as partial or complete loss of tissue. The goal of many neuroimaging studies is to capture the location and amount of tissue changes with respect to a clinical variable of interest, such as disease progression. Morphometric analysis approaches capture local differences in the distribution of tissue or other quantities of interest in relation to a clinical variable. We propose to augment morphometric analysis with an additional feature extraction step based on unbalanced optimal transport. The optimal transport feature extraction step increases statistical power for pathologies that cause spatially dispersed tissue loss, minimizes sensitivity to shifts due to spatial misalignment or differences in brain topology, and separates changes due to volume differences from changes due to tissue location. We demonstrate the proposed optimal transport feature extraction step in the context of a volumetric morphometric analysis of the OASIS-1 study for Alzheimer's disease. The results demonstrate that the proposed approach can identify tissue changes and differences that are not otherwise measurable.
翻译:许多神经成形研究的目的是为了捕捉组织变化的位置和数量与病变等引起兴趣的临床变量有关,例如疾病演变; 摩光度分析方法捕捉到组织分布的当地差异或与临床变量有关的其它利益数量; 我们提议在不平衡的最佳迁移基础上增加一个特征提取步骤,以补充特征提取步骤为基础; 最佳运输特征提取步骤增加了造成空间分散组织损失的病变的统计动力,最大限度地减少由于空间失调或大脑地形差异而对转移的敏感度,并区分因组织位置变化造成的体积差异引起的变化; 我们展示了在对阿尔茨海默氏1号研究的体积模型分析中拟议的最佳迁移特征提取步骤; 结果表明,拟议的方法可以查明组织变化和差异,而这些变化和差异无法加以衡量。