Department of Mathematics, Koç University, Rumelifeneri Yolu, 34450 Sarıyer, Istanbul, Turkey.
Comput Med Imaging Graph. 2011 Jun;35(4):275-93. doi: 10.1016/j.compmedimag.2011.01.005. Epub 2011 Feb 22.
The metric distance obtained from the large deformation diffeomorphic metric mapping (LDDMM) algorithm is used to quantize changes in morphometry of brain structures due to neuropsychiatric diseases. For illustrative purposes we consider changes in hippocampal morphometry (shape and size) due to very mild dementia of the Alzheimer type (DAT). LDDMM, which was previously used to calculate dense one-to-one correspondence vector fields between hippocampal shapes, measures the morphometric differences with respect to a template hippocampus by assigning metric distances on the space of anatomical images thereby allowing for direct comparison of morphometric differences. We characterize what information the metric distances provide in terms of size and shape given the hippocampal, brain and intracranial volumes. We demonstrate that metric distance is a measure of morphometry (i.e., shape and size) but mostly a measure of shape, while volume is mostly a measure of size. Moreover, we show how metric distances can be used in cross-sectional, longitudinal analysis, as well as left-right asymmetry comparisons, and provide how the metric distances can serve as a discriminative tool using logistic regression. Thus, we show that metric distances with respect to a template computed via LDDMM can be a powerful tool in detecting differences in shape.
大变形微分同胚度量映射(LDDMM)算法得到的度量距离用于量化神经精神疾病引起的脑结构形态变化。为了说明问题,我们考虑了由于非常轻度的阿尔茨海默病型痴呆(DAT)引起的海马形态变化(形状和大小)。LDDMM 以前用于计算海马形状之间密集的一一对应向量场,通过在解剖图像空间上分配度量距离来测量相对于模板海马的形态差异,从而允许直接比较形态差异。我们根据海马、大脑和颅内体积来描述度量距离在大小和形状方面提供了什么信息。我们证明了度量距离是形态学(即形状和大小)的度量,但主要是形状的度量,而体积主要是大小的度量。此外,我们展示了如何在横截面、纵向分析以及左右不对称比较中使用度量距离,并提供了如何使用逻辑回归将度量距离用作判别工具。因此,我们表明,通过 LDDMM 计算的相对于模板的度量距离可以成为检测形状差异的有力工具。