Ceyhan E, Hosakere M, Nishino T, Alexopoulos J, Todd R D, Botteron K N, Miller M I, Ratnanather J T
Dept. of Mathematics, Koç University, 34450, Sariyer, Istanbul, Turkey.
J Math Imaging Vis. 2011 May;40(1):20-35. doi: 10.1007/s10851-010-0240-4.
Neuropsychiatric disorders have been demonstrated to manifest shape differences in cortical structures. Labeled Cortical Distance Mapping (LCDM) is a powerful tool in quantifying such morphometric differences and characterizes the morphometry of the laminar cortical mantle of cortical structures. Specifically, LCDM data are distances of labeled gray matter (GM) voxels with respect to the gray/white matter cortical surface. Volumes and descriptive measures (such as means and variances for each subject) based on LCDM distances provide descriptive summary information on some of the shape characteristics. However, additional morphometrics are contained in the data and their analysis may provide additional clues to underlying differences in cortical characteristics. To use more of this information, we pool (merge) LCDM distances from subjects in the same group. These pooled distances can help detect morphometric differences between groups, but do not provide information about the locations of such differences in the tissue in question. In this article, we check for the influence of the assumption violations on the analysis of pooled LCDM distances. We demonstrate that the classical parametric tests are robust to the non-normality and within sample dependence of LCDM distances and nonparametric tests are robust to within sample dependence of LCDM distances. We specify the types of alternatives for which the tests are more sensitive. We also show that the pooled LCDM distances provide powerful results for group differences in distribution of LCDM distances. As an illustrative example, we use GM in the ventral medial prefrontal cortex (VMPFC) in subjects with major depressive disorder (MDD), subjects at high risk (HR) of MDD, and healthy subjects. Significant morphometric differences were found in VMPFC due to MDD or being at HR. In particular, the analysis indicated that distances in left and right VMPFCs tend to decrease due to MDD or being at HR, possibly as a result of thinning. The methodology can also be applied to other cortical structures.
神经精神疾病已被证明在皮质结构上表现出形状差异。标记皮质距离映射(LCDM)是一种强大的工具,可用于量化此类形态测量差异,并表征皮质结构的层状皮质套膜的形态测量特征。具体而言,LCDM数据是标记的灰质(GM)体素相对于灰质/白质皮质表面的距离。基于LCDM距离的体积和描述性测量(例如每个受试者的均值和方差)提供了有关某些形状特征的描述性汇总信息。然而,数据中还包含其他形态测量信息,对其进行分析可能会为皮质特征的潜在差异提供更多线索。为了利用更多此类信息,我们将同一组受试者的LCDM距离进行汇总(合并)。这些汇总距离有助于检测组间的形态测量差异,但无法提供有关所讨论组织中此类差异位置的信息。在本文中,我们检查了假设违背对汇总LCDM距离分析的影响。我们证明,经典参数检验对LCDM距离的非正态性和样本内依赖性具有稳健性,而非参数检验对LCDM距离的样本内依赖性具有稳健性。我们指定了检验更敏感的替代类型。我们还表明,汇总的LCDM距离为LCDM距离分布的组间差异提供了有力结果。作为一个说明性示例,我们使用了重度抑郁症(MDD)患者、MDD高危(HR)受试者和健康受试者腹内侧前额叶皮质(VMPFC)中的GM。由于MDD或处于HR状态,在VMPFC中发现了显著的形态测量差异。特别是,分析表明,由于MDD或处于HR状态,左右VMPFC中的距离往往会减小,这可能是变薄的结果。该方法也可应用于其他皮质结构。