There is increasing evidence on the importance of brain morphology in predicting and classifying mental disorders. However, the vast majority of current shape approaches rely heavily on vertex-wise analysis that may not successfully capture complexities of subcortical structures. Additionally, the past works do not include interactions between these structures and exposure factors. Predictive modeling with such interactions is of paramount interest in heterogeneous mental disorders such as PTSD, where trauma exposure interacts with brain shape changes to influence behavior. We propose a comprehensive framework that overcomes these limitations by representing brain substructures as continuous parameterized surfaces and quantifying their shape differences using elastic shape metrics. Using the elastic shape metric, we compute shape summaries of subcortical data and represent individual shapes by their principal scores. These representations allow visualization tools that help localize changes when these PCs are varied. Subsequently, these PCs, the auxiliary exposure variables, and their interactions are used for regression modeling. We apply our method to data from the Grady Trauma Project, where the goal is to predict clinical measures of PTSD using shapes of brain substructures. Our analysis revealed considerably greater predictive power under the elastic shape analysis than widely used approaches such as vertex-wise shape analysis and even volumetric analysis. It helped identify local deformations in brain shapes related to change in PTSD severity. To our knowledge, this is one of the first brain shape analysis approaches that can seamlessly integrate the pre-processing steps under one umbrella for improved accuracy and are naturally able to account for interactions between brain shape and additional covariates to yield superior predictive performance when modeling clinical outcomes.
翻译:越来越多的证据表明大脑形态学在预测和分类精神失常方面的重要性。然而,目前绝大多数形状方法在很大程度上依赖于脊椎分析,可能无法成功捕捉到亚表层结构的复杂性。此外,过去的工作并不包括这些结构与暴露因素之间的相互作用。预测性模型与这种相互作用对于多种精神障碍具有极大的意义,例如创伤暴露与大脑形状变化相互作用以影响行为。我们提议了一个全面的框架,通过将大脑下层结构作为连续参数化的表层来克服这些局限性,并用弹性形状度度度度测量其形状差异。使用弹性度度度形状测量,我们计算亚表层数据的形状摘要,并用其主要分数来代表个别形状。这些表情显示视觉化工具,有助于在这些PC变异的情况下将变化本地化。这些PC、辅助暴露变量及其相互作用被用来进行回归模型。我们用我们的方法用于Grady Trauma项目的数据,其中的目标就是用大脑下下层结构的形状来预测PTSD的临床测量结果。我们的分析在一种大脑下层结构的形状下进行更精确的形态分析,而我们用这种分析可以大大地预测力分析,在一种大脑的形状下进行更精确的形状下进行更精确的形态分析。我们所使用的方法可以用来分析,在一种结构的形状下进行更精确的形状下进行更精确的形态分析,在分析中进行更精确的形态分析。我们用来分析,这种分析,在分析时用来预测的形态的形态的形态的形态下进行更精确的形状下进行更精确的形态分析。