A morphometrics approach for inclusion of localised characteristics from medical imaging studies into genome-wide association studies

Gabrielle Dagasso, M. Wilms, N. Forkert
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Abstract

Medical images, such as magnetic resonance or computed tomography, are increasingly being used to investigate the genetic architecture of neurological diseases like Alzheimer’s disease, or psychiatric disorders like attention-deficit hyperactivity disorder. The quantified global or regional brain imaging measures are commonly known as imaging-specific or -derived phenotypes (IDPs) when conducting genotype-phenotype association studies. Inclusion of whole medical images rather than derived tabular data as IDPs has been done by either a voxelwise approach or a global approach of whole medical images via principal component analysis. Limitations with multiple testing and inability to isolate high variation regions within the principal components arise with either of these approaches. This work proposes a principal component analysis-like localised approach of dimensionality reduction using diffeomorphic morphometry allowing for the selection of distances to model more regional effects. The main benefit of the proposed method is that it can can reduce the dimensionality of the problem considerably in comparison to the medical image’s variability it is describing while grouping spatial information potentially lost in dimensionality reduction techniques like principal component analyses. Moreover, the approach not only allows to include locality in the analysis but can also be used as a generative model to explore the morphometric changes across an axis of particular components of interest. To demonstrate the feasibility of this pipeline for inclusion in a multivariate genome-wide association study, it was applied to 1,359 subjects from the Adolescent Brain Cognitive Development Study for traits related to attention-deficit disorder. The results show that the proposed method can identify more specific morphometric features associated with genome regions.
将医学影像学研究中的局部特征纳入全基因组关联研究的形态计量学方法
磁共振或计算机断层扫描等医学图像正越来越多地用于研究阿尔茨海默病等神经系统疾病或注意力缺陷多动障碍等精神疾病的遗传结构。在进行基因型-表型关联研究时,量化的全球或区域脑成像测量通常被称为成像特异性或衍生表型(IDPs)。通过体素方法或通过主成分分析的整体医学图像方法,将整个医学图像而不是派生的表格数据纳入国内流离失所者。这些方法中的任何一种都存在多重测试的局限性和无法在主成分中隔离高变化区域的能力。这项工作提出了一种类似于主成分分析的局部降维方法,使用微分形态测量法,允许选择距离来模拟更多的区域效应。该方法的主要优点是,与医学图像的可变性相比,它可以大大降低问题的维数,同时分组在主成分分析等降维技术中可能丢失的空间信息。此外,该方法不仅允许在分析中包含局部性,而且还可以用作生成模型,以探索跨特定感兴趣组件轴的形态测量学变化。为了证明该方法在多变量全基因组关联研究中的可行性,研究人员将其应用于青少年大脑认知发展研究中的1359名受试者,以研究与注意力缺陷障碍相关的特征。结果表明,该方法可以识别与基因组区域相关的更具体的形态特征。
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