Azadeh Shabnam, Hobbs Brian P, Ma Liangsuo, Nielsen David A, Gerard Moeller F, Baladandayuthapani Veerabhadran
Department of Biostatistics, The University of Texas MD Anderson Cancer Center, Houston, TX, USA; School of Public Health, The University of Texas Health Science Center, Houston, TX, USA.
Department of Biostatistics, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Neuroimage. 2016 Jan 15;125:813-824. doi: 10.1016/j.neuroimage.2015.10.033. Epub 2015 Oct 17.
Neuroimaging and genetic studies provide distinct and complementary information about the structural and biological aspects of a disease. Integrating the two sources of data facilitates the investigation of the links between genetic variability and brain mechanisms among different individuals for various medical disorders. This article presents a general statistical framework for integrative Bayesian analysis of neuroimaging-genetic (iBANG) data, which is motivated by a neuroimaging-genetic study in cocaine dependence. Statistical inference necessitated the integration of spatially dependent voxel-level measurements with various patient-level genetic and demographic characteristics under an appropriate probability model to account for the multiple inherent sources of variation. Our framework uses Bayesian model averaging to integrate genetic information into the analysis of voxel-wise neuroimaging data, accounting for spatial correlations in the voxels. Using multiplicity controls based on the false discovery rate, we delineate voxels associated with genetic and demographic features that may impact diffusion as measured by fractional anisotropy (FA) obtained from DTI images. We demonstrate the benefits of accounting for model uncertainties in both model fit and prediction. Our results suggest that cocaine consumption is associated with FA reduction in most white matter regions of interest in the brain. Additionally, gene polymorphisms associated with GABAergic, serotonergic and dopaminergic neurotransmitters and receptors were associated with FA.
神经影像学和遗传学研究提供了关于疾病结构和生物学方面的不同但互补的信息。整合这两种数据来源有助于研究不同个体间各种医学疾病的基因变异性与脑机制之间的联系。本文提出了一种用于神经影像学-遗传学(iBANG)数据综合贝叶斯分析的通用统计框架,该框架源于一项关于可卡因依赖的神经影像学-遗传学研究。统计推断需要在适当的概率模型下,将空间相关的体素水平测量值与各种患者水平的基因和人口统计学特征相结合,以考虑多种内在变异来源。我们的框架使用贝叶斯模型平均法将基因信息整合到体素级神经影像学数据的分析中,同时考虑体素中的空间相关性。通过基于错误发现率的多重性控制,我们确定了与基因和人口统计学特征相关的体素,这些特征可能会影响通过扩散张量成像(DTI)图像获得的分数各向异性(FA)所测量的扩散。我们展示了在模型拟合和预测中考虑模型不确定性的好处。我们的结果表明,可卡因消费与大脑中大多数感兴趣白质区域的FA降低有关。此外,与γ-氨基丁酸能、5-羟色胺能和多巴胺能神经递质及受体相关的基因多态性与FA有关。