Li Qian, Shamshoian John, Şentürk Damla, Sugar Catherine, Jeste Shafali, DiStefano Charlotte, Telesca Donatello
Department of Biostatistics, UCLA Fielding School of Public Health, University of California, Los Angeles.
Department of Psychiatry and Department of Psychiatry and Biobehavioral Sciences, UCLA David Geffen School of Medicine, University of California, Los Angeles.
Ann Appl Stat. 2020 Dec;14(4):2053-2068. doi: 10.1214/20-aoas1374. Epub 2020 Dec 19.
Functional brain imaging through electroencephalography (EEG) relies upon the analysis and interpretation of high-dimensional, spatially organized time series. We propose to represent time-localized frequency domain characterizations of EEG data as region-referenced functional data. This representation is coupled with a hierarchical regression modeling approach to multivariate functional observations. Within this familiar setting we discuss how several prior models relate to structural assumptions about multivariate covariance operators. An overarching modeling framework, based on infinite factorial decompositions, is finally proposed to balance flexibility and efficiency in estimation. The motivating application stems from a study of implicit auditory learning, in which typically developing (TD) children, and children with autism spectrum disorder (ASD) were exposed to a continuous speech stream. Using the proposed model, we examine differential band power dynamics as brain function is interrogated throughout the duration of a computer-controlled experiment. Our work offers a novel look at previous findings in psychiatry and provides further insights into the understanding of ASD. Our approach to inference is fully Bayesian and implemented in a highly optimized Rcpp package.
通过脑电图(EEG)进行的功能性脑成像依赖于对高维、空间组织化时间序列的分析和解释。我们建议将EEG数据的时间局部化频域特征表示为区域参考功能数据。这种表示与多元功能观测的分层回归建模方法相结合。在这个熟悉的框架内,我们讨论了几种先验模型如何与关于多元协方差算子的结构假设相关。最后提出了一个基于无限因子分解的总体建模框架,以平衡估计中的灵活性和效率。这项研究的动机源于一项关于内隐听觉学习的研究,其中正常发育(TD)儿童和自闭症谱系障碍(ASD)儿童接触了连续的语音流。使用所提出的模型,我们在计算机控制实验的整个过程中探究脑功能时,检查了不同频段功率动态。我们的工作为精神病学以前的研究结果提供了新的视角,并为理解ASD提供了进一步的见解。我们的推理方法是完全贝叶斯的,并在一个高度优化的Rcpp包中实现。