Hasenstab Kyle, Scheffler Aaron, Telesca Donatello, Sugar Catherine A, Jeste Shafali, DiStefano Charlotte, Şentürk Damla
Department of Statistics, University of California, Los Angeles, California 90095, U.S.A.
Department of Biostatistics, University of California, Los Angeles, California 90095, U.S.A.
Biometrics. 2017 Sep;73(3):999-1009. doi: 10.1111/biom.12635. Epub 2017 Jan 10.
The electroencephalography (EEG) data created in event-related potential (ERP) experiments have a complex high-dimensional structure. Each stimulus presentation, or trial, generates an ERP waveform which is an instance of functional data. The experiments are made up of sequences of multiple trials, resulting in longitudinal functional data and moreover, responses are recorded at multiple electrodes on the scalp, adding an electrode dimension. Traditional EEG analyses involve multiple simplifications of this structure to increase the signal-to-noise ratio, effectively collapsing the functional and longitudinal components by identifying key features of the ERPs and averaging them across trials. Motivated by an implicit learning paradigm used in autism research in which the functional, longitudinal, and electrode components all have critical interpretations, we propose a multidimensional functional principal components analysis (MD-FPCA) technique which does not collapse any of the dimensions of the ERP data. The proposed decomposition is based on separation of the total variation into subject and subunit level variation which are further decomposed in a two-stage functional principal components analysis. The proposed methodology is shown to be useful for modeling longitudinal trends in the ERP functions, leading to novel insights into the learning patterns of children with Autism Spectrum Disorder (ASD) and their typically developing peers as well as comparisons between the two groups. Finite sample properties of MD-FPCA are further studied via extensive simulations.
事件相关电位(ERP)实验中产生的脑电图(EEG)数据具有复杂的高维结构。每次刺激呈现或试验都会生成一个ERP波形,它是功能数据的一个实例。实验由多个试验序列组成,从而产生纵向功能数据,此外,在头皮上的多个电极处记录响应,增加了一个电极维度。传统的EEG分析涉及对这种结构进行多种简化以提高信噪比,通过识别ERP的关键特征并在各试验中对其进行平均,有效地合并了功能和纵向成分。受自闭症研究中使用的一种内隐学习范式的启发,其中功能、纵向和电极成分都有重要解释,我们提出了一种多维功能主成分分析(MD-FPCA)技术,该技术不会合并ERP数据的任何维度。所提出的分解基于将总变异分离为个体和亚单位水平变异,然后在两阶段功能主成分分析中进一步分解。所提出的方法被证明对于模拟ERP功能中的纵向趋势是有用的,从而为自闭症谱系障碍(ASD)儿童及其发育正常的同龄人以及两组之间的比较提供了新的见解。通过广泛的模拟进一步研究了MD-FPCA的有限样本性质。