Department of Biostatistics, University of California, Los Angeles, California.
Department of Psychiatry and Biobehavioral Sciences, University of California, Los Angeles, California.
Stat Med. 2024 Jul 30;43(17):3239-3263. doi: 10.1002/sim.10131. Epub 2024 Jun 1.
Autism spectrum disorder (autism) is a prevalent neurodevelopmental condition characterized by early emerging impairments in social behavior and communication. EEG represents a powerful and non-invasive tool for examining functional brain differences in autism. Recent EEG evidence suggests that greater intra-individual trial-to-trial variability across EEG responses in stimulus-related tasks may characterize brain differences in autism. Traditional analysis of EEG data largely focuses on mean trends of the trial-averaged data, where trial-level analysis is rarely performed due to low neural signal to noise ratio. We propose to use nonlinear (shape-invariant) mixed effects (NLME) models to study intra-individual inter-trial EEG response variability using trial-level EEG data. By providing more precise metrics of response variability, this approach could enrich our understanding of neural disparities in autism and potentially aid the identification of objective markers. The proposed multilevel NLME models quantify variability in the signal's interpretable and widely recognized features (e.g., latency and amplitude) while also regularizing estimation based on noisy trial-level data. Even though NLME models have been studied for more than three decades, existing methods cannot scale up to large data sets. We propose computationally feasible estimation and inference methods via the use of a novel minorization-maximization (MM) algorithm. Extensive simulations are conducted to show the efficacy of the proposed procedures. Applications to data from a large national consortium find that children with autism have larger intra-individual inter-trial variability in P1 latency in a visual evoked potential (VEP) task, compared to their neurotypical peers.
自闭症谱系障碍(自闭症)是一种常见的神经发育障碍,其特征是早期出现社交行为和沟通方面的障碍。脑电图(EEG)是一种强大的、非侵入性的工具,可用于检查自闭症患者大脑的功能差异。最近的脑电图证据表明,在与刺激相关的任务中,脑电图反应的个体内试验间变异性增加可能是自闭症患者大脑差异的特征。传统的脑电图数据分析主要集中在试验平均数据的平均值趋势上,由于神经信号与噪声的比率低,很少进行试验水平的分析。我们建议使用非线性(形状不变)混合效应(NLME)模型来研究个体内试验间脑电图反应的变异性,使用试验水平的脑电图数据。通过提供更精确的反应变异性度量,这种方法可以丰富我们对自闭症中神经差异的理解,并可能有助于识别客观标志物。所提出的多层次 NLME 模型量化了信号可解释和广泛认可的特征(例如潜伏期和振幅)的变异性,同时还基于嘈杂的试验水平数据对估计进行正则化。尽管 NLME 模型已经研究了三十多年,但现有的方法无法扩展到大型数据集。我们通过使用新的最小化-最大化(MM)算法来提出计算上可行的估计和推断方法。进行了广泛的模拟以显示所提出的程序的有效性。对来自大型国家联盟的数据的应用发现,与神经典型的同龄人相比,自闭症儿童在视觉诱发电位(VEP)任务中 P1 潜伏期的个体内试验间变异性更大。