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Robust functional clustering of ERP data with application to a study of implicit learning in autism

机译:ERP数据的强大功能聚类及其在自闭症隐性学习研究中的应用

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Motivated by a study on visual implicit learning in young children with Autism Spectrum Disorder (ASD), we propose a robust functional clustering (RFC) algorithm to identify subgroups within electroencephalography (EEG) data. The proposed RFC is an iterative algorithm based on functional principal component analysis, where cluster membership is updated via predictions of the functional trajectories obtained through a non-parametric random effects model. We consider functional data resulting from event-related potential (ERP) waveforms representing EEG time-locked to stimuli over the course of an implicit learning experiment, after applying a previously proposed meta-preprocessing step. This meta-preprocessing is designed to increase the low signal-to-noise ratio in the raw data and to mitigate the longitudinal changes in the ERP waveforms which characterize the nature and speed of learning. The resulting functional ERP components (peak amplitudes and latencies) inherently exhibit covariance heterogeneity due to low data quality over some stimuli inducing the averaging of different numbers of waveforms in sliding windows of the meta-preprocessing step. The proposed RFC algorithm incorporates this known covariance heterogeneity into the clustering algorithm, improving cluster quality, as illustrated in the data application and extensive simulation studies. ASD is a heterogeneous syndrome and identifying subgroups within ASD children is of interest for understanding the diverse nature of this complex disorder. Applications to the implicit learning paradigm identify subgroups within ASD and typically developing children with diverse learning patterns over the course of the experiment, which may inform clinical stratification of ASD.
机译:通过对自闭症谱系障碍(ASD)的幼儿进行视觉内隐学习的研究,我们提出了一种鲁棒的功能聚类(RFC)算法,以识别脑电图(EEG)数据中的子组。所提出的RFC是基于功能主成分分析的迭代算法,其中簇成员身份是通过对通过非参数随机效应模型获得的功能轨迹的预测进行更新的。在应用先前提出的元预处理步骤后,我们考虑由表示与脑电相关的事件相关电位(ERP)波形在隐式学习实验过程中被时间锁定到刺激的功能数据。这种元预处理的目的是提高原始数据中的低信噪比,并减轻ERP波形的纵向变化,这些变化代表了学习的本质和速度。由于某些刺激导致数据质量低,导致元预处理步骤的滑动窗口中不同数量波形的平均化,因此所得的功能性ERP组件(峰值幅度和延迟)固有地表现出协方差异质性。如数据应用和广泛的仿真研究所示,所提出的RFC算法将这种已知的协方差异构性纳入了聚类算法,从而提高了聚类质量。 ASD是一种异质综合症,在ASD儿童中识别亚组对于了解这种复杂疾病的多样性具有重要意义。隐性学习范式的应用识别了ASD内的亚组,并且通常在实验过程中发展出具有不同学习模式的儿童,这可能会为ASD的临床分层提供信息。

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