» Articles » PMID: 26195327

Identifying Longitudinal Trends Within EEG Experiments

Overview
Journal Biometrics
Specialty Public Health
Date 2015 Jul 22
PMID 26195327
Citations 10
Authors
Affiliations
Soon will be listed here.
Abstract

Differential brain response to sensory stimuli is very small (a few microvolts) compared to the overall magnitude of spontaneous electroencephalogram (EEG), yielding a low signal-to-noise ratio (SNR) in studies of event-related potentials (ERP). To cope with this phenomenon, stimuli are applied repeatedly and the ERP signals arising from the individual trials are averaged at the subject level. This results in loss of information about potentially important changes in the magnitude and form of ERP signals over the course of the experiment. In this article, we develop a meta-preprocessing step utilizing a moving average of ERP across sliding trial windows, to capture such longitudinal trends. We embed this procedure in a weighted linear mixed effects model to describe longitudinal trends in features such as ERP peak amplitude and latency across trials while adjusting for the inherent heteroskedasticity created at the meta-preprocessing step. The proposed unified framework, including the meta-processing and the weighted linear mixed effects modeling steps, is referred to as MAP-ERP (moving-averaged-processed ERP). We perform simulation studies to assess the performance of MAP-ERP in reconstructing existing longitudinal trends and apply MAP-ERP to data from young children with autism spectrum disorder (ASD) and their typically developing counterparts to examine differences in patterns of implicit learning, providing novel insights about the mechanisms underlying social and/or cognitive deficits in this disorder.

Citing Articles

Inverse set estimation and inversion of simultaneous confidence intervals.

Ren J, Telschow F, Schwartzman A J R Stat Soc Ser C Appl Stat. 2024; 73(4):1082-1109.

PMID: 39145308 PMC: 11321826. DOI: 10.1093/jrsssc/qlae027.


Topological Data Analysis for Multivariate Time Series Data.

El-Yaagoubi A, Chung M, Ombao H Entropy (Basel). 2023; 25(11).

PMID: 37998201 PMC: 10669999. DOI: 10.3390/e25111509.


In search of a composite biomarker for chronic pain by way of EEG and machine learning: where do we currently stand?.

Rockholt M, Kenefati G, Doan L, Chen Z, Wang J Front Neurosci. 2023; 17:1186418.

PMID: 37389362 PMC: 10301750. DOI: 10.3389/fnins.2023.1186418.


A study of longitudinal trends in time-frequency transformations of EEG data during a learning experiment.

Boland J, Telesca D, Sugar C, Jeste S, Goldbeck C, Senturk D Comput Stat Data Anal. 2022; 167.

PMID: 35663825 PMC: 9165216. DOI: 10.1016/j.csda.2021.107367.


Inferring Brain Signals Synchronicity from a Sample of EEG Readings.

Li Q, Senturk D, Sugar C, Jeste S, DiStefano C, Frohlich J J Am Stat Assoc. 2020; 114(527):991-1001.

PMID: 33100436 PMC: 7580714. DOI: 10.1080/01621459.2018.1518233.