TY - JOUR
T1 - Removing an intersubject variance component in a general linear model improves multiway factoring of event-related spectral perturbations in group EEG studies
AU - Spence, Jeffrey S.
AU - Brier, Matthew R.
AU - Hart, John
AU - Ferree, Thomas C.
PY - 2013/3
Y1 - 2013/3
N2 - Linear statistical models are used very effectively to assess task-related differences in EEG power spectral analyses. Mixed models, in particular, accommodate more than one variance component in a multisubject study, where many trials of each condition of interest are measured on each subject. Generally, intra- and intersubject variances are both important to determine correct standard errors for inference on functions of model parameters, but it is often assumed that intersubject variance is the most important consideration in a group study. In this article, we show that, under common assumptions, estimates of some functions of model parameters, including estimates of task-related differences, are properly tested relative to the intrasubject variance component only. A substantial gain in statistical power can arise from the proper separation of variance components when there is more than one source of variability. We first develop this result analytically, then show how it benefits a multiway factoring of spectral, spatial, and temporal components from EEG data acquired in a group of healthy subjects performing a well-studied response inhibition task. Hum Brain Mapp, 2013.
AB - Linear statistical models are used very effectively to assess task-related differences in EEG power spectral analyses. Mixed models, in particular, accommodate more than one variance component in a multisubject study, where many trials of each condition of interest are measured on each subject. Generally, intra- and intersubject variances are both important to determine correct standard errors for inference on functions of model parameters, but it is often assumed that intersubject variance is the most important consideration in a group study. In this article, we show that, under common assumptions, estimates of some functions of model parameters, including estimates of task-related differences, are properly tested relative to the intrasubject variance component only. A substantial gain in statistical power can arise from the proper separation of variance components when there is more than one source of variability. We first develop this result analytically, then show how it benefits a multiway factoring of spectral, spatial, and temporal components from EEG data acquired in a group of healthy subjects performing a well-studied response inhibition task. Hum Brain Mapp, 2013.
KW - Principal components
KW - Statistical power
KW - Time-frequency analysis
UR - http://www.scopus.com/inward/record.url?scp=84873440349&partnerID=8YFLogxK
U2 - 10.1002/hbm.21462
DO - 10.1002/hbm.21462
M3 - Article
C2 - 22102426
AN - SCOPUS:84873440349
SN - 1065-9471
VL - 34
SP - 651
EP - 664
JO - Human Brain Mapping
JF - Human Brain Mapping
IS - 3
ER -