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ERP (version 1.0.1)

erpavetest: Significance testing of averaged ERPs. The entire ERP recording time is first partitioned into a pre-determined number of equal intervals. The averaged ERPs for each time intervals are the input for analysis.

Description

The function first calculates averaged ERP values within a predetermined number of equally-spaced intervals then tests for significance of the relationship between averaged ERPs and covariates in a linear model framework.

Usage

erpavetest(dta, design, design0 = NULL, nintervals = 10, method = "none", alpha = 0.05)

Arguments

dta
Data frame containing the ERP curves: each column corresponds to a time frame and each row to a curve.
design
Design matrix of the full model for the relationship between the ERP and the experimental variables. Typically the output of the function model.matrix
design0
Design matrix of the null model. Typically a submodel of the full model, obtained by removing columns from design. Default is NULL, corresponding to the model with no covariates.
nintervals
Number of intervals in the partition of the whole interval of observation. Default is 10.
method
FDR- or FWER- controlling multiple testing procedures as available in the function p.adjust. Default is "none".
alpha
The FDR or FWER control level. Default is 0.05

Value

  • pvalp-values of the tests.
  • correctedpvalCorrected p-values, for the multiplicity of tests. Depends on the multiple testing method (see function p.adjust).
  • significantIndices of the time points for which the test is positive.
  • segmentsFactor giving the membership of timepoints to each interval in the partition.
  • breaksBreakpoints of the partition.
  • testF-statistics.
  • df1Residual degrees of freedom for the full model.
  • df0Residual degrees of freedom for the null model.
  • signalEstimated signal: a pxT matrix, where p is the difference between the numbers of parameters in the full and null models and T the number of frames.
  • r2R-squared values for each of the T linear models.

See Also

erptest, erpfatest, gbtest, p.adjust, pval.estimate.eta0

Examples

Run this code
require(mnormt)
require(fdrtool)

data(erpcz)
data(simerp)

# Paired t-tests for the comparison of ERP curves between two groups

tests = erpavetest(erpcz[,1:251],design=model.matrix(~Subject+Instruction,data=erpcz),
   design0=model.matrix(~Subject,data=erpcz))

frames = seq(0,1001,4)
plot(frames,tests$signal,type="l",xlab="Time (ms)",ylab="Difference ERP curves")
points(frames[tests$significant],rep(0,length(tests$significant)),pch=16,col="blue")
abline(v=frames[tests$breaks],lty=2,col="darkgray")
title("Paired comparison at electrode CZ")

# Tests for significance of correlations

tests = erpavetest(simerp[,1:251],design=model.matrix(~y,data=simerp))

plot(frames,sign(tests$signal)*sqrt(tests$r2),type="l",
   xlab="Time (ms)",ylab="Correlation",ylim=c(-1,1))
points(frames[tests$significant],rep(-1,length(tests$significant)),
   pch=16,col="blue")
abline(v=frames[tests$breaks],lty=2,col="darkgray")
title("Simulation")

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