Steady-state evoked potentials (SSEPs) are rhythmic brain responses to rhythmic sensory stimulation, and are
often used to study perceptual and attentional processes. We present a data analysis method for maximizing the
signal-to-noise ratio of the narrow-band steady-state response in the frequency and time-frequency domains.
The method, termed rhythmic entrainment source separation (RESS), is based on denoising source separation
approaches that take advantage of the simultaneous but differential projection of neural activity to multiple
electrodes or sensors. Our approach is a combination and extension of existing multivariate source separation
methods. We demonstrate that RESS performs well on both simulated and empirical data, and outperforms
conventional SSEP analysis methods based on selecting electrodes with the strongest SSEP response, as well as
several other linear spatial filters. We also discuss the potential confound of overfitting, whereby the filter
captures noise in absence of a signal. Matlab scripts are available to replicate and extend our simulations and
methods. We conclude with some practical advice for optimizing SSEP data analyses and interpreting the
results.