We explore and illustrate the use of time series decomposition methods for
evaluating and comparing latent structure in nonstationary electroencephalo
graphic (EEG) traces obtained from depressed patients during brain seizures
induced as part of electroconvulsive therapy (ECT). Analysis of the patter
ns of change over time in the frequency structure of such EEG data provides
insight into the neurophysiological mechanisms of action of this effective
but poorly understood antidepressant treatment, and allows clinicians to m
odify ECT treatments to optimize therapeutic benefits while minimizing asso
ciated side effects. Our work has introduced new methods of time-frequency
analysis of EEG series that identify the complete pattern of rime evolution
of frequency structure: over the course of a seizure, and usefully assist
in these scientific and clinical studies. New methods of decomposition of f
lexible dynamic models provide time domain decompositions of individual EEG
series into collections of latent components in different frequency bands.
This allows us to explore ECT seizure characteristics via inferences on th
e time-varying parameters that characterize these latent components, and to
relate differences in such characteristics across seizures to differences
in the therapeutic effectiveness and cognitive side effects of those seizur
es: This article discusses the scientific context and problems, development
of nonstationary time series models and new methods of decomposition to ex
plore time-frequency structure, and aspects of model fitting and analysis.
We include applied studies on two datasets from recent clinical ECT studies
. One is an initial illustrative analysis of a single EEG trace, the second
compares the EEG data recorded during two types of ECT treatment that diff
er in therapeutic effectiveness and cognitive side effects. The uses of the
se: models and time series decomposition methods in extracting and contrast
ing key features of the seizure underlying the EEG signals are highlighted.
Through the use of these models we have quantified, for the first rime, de
creases in the dominant frequencies of low-frequency EEG components during
ECT seizures. We have also identified preliminary evidence that such decrea
ses are enhanced under the more effective ECTs at higher electrical dosages
, a finding consistent with prior reports and the hypothesis that more effe
ctive forms of ECT are more effective in eliciting neurophysiological inhib
itory processes.