Use of parametric modelling and statistical pattern recognition in detection of awareness during general anaesthesia

Citation
M. Holt et al., Use of parametric modelling and statistical pattern recognition in detection of awareness during general anaesthesia, IEE P-SCI M, 145(6), 1998, pp. 307-316
Citations number
20
Categorie Soggetti
Eletrical & Eletronics Engineeing
Journal title
IEE PROCEEDINGS-SCIENCE MEASUREMENT AND TECHNOLOGY
ISSN journal
13502344 → ACNP
Volume
145
Issue
6
Year of publication
1998
Pages
307 - 316
Database
ISI
SICI code
1350-2344(199811)145:6<307:UOPMAS>2.0.ZU;2-H
Abstract
Awareness is a rare but important complication of general anaesthesia. In i ts worst manifestation the patient is completely paralysed yet fully consci ous and suffering the pain of the operative procedure. The sequelae from su ch an experience may be significant and lifelong. The paper describes a met hod, based on parametric modelling and statistical pattern recognition tech niques, including neural networks, whereby awareness during general anaesth esia may be detected when present. Two systems are described, the first bas ed solely on the use of the bispectrum, while: the second makes use of both spectral and bispectral features. An evaluation on independent test sets s hows that both systems have an average accuracy of > 80%, but the variation across individuals is less using the spectral-bispectral system (standard deviation of 16.4% compared with 20.5%). The spectral-bispectral system ope rates in near real time, requiring only 5s of data to produce a new estimat e of awareness. These estimates are obtained from the output of a trained n eural network, which has as its input a set of features extracted from a si ngle channel of electroencephalogram (EEG). The pre-processing of the data prior to input into the neural network is a critical component of the work, and it is here that parametric models have been extensively utilised. The spectral features are extracted from the EEG using a 1s segment and a latti ce filter as the primary model, while the bispectral features are extracted using a 5s segment and a transversal filter as the underlying model.