Removal of eye movement artefacts from single channel recordings of retinal evoked potentials using synchronous dynamical embedding and independent component analysis

被引:0
作者
A. C. Fisher
W. El-Deredy
R. P. Hagan
M. C. Brown
P. J. G. Lisboa
机构
[1] Royal Liverpool University Hospital,Department of Clinical Engineering
[2] Royal Liverpool University Hospital,The Clinical Eye Research Centre
[3] University of Manchester,School of Psychological Sciences
[4] Liverpool John Moores University,Deptartment of Computer & Mathematical Sciences
来源
Medical & Biological Engineering & Computing | 2007年 / 45卷
关键词
Blind source separation; BSS; Independent component analysis; ICA; JadeR; Constrained ICA; Synchronous dynamical embedding matrix; sDEM; ERG; PERG; Artefacts; Noise;
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学科分类号
摘要
A system is described for the removal of eye movement and blink artefacts from single channel pattern reversal electroretinogram recordings of very poor signal-to-noise ratios. Artefacts are detected and removed by using a blind source separation technique based on the jadeR independent component analysis algorithm. The single channel data are arranged as a series of overlapping time-delayed vectors forming a dynamical embedding matrix. The structure of this matrix is constrained to the phase of the stimulation epoch: the term synchronous dynamical embedding is coined. A novel method using a marker channel with a non-independent synchronous feature is employed to identify the single most relevant source estimation for reconstruction and signal recovery. This method is non-lossy, all underlying signal being recovered. In synthetic datasets of defined noise content and in standardised real data recordings, the performance of this technique is compared to conventional fixed-threshold hard-limit rejection. The most significant relative improvements are achieved when movement and blink artefacts are greatest: no improvement is demonstrable for the random noise only situation.
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页码:69 / 77
页数:8
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