Title :
Wavelet Methods for Spike Detection in Mouse Renal Sympathetic Nerve Activity
Author :
Brychta, Robert J. ; Tuntrakool, Sunti ; Appalsamy, Martin ; Keller, Nancy R. ; Robertson, David ; Shiavi, Richard G. ; Diedrich, André
Author_Institution :
Biomed. Eng. Dept., Vanderbilt Univ., Nashville, TN
Abstract :
Abnormal autonomic nerve traffic has been associated with a number of peripheral neuropathies and cardiovascular disorders prompting the development of genetically altered mice to study the genetic and molecular components of these diseases. Autonomic function in mice can be assessed by directly recording sympathetic nerve activity. However, murine sympathetic spikes are typically detected using a manually adjusted voltage threshold and no unsupervised detection methods have been developed for the mouse. Therefore, we tested the performance of several unsupervised spike detection algorithms on simulated murine renal sympathetic nerve recordings, including an automated amplitude discriminator and wavelet-based detection methods which used both the discrete wavelet transform (DWT) and the stationary wavelet transform (SWT) and several wavelet threshold rules. The parameters of the wavelet methods were optimized by comparing basal sympathetic activity to postmortem recordings and recordings made during pharmacological suppression and enhancement of sympathetic activity. In general, SWT methods were found to outperform amplitude discriminators and DWT methods with similar wavelet coefficient thresholding algorithms when presented with simulations with varied mean spike rates and signal-to-noise ratios. A SWT method which estimates the noise level using a "noise-only" wavelet scale and then selectively thresholds scales containing the physiologically important signal information was found to have the most robust spike detection. The proposed noise-level estimation method was also successfully validated during pharmacological interventions
Keywords :
bioelectric potentials; discrete wavelet transforms; kidney; medical signal detection; medical signal processing; neurophysiology; abnormal autonomic nerve traffic; automated amplitude discriminator; cardiovascular disorders; discrete wavelet transform; diseases; genetically altered mice; manually adjusted voltage threshold; mouse renal sympathetic nerve activity; murine sympathetic spikes; noise-level estimation method; peripheral neuropathy; pharmacological interventions; stationary wavelet transform; sympathetic nerve activity; unsupervised spike detection; wavelet coefficient thresholding algorithms; wavelet methods; Automatic testing; Cardiac disease; Cardiology; Cardiovascular diseases; Detection algorithms; Discrete wavelet transforms; Genetics; Mice; Noise level; Threshold voltage; Denoising; mice; spike detection; sympathetic nerve activity; wavelet; Action Potentials; Algorithms; Animals; Diagnosis, Computer-Assisted; Electrodiagnosis; Kidney; Mice; Mice, Inbred C57BL; Pattern Recognition, Automated; Sympathetic Nervous System;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2006.883830