首页> 外文期刊>Autonomic neuroscience: basic & clinical >Challenges and opportunities in processing muscle sympathetic nerve activity with wavelet denoising techniques: detecting single action potentials in multiunit sympathetic nerve recordings in humans.
【24h】

Challenges and opportunities in processing muscle sympathetic nerve activity with wavelet denoising techniques: detecting single action potentials in multiunit sympathetic nerve recordings in humans.

机译:小波降噪技术在处理肌肉交感神经活动中的挑战和机遇:检测人类多单位交感神经录音中的单个动作电位。

获取原文
获取原文并翻译 | 示例
       

摘要

An important issue in analysis of muscle sympathetic nerve activity (MSNA), particularly those measures made in humans, is the problem that background noise of varying levels from recording to recording may interfere with accurate assessment of neural discharge patterns and overall activity. In this study, the utility of wavelet denoising approaches for processing MSNA signals was examined with emphasis on 1) determining whether this approach could improve the signal-to-noise (SNR) in the integrated neurogram, and 2) detecting intra-burst single action potential spikes. The utility of wavelet denoising was examined in simulated data and in original human data with three recordings of varying SNR (low, moderate and high) obtained from two healthy individuals. Only in the high SNR signal was the noise removed without concurrent loss of signal. Using a threshold-detecting algorithm individual depolarization spikes were detected in denoised recordings of high original SNR (>3:1) from four individuals and the interspike interval characteristics of these were quantified on a burst-by-burst basis. Compared with baseline (15+/-1 spikes/burst) a reflexive increase in spike count (29+/-4 spikes/burst) was observed during a held maximal inspiration (P<0.01) with concurrent reductions in inter-spike interval (P<0.01). The findings indicate that within multiunit bursts of sympathetic neural activity in the band-pass filtered neural signal, there are particular frequency components that appear to be shared between the signal and noise. This may limit the utility of wavelet denoising to enhance detection of neural bursts in the integrated neurogram of MSNA. However, opportunities exist with this approach to detect variations in action potential contributions within each burst of MSNA. This latter observation suggests that this denoising approach provides a new probe to explore MSNA discharge patterns.
机译:在分析肌肉交感神经活动(MSNA),特别是在人体中采取的措施时,一个重要的问题是,从记录到记录的不同水平的背景噪声可能会干扰对神经放电模式和总体活动的准确评估。在这项研究中,小波去噪方法在处理MSNA信号方面的实用性得到了重点研究,重点是1)确定该方法是否可以改善集成神经图中的信噪比(SNR),以及2)检测突发内单个动作潜在的峰值。在模拟数据和原始人类数据中检查了小波去噪的效用,并从两个健康个体获得了三个不同SNR(低,中和高)记录。仅在高SNR信号中,才能消除噪声,而不会同时丢失信号。使用阈值检测算法,在来自四个个体的高原始SNR(> 3:1)的降噪记录中检测到单个去极化尖峰,并基于逐个脉冲对这些尖峰间隔特征进行量化。与基线(15 +/- 1个尖峰/爆发)相比,在保持最大吸气时(P <0.01)观察到尖峰计数的反射性增加(29 +/- 4个尖峰/爆发),同时尖峰间隔减少( P <0.01)。研究结果表明,在带通滤波后的神经信号中,在交感神经活动的多单位突发中,信号和噪声之间似乎共享着特定的频率成分。这可能会限制小波去噪在增强MSNA集成神经图中的神经猝发检测方面的作用。但是,这种方法存在检测MSNA每次突发中动作电位贡献变化的机会。后一个观察结果表明,这种去噪方法为探索MSNA放电模式提供了新的探针。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号