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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Adaptive stimulus artifact reduction in noncortical somatosensory evoked potential studies
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Adaptive stimulus artifact reduction in noncortical somatosensory evoked potential studies

机译:非皮质体感诱发电位研究中的自适应刺激伪影减少

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摘要

Somatosensory evoked potentials (SEP's) are an important class of bioelectric signals which contain clinically valuable information. The surface measurements of these potentials are often contaminated by a stimulus evoked artifact. The stimulus artifact (SA), depending upon the stimulator and measurement system characteristics, may obscure some of the information carried by the SEP's. Conventional methods for SA reduction employ hardware-based circuits which attempt to eliminate the SA by blanking the input during SA period. However, there is a danger of losing some of the important SEP information, especially if the stimulating and recording electrodes are close together. Here, the authors apply both linear and nonlinear adaptive filtering techniques to the problem of SA reduction. Nonlinear adaptive filters (NAF's) based on truncated second-order Volterra series expansion are discussed and their applicability to SA cancellation is explored through processing both simulated and in vivo SEP data. The performances of the NAF and the finite impulse response (FIR) linear adaptive filter (LAF) are compared by processing experimental SEP data collected from different recording sites. Due to the inherent nonlinearities in the generation of the SA, the NAF is shown to achieve significantly better SA cancellation compared to the LAF.
机译:体感诱发电位(SEP)是一类重要的生物电信号,包含临床上有价值的信息。这些电位的表面测量值经常被刺激诱发的伪影所污染。取决于刺激器和测量系统的特性,刺激伪影(SA)可能会掩盖SEP携带的某些信息。减少SA的常规方法采用基于硬件的电路,这些电路试图通过在SA期间消隐输入来消除SA。但是,存在丢失某些重要的SEP信息的危险,尤其是在刺激电极和记录电极靠在一起的情况下。在这里,作者将线性和非线性自适应滤波技术都应用于SA降低问题。讨论了基于截断的二阶Volterra级数展开的非线性自适应滤波器(NAF),并通过处理模拟和体内SEP数据探索了其对SA抵消的适用性。通过处理从不同记录站点收集的实验SEP数据,比较了NAF和有限冲激响应(FIR)线性自适应滤波器(LAF)的性能。由于SA生成过程中固有的非线性,因此与LAF相比,NAF被​​证明可以实现更好的SA消除。

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