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诱发电位的潜伏期变化估计:算法比较

Latency change estimation for evoked potentials: a comparison of algorithms.

作者信息

Kong X, Oiu T

机构信息

NeuroMetrix Inc, Cambridge, USA.

出版信息

Med Biol Eng Comput. 2001 Mar;39(2):208-24. doi: 10.1007/BF02344806.

Abstract

Evoked potentials (EPs) have been widely used to quantify neurological system properties. Changes in EP latency may indicate impending neurological dysfunctions. This paper provides a review and a performance comparison of three classes of latency change estimation algorithms: correlation based, adaptive least mean square (LMS) based, and p-norm based algorithms. Data analysis based on computer simulated data and data from impact acceleration and hypoxia experiments were conducted. This concluded that correlation-based algorithms should only be used when the expected latency change is fixed and the noises are not correlated. While all adaptive LMS type algorithms were capable of tracking and estimating latency changes (fixed or variable) under Gaussian noise conditions, the direct LMS-based algorithm reduced the estimation error power given by traditional filter type LMS algorithms as much as 93%. When periodic interference was present, the frequency selective LMS algorithms outperformed other LMS-based algorithms and reduced of the estimation error power by 89%. Alpha-stable noise processes are better approximations of noises found in various EP analysis applications and adaptive p-norm based algorithms are found to be very robust under such noise conditions, eliminate erroneous abrupt latency changes other algorithms would have produced.

摘要

诱发电位(EPs)已被广泛用于量化神经系统特性。EP潜伏期的变化可能表明即将出现神经功能障碍。本文对三类潜伏期变化估计算法进行了综述和性能比较:基于相关性的算法、基于自适应最小均方(LMS)的算法和基于p范数的算法。基于计算机模拟数据以及冲击加速度和缺氧实验数据进行了分析。结果表明,基于相关性的算法仅应在预期潜伏期变化固定且噪声不相关时使用。虽然所有自适应LMS类型的算法都能够在高斯噪声条件下跟踪和估计潜伏期变化(固定或可变),但基于直接LMS的算法将传统滤波器类型LMS算法给出的估计误差功率降低了多达93%。当存在周期性干扰时,频率选择性LMS算法优于其他基于LMS的算法,并将估计误差功率降低了89%。α稳定噪声过程能更好地近似各种EP分析应用中发现的噪声,并且发现基于自适应p范数的算法在这种噪声条件下非常稳健,消除了其他算法可能产生的错误突然潜伏期变化。

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