Institute of Physiology and Pathology of Hearing, ul. Zgrupowania AK Kampinos 1, 01-943 Warszawa, Poland.
J Acoust Soc Am. 2009 Dec;126(6):3137-46. doi: 10.1121/1.3243294.
Transiently evoked otoacoustic emissions (TEOAEs) are normally modeled as the sum of asymmetric waveforms. However, some previous studies of TEOAEs used time-frequency (TF) methods to decompose the signals into symmetric waveforms. This approach was justified mainly as a means to reduce the complexity of the calculations. The present study extended the dictionary of numeric functions to incorporate asymmetric waveforms into the analysis. The necessary calculations were carried out using an adaptive approximation algorithm based on the matching pursuit (MP) numerical technique. The classic MP dictionary uses Gabor functions and consists of waveforms described by five parameters, namely, frequency, latency, time span, amplitude, and phase. In the present investigation, a sixth parameter, the degree of asymmetry, was added in order to enhance the flexibility of this approach. The effects of expanding the available functions were evaluated by means of both simulations using synthetic signals and authentic TEOAEs. The resulting analyses showed that the contributions of asymmetric components in the OAE signal are appreciable. In short, the expanded analysis method brought about important improvements in identifying TEOAE components including the correct detection of components with long decays, which are often related to spontaneous OAE activity, the elimination of a "dark energy" effect in TF distributions, and more reliable estimates of latency-frequency relationships. The latter feature is especially important for correct estimation of latency-frequency data, which is a crucial factor in investigations of OAE-generation mechanisms.
瞬态诱发耳声发射(TEOAEs)通常被建模为不对称波形的和。然而,一些先前的 TEOAE 研究使用时频(TF)方法将信号分解为对称波形。这种方法主要是作为降低计算复杂性的一种手段。本研究将数字函数字典扩展到将不对称波形纳入分析中。使用基于匹配追踪(MP)数值技术的自适应逼近算法进行了必要的计算。经典的 MP 字典使用 Gabor 函数,由五个参数描述的波形组成,即频率、潜伏期、时间跨度、幅度和相位。在本研究中,增加了第六个参数,即不对称度,以提高这种方法的灵活性。通过使用合成信号和真实的 TEOAE 进行模拟来评估扩展可用函数的效果。结果分析表明,在 OAE 信号中,不对称分量的贡献是相当可观的。简而言之,扩展的分析方法在识别 TEOAE 分量方面带来了重要的改进,包括正确检测具有长衰减的分量,这些分量通常与自发 OAE 活动有关,消除 TF 分布中的“暗能量”效应,以及更可靠的潜伏期-频率关系估计。后者对于正确估计潜伏期-频率数据尤为重要,因为潜伏期-频率数据是 OAE 产生机制研究的关键因素。