Barraco R, Persano Adorno D, Brai M
Dipartimento di Fisica and CNISM-CNR, Viale delle Scienze, Ed.18, Palermo, Italy.
Theory Biosci. 2011 Sep;130(3):155-63. doi: 10.1007/s12064-011-0124-1. Epub 2011 Apr 13.
The wavelet analysis is a powerful tool for analyzing and detecting features of signals characterized by time-dependent statistical properties, as biomedical signals. The identification and the analysis of the components of these signals in the time-frequency domain, give meaningful information about the physiological mechanisms that govern them. This article presents the results of the wavelet analysis applied to the a-wave component of the human electroretinogram. In order to deepen and improve our knowledge about the behavior of the early photoreceptoral response, including the possible activation of interactions and correlations among the photoreceptors, we have detected and identified the stable time-frequency components of the a-wave, using six representative values of luminance. The results indicate the occurrence of three frequencies lying in the range 20-200 Hz. The lowest one is attributed to the summed activities of the photoreceptors. The others are weaker and at low luminance one of them does not occur. We relate them to the response of the rods and the cones whose aggregate activities are non-linear and typically exhibit self-organization under selective stimuli. The identification of the stable frequency components and of their times of occurrence helps us to shine light about the complex mechanisms governing the a-wave. The present results are promising toward the assessment of more refined model concerning the photoreceptoral activities.
小波分析是一种强大的工具,用于分析和检测具有随时间变化的统计特性的信号特征,如生物医学信号。在时频域中识别和分析这些信号的成分,可以提供有关控制它们的生理机制的有意义信息。本文介绍了将小波分析应用于人类视网膜电图a波成分的结果。为了加深和完善我们对早期光感受器反应行为的认识,包括光感受器之间可能的相互作用和相关性的激活,我们使用六个代表性的亮度值检测并识别了a波的稳定时频成分。结果表明出现了三个频率在20 - 200赫兹范围内的成分。最低的频率归因于光感受器的总和活动。其他频率较弱,在低亮度下其中一个频率不出现。我们将它们与视杆细胞和视锥细胞的反应联系起来,它们的总体活动是非线性的,并且在选择性刺激下通常表现出自组织。识别稳定的频率成分及其出现时间有助于我们阐明控制a波的复杂机制。目前的结果对于评估更精确的光感受器活动模型很有前景。