Spike-by-Spike Frequency Analysis of Amperometry Traces Provides Statistical Validation of Observations in the Time Domain

Jeyashree Krishnan, Zeyu Lian, Pieter E. Oomen, Xiulan He, Soodabeh Majdi, Andreas Schuppert, Andrew Ewing
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Abstract

Amperometry is a commonly used electrochemical method for studying the process of exocytosis in real-time. Given the high precision of recording that amperometry procedures offer, the volume of data generated can span over several hundreds of megabytes to a few gigabytes and therefore necessitates systematic and reproducible methods for analysis. Though the spike characteristics of amperometry traces in the time domain hold information about the dynamics of exocytosis, these biochemical signals are, more often than not, characterized by time-varying signal properties. Such signals with time-variant properties may occur at different frequencies and therefore analyzing them in the frequency domain may provide statistical validation for observations already established in the time domain. This necessitates the use of time-variant, frequency-selective signal processing methods as well, which can adeptly quantify the dominant or mean frequencies in the signal. The Fast Fourier Transform (FFT) is a well-established computational tool that is commonly used to find the frequency components of a signal buried in noise. In this work, we outline a method for spike-based frequency analysis of amperometry traces using FFT that also provides statistical validation of observations on spike characteristics in the time domain. We demonstrate the method by utilizing simulated signals and by subsequently testing it on diverse amperometry datasets generated from different experiments with various chemical stimulations. To our knowledge, this is the first fully automated open-source tool available dedicated to the analysis of spikes extracted from amperometry signals in the frequency domain.
安培跟踪的逐峰频率分析提供了时域观测的统计验证
电流法是实时研究胞吐过程的常用电化学方法。鉴于安培法提供的高精度记录,产生的数据量可以跨越几百兆字节到几千兆字节,因此需要系统和可重复的分析方法。虽然时域安培痕迹的尖峰特征包含有关胞吐动力学的信息,但这些生化信号往往具有时变信号特性。这些具有时变特性的信号可能出现在不同的频率上,因此在频域分析它们可以为已经在时域建立的观测结果提供统计验证。这就需要使用时变的、频率选择的信号处理方法,这些方法可以准确地量化信号中的主导频率或平均频率。快速傅里叶变换(FFT)是一种成熟的计算工具,通常用于寻找隐藏在噪声中的信号的频率成分。在这项工作中,我们概述了一种使用FFT对安培跟踪进行基于尖峰的频率分析的方法,该方法还提供了对时域尖峰特征观测的统计验证。我们通过利用模拟信号来演示该方法,并随后在不同化学刺激实验产生的不同渗透率数据集上进行测试。据我们所知,这是第一个完全自动化的开源工具,专门用于分析从频域安培信号中提取的尖峰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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