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

TL;DR
This paper introduces an automated open-source method using FFT for spike-based frequency analysis of amperometry traces, providing statistical validation of exocytosis dynamics observed in the time domain.
Contribution
The work presents the first fully automated open-source tool for frequency domain analysis of amperometry spikes, enhancing validation of time domain observations.
Findings
Method validated on simulated signals
Applied to diverse experimental datasets
Provides statistical validation of spike characteristics
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,…
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Taxonomy
TopicsAdvanced Fluorescence Microscopy Techniques · Neuroscience and Neural Engineering · Electrochemical Analysis and Applications
