Tree-Based Learning on Amperometric Time Series Data Demonstrates High Accuracy for Classification
Jeyashree Krishnan, Zeyu Lian, Pieter E. Oomen, Xiulan He, Soodabeh, Majdi, Andreas Schuppert, Andrew Ewing

TL;DR
This study introduces a universal machine learning approach for classifying amperometric time series data with over 95% accuracy, leveraging full trace features including transients and baselines, across diverse experimental conditions.
Contribution
The paper presents one of the first supervised learning schemes that utilize full amperometric time series data for accurate classification, demonstrating broad applicability.
Findings
Achieved ≥95% prediction accuracy across datasets
Identified common features including transients and baselines
Full time series features outperform spike-only analysis
Abstract
Elucidating exocytosis processes provide insights into cellular neurotransmission mechanisms, and may have potential in neurodegenerative diseases research. Amperometry is an established electrochemical method for the detection of neurotransmitters released from and stored inside cells. An important aspect of the amperometry method is the sub-millisecond temporal resolution of the current recordings which leads to several hundreds of gigabytes of high-quality data. In this study, we present a universal method for the classification with respect to diverse amperometric datasets using data-driven approaches in computational science. We demonstrate a very high prediction accuracy (greater than or equal to 95%). This includes an end-to-end systematic machine learning workflow for amperometric time series datasets consisting of pre-processing; feature extraction; model identification;…
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Taxonomy
TopicsNeural dynamics and brain function · Photoreceptor and optogenetics research · Electrochemical Analysis and Applications
