Tree-Based Learning on Amperometric Time Series Data Demonstrates High Accuracy for Classification

02/06/2023
by   Jeyashree Krishnan, et al.
0

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 systematic machine learning workflow for amperometric time series datasets consisting of pre-processing; feature extraction; model identification; training and testing; followed by feature importance evaluation - all implemented. We tested the method on heterogeneous amperometric time series datasets generated using different experimental approaches, chemical stimulations, electrode types, and varying recording times. We identified a certain overarching set of common features across these datasets which enables accurate predictions. Further, we showed that information relevant for the classification of amperometric traces are neither in the spiky segments alone, nor can it be retrieved from just the temporal structure of spikes. In fact, the transients between spikes and the trace baselines carry essential information for a successful classification, thereby strongly demonstrating that an effective feature representation of amperometric time series requires the full time series. To our knowledge, this is one of the first studies that propose a scheme for machine learning, and in particular, supervised learning on full amperometry time series data.

READ FULL TEXT

page 16

page 29

page 32

research
10/26/2020

Some Machine Learning Approaches to the Analysis of Temporal Data

Investigating time is not restricted to time series analysis, where from...
research
10/05/2022

Feature Importance for Time Series Data: Improving KernelSHAP

Feature importance techniques have enjoyed widespread attention in the e...
research
09/30/2021

Two ways towards combining Sequential Neural Network and Statistical Methods to Improve the Prediction of Time Series

Statistic modeling and data-driven learning are the two vital fields tha...
research
09/12/2022

An Evaluation of Low Overhead Time Series Preprocessing Techniques for Downstream Machine Learning

In this paper we address the application of pre-processing techniques to...
research
02/09/2018

Predicting Customer Churn: Extreme Gradient Boosting with Temporal Data

Accurately predicting customer churn using large scale time-series data ...
research
04/06/2021

Autoencoder-based Representation Learning from Heterogeneous Multivariate Time Series Data of Mechatronic Systems

Sensor and control data of modern mechatronic systems are often availabl...
research
09/19/2017

A textual transform of multivariate time-series for prognostics

Prognostics or early detection of incipient faults is an important indus...

Please sign up or login with your details

Forgot password? Click here to reset