Avoiding Post-Processing with Event-Based Detection in Biomedical Signals
Nick Seeuws, Maarten De Vos, Alexander Bertrand

TL;DR
This paper introduces an event-based modeling framework for biomedical signal event detection that eliminates the need for complex post-processing, simplifying the process while maintaining or improving detection performance.
Contribution
The authors propose a novel event-based learning approach that directly models events, reducing the reliance on ad-hoc post-processing in biomedical signal analysis.
Findings
Event-based modeling matches or outperforms epoch-based methods
Eliminates extensive post-processing requirements
Applicable to various biomedical signal event detection tasks
Abstract
Objective: Finding events of interest is a common task in biomedical signal processing. The detection of epileptic seizures and signal artefacts are two key examples. Epoch-based classification is the typical machine learning framework to detect such signal events because of the straightforward application of classical machine learning techniques. Usually, post-processing is required to achieve good performance and enforce temporal dependencies. Designing the right post-processing scheme to convert these classification outputs into events is a tedious, and labor-intensive element of this framework. Methods: We propose an event-based modeling framework that directly works with events as learning targets, stepping away from ad-hoc post-processing schemes to turn model outputs into events. We illustrate the practical power of this framework on simulated data and real-world data, comparing…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Time Series Analysis and Forecasting · Machine Learning in Healthcare
