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Publication

Multi-Modal Machine Learning Framework for Automated Seizure Detection in Laboratory Rats

Aaron Mullen, Samuel E. Armstrong, Jasmine Perdeh, Bjorn Bauer, Jeffrey Talbert, V. K. Cody Bumgardner

Details

Journal arXiv preprint
Year 2024
Categories cs.LG, cs.CV, eess.SP

Abstract

A multi-modal machine learning system uses multiple unique data sources and types to improve its performance. This article proposes a system that combines results from several types of models, all of which are trained on different data signals. As an example, an experiment is described in which multiple types of data are collected from rats suffering from seizures, including piezoelectric motion, video, and electrocorticography (ECoG).