Description
Post-traumatic epilepsy (PTE) is a serious and unpredictable complication of traumatic brain
injury (TBI). Identifying reliable electrophysiological biomarkers that predict epilepsy
development remains a major unmet need. High-frequency oscillations (HFOs; 80-500 Hz)
have emerged as promising candidate biomarkers; however, their detection remains
technically demanding and prone to subjectivity, as accurate identification often requires
manual validation and is limited by inter-rater variability.
This Honours project will leverage pre-existing long-term EEG recordings from a PTE rat
model. The dataset includes animals assigned to sham surgery, TBI without epilepsy
development, and TBI with subsequent epilepsy. The student will focus on computational
and machine learning approaches to improve HFO detection and characterisation.
Specifically, the project aims to:
1. Develop and evaluate machine learning classifiers to distinguish true HFOs from
false positives.
2. Determine whether machine learning-derived HFO metrics differentiate experimental
groups (sham, TBI- epilepsy, TBI+ epilepsy), thereby assessing their potential as
biomarkers of epileptogenesis.
The student will gain training in EEG signal processing, feature extraction, supervised
machine learning, and statistical analysis. This project provides an opportunity to contribute
to translational biomarker development in epilepsy research while working with a high-quality
preclinical dataset.
Essential criteria:
Minimum entry requirements can be found here: https://www.monash.edu/admissions/entry-requirements/minimum
Keywords
Traumatic Brain Injury (TBI), Post-Traumatic Epilepsy (PTE), Epileptogenesis, High-Frequency Oscillations (HFOs), Electroencephalography (EEG), Machine Learning, Signal Processing, Biomarker Development, Computational Neuroscience, Electrophysiology
School
School of Translational Medicine » Neuroscience
Available options
Honours
Time commitment
Full-time
Physical location
Alfred Centre
Co-supervisors
Prof
Nigel Jones
