Description
Epilepsy is a severe neurological disorder characterized by recurrent seizures that affect 1% of the population worldwide. Traumatic brain injury (TBI) is the primary cause of the acquired epilepsy that 16% of severe TBIs can develop to post-traumatic epilepsy (PTE). The biomarkers that can objectively indicate the epileptogenesis and ictogenesis of the brain tissues are critically crucial for clinical treatments to prevent seizures and the development of PTEs. High-frequency oscillations (HFOs) in the 80~500 Hz range recorded in animal and human electroencephalography (EEG) studies are believed to reflect the ictogenesis and epileptogenesis of brain tissues. This project will develop a machine-learning algorithm to detect animal HFOs automatically. With the detected HFOs, we will conduct the quantitative analysis of HFOs in an animal cohort with TBIs. The alterations of HFOs among different conditions or treatments and the longitudinal analysis of HFOs will be investigated to evaluate whether HFOs are biomarkers for ictogenesis and epileptogenesis of PTE.
Essential criteria:
Minimum entry requirements can be found here: https://www.monash.edu/admissions/entry-requirements/minimum
Keywords
Epilepsy, post-traumatic epilepsy, traumatic brain injury, high-frequency oscillations, biomarkers, machine learning, epileptogenesis, ictogenesis, data analysis, bioinformatics, EEG, neuroscience.
School
School of Translational Medicine » Neuroscience
Available options
PhD/Doctorate
Masters by research
Masters by coursework
Honours
BMedSc(Hons)
Time commitment
Full-time
Top-up scholarship funding available
No
Physical location
Alfred Research Alliance
Co-supervisors
Dr
Matt Hudson
Dr
Pablo Casillas-Espinosa