Restricted Research - Award List, Note/Discussion Page

Fiscal Year: 2023

73  University of North Texas  (141961)

Principal Investigator: Li,Lin

Total Amount of Contract, Award, or Gift (Annual before 2011): $ 720,100

Exceeds $250,000 (Is it flagged?): Yes

Start and End Dates: 7/15/22 - 6/30/26

Restricted Research: YES

Academic Discipline: Biomedical Engineering

Department, Center, School, or Institute: College of Engineering

Title of Contract, Award, or Gift: New approach for identification pHFO networks to predict epileptogenesis

Name of Granting or Contracting Agency/Entity: National Institutes of Health
CFDA Link: HHS
93.853

Program Title: none
CFDA Linked: Extramural Research Programs in the Neurosciences and Neurological Disorders

Note:

Epilepsy is among the most common serious neurological disorders, and about 40% of epilepsy patients do not respond to existing treatment. Clinically, the prolonged, refractory epilepsy with negative surgical outcomes is often associated with distributed epilepsy onset rather than a local epileptogenic zone. Understanding the epilepsy as a large-scale brain network abnormality enables the development of new treatment options and research directions. At present, majority of research related to analysis of epileptic network has been focused on the ictal period, while few have been devoted to the analysis of the earlier stages of epileptogenesis (latent period). Investigating the brain network properties of epileptogenesis is as important and can help develop antiepileptogenic interventions for epilepsy prevention and cure. Early in our experiments, we discovered pathological high-frequency oscillations (pHFOs), which are reliable biomarkers of epileptogenesis. They are generated by clusters of pathologically interconnected neurons (PIN-clusters) and reflect bursts of population spikes. Recent updates in the animal models of chronic epilepsy evidenced the spatially distributed pHFO events, which implies the development of large-scale PIN-cluster networks during epileptogenesis. Study the network topology and characteristic of PIN-cluster-formed epileptogenic network is in the critical need to further understanding the underlying mechanism of epileptogenesis. To fulfill this gap, the present study plan to explore pHFO-based networks using the Kainic Acid (KA)-induced status epilepticus (SE) model of epileptogenesis. We hypotheses that epileptogenesis after SE is dependent upon the formation of large-scale PIN-cluster networks that is expressed by the spatial occurrence and temporal coupling of pHFOs. Combining the organic material–based, biocompatible neural interface array (NeuroGrid) with multichannel silicon probes, we aim to identify the spatial and temporal profiles of pHFOs (Aim1). Using the advanced computational algorithms such as graph theory analysis and peri-event time histogram Shannon Entropy (SE), we propose to investigate the causal relationship and characteristics of the pHFO-based epileptogenic networks (Aim2). The outcome of this study will assess the robustness of novel network-based recording design and algorithm development. It will also determine whether the pHFO-derived network parameters are a reliable biomarker of epileptogenesis. The future plans are to translate the pHFO-network concept and computational tools into the clinical study of epilepsy. This approach may open a new direction to the prevention of epilepsy development and cure epilepsy.

Discussion: No discussion notes

 

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