Biological plausible algorithm for seizure detection: Toward AI-enabled electroceuticals at the edge

Author:

Herbozo Contreras Luis Fernando1ORCID,Huang Zhaojing1ORCID,Yu Leping1ORCID,Nikpour Armin23ORCID,Kavehei Omid14ORCID

Affiliation:

1. School of Biomedical Engineering, Faculty of Engineering, The University of Sydney 1 , Sydney, New South Wales 2006, Australia

2. Comprehensive Epilepsy Service and Department of Neurology, Royal Prince Alfred Hospital 2 , Sydney, New South Wales 2050, Australia

3. Faculty of Medicine and Health, Central Clinical School, The University of Sydney 3 , Sydney, New South Wales 2006, Australia

4. The University of Sydney Nano Institute 4 , Sydney, New South Wales 2006, Australia

Abstract

Nearly 1% of people worldwide suffer from epilepsy. Electroencephalogram (EEG)-based diagnostics and monitoring tools, such as scalp EEG, subscalp EEG, stereo EEG, or sub/epi-dural EEG recordings [also known as electrocorticography (ECoG)], are widely used in different settings as the gold standard techniques to perform seizure identification, localization, and more primarily in epilepsy or suspected epilepsy in patients. Techniques such as subscalp EEG and ECoG offer long-term brain interaction, potentially replacing traditional electroceuticals with smart closed-loop therapies. However, these systems require continuous on-device training due to real-time demands and high power consumption. Inspired by the brain architecture, biologically plausible algorithms, such as some neuromorphic computing, show promise in addressing these challenges. In our research, we utilized liquid time-constant spiking neural networks with forward propagation through time to detect seizures in scalp-EEG. We trained and validated our model on the Temple University Hospital dataset and tested its generalization on out-of-sample data from the Royal Prince Alfred Hospital (RPAH) and EPILEPSIAE datasets. Our model achieved high area under the receiver operating characteristic curve (AUROC) scores of 0.83 in both datasets. We assessed the robustness by decreasing the memory size by 90% and obtained an overall AUROC of 0.82 in the RPAH dataset and 0.83 in the EPILEPSIAE dataset. Our model showed outstanding results of 3.1 μJ power consumption per inference and a 20% firing rate during training. This allows for incorporating bio-inspired efficient algorithms for on-device training, tackling challenges such as memory, power consumption, and efficiency.

Funder

The University of Sydney

Microsoft

Publisher

AIP Publishing

Reference39 articles.

1. Deloitte Access Economics, “The economic burden of epilepsy in Australia, 2019–2020,” https://tinyurl.com/5ybbpa44 (2020), epilepsy Australia.

2. The descriptive epidemiology of epilepsy—A review;Epilepsy Res.,2009

3. Definition of drug resistant epilepsy: Consensus proposal by the ad hoc task force of the ILAE commission on therapeutic strategies;Epilepsia,2010

4. Opportunities for electroceuticals in epilepsy;Trends Pharmacol. Sci.,2019

5. A jump-start for electroceuticals;Nature,2013

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