Seizure detection with reduced electroencephalogram channels: research trends and outlook.
Christina MaherYikai YangNhan Duy TruongChenyu WangArmin NikpourOmid KaveheiPublished in: Royal Society open science (2023)
Epilepsy is a prevalent condition characterized by recurrent, unpredictable seizures. Monitoring with surface electroencephalography (EEG) is the gold standard for diagnosing epilepsy, but a time-consuming, uncomfortable and sometimes ineffective process for patients. Further, using EEG over a brief monitoring period has variable success, dependent on patient tolerance and seizure frequency. The availability of hospital resources and hardware and software specifications inherently restrict the options for comfortable, long-term data collection, resulting in limited data for training machine-learning models. This mini-review examines the current patient journey, providing an overview of the current state of EEG monitoring with reduced electrodes and automated channel reduction methods. Opportunities for improving data reliability through multi-modal data fusion are suggested. We assert the need for further research in electrode reduction to advance brain monitoring solutions towards portable, reliable devices that simultaneously offer patient comfort, perform ultra-long-term monitoring and expedite the diagnosis process.
Keyphrases
- machine learning
- electronic health record
- resting state
- big data
- case report
- functional connectivity
- end stage renal disease
- chronic kidney disease
- healthcare
- data analysis
- ejection fraction
- emergency department
- deep learning
- artificial intelligence
- temporal lobe epilepsy
- peritoneal dialysis
- mass spectrometry
- prognostic factors
- high resolution
- carbon nanotubes
- blood brain barrier
- gold nanoparticles
- single cell
- patient reported outcomes
- cerebral ischemia
- solid state