Docket #: S17-071
Brain-machine interfaces for seizure detection leveraging information theory
Stanford inventors have developed an information theoretic, seizure detection algorithm for electroencephalography (EEG) towards improving diagnosis, management, and treatment of patients with epilepsy.
Epilepsy affects approximately 1% of the world's population, and when inadequately treated, it carries a lifetime risk of mortality of approximately 25%. About a fifth to a third of epilepsy patients are refractory to treatment, and many patients undergo intracranial neuromonitoring studies, involving surgically implanted electrodes in the brain, to localize their seizure source. Treatment options for patients with refractory focal epilepsy include surgical resection, laser ablation, vagal nerve stimulation, and responsive neurostimulation. However, there is no guarantee that a patient will become seizure-free with most of these treatments. Better diagnostic tools are needed to guide clinical interventions and management of patients with epilepsy.
Stanford researchers, therefore, developed an algorithm that informs seizure activity to better diagnose, manage, and treat patients with epilepsy. The method detects seizures using information theoretic estimates of joint entropy by leveraging data compression. It is purely an algorithm (transformation) that requires no supervised learning, model fitting, or training data. Automatic seizure detection based on objective measures can speed up and improve manual EEG reviews. Reliable biomarkers for seizure activity enable device-based therapies that programmatically stimulate and disrupt seizures once detected. This approach has been reduced to practice on intracortical data and also has been preliminarily confirmed on ECoG and surface EEG recordings.
Stage of Development
Proof of concept & reduced to practice on intracortical data
Applications
- Clinical monitoring for patients with epilepsy.
- Automated seizure detection
- Validation/verification of manual review of EEG data
Advantages
- Higher performance than existing model-free methods. Provides a better understanding of the location, nature, and quality of seizures.
- No need for electrode selection, which requires expert interpretation, because the algorithm supports aggregate (multichannel/multielectrode) data.
- Model-free algorithm makes no assumptions about the structure of neural data and requires no training data.
- Manual EEG reviews can be augmented with robust quantitative measures.
- Can create opportunities to improve the diagnosis and treatment for people with epilepsy.
Publications
- Yamada L, Oskotsky T, Nuyujukian P. 2022. A Novel Platform to Acquire High-resolution, Human Intracranial Electroencephalography and Its Application to an Information Theoretic Seizure Detection Algorithm. American Epilepsy Society.
- Yamada L, Oskotsky T, Nuyujukian P. 2022. A minimally disruptive acquisition framework to build repositories of high-resolution, human intracranial electroencephalography and its application to an information theoretic seizure detection algorithm. Society for Neuroscience.
- Yamada L, Oskotsky T, Nuyujukian P. 2022. Seizure detection enabled by information theory on human intracortical electroencephalography. American Academy of Neuroscience.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. An Entropy-based Approach for Seizure Detection and Localization Using Human Intracortical Electrophysiology. American Epilepsy Society.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure detection in human intracortical electroencephalography using joint entropy estimations. Society for Neuroscience.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure detection using human intracranial electrophysiology via information theoretic methods. IEEE BHI. (Best Poster Award)
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure Detection Using Human Intracortical Electrophysiology Via Information Theoretic Methods. IEEE EMBS NER.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure detection using human intracranial electrophysiology via compression. Stanford Compression Workshop.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure detection and localization using human intracranial electrophysiology via information theoretic methods. COSYNE.
- Yamada L, Oskotsky T, Nuyujukian P. 2021. Seizure detection and localization using human intracranial electrophysiology via information theoretic methods. Society of Neuroscience - Global Connectome.
Related Links
Patents
- Published Application: 20230310857
Similar Technologies
-
Neural device implantation for electrical stimulation of neural/biological tissue S18-050Neural device implantation for electrical stimulation of neural/biological tissue
-
Ultrasound for Detecting and Suppressing Epileptic Seizure S18-336Ultrasound for Detecting and Suppressing Epileptic Seizure
-
Morphing Electronics for Implantable Neurological Devices Compatible with Growing Tissue S19-190Morphing Electronics for Implantable Neurological Devices Compatible with Growing Tissue