| Literature DB >> 30310759 |
Vaclav Kremen1,2,3, Benjamin H Brinkmann1,3, Inyong Kim1, Hari Guragain1, Mona Nasseri1, Abigail L Magee1, Tal Pal Attia1,3, Petr Nejedly1,3,4, Vladimir Sladky1,3,4, Nathanial Nelson1, Su-Youne Chang5, Jeffrey A Herron6, Tom Adamski6, Steven Baldassano7, Jan Cimbalnik1,4, Vince Vasoli6, Elizabeth Fehrmann6, Tom Chouinard6, Edward E Patterson8, Brian Litt7, Matt Stead1,3, Jamie Van Gompel5, Beverly K Sturges9, Hang Joon Jo5,10, Chelsea M Crowe11, Timothy Denison6, Gregory A Worrell1,3.
Abstract
Brain stimulation has emerged as an effective treatment for a wide range of neurological and psychiatric diseases. Parkinson's disease, epilepsy, and essential tremor have FDA indications for electrical brain stimulation using intracranially implanted electrodes. Interfacing implantable brain devices with local and cloud computing resources have the potential to improve electrical stimulation efficacy, disease tracking, and management. Epilepsy, in particular, is a neurological disease that might benefit from the integration of brain implants with off-the-body computing for tracking disease and therapy. Recent clinical trials have demonstrated seizure forecasting, seizure detection, and therapeutic electrical stimulation in patients with drug-resistant focal epilepsy. In this paper, we describe a next-generation epilepsy management system that integrates local handheld and cloud-computing resources wirelessly coupled to an implanted device with embedded payloads (sensors, intracranial EEG telemetry, electrical stimulation, classifiers, and control policy implementation). The handheld device and cloud computing resources can provide a seamless interface between patients and physicians, and realtime intracranial EEG can be used to classify brain state (wake/sleep, preseizure, and seizure), implement control policies for electrical stimulation, and track patient health. This system creates a flexible platform in which low demand analytics requiring fast response times are embedded in the implanted device and more complex algorithms are implemented in offthebody local and distributed cloud computing environments. The system enables tracking and management of epileptic neural networks operating over time scales ranging from milliseconds to months.Entities:
Keywords: Epilepsy; deep brain stimulation; distributed computing; implantable devices; seizure detection; seizure prediction
Year: 2018 PMID: 30310759 PMCID: PMC6170139 DOI: 10.1109/JTEHM.2018.2869398
Source DB: PubMed Journal: IEEE J Transl Eng Health Med ISSN: 2168-2372