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Epileptic Seizure Prediction Using Big Data and Deep Learning: Toward a Mobile System.
Kiral-Kornek, Isabell; Roy, Subhrajit; Nurse, Ewan; Mashford, Benjamin; Karoly, Philippa; Carroll, Thomas; Payne, Daniel; Saha, Susmita; Baldassano, Steven; O'Brien, Terence; Grayden, David; Cook, Mark; Freestone, Dean; Harrer, Stefan.
Afiliação
  • Kiral-Kornek I; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia.
  • Roy S; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia.
  • Nurse E; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Mashford B; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia.
  • Karoly P; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Carroll T; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Payne D; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Saha S; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia.
  • Baldassano S; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • O'Brien T; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Grayden D; Department of Biomedical Engineering, The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Cook M; The University of Melbourne, 3010 Parkville, VIC, Australia.
  • Freestone D; The University of Melbourne, 3010 Parkville, VIC, Australia. Electronic address: deanrf@unimelb.edu.au.
  • Harrer S; IBM Research - Australia, 204 Lygon Street, 3053 Carlton, VIC, Australia. Electronic address: sharrer@au.ibm.com.
EBioMedicine ; 27: 103-111, 2018 Jan.
Article em En | MEDLINE | ID: mdl-29262989
BACKGROUND: Seizure prediction can increase independence and allow preventative treatment for patients with epilepsy. We present a proof-of-concept for a seizure prediction system that is accurate, fully automated, patient-specific, and tunable to an individual's needs. METHODS: Intracranial electroencephalography (iEEG) data of ten patients obtained from a seizure advisory system were analyzed as part of a pseudoprospective seizure prediction study. First, a deep learning classifier was trained to distinguish between preictal and interictal signals. Second, classifier performance was tested on held-out iEEG data from all patients and benchmarked against the performance of a random predictor. Third, the prediction system was tuned so sensitivity or time in warning could be prioritized by the patient. Finally, a demonstration of the feasibility of deployment of the prediction system onto an ultra-low power neuromorphic chip for autonomous operation on a wearable device is provided. RESULTS: The prediction system achieved mean sensitivity of 69% and mean time in warning of 27%, significantly surpassing an equivalent random predictor for all patients by 42%. CONCLUSION: This study demonstrates that deep learning in combination with neuromorphic hardware can provide the basis for a wearable, real-time, always-on, patient-specific seizure warning system with low power consumption and reliable long-term performance.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Convulsões / Estatística como Assunto / Epilepsia / Aprendizado de Máquina Idioma: En Ano de publicação: 2018 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Convulsões / Estatística como Assunto / Epilepsia / Aprendizado de Máquina Idioma: En Ano de publicação: 2018 Tipo de documento: Article