Deep Learning Enabled Automatic Abnormal EEG Identification
Subhrajit Roy, Isabell Kiral-Kornek, et al.
EMBC 2018
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.
Subhrajit Roy, Isabell Kiral-Kornek, et al.
EMBC 2018
Ewan Nurse, Benjamin Scott Mashford, et al.
CF 2016
Benjamin Scott Mashford, Antonio Jose Jimeno Yepes, et al.
IBM J. Res. Dev
Subhrajit Roy, Isabell Kiral, et al.
EBioMedicine