Toward automated prediction of sudden unexpected death in epilepsy

Rev Neurosci. 2022 May 27;33(8):877-887. doi: 10.1515/revneuro-2022-0024. Print 2022 Dec 16.

Abstract

Sudden unexpected death in epilepsy (SUDEP) is a devastating yet overlooked complication of epilepsy. The rare and complex nature of SUDEP makes it challenging to study. No prediction or prevention of SUDEP is currently available in a clinical setting. In the past decade, significant advances have been made in our knowledge of the pathophysiologic cascades that lead to SUDEP. In particular, studies of brain, heart, and respiratory functions in both human patients at the epilepsy monitoring unit and animal models during fatal seizures provide critical information to integrate computational tools for SUDEP prediction. The rapid advances in automated seizure detection and prediction algorithms provide a fundamental framework for their adaption in predicting SUDEP. If a SUDEP can be predicted, then there will be a potential for medical intervention to be administered, either by their caregivers or via an implanted device automatically delivering electrical stimulation or medication, and finally save lives from fatal seizures. This article presents recent developments of SUDEP studies focusing on the pathophysiologic basis of SUDEP and computational implications of machine learning techniques that can be adapted and extended for SUDEP prediction. This article also discusses some novel ideas for SUDEP prediction and rescue including principal component analysis and closed-loop intervention.

Keywords: automated prediction; epilepsy; machine learning; pathophysiology; sudden unexpected death in epilepsy.

Publication types

  • Review

MeSH terms

  • Animals
  • Brain
  • Death, Sudden / etiology
  • Death, Sudden / prevention & control
  • Epilepsy* / complications
  • Humans
  • Risk Factors
  • Seizures / complications
  • Sudden Unexpected Death in Epilepsy*