Detecting Tonic-Clonic Seizures in Multimodal Biosignal Data From Wearables: Methodology Design and Validation

Nov 22, 2021JMIR mHealth and uHealth

Detecting Tonic-Clonic Seizures Using Wearable Devices with Multiple Body Signals: Method Design and Testing

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Abstract

The model detected 10 tonic-clonic seizures with zero false positives in a test set of 11 seizures over 8.3 days of data.

  • The study utilized a multimodal watch to collect biosignal data from people with epilepsy.
  • Data from 10 participants with 21 recorded tonic-clonic seizures were analyzed.
  • Sensitivity was optimized in a model that detected all seizures during cross-validation.
  • The false alarm rate was 0.46 per day over 17.3 days of monitoring.
  • Including data from 28 additional participants without seizures reduced the false alarm rate to 0.19 per day over 78 days.

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