Seizure detection using heart rate variability: A prospective validation study.
Jesper JeppesenAnders Fuglsang-FrederiksenPeter JohansenJakob ChristensenStephan WüstenhagenHatice TankisiErisela QeramaSándor BeniczkyPublished in: Epilepsia (2020)
Although several validated seizure detection algorithms are available for convulsive seizures, detection of nonconvulsive seizures remains challenging. In this phase 2 study, we have validated a predefined seizure detection algorithm based on heart rate variability (HRV) using patient-specific cutoff values. The validation data set was independent from the previously published data set. Electrocardiography (ECG) was recorded using a wearable device (ePatch) in prospectively recruited patients. The diagnostic gold standard was inferred from video-EEG monitoring. Because HRV-based seizure detection is suitable only for patients with marked ictal autonomic changes, we defined responders as the patients who had a>50 beats/min ictal change in heart rate. Eleven of the 19 included patients with seizures (57.9%) fulfilled this criterion. In this group, the algorithm detected 20 of the 23 seizures (sensitivity: 87.0%). The algorithm detected all but one of the 10 recorded convulsive seizures and all of the 8 focal impaired awareness seizures, and it missed 2 of the 4 focal aware seizures. The median sensitivity per patient was 100% (in nine patients all seizures were detected). The false alarm rate was 0.9/24 h (0.22/night). Our results suggest that HRV-based seizure detection has high performance in patients with marked autonomic changes.
Keyphrases
- heart rate variability
- heart rate
- temporal lobe epilepsy
- loop mediated isothermal amplification
- blood pressure
- machine learning
- real time pcr
- newly diagnosed
- label free
- ejection fraction
- end stage renal disease
- deep learning
- systematic review
- prognostic factors
- randomized controlled trial
- study protocol
- physical activity
- working memory
- silver nanoparticles