4.3 Article

Using sEMG to identify seizure semiology of motor seizures

Journal

SEIZURE-EUROPEAN JOURNAL OF EPILEPSY
Volume 86, Issue -, Pages 52-59

Publisher

W B SAUNDERS CO LTD
DOI: 10.1016/j.seizure.2020.11.013

Keywords

Surface EMG; GTC seizures; Automated characterization; Seizure semiology; Epilepsy

Funding

  1. Brain Sentinel, Inc.

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Accurate characterization and quantification of seizure types are essential for optimal pharmacotherapy in epilepsy patients. This study demonstrates that continuous monitoring of sEMG data can provide an objective measure to evaluate motor seizure activity, particularly tonic-clonic and tonic seizures. The combination of automated classification methods and expert review shows promising results in accurately classifying motor seizure events.
Purpose: Accurate characterization and quantification of seizure types are critical for optimal pharmacotherapy in epilepsy patients. Technological advances have made it possible to continuously monitor physiological signals within or outside the hospital setting. This study tested the utility of single-channel surface-electromyography (sEMG) for characterization of motor epileptic seizure semiology. Methods: Seventy-one subjects were prospectively enrolled where vEEG and sEMG were simultaneously recorded. Three epileptologists independently identified and classified seizure events with upper-extremity (UE) motor activity by reviewing vEEG, serving as a clinical standard. Surface EMG recorded during the events identified by the clinical standard were evaluated using automated classification methods and expert review by a second group of three independent epileptologists (blinded to the vEEG data). Surface EMG classification categories included: tonic-clonic (TC), tonic only, clonic only, or other motor seizures. Both automated and expert review of sEMG was compared to the clinical standard. Results: Twenty subjects experienced 47 motor seizures. Automated sEMG event classification methods accurately classified 72 % (95 % CI [0.57, 0.84]) of events (15/18 TC seizures, 5/9 tonic seizures, 1/3 clonic seizures, and 13/17 other seizures). Three independent reviewers' majority-rule analysis of sEMG correctly classified 81 % (95 % CI [0.67, 0.91]) of events (16/18 TC seizures, 8/9 tonic seizures, 1/3 clonic seizures, and 13/17 other manifestations). Conclusions: Continuous monitoring of sEMG data provides an objective measure to evaluate motor seizure activity. Using sEMG from a wearable monitor recorded from the biceps, automated and expert review may be used to characterize the semiology of events with UE motor activity, particularly TC and tonic seizures.

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