Department of Neurology, Duke University Medical Center, Durham, North Carolina, U.S.A.
Neurosciences Medicine, Duke Clinical Research Institute, Durham, North Carolina, U.S.A.
J Clin Neurophysiol. 2021 Sep 1;38(5):432-438. doi: 10.1097/WNP.0000000000000703.
Epileptic seizures (ES) and psychogenic nonepileptic seizures (PNES) are difficult to differentiate when based on a patient's self-reported symptoms. This study proposes review of objective data captured by a surface electromyography (sEMG) wearable device for classification of events as ES or PNES. This may help clinicians accurately identify ES and PNES.
Seventy-one subjects were prospectively enrolled across epilepsy monitoring units at VA Epilepsy Centers of Excellence. Subjects were concomitantly monitored using video EEG and a wearable sEMG epilepsy monitor, the Sensing Portable sEmg Analysis Characterization (SPEAC) System. Three epileptologists independently classified ES and PNES that contained upper extremity motor activity based on video EEG. The sEMG data from those events were automatically processed to provide a seizure score for event classification. After brief training (60 minutes), the sEMG data were reviewed by a separate group of four epileptologists to independently classify events as ES or PNES.
According to video EEG review, 17 subjects experienced 34 events (15 ES and 19 PNES with upper extremity motor activity). The automated process correctly classified 87% of ES (positive predictive value = 88%, negative predictive value = 76%) and 79% of PNES, and the expert reviewers correctly classified 77% of ES (positive predictive value = 94%, negative predictive value = 84%) and 96% of PNES. The automated process and the expert reviewers correctly classified 100% of tonic-clonic seizures as ES, and 71 and 50%, respectively, of non-tonic-clonic ES.
Automated and expert review, particularly in combination, of sEMG captured by a wearable seizure monitor (SPEAC System) may be able to differentiate ES (especially tonic-clonic) and PNES with upper extremity motor activity.
基于患者的自述症状,癫痫发作 (ES) 和心因性非癫痫性发作 (PNES) 很难区分。本研究提出回顾表面肌电图 (sEMG) 可穿戴设备记录的客观数据,以对事件进行分类,确定是 ES 还是 PNES。这可能有助于临床医生准确识别 ES 和 PNES。
71 名受试者在退伍军人事务部癫痫卓越中心的癫痫监测单位进行前瞻性招募。同时使用视频脑电图和可穿戴 sEMG 癫痫监测仪,即 Sensing Portable sEmg 分析表征 (SPEAC) 系统对受试者进行监测。三位癫痫专家根据视频脑电图独立分类包含上肢运动活动的 ES 和 PNES。使用自动处理这些事件的 sEMG 数据,为事件分类提供癫痫发作评分。经过短暂培训(60 分钟),由另外 4 位癫痫专家独立回顾 sEMG 数据,对事件进行分类。
根据视频脑电图审查,17 名受试者经历了 34 次发作(15 次 ES,19 次伴有上肢运动活动的 PNES)。自动处理正确分类了 87%的 ES(阳性预测值=88%,阴性预测值=76%)和 79%的 PNES,专家评审员正确分类了 77%的 ES(阳性预测值=94%,阴性预测值=84%)和 96%的 PNES。自动处理和专家评审员正确分类了 100%的强直阵挛性发作作为 ES,分别有 71%和 50%的非强直阵挛性 ES。
自动处理和专家审查(特别是结合),对可穿戴式癫痫监测仪(SPEAC 系统)记录的 sEMG 进行分析,可能能够区分 ES(特别是强直阵挛性)和伴有上肢运动活动的 PNES。