Haut Sheryl R, Hall Charles B, Masur Jonathan, Lipton Richard B
Comprehensive Epilepsy Management Center, Montefiore Medical Center, 111 East 210th Street, Bronx, NY 10467-2490, USA.
Neurology. 2007 Nov 13;69(20):1905-10. doi: 10.1212/01.wnl.0000278112.48285.84.
To explore the relationship of seizure occurrence with candidate seizure precipitants in a prospective diary study, and to determine the relationship of precipitants to seizure self-prediction.
Eligible subjects were 18 or older, had localization-related epilepsy, at least one seizure within 12 months, and were able to maintain a daily diary. Information collected included the occurrence, time and characteristics of all seizures, hours of sleep, medication compliance, stress, anxiety, alcohol use, menstruation, and seizure self-prediction. Each night, subjects reported their estimate of the likelihood of a seizure the next day (self-prediction). Logit-normal models with a random subject-specific intercept were used to estimate an OR for the association of precipitants with seizure occurrence.
Seventy-one subjects returned 15,179 complete diary days. For each hour of increased sleep on the preceding night, the relative odds of a seizure the following day decreased (OR 0.91, 95% CI 0.82, 0.99). One-unit increments of stress and anxiety (on a 10-point scale) were associated with an increased risk of seizure the following day (OR 1.06, 95% CI 1.01, 1.12 and OR 1.07; 95% CI 1.02, 1.12). With self-prediction included in the model, self-prediction (OR 3.7; 95% CI 1.8, 7.2) and hours of sleep for the night prior to the seizure (OR 0.90; 95% CI 0.82, 0.99) remained significant.
Lack of sleep and higher self-reported stress and anxiety levels were associated with seizure occurrence. In a model that included self-prediction, less sleep, and self-prediction had significant effects, whereas stress and anxiety did not. The psychological and biologic mechanisms which link stress and anxiety to self-prediction of seizures requires further exploration. Ultimately, seizure prediction based on precipitants, premonitory features, and self-prediction may provide a foundation for preemptive treatment.
在一项前瞻性日记研究中探讨癫痫发作与候选发作诱发因素之间的关系,并确定诱发因素与癫痫自我预测之间的关系。
符合条件的受试者年龄在18岁及以上,患有局灶性相关性癫痫,在12个月内至少有一次发作,且能够坚持每日记日记。收集的信息包括所有癫痫发作的发生情况、时间和特征、睡眠时间、药物依从性、压力、焦虑、饮酒、月经情况以及癫痫自我预测。每晚,受试者报告他们对次日癫痫发作可能性的估计(自我预测)。使用具有随机个体特异性截距的对数正态模型来估计诱发因素与癫痫发作关联的比值比(OR)。
71名受试者返回了15179个完整的记日记天数。前一晚每增加一小时睡眠,次日癫痫发作的相对几率就会降低(OR 0.91,95%置信区间0.82,0.99)。压力和焦虑水平增加一个单位(采用10分制)与次日癫痫发作风险增加相关(OR 1.06,95%置信区间1.01,1.12和OR 1.07;95%置信区间1.02,1.12)。将自我预测纳入模型后,自我预测(OR 3.7;95%置信区间1.8,7.2)和癫痫发作前一晚的睡眠时间(OR 0.90;95%置信区间0.82,0.99)仍然具有显著性。
睡眠不足以及自我报告的较高压力和焦虑水平与癫痫发作相关。在纳入自我预测的模型中,睡眠不足和自我预测具有显著影响,而压力和焦虑则没有。将压力和焦虑与癫痫自我预测联系起来的心理和生物学机制需要进一步探索。最终,基于诱发因素、先兆特征和自我预测的癫痫预测可能为预防性治疗提供基础。