Bonnett Laura J, Kim Lois, Johnson Anthony, Sander Josemir W, Lawn Nicholas, Beghi Ettore, Leone Maurizio, Marson Anthony G
Department of Health Data Science, University of Liverpool, Block B, Waterhouse Building, Brownlow Hill, Liverpool L69 3GL United Kingdom.
Cardiovascular Epidemiology Unit, Strangeways Research Laboratory, University of Cambridge, Wort's Causeway, Cambridge CB1 8RN, United Kingdom.
Seizure. 2022 Jan;94:26-32. doi: 10.1016/j.seizure.2021.11.007. Epub 2021 Nov 23.
Following a single seizure, or recent epilepsy diagnosis, it is difficult to balance risk of medication side effects with the potential to prevent seizure recurrence. A prediction model was developed and validated enabling risk stratification which in turn informs treatment decisions and individualises counselling.
Data from a randomised controlled trial was used to develop a prediction model for risk of seizure recurrence following a first seizure or diagnosis of epilepsy. Time-to-event data was modelled via Cox's proportional hazards regression. Model validity was assessed via discrimination and calibration using the original dataset and also using three external datasets - National General Practice Survey of Epilepsy (NGPSE), Western Australian first seizure database (WA) and FIRST (Italian dataset of people with first tonic-clonic seizures).
People with neurological deficit, focal seizures, abnormal EEG, not indicated for CT/MRI scan, or not immediately treated have a significantly higher risk of seizure recurrence. Discrimination was fair and consistent across the datasets (c-statistics: 0.555 (NGPSE); 0.558 (WA); 0.597 (FIRST)). Calibration plots showed good agreement between observed and predicted probabilities in NGPSE at one and three years. Plots for WA and FIRST showed poorer agreement with the model underpredicting risk in WA, and over-predicting in FIRST. This was resolved following model recalibration.
The model performs well in independent data especially when recalibrated. It should now be used in clinical practice as it can improve the lives of people with single seizures and early epilepsy by enabling targeted treatment choices and more informed patient counselling.
在单次癫痫发作或近期被诊断为癫痫后,很难在药物副作用风险与预防癫痫复发可能性之间取得平衡。开发并验证了一种预测模型,能够进行风险分层,进而为治疗决策提供依据并实现个性化咨询。
来自一项随机对照试验的数据被用于开发首次癫痫发作或癫痫诊断后癫痫复发风险的预测模型。通过Cox比例风险回归对事件发生时间数据进行建模。使用原始数据集以及三个外部数据集——全国癫痫全科医学调查(NGPSE)、西澳大利亚首次癫痫发作数据库(WA)和FIRST(意大利首次强直阵挛发作患者数据集),通过区分度和校准来评估模型的有效性。
存在神经功能缺损、局灶性癫痫发作、脑电图异常、未被建议进行CT/MRI扫描或未立即接受治疗的患者癫痫复发风险显著更高。各数据集的区分度良好且一致(c统计量:0.555(NGPSE);0.558(WA);0.597(FIRST))。校准图显示,在NGPSE中,观察到的概率与预测概率在1年和3年时具有良好的一致性。WA和FIRST的校准图显示一致性较差,WA中模型对风险预测不足,而FIRST中模型对风险预测过度。在对模型重新校准后,这一问题得到了解决。
该模型在独立数据中表现良好,尤其是在重新校准后。现在应将其应用于临床实践,因为它可以通过实现有针对性的治疗选择和更明智的患者咨询,改善单次癫痫发作和早期癫痫患者的生活。