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抗癫痫药物停药后癫痫复发预测模型的验证。

Validation of the predictive model for seizure recurrence after withdrawal of antiepileptic drugs.

机构信息

Department of Neurology, West China Hospital, Sichuan University, Wai Nan Guo Xue Lane 37#, Chengdu 610041, China.

Department of Neurology, West China Hospital, Sichuan University, Wai Nan Guo Xue Lane 37#, Chengdu 610041, China.

出版信息

Epilepsy Behav. 2021 Jan;114(Pt A):106987. doi: 10.1016/j.yebeh.2020.106987. Epub 2020 May 19.

Abstract

PURPOSE

The purpose of this study was to validate the practicability of Lamberink's prediction model in risk assessment of antiepileptic drug (AED) withdrawal in a real, seizure-free population and to find a practical cutoff value to guide clinical withdrawal.

METHODS

A group of seizure-free patients from West China Hospital was recruited. Each patient had been seizure-free for at least two years. The seizure recurrence risk among the patients was calculated by an online AED withdrawal risk calculator. The predictive ability of Lamberink's model was assessed by analyzing discrimination and calibration with receiver operating characteristic (ROC) curves and calibration plots, respectively.

RESULTS

A total of 184 seizure-free patients received risk evaluation, all of whom were followed up for at least two years or had an earlier report of seizure relapse. Of these patients, 128 patients were followed up for at least five years or had an earlier report of relapse within five years. Sixty-two of 184 (33.7%) patients relapsed within two years, while 81 of 184 (44.0%) patients relapsed within five years after the start of AEDs' withdrawal. Cox regression analyses showed that seizure duration before remission and the age of seizure onset were independent predictors of relapse at two years. For predictors of recurrence at five years, seizure duration before remission, age at onset, and withdrawal were significant. For discrimination, ROC curve analysis showed that the area under the curve (AUC) for the seizure recurrence within two and five years was 0.605 (95% confidence interval [CI]: 0.518-0.692, p = 0.02) and 0.656 (95% CI: 0.563-0.749, p = 0.003), respectively. For calibration, it was poor in two-year prediction; the observed number was considerably lower than the predicted number. However, the calibration plot showed good calibration with the five-year prediction except for the second, fourth, and eighth deciles. With a cutoff two-year recurrence risk of 47%, the model had a sensitivity of 0.758 and a specificity of 0.410; the largest Youden index was 1.168. With a cutoff five-year recurrence risk of 77%, the model had a sensitivity of 0.358 and a specificity of 0.979; the largest Youden index was 1.337.

CONCLUSIONS

Lamberink's prediction model has a general discrimination ability. The model overestimated the actual recurrence events when predicting the two-year recurrence risk, but it showed relatively good calibration with five-year prediction. The cutoff value found in this study may be used to guide patients and clinicians towards a decision regarding the withdrawal of AEDs. The model appears to be a useful tool for predicting seizure recurrence for the five-year recurrence risk.

摘要

目的

本研究旨在验证 Lamberink 预测模型在真实无癫痫发作人群中评估抗癫痫药物(AED)停药风险的实用性,并寻找实用的截断值以指导临床停药。

方法

本研究纳入了华西医院的一组无癫痫发作的患者。每位患者均已无癫痫发作至少两年。通过在线 AED 停药风险计算器计算患者的癫痫复发风险。通过分析受试者工作特征(ROC)曲线和校准图分别评估 Lamberink 模型的判别能力和校准能力。

结果

共 184 例无癫痫发作的患者接受了风险评估,所有患者均至少随访两年或更早报告癫痫复发。其中 128 例患者至少随访 5 年或在 5 年内更早报告复发。184 例患者中,62 例(33.7%)在两年内复发,184 例患者中 81 例(44.0%)在 AED 停药后 5 年内复发。Cox 回归分析显示,缓解前癫痫持续时间和癫痫发作年龄是两年内复发的独立预测因素。对于五年内复发的预测因素,缓解前癫痫持续时间、发病年龄和停药是显著的。对于判别能力,ROC 曲线分析显示,两年内和五年内癫痫复发的曲线下面积(AUC)分别为 0.605(95%置信区间[CI]:0.518-0.692,p=0.02)和 0.656(95%CI:0.563-0.749,p=0.003)。对于校准,两年内的预测效果不佳;观察到的数量明显低于预测数量。然而,除了第二、第四和第八十分位数外,校准图显示五年预测的校准效果良好。截断两年复发风险为 47%时,模型的敏感性为 0.758,特异性为 0.410;最大 Youden 指数为 1.168。截断五年复发风险为 77%时,模型的敏感性为 0.358,特异性为 0.979;最大 Youden 指数为 1.337。

结论

Lamberink 预测模型具有较好的判别能力。该模型在预测两年内复发风险时高估了实际复发事件,但与五年预测相比,校准效果较好。本研究中发现的截断值可用于指导患者和临床医生决定是否停用 AED。该模型似乎是预测五年内复发风险的有用工具。

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