1Department of Neurosurgery, Stanford University School of Medicine, Stanford.
2Lucile Packard Children's Hospital, Stanford; and.
Neurosurg Focus. 2022 Apr;52(4):E3. doi: 10.3171/2022.1.FOCUS21751.
The natural history of seizure risk after brain tumor resection is not well understood. Identifying seizure-naive patients at highest risk for postoperative seizure events remains a clinical need. In this study, the authors sought to develop a predictive modeling strategy for anticipating postcraniotomy seizures after brain tumor resection.
The IBM Watson Health MarketScan Claims Database was canvassed for antiepileptic drug (AED)- and seizure-naive patients who underwent brain tumor resection (2007-2016). The primary event of interest was short-term seizure risk (within 90 days postdischarge). The secondary event of interest was long-term seizure risk during the follow-up period. To model early-onset and long-term postdischarge seizure risk, a penalized logistic regression classifier and multivariable Cox regression model, respectively, were built, which integrated patient-, tumor-, and hospitalization-specific features. To compare empirical seizure rates, equally sized cohort tertiles were created and labeled as low risk, medium risk, and high risk.
Of 5470 patients, 983 (18.0%) had a postdischarge-coded seizure event. The integrated binary classification approach for predicting early-onset seizures outperformed models using feature subsets (area under the curve [AUC] = 0.751, hospitalization features only AUC = 0.667, patient features only AUC = 0.603, and tumor features only AUC = 0.694). Held-out validation patient cases that were predicted by the integrated model to have elevated short-term risk more frequently developed seizures within 90 days of discharge (24.1% high risk vs 3.8% low risk, p < 0.001). Compared with those in the low-risk tertile by the long-term seizure risk model, patients in the medium-risk and high-risk tertiles had 2.13 (95% CI 1.45-3.11) and 6.24 (95% CI 4.40-8.84) times higher long-term risk for postdischarge seizures. Only patients predicted as high risk developed status epilepticus within 90 days of discharge (1.7% high risk vs 0% low risk, p = 0.003).
The authors have presented a risk-stratified model that accurately predicted short- and long-term seizure risk in patients who underwent brain tumor resection, which may be used to stratify future study of postoperative AED prophylaxis in highest-risk patient subpopulations.
脑瘤切除术后癫痫发作风险的自然史尚不清楚。确定术后癫痫发作风险最高的无癫痫发作患者仍然是临床需要。在这项研究中,作者试图开发一种预测建模策略,以预测脑瘤切除术后的术后癫痫发作。
在 IBM Watson Health MarketScan 索赔数据库中搜索接受抗癫痫药物(AED)和无癫痫发作的患者,这些患者接受了脑瘤切除术(2007-2016 年)。主要研究事件是短期癫痫发作风险(出院后 90 天内)。次要研究事件是随访期间的长期癫痫发作风险。为了模拟早期和长期出院后癫痫发作风险,分别构建了一个惩罚逻辑回归分类器和多变量 Cox 回归模型,该模型整合了患者、肿瘤和住院特定特征。为了比较经验性癫痫发作率,创建了相等大小的队列三分位数,并标记为低风险、中风险和高风险。
在 5470 名患者中,有 983 名(18.0%)在出院后编码发生了癫痫发作事件。用于预测早期发作的综合二进制分类方法优于使用特征子集的模型(曲线下面积[AUC] = 0.751,仅住院特征 AUC = 0.667,仅患者特征 AUC = 0.603,仅肿瘤特征 AUC = 0.694)。通过综合模型预测短期风险升高的保留验证患者病例在出院后 90 天内更频繁地发生癫痫发作(高风险 24.1%比低风险 3.8%,p <0.001)。与长期癫痫发作风险模型中低风险三分位数的患者相比,中风险和高风险三分位数的患者在出院后发生癫痫发作的风险分别高 2.13 倍(95%CI 1.45-3.11)和 6.24 倍(95%CI 4.40-8.84)。仅预测为高风险的患者在出院后 90 天内发生癫痫持续状态(高风险 1.7%比低风险 0%,p = 0.003)。
作者提出了一种风险分层模型,该模型可以准确预测接受脑瘤切除术的患者的短期和长期癫痫发作风险,该模型可用于对高危患者亚群的术后 AED 预防进行分层研究。