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优化危重病儿脑电图监测以预防脑电图癫痫发作。

Optimizing EEG monitoring in critically ill children at risk for electroencephalographic seizures.

机构信息

Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania Perelman School of Medicine, United States.

Department of Pediatrics (Division of Neurology), Children's Hospital of Philadelphia, United States; Department of Neurology and Pediatrics, University of Pennsylvania Perelman School of Medicine, United States.

出版信息

Seizure. 2024 Apr;117:244-252. doi: 10.1016/j.seizure.2024.03.008. Epub 2024 Mar 20.

Abstract

OBJECTIVE

Strategies are needed to optimally deploy continuous EEG monitoring (CEEG) for electroencephalographic seizure (ES) identification and management due to resource limitations. We aimed to construct an efficient multi-stage prediction model guiding CEEG utilization to identify ES in critically ill children using clinical and EEG covariates.

METHODS

The largest prospective single-center cohort of 1399 consecutive children undergoing CEEG was analyzed. A four-stage model was developed and trained to predict whether a subject required additional CEEG at the conclusion of each stage given their risk of ES. Logistic regression, elastic net, random forest, and CatBoost served as candidate methods for each stage and were evaluated using cross validation. An optimal multi-stage model consisting of the top-performing stage-specific models was constructed.

RESULTS

When evaluated on a test set, the optimal multi-stage model achieved a cumulative specificity of 0.197 and cumulative F1 score of 0.326 while maintaining a high minimum cumulative sensitivity of 0.938. Overall, 11 % of test subjects with ES were removed from the model due to a predicted low risk of ES (falsely negative subjects). CEEG utilization would be reduced by 32 % and 47 % compared to performing 24 and 48 h of CEEG in all test subjects, respectively. We developed a web application called EEGLE (EEG Length Estimator) that enables straightforward implementation of the model.

CONCLUSIONS

Application of the optimal multi-stage ES prediction model could either reduce CEEG utilization for patients at lower risk of ES or promote CEEG resource reallocation to patients at higher risk for ES.

摘要

目的

由于资源有限,需要制定策略以优化连续脑电图监测(CEEG)的部署,以识别和管理脑电图癫痫发作(ES)。我们旨在构建一个有效的多阶段预测模型,使用临床和脑电图协变量来指导 CEEG 的利用,以识别危重病儿童中的 ES。

方法

对 1399 例连续接受 CEEG 的儿童进行了最大的前瞻性单中心队列分析。开发并训练了一个四阶段模型,以根据每个阶段的 ES 风险预测受试者在每个阶段结束时是否需要额外的 CEEG。逻辑回归、弹性网络、随机森林和 CatBoost 作为每个阶段的候选方法,并通过交叉验证进行评估。构建了一个由表现最佳的阶段特异性模型组成的最优多阶段模型。

结果

在测试集上进行评估时,最优多阶段模型的累积特异性为 0.197,累积 F1 得分为 0.326,同时保持了 0.938 的高最小累积敏感性。总体而言,由于预测 ES 风险低(假阴性受试者),11%的 ES 测试受试者被从模型中删除。与对所有测试受试者分别进行 24 小时和 48 小时的 CEEG 相比,CEEG 的利用率将分别降低 32%和 47%。我们开发了一个名为 EEGLE(脑电图长度估计器)的网络应用程序,可方便地实现该模型。

结论

应用最优的 ES 预测模型可以减少 ES 风险较低的患者的 CEEG 利用率,或者促进 CEEG 资源重新分配给 ES 风险较高的患者。

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