Predicting Pediatric Cardiac Arrest Outcomes Using Early Quantitative EEG.

IF 4.6 1区 医学 Q1 CRITICAL CARE MEDICINE
Giulia M Benedetti, Andrea C Pardo, LNelson Sanchez-Pinto, Megan Straley, Mark S Wainwright, Jonathan E Kurz, Craig A Press
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引用次数: 0

Abstract

Aim: Accuracy of neuroprognostication after pediatric cardiac arrest (CA) is critical for directing clinical care. Current limitations include imprecise neuroprognostication models, inability to discriminate between degrees of disability, and lack of modifiable post-CA biomarkers. Models including quantitative EEG (qEEG) characteristics may improve post-CA prognostic accuracy.

Methods: Retrospective multicenter cohort of children (3mo-18yr) without return to neurologic baseline post-CA at two pediatric tertiary care hospitals (2010-2016) with ≥6-hours of EEG within 24-hours post-CA and baseline Pediatric Cerebral Performance Category (PCPC) 1-3. Primary outcome measure was 6-month PCPC dichotomized into favorable (1-3) and unfavorable (4-6 and Δ>1). Training and validation sets were derived from clinical variables, qualitative EEG (qualEEG) features, and qEEG analysis using Persyst software.

Results: Among 221 subjects, 84 (38%) had favorable 6-month outcomes. All models including clinical features (AUC 0.73 [0.59-0.87]), qualEEG (0.90 [0.81-0.97]) and qEEG features (0.85 [0.74-0.94]) predict outcomes well. A parsimonious model incorporating clinical, qualEEG and qEEG variables had an AUC of 0.92 (0.85-0.97) for predicting outcome. Increased SR was associated with degree of disability and unfavorable outcomes. Machine learning models were not superior to the more transparent parsimonious model.

Conclusions: qEEG features measured with 24-hours post-CA add to predictive outcome models and can be trended at the bedside. SR is an objective measure that may improve the precision of outcome prediction. qEEG features may be targetable dynamic brain injury biomarkers which could aid in future studies of neuroprotective interventions.

利用早期定量脑电图预测小儿心脏骤停结果。
目的:小儿心脏骤停(CA)后神经预后的准确性对指导临床护理至关重要。目前的限制包括不精确的神经预测模型,无法区分残疾程度,以及缺乏可修改的ca后生物标志物。包括定量脑电图(qEEG)特征的模型可以提高ca后预后的准确性。方法:回顾性多中心队列研究,选取2010-2016年在两家儿科三级医院就诊,ca后24小时内脑电图≥6小时且基线儿童脑功能分类(PCPC) 1-3的患儿(3mo-18岁),ca后未恢复到神经系统基线。主要结局指标是6个月PCPC分为有利(1-3)和不利(4-6和Δ bbb1)。训练集和验证集来源于临床变量、定性脑电图(qualEEG)特征和使用Persyst软件进行的qEEG分析。结果:221例受试者中,84例(38%)6个月预后良好。包括临床特征(AUC 0.73[0.59-0.87])、qualEEG(0.90[0.81-0.97])和qEEG特征(0.85[0.74-0.94])在内的所有模型均能较好地预测预后。结合临床、qualEEG和qEEG变量的简约模型预测预后的AUC为0.92(0.85-0.97)。SR升高与残疾程度和不良结局相关。机器学习模型并不优于更透明的简约模型。结论:ca后24小时测量的qEEG特征增加了预测结果模型,并且可以在床边进行趋势分析。SR是一种可以提高预后预测精度的客观指标。qEEG特征可能是有针对性的动态脑损伤生物标志物,有助于未来神经保护干预的研究。
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来源期刊
Resuscitation
Resuscitation 医学-急救医学
CiteScore
12.00
自引率
18.50%
发文量
556
审稿时长
21 days
期刊介绍: Resuscitation is a monthly international and interdisciplinary medical journal. The papers published deal with the aetiology, pathophysiology and prevention of cardiac arrest, resuscitation training, clinical resuscitation, and experimental resuscitation research, although papers relating to animal studies will be published only if they are of exceptional interest and related directly to clinical cardiopulmonary resuscitation. Papers relating to trauma are published occasionally but the majority of these concern traumatic cardiac arrest.
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