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Prediction of poor outcome using detector of epileptiform EEG in ICU patients resuscitated after cardiac arrest

机译:在心脏骤停后重新凝固癫痫患者癫痫患者癫痫患者的差异预测

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Assessing the brain status of patients admitted to intensive care unit (ICU) after out-of-hospital cardiac arrest is challenging. We had earlier found wavelet subband entropy (WSE) to be a useful tool for quantifying the epileptiform content of EEG during anesthesia. In this paper, WSE was applied for EEG of ICU patients to study its prognostic value. During their stay in ICU, EEG was recorded from 20 patients resuscitated after out-of-hospital cardiac arrest. For the analysis, the patients were divided into subgroups of poor outcome (persistent vegetative state, N=4) and good outcome (regain of consciousness, N=16). WSE for each 5-sec segment of EEG was calculated and also the average of WSE for each hour. Also, similar results were calculated for EEG powers in the bands 16-32 Hz and 1-60 Hz to be used as references. The statistical analysis was made by comparing the medians of the distributions of average WSE of each hour between poor and good outcome groups. The median of WSE of poor outcome group was significantly lower than that of good outcome group. The reference indicators did not show significant differences between the groups. The results suggest that WSE can be a valuable prognostic indicator for detecting the patients with poor outcome.
机译:评估患者的大脑状况入住医院内心脏骤停后的重症监护病房(ICU)是挑战性的。我们早先发现小波子带熵(WSE)是一种有用的工具,用于在麻醉期间量化脑脑癫痫型含量。在本文中,申请WSE申请ICU患者的脑梗死,以研究其预后价值。在入住ICU期间,脑电图已从医院外心脏骤停后复苏20名患者记录。对于分析,患者分为较差的结果(持续营养态,N = 4)和良好结果(恢复意识,N = 16)。计算每个5秒的脑电图段的WSE,也是每小时WSE的平均值。此外,对于带16-32Hz的带中的EEG功率和1-60Hz以用作参考文献,计算了类似的结果。通过比较贫困和良好结果组之间平均每小时WSE的分布的中位数来制备统计分析。糟糕的结果群体的中位数显着低于良好成果组。参考指示器在组之间没有显示出显着差异。结果表明,WSE可以是检测结果差的患者的宝贵预后指标。

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