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Brain Monitoring of Sedation in the Intensive Care Unit Using a Recurrent Neural Network

机译:使用循环神经网络对重症监护室中的镇静剂进行大脑监测

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Over and under-sedation are common in critically ill patients admitted to the Intensive Care Unit. Clinical assessments provide limited time resolution and are based on behavior rather than the brain itself. Existing brain monitors have been developed primarily for non-ICU settings. Here, we use a clinical dataset from 154 ICU patients in whom the Richmond Agitation-Sedation Score is assessed about every 2 hours. We develop a recurrent neural network (RNN) model to discriminate between deep vs. no sedation, trained end-to-end from raw EEG spectrograms without any feature extraction. We obtain an average area under the ROC of 0.8 on 10-fold cross validation across patients. Our RNN is able to provide reliable estimates of sedation levels consistently better compared to a feed-forward model with simple smoothing. Decomposing the prediction error in terms of sedatives reveals that patient-specific calibration for sedatives is expected to further improve sedation monitoring.
机译:重症监护病房的重症患者常会出现镇静过度和镇静不足的情况。临床评估只能提供有限的时间分辨率,并且基于行为而不是大脑本身。现有的脑监护仪主要针对非ICU设置而开发。在这里,我们使用了154个ICU患者的临床数据集,其中大约每2小时评估一次列治文躁动镇静评分。我们开发了递归神经网络(RNN)模型来区分深度镇静与无镇静,从原始EEG频谱图端对端训练而无需任何特征提取。在10倍交叉验证中,我们在ROC下获得的平均面积为0.8。与具有简单平滑的前馈模型相比,我们的RNN能够始终如一地提供可靠的镇静水平估计值。根据镇静剂来分解预测误差表明,针对患者的镇静剂特定校准有望进一步改善镇静剂的监测。

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