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Deep Learning for outcome prediction of postanoxic coma

机译:深度学习后毒昏迷的结果预测

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Electroencephalography (EEG) is increasingly used to assist in outcome prediction for patients with a postanoxic coma after cardiac arrest. Current literature shows that neurological outcome is invariably poor if the EEG remains iso-electric or low-voltage at 24 h after cardiac arrest or if it shows burst-suppression with identical bursts; such patterns are observed in approximately 30-50% of patients. Return of continuous EEG rhythms within 12 h after cardiac arrest predicts good neurological outcome with sensitivities in the range of 30 to 50% at specificities near 100%. In previous work, we reported on the Cerebral Recovery Index to assist in the visual assessment of the EEG. In this paper, we explore a deep learning approach, using a convolutional neural network for outcome prediction in patients with a postanoxic encephalopathy. Using EEGs from 287 patients at 12 h after cardiac arrest and 399 patients at 24 h after cardiac arrest, we trained and validated a convolutional neural network with raw EEG data (18 channels, longitudinal bipolar montage). As the outcome measure, we used the Cerebral Performance Category scale (CPC), dichotomized between good (CPC score 1-2) and poor outcome (CPC score 3-5). Using 5 minute artifact-free epochs from the continuous EEG recordings partitioned into 10 s snippets, we trained the convolutional neural network using 80% of the patients. Validation was performed with EEGs from the remaining 20% of patients. Outcome prediction was most accurate at 12 h after cardiac arrest, with a sensitivity of 58% at a specificity of 100% for the prediction of poor outcome. Good neurological outcome could be predicted at 12 h after cardiac arrest with a sensitivity of 58% at a specificity of 97%. In conclusion, we present a classifier for the prediction of neurological outcome after cardiac arrest, based on a convolutional neural network, providing reliable and objective prognostic information.
机译:脑电图(EEG)越来越多地用于帮助心脏骤停后对破旧昏迷患者的结果预测。目前的文献表明,如果心脏骤停24小时,脑电图仍然是电气或低压的神经系统结果总是差,或者如果它显示出相同的爆发的突发抑制;在大约30-50%的患者中观察到这种模式。在心脏骤停后12小时内返回连续EEG节奏,预测敏感性的良好神经系统结果在100%接近的特异性的特异性范围内敏感性。在以前的工作中,我们报告了脑恢复指数,以协助脑电图的视觉评估。在本文中,我们探讨了一种深入的学习方法,利用卷积神经网络进行破产性脑病患者的结果预测。在心脏骤停后12小时使用287例患者的脑电图,399名心脏骤停后24小时,我们培训并验证了RAW EEG数据(18个通道,纵向双极蒙太奇)的卷积神经网络。作为结果措施,我们使用了脑绩效类别规模(CPC),在良好(CPC得分1-2)之间的二分作化和结果不佳(CPC得分3-5)。使用5分钟的无造成的免费时期从连续的EEG录音中分开到10秒片段,我们使用80%的患者培训了卷积神经网络。验证与剩余的20%患者的脑电图进行。在心脏骤停后12小时,结果预测最准确,敏感性为58%,特异性为100%,以预测差的结果。在心脏骤停后12小时可以预测良好的神经系统结果,其敏感性为58%,特异性为97%。总之,我们基于卷积神经网络,提供了一种用于预测心脏骤停后神经系统结果的分类器,提供可靠和客观的预后信息。

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