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首页> 外文期刊>Journal of clinical monitoring and computing >Prognostic value of EEG indexes for the Glasgow outcome scale of comatose patients in the acute phase
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Prognostic value of EEG indexes for the Glasgow outcome scale of comatose patients in the acute phase

机译:脑电图指标对急性期昏迷患者格拉斯哥预后量表的预后价值

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摘要

The purpose of this work is the estimation of the Glasgow outcome scale (GOS) from a single continuous electroencephalogram (c-EEG) routinely recorded to monitor comatose patients in the neurosurgical intensive care unit. c-EEG was recorded from 13 patients in the acute phase: five with GOS = 5, four with GOS = 3 and four with GOS = 1. Different indexes were extracted from epochs of c-EEG (classical: amplitude and spectral estimators; non classical: from recurrence quantification analysis-RQA-and approximate entropy). Descriptors of different indexes (temporal variation and mean, standard deviation, skewness of the distribution across epochs) were used to train support vector machines to identify the correct GOS. We found classifiers allowing correct classification of the patients. Spectral indexes allowed to get optimal performances in classifying GOS 1 and 3. Nonlinear indexes (especially determinism from RQA) were optimal for identifying GOS = 5. Thus, the integration of information from classical/linear and nonlinear c-EEG descriptors in a multi-index classifier is important for GOS estimation.
机译:这项工作的目的是根据常规记录的单个连续脑电图(c-EEG)估算格拉斯哥结局量表(GOS),以监测神经外科重症监护病房的昏迷患者。记录了13例急性期的c-EEG:GOS = 5的5位患者,GOS = 3的4位患者,GOS = 1的4位患者。从c-EEG的时期中提取了不同的指标(经典:幅度和频谱估计量;非经典:来自递归量化分析-RQA-和近似熵)。使用不同指标(时间变化和均值,标准差,历时分布的偏度)的描述符来训练支持向量机,以识别正确的GOS。我们发现了分类器,可以对患者进行正确分类。频谱索引可以在对GOS 1和3进行分类时获得最佳性能。非线性索引(尤其是来自RQA的确定性)对于识别GOS = 5是最佳的。因此,可以将经典/线性和非线性c-EEG描述符中的信息集成索引分类器对于GOS估计很重要。

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