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Data Mining of Patients on Weaning Trials from Mechanical Ventilation Using Cluster Analysis and Neural Networks

机译:使用集群分析和神经网络从机械通风的断奶试验数据挖掘

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The process of weaning from mechanical ventilation is one of the challenges in intensive care. 149 patients under extubation process (T-tube test) were studied: 88 patients with successful trials (group S), 38 patients who failed to maintain spontaneous breathing and were reconnected (group F), and 23 patients with successful test but that had to be reintubated before 48 hours (group R). Each patient was characterized using 8 time series and 6 statistics extracted from respiratory and cardiac signals. A moving window statistical analysis was applied obtaining for each patient a sequence of patterns of 48 features. Applying a cluster analysis two groups with the majority dataset were obtained. Neural networks were applied to discriminate between patients from groups S, F and R. The best performance obtained was 84.0% of well classified patients using a linear perceptron trained with a feature selection procedure (that selected 19 of the 48 features) and taking as input the main cluster centroid. However, the classification baseline 69.8% could not be improved when using the original set of patterns instead of the centroids to classify the patients.
机译:从机械通气中断奶的过程是重症监护的挑战之一。研究了149例拔管过程(T-Tube试验):88名患者成功试验(群体),38名未能保持自发呼吸的患者,并重新联系(F组),23名患者成功考试,但不得不在48小时之前重新介绍(R组)。使用来自呼吸和心脏信号中提取的8次序列和6个统计数据的每个患者的特征在于。施加移动窗口统计分析,用于获得每位患者的一系列图案48个特征。将群集分析应用于具有多数数据集的两组。应用神经网络以区分来自组的患者,F和R.获得的最佳性能为84.0%的良好分类患者,使用具有特征选择程序的线性感染者(48个功能中选择的19个)并作为输入。主要集群质心。但是,在使用原始模式集而不是质心来对患者分类时,无法改善分类基线69.8%。

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