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A neural network improves the classification of high-risk intensive care patients

机译:神经网络改善了高风险密集护理患者的分类

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A two-layer feedforward neural network for classifying intensive care patients as normal or at risk for severe cardiorespiratory disorders was designed and compared with the best, previously investigated, Bayesian classifier of similar complexity. At three distinct observation times soon after heart surgery, the three variables most effective in separating the two classes were measured and used to test the performances of classifiers by the leave-one-out method. The results showed that the ability of the well-known neural network to describe input-output nonlinear behaviour made it possible to obtain a lower level of misclassification of new data without loss of generalization.
机译:设计了双层前馈神经网络,用于分类重症的护理患者正常或有严重的心肺疾病风险,并与最佳,以前调查的贝叶斯分类器的相似性复杂性的危险设计。在心脏手术后不久的三次观察时间,测量了三种变量,最有效地分离两类,并用于通过休假方法测试分类器的性能。结果表明,众所周知的神经网络描述输入输出非线性行为的能力使得可以在不丧失泛化的情况下获得新数据的较低水平。

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