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Novel Imputing Method and Deep Learning Techniques for Early Prediction of Sepsis in Intensive Care Units

机译:精力监护单位早期预测脓毒症早期预测的新型抵抗方法

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It is possible to exploit the predictive capacity of data collected in intensive care units (ICU) with a high ratio of missing values. Combining several sources of information, a considerable number of missing values are generated. In this manuscript, an alternative approach to impute this type of data, together with the use of deep learning techniques to improve the early detection of sepsis in ICU is proposed. Initially, laboratory tests are separated and summarized. Then, their most representative information is extracted by taking codes from an autoencoder. This information is combined with the rest of the variables and used to exploit temporal dependencies through long short-term memory recurrent neural networks. With the proposed approach our team, WIN-UAB, was ranked in the position 38/78 with a utility score (defined in the the PhysioNet/Computing in Cardiology Challenge 2019) of 0.241 on the full test set. The predictive capacity of the proposed solution demonstrated the potential of integrating an alternative approach for imputing variables with a high ratio of missing values. In terms of dimensionality reduction, it is possible to reduce 27% of features through the codes of autoencoders.
机译:可以利用以重症监护单元(ICU)收集的数据的预测能力,具有缺失值的高比率。结合多个信息来源,生成了相当数量的缺失值。在该稿件中,提出了一种替代方法来赋予这种类型的数据,以及利用深度学习技术来改善ICU中脓毒症的早期检测。最初,实验室测试是分离和总结的。然后,通过从AutoEncoder采用代码来提取其最代表性的信息。该信息与其他变量的其余部分组合,并通过长短期内存经常性神经网络利用时间依赖性。通过拟议的方法,我们的团队Win-UAB在38/78中排名在38/78的职位评分(在2019年心脏病学挑战中定义)0.241上的完整测试集。所提出的解决方案的预测能力展示了积分替代方法,以利用缺失值的高比率抵御抵抗变量。在减少维度的规范方面,可以通过AutoEncoder的代码减少27%的特征。

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