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Multi-layer Facial Representation Learning for Early Prediction of Septic Shock

机译:多层面部代表学习,用于早期预测化粪池休克

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Recurrent Neural Network (RNN) and Convolutional Neural Network (CNN) have become the state-of-the-art approaches for mining Electronic Health Records (EHRs). Generally speaking, RNN extracts the temporal dependency among features as a time series of hidden states, whereas CNN summarizes the local patterns among features as a set of feature maps. Many studies have leveraged their complementary effects by using a stack of neural network layers with CNN on the input, followed by RNN layers for the output. However, the feature representations learned by these two types of neural networks are often hard to be visualized and interpreted in a unified way. In this work, we propose a general framework which represents the extracted temporal relationships and local patterns in a unified and systematic way through facial representations that have evolving emotional expressions based on a patient’s health conditions. This form of feature representation not only improves the potential to visualize EHRs, but also further benefits our downstream task on early prediction of septic shock. More specifically, we show that our proposed framework consistently out-performed all other baseline models including various deep learning models for sepsis shock early prediction.
机译:经常性神经网络(RNN)和卷积神经网络(CNN)已成为采矿电子健康记录(EHRS)的最先进的方法。一般而言,RNN将特征的时间依赖性提取为隐藏状态的时间序列,而CNN总结了作为一组特征映射的特征之间的本地模式。许多研究通过使用输入的CNN堆叠通过CNN的堆叠来利用它们的互补效果,然后是输出的RNN层。然而,这两种类型的神经网络学到的特征表示通常很难以统一的方式可视化和解释。在这项工作中,我们提出了一种一般框架,其通过基于患者的健康状况不断发展情绪表达的面部表示,以统一和系统的方式代表提取的时间关系和本地模式。这种形式的特征表示不仅可以改善可视化EHR的可能性,而且还在早期预测脓毒症休克预测下进一步利益。更具体地说,我们表明我们所提出的框架一致地推出所有其他基线模型,包括用于SEPSIS休克早期预测的各种深度学习模型。

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