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Learning representations for the early detection of sepsis with deep neural networks

机译:学习卓越性神经网络早期检测脓毒症的学习言论

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摘要

Abstract Background Sepsis is one of the leading causes of death in intensive care unit patients. Early detection of sepsis is vital because mortality increases as the sepsis stage worsens. Objective This study aimed to develop detection models for the early stage of sepsis using deep learning methodologies, and to compare the feasibility and performance of the new deep learning methodology with those of the regression method with conventional temporal feature extraction. Method Study group selection adhered to the InSight model. The results of the deep learning-based models and the InSight model were compared. Results With deep feedforward networks, the area under the ROC curve (AUC) of the models were 0.887 and 0.915 for the InSight and the new feature sets, respectively. For the model with the combined feature set, the AUC was the same as that of the basic feature set (0.915). For the long short-term memory model, only the basic feature set was applied and the AUC improved to 0.929 compared with the existing 0.887 of the InSight model. Conclusions The contributions of this paper can be summarized in three ways: (i) improved performance without feature extraction using domain knowledge, (ii) verification of feature extraction capability of deep neural networks through comparison with reference features, and (iii) improved performance with feedforward neural networks using long short-term memory, a neural network architecture that can learn sequential patterns. Highlights ? This study aimed to develop sepsis detection models with deep learning methodologies. ? The AUC of the proposed models improved to up to 0.929 (0.83 for the reference). ? Deep neural networks improve performance without conventional feature extraction step. ? Improved performance of proposed models show their capability of feature extraction. ? Among the proposed methods, the long short-term memory model shows superior capability for sequential patterns.
机译:摘要背景败血症是重症监护病房患者死亡原因之一。早期检测败血症是至关重要的,因为由于败血症阶段恶化,死亡率增加。目的本研究旨在利用深度学习方法对败血症早期的检测模型开发检测模型,并比较新的深度学习方法与传统时间特征提取的回归方法的可行性和性能。方法研究组选择遵守洞察模型。比较了基于深度学习的模型和洞察模型的结果。具有深度前馈网络的结果,模型的ROC曲线(AUC)下的区域分别为0.887和0.915,分别为洞察力和新功能集。对于具有组合特征集的模型,AUC与基本功能集(0.915)的模型相同。对于长期短期内存模型,仅应用基本功能集,与现有的洞察模型的0.887相比,AUC提高到0.929。结论本文的贡献可以三种方式总结:(i)通过使用域知识(ii)通过与参考功能的比较来验证深神经网络的特征提取能力,(iii)改善性能使用长短短期内存的前馈神经网络,可以学习顺序模式的神经网络架构。强调 ?本研究旨在开发具有深入学习方法的败血症检测模型。还所提出的模型的AUC改善至多0.929(参考为0.83)。还深神经网络改善了在没有传统特征提取步骤的情况下的性能。还提高拟议模型的性能表明其特征提取能力。还在所提出的方法中,长短期存储器模型显示出顺序模式的优异能力。

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