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AMRNN: attended multi-task recurrent neural networks for dynamic illness severity prediction

机译:AMRNN:参加了用于动态疾病严重程度预测的多任务经常性神经网络

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摘要

Illness severity prediction (ISP) is crucial for caregivers in the intensive care unit (ICU) while saving the life of patients. Existing ISP methods fail to provide sufficient evidence for the time-critical decision making in the dynamic changing environment. Moreover, the correlated temporal features in multivariate time-series are rarely be considered in existing machine learning-based ISP models. Therefore, in this paper, we propose a novel inter-pretable analysis framework which simultaneously analyses organ systems differentiated based on the pathological and physiological evidence to predict illness severity of patients in ICU. It not only timely but also intuitively reflects the critical conditions of patients for caregivers. In particular, we develop a deep interpretable learning model, namely AMRNN, which is based on the Multi-task RNNs and Attention Mechanism. Physiological features of each organ system in multivariate time series are learned by a single Long-Short Term Memory unit as a dedicated task. To utilize the functional and temporal relationships among organ systems, we use a shared LSTM task to exploit correlations between different learning tasks for further performance improvement. Real-world clinical datasets (MIMIC-Ⅲ) are used for conducting extensive experiments, and our method is compared with the existing state-of-the-art methods. The experimental results demonstrated that our proposed approach outperforms those methods and suggests a promising way of evidence-based decision support.
机译:疾病严重程度预测(ISP)对于在重症监护病房(ICU)中的护理人员至关重要,同时拯救患者的寿命。现有的ISP方法未能为动态变化环境中的时间关键决策提供足够的证据。此外,在基于机器学习的ISP模型中很少考虑多变量时间序列中的相关时间特征。因此,在本文中,我们提出了一种新的可编谈间分析框架,其同时分析了根据病理和生理证据来分析的器官系统,以预测ICU患者的疾病严重程度。它不仅及时,而且也直观地反映了护理人员患者的危重条件。特别是,我们开发一个深入的解释学习模式,即AMRNN,基于多任务RNN和注意机制。多变量时间序列中每个器官系统的生理特征由单个长期存储器单元作为专用任务学习。为了利用器官系统之间的功能和时间关系,我们使用共享的LSTM任务来利用不同学习任务之间的相关性以进行进一步的性能改进。现实世界临床数据集(MIMIC-Ⅲ)用于进行广泛的实验,并将其方法与现有的最先进方法进行比较。实验结果表明,我们所提出的方法优于这些方法,并提出了一种有希望的基于证据的决策支持方式。

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