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Multi-task deep representation learning method for electronic health records

机译:电子健康记录多任务深度思考学习方法

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Electronic health records (EHRs) data plays an important role in the development of healthcare undertaking. There are many challenges in mining EHRs, such as temporality, irregularity, sparsity, bias, etc. Thus effective feature extraction and representation are key steps before any further applications. In this paper, we propose a multi-task deep representation learning method (MTDRL) with the objective of extracting the valuable clinical information from raw data and learning an effective and interpretable patient representation. Firstly, MTDRL utilizes Bidirectional Gated Recurrent Unit (BiGRU) as an encoder to learn the hidden state vectors which are used as inputs for the following networks. This encoding part can be seen as a shared network for all tasks. Secondly, patient's in-hospital mortality prediction and sequence reconstruction are simultaneously conducted based on the encoding network. Specifically, an attention mechanism and a fully-connected layer are incorporated in prediction task and BiGRU is implemented in the other task to reconstruct the visit sequences. Finally, we apply MTDRL to real EHRs data and the experimental results demonstrate that MTDRL is capable of learning more effective patient representation and has a significant improvement in the performance of patient's in-hospital mortality prediction. Meanwhile, the prediction results can be effectively interpreted with the attention mechanism and provide a clinically meaningful references.
机译:电子健康记录(电子病历)数据起着医疗保健事业的发展具有重要作用。有在采矿电子病历许多挑战,如时间性,不规则,稀疏度,偏差等。因此有效的特征提取和表示被之前的任何进一步应用的关键步骤。在本文中,我们提出的客观提取原始数据的有价值的临床信息和学习有效的和可解释的患者表示的多任务深表示学习方法(MTDRL)。首先,利用MTDRL双向门控重复单元(BiGRU)作为编码器学习被用作用于以下网络输入的隐藏状态向量。这个编码部分可以被看作是对所有任务共享的网络。其次,病人的住院死亡率预测和序列重建基于编码网络上是同时进行的。具体地,注意机制和完全连接的层中的预测任务被并入和BiGRU在其他任务实施重构访问序列。最后,我们应用MTDRL实际电子病历数据和实验结果表明,MTDRL能够学习更多有效的患者代表,并在病人的住院死亡率预测的性能显著的改善。同时,预测结果可以有效地与注意机制解释,并提供具有临床意义的引用。

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