Multi-Task Deep Neural Networks for Irregularly Sampled Multivariate Clinical Time Series.

Yuxi Liu, Zhenhao Zhang, Shaowen Qin, Jiang Bian
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Abstract

Multivariate clinical time series data, such as those contained in Electronic Health Records (EHR), often exhibit high levels of irregularity, notably, many missing values and varying time intervals. Existing methods usually construct deep neural network architectures that combine recurrent neural networks and time decay mechanisms to model variable correlations, impute missing values, and capture the impact of varying time intervals. The complete data matrices thus obtained from the imputation task are used for downstream risk prediction tasks. This study aims to achieve more desirable imputation and prediction accuracy by performing both tasks simultaneously. We present a new multi-task deep neural network that incorporates the imputation task as an auxiliary task while performing risk prediction tasks. We validate the method on clinical time series imputation and in-hospital mortality prediction tasks using two publicly available EHR databases. The experimental results show that our method outperforms state-of-the-art imputation-prediction methods by significant margins. The results also empirically demonstrate that the incorporation of time decay mechanisms is a critical factor for superior imputation and prediction performance. The novel deep imputation-prediction network proposed in this study provides more accurate imputation and prediction results with EHR data. Future work should focus on developing more effective time decay mechanisms for simultaneously enhancing the imputation and prediction performance of multi-task learning models.

不规则采样多变量临床时间序列的多任务深度神经网络。
多变量临床时间序列数据,如电子健康记录(EHR)中包含的数据,通常表现出高度的不规则性,特别是许多缺失值和不同的时间间隔。现有方法通常构建深度神经网络架构,结合递归神经网络和时间衰减机制来建模变量相关性,估算缺失值,并捕获不同时间间隔的影响。由此获得的完整数据矩阵用于下游风险预测任务。本研究旨在通过同时执行这两项任务来获得更理想的输入和预测精度。提出了一种新的多任务深度神经网络,该网络在执行风险预测任务的同时,将归算任务作为辅助任务。我们使用两个公开的EHR数据库验证了临床时间序列imputation和院内死亡率预测任务的方法。实验结果表明,我们的方法明显优于目前最先进的估计预测方法。实证结果还表明,时间衰减机制的引入是提高估算和预测性能的关键因素。本研究提出的新型深度估算-预测网络可对电子病历数据提供更准确的估算和预测结果。未来的工作应侧重于开发更有效的时间衰减机制,以同时提高多任务学习模型的输入和预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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