JOURNAL ARTICLE

Representation learning for clinical time series prediction tasks in electronic health records

Tong RuanLiqi LeiYangming ZhouJie ZhaiLe ZhangPing HeJu Gao

Year: 2019 Journal:   BMC Medical Informatics and Decision Making Vol: 19 (S8)Pages: 259-259   Publisher: BioMed Central

Abstract

Abstract Background Electronic health records (EHRs) provide possibilities to improve patient care and facilitate clinical research. However, there are many challenges faced by the applications of EHRs, such as temporality, high dimensionality, sparseness, noise, random error and systematic bias. In particular, temporal information is difficult to effectively use by traditional machine learning methods while the sequential information of EHRs is very useful. Method In this paper, we propose a general-purpose patient representation learning approach to summarize sequential EHRs. Specifically, a recurrent neural network based denoising autoencoder (RNN-DAE) is employed to encode inhospital records of each patient into a low dimensional dense vector. Results Based on EHR data collected from Shuguang Hospital affiliated to Shanghai University of Traditional Chinese Medicine, we experimentally evaluate our proposed RNN-DAE method on both mortality prediction task and comorbidity prediction task. Extensive experimental results show that our proposed RNN-DAE method outperforms existing methods. In addition, we apply the “Deep Feature” represented by our proposed RNN-DAE method to track similar patients with t-SNE, which also achieves some interesting observations. Conclusion We propose an effective unsupervised RNN-DAE method to summarize patient sequential information in EHR data. Our proposed RNN-DAE method is useful on both mortality prediction task and comorbidity prediction task.

Keywords:
Computer science Recurrent neural network Artificial intelligence Autoencoder Machine learning Task (project management) Deep learning Health informatics Feature learning Health records Data mining Artificial neural network Health care

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49
Cited By
4.61
FWCI (Field Weighted Citation Impact)
45
Refs
0.95
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Citation History

Topics

Machine Learning in Healthcare
Physical Sciences →  Computer Science →  Artificial Intelligence
Time Series Analysis and Forecasting
Physical Sciences →  Computer Science →  Signal Processing
Traditional Chinese Medicine Studies
Health Sciences →  Medicine →  Complementary and alternative medicine
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