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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Nov 9, 2019
Date Accepted: May 13, 2020

The final, peer-reviewed published version of this preprint can be found here:

Asthma Exacerbation Prediction and Risk Factor Analysis Based on a Time-Sensitive, Attentive Neural Network: Retrospective Cohort Study

Xiang Y, Ji H, Zhou Y, Li F, Du J, Rasmy L, Wu S, Zheng WJ, Xu H, Zhi D, Zhang Y, Tao C

Asthma Exacerbation Prediction and Risk Factor Analysis Based on a Time-Sensitive, Attentive Neural Network: Retrospective Cohort Study

J Med Internet Res 2020;22(7):e16981

DOI: 10.2196/16981

PMID: 32735224

PMCID: 7428917

Asthma Exacerbation Prediction and Risk Factor Analysis based on Time-sensitive Attentive Neural Network: A Retrospective Cohort Study

  • Yang Xiang; 
  • Hangyu Ji; 
  • Yujia Zhou; 
  • Fang Li; 
  • Jingcheng Du; 
  • Laila Rasmy; 
  • Stephen Wu; 
  • Wenjin Jim Zheng; 
  • Hua Xu; 
  • Degui Zhi; 
  • Yaoyun Zhang; 
  • Cui Tao

ABSTRACT

Background:

Asthma exacerbation is an acute or sub-acute episode of progressive worsening of asthma symptoms and can have significant impacts on patients’ daily life. In 2016, 12.4 million current asthmatics (46.9%) in the U.S. had at least one asthma exacerbation in the previous year.

Objective:

The objectives of this study were to predict the risk of asthma exacerbations and to explore potential risk factors involved in progressive asthma.

Methods:

We proposed a time-sensitive attentive neural network to predict asthma exacerbation using clinical variables from electronic health records (EHRs). The clinical variables were collected from the Cerner Health Facts® database between 1992 and 2015 including 31,433 asthmatic adult patients. Interpretations on both the patient level and the cohort level were investigated based on the model parameters.

Results:

The proposed model obtains an AUC value of 0.7003 through 5-fold cross-validation, which outperforms the baseline methods. The results also demonstrate that the addition of elapsed time embeddings considerably improves the performance on this dataset. Through further analysis, it was witnessed that risk factors behaved distinctly along the timeline and across patients. We also found supporting evidence from peer-reviewed literature for some possible cohort-level risk factors such as respiratory syndromes and esophageal reflux.

Conclusions:

The proposed time-sensitive attentive neural network is superior to traditional machine learning methods and performs better than state-of-the-art deep learning methods in realizing effective predictive models for the prediction of asthma exacerbation. We believe that the interpretation and visualization of risk factors can help the clinical community to better understand the underlying mechanisms of the disease progression.


 Citation

Please cite as:

Xiang Y, Ji H, Zhou Y, Li F, Du J, Rasmy L, Wu S, Zheng WJ, Xu H, Zhi D, Zhang Y, Tao C

Asthma Exacerbation Prediction and Risk Factor Analysis Based on a Time-Sensitive, Attentive Neural Network: Retrospective Cohort Study

J Med Internet Res 2020;22(7):e16981

DOI: 10.2196/16981

PMID: 32735224

PMCID: 7428917

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