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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Oct 14, 2020
Date Accepted: Mar 16, 2021

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

Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study

Lv H, Yang X, Wang B, Wang S, Du X, Tan Q, Hao Z, Liu Y, Yan J, Xia Y

Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study

J Med Internet Res 2021;23(4):e24996

DOI: 10.2196/24996

PMID: 33871375

PMCID: 8094022

Machine learning-driven models to predict prognostic outcomes in patients hospitalized with heart failure: a retrospective study using electronic health records

  • Haichen Lv; 
  • Xiaolei Yang; 
  • Bingyi Wang; 
  • Shaobo Wang; 
  • Xiaoyan Du; 
  • Qian Tan; 
  • Zhujing Hao; 
  • Ying Liu; 
  • Jun Yan; 
  • Yunlong Xia

ABSTRACT

Background:

With the prevalence of cardiovascular disease (CVD) increasing, early prediction and accurate assessment of heart failure (HF) risk is crucial to meet the clinical demand.

Objective:

We sought to develop machine-learning models based on real-world electronic health records (EHRs) to predict one-year in-hospital mortality, the use of positive inotropic agents and one-year all-cause readmission rate.

Methods:

For this single-center study, we recruited patients with newly diagnosed HF hospitalized between December 2010 and August 2018 at the First Affiliated Hospital of Dalian Medical University. The models were constructed for a population set (90:10) by using 79 variables during the first hospitalization. Logistic regression (LR), a support vector machine (SVM), an artificial neural network (ANN), random forest (RF), and eXtreme Boosting (XGBoost) were investigated for outcome predictions.

Results:

Of the 13,602 patients with HF enrolled, 537 (3.95%) were died within one year, and 2779 patients (20.43%) had history of positive inotropic agents. The performance of predictive models for one-year in-hospital mortality (AUCs 0.92-0.99), positive inotropic medication (AUCs 0.86-0.94) and one-year readmission rates (AUCs 0.62-0.89) were improved by ML algorithms. A decision tree of mortality risk was created and stratified by single variables at levels of high-sensitive cardiac troponin (hs-cTnl) (<0.068μg/L), followed by lymphocyte percentage (< 14.688%) and neutrophil count (4.870 x 109/L).

Conclusions:

ML techniques based on a large scale of clinical variables can improve outcome predictions for patients with HF. The mortality decision tree may contribute to guide better clinical risk assessment and clinical decision making.


 Citation

Please cite as:

Lv H, Yang X, Wang B, Wang S, Du X, Tan Q, Hao Z, Liu Y, Yan J, Xia Y

Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study

J Med Internet Res 2021;23(4):e24996

DOI: 10.2196/24996

PMID: 33871375

PMCID: 8094022

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