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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Aug 18, 2020
Date Accepted: Jan 11, 2021

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

Electronic Health Record–Based Prediction of 1-Year Risk of Incident Cardiac Dysrhythmia: Prospective Case-Finding Algorithm Development and Validation Study

Zhang Y, Gao P, Mo Y, Hao S, Huang J, Ye F, Li Z, Zheng L, Yao X, Li Z, Li X, Wang X, Huang CJ, Jin B, Zhang Y, Yang G, Alfreds ST, Kanov L, Sylvester KG, Widen E, Han Y, Ling XB

Electronic Health Record–Based Prediction of 1-Year Risk of Incident Cardiac Dysrhythmia: Prospective Case-Finding Algorithm Development and Validation Study

JMIR Med Inform 2021;9(2):e23606

DOI: 10.2196/23606

PMID: 33595452

PMCID: 7929752

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Prospective case finding for patients at risk of future one-year incident cardiac dysrhythmia in the State of Maine

  • Yaqi Zhang; 
  • Peng Gao; 
  • Yifu Mo; 
  • Shiying Hao; 
  • Jia Huang; 
  • Fangfan Ye; 
  • Zhen Li; 
  • Le Zheng; 
  • Xiaoming Yao; 
  • Zhen Li; 
  • Xiaodong Li; 
  • Xiaofang Wang; 
  • Chao-Jung Huang; 
  • Bo Jin; 
  • Yani Zhang; 
  • Gabriel Yang; 
  • Shaun T Alfreds; 
  • Laura Kanov; 
  • Karl G Sylvester; 
  • Eric Widen; 
  • Yongxia Han; 
  • Xuefeng B Ling

ABSTRACT

Background:

Cardiac dysrhythmia is an extremely common disease among people today. While severe arrhythmias often cause a series of complications including congestive heart failure, fainting or syncope, stroke, and sudden death.

Objective:

The aim of this study was to predict incident arrhythmia prospectively within the next one year to provide early warning of impending arrhythmia.

Methods:

Retrospective (1,033,856 subjects registered between October 1, 2016 and October 1, 2017) and prospective (1,040,767 subjects registered between October 1, 2017 and October 1, 2018) cohorts were constructed from electronic health records integrated in the state of Maine. An ensemble learning workflow was built through multiple machine learning algorithms. Differentiated features including acute and chronic diseases, procedures, health status, laboratory tests, prescriptions, clinical utilization indicators, and social-economic determinants were compiled for incident arrhythmia assessment. The predictive model was retrospectively trained and calibrated using an isotonic regression method, and prospectively validated.

Results:

The cardiac dysrhythmia case finding algorithm (the areas under the receiver operating characteristic curve ROC AUC is: retrospective 0.854; prospective 0.819) divided the validation population into five risk subgroups: 53.348%, 44.832%, 1.757%, 0.060% and 0.003% cases in the very low-risk, the low-risk, the medium-risk, the high-risk, and the very high-risk subgroups. 51.85% patients in the very high-risk subgroup were confirmed with a new incident cardiac dysrhythmia within the next one year.

Conclusions:

With the promise to predict future one-year incident cardiac dysrhythmias in a general population, we believe that our case finding algorithm can serve as early warning system to allow statewide population-level screening and surveillance to improve cardiac dysrhythmia care.


 Citation

Please cite as:

Zhang Y, Gao P, Mo Y, Hao S, Huang J, Ye F, Li Z, Zheng L, Yao X, Li Z, Li X, Wang X, Huang CJ, Jin B, Zhang Y, Yang G, Alfreds ST, Kanov L, Sylvester KG, Widen E, Han Y, Ling XB

Electronic Health Record–Based Prediction of 1-Year Risk of Incident Cardiac Dysrhythmia: Prospective Case-Finding Algorithm Development and Validation Study

JMIR Med Inform 2021;9(2):e23606

DOI: 10.2196/23606

PMID: 33595452

PMCID: 7929752

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