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Risk Prediction of Emergency Department Revisit 30 Days Post Discharge: A Prospective Study

Author

Listed:
  • Shiying Hao
  • Bo Jin
  • Andrew Young Shin
  • Yifan Zhao
  • Chunqing Zhu
  • Zhen Li
  • Zhongkai Hu
  • Changlin Fu
  • Jun Ji
  • Yong Wang
  • Yingzhen Zhao
  • Dorothy Dai
  • Devore S Culver
  • Shaun T Alfreds
  • Todd Rogow
  • Frank Stearns
  • Karl G Sylvester
  • Eric Widen
  • Xuefeng B Ling

Abstract

Background: Among patients who are discharged from the Emergency Department (ED), about 3% return within 30 days. Revisits can be related to the nature of the disease, medical errors, and/or inadequate diagnoses and treatment during their initial ED visit. Identification of high-risk patient population can help device new strategies for improved ED care with reduced ED utilization. Methods and Findings: A decision tree based model with discriminant Electronic Medical Record (EMR) features was developed and validated, estimating patient ED 30 day revisit risk. A retrospective cohort of 293,461 ED encounters from HealthInfoNet (HIN), Maine's Health Information Exchange (HIE), between January 1, 2012 and December 31, 2012, was assembled with the associated patients' demographic information and one-year clinical histories before the discharge date as the inputs. To validate, a prospective cohort of 193,886 encounters between January 1, 2013 and June 30, 2013 was constructed. The c-statistics for the retrospective and prospective predictions were 0.710 and 0.704 respectively. Clinical resource utilization, including ED use, was analyzed as a function of the ED risk score. Cluster analysis of high-risk patients identified discrete sub-populations with distinctive demographic, clinical and resource utilization patterns. Conclusions: Our ED 30-day revisit model was prospectively validated on the Maine State HIN secure statewide data system. Future integration of our ED predictive analytics into the ED care work flow may lead to increased opportunities for targeted care intervention to reduce ED resource burden and overall healthcare expense, and improve outcomes.

Suggested Citation

  • Shiying Hao & Bo Jin & Andrew Young Shin & Yifan Zhao & Chunqing Zhu & Zhen Li & Zhongkai Hu & Changlin Fu & Jun Ji & Yong Wang & Yingzhen Zhao & Dorothy Dai & Devore S Culver & Shaun T Alfreds & Todd, 2014. "Risk Prediction of Emergency Department Revisit 30 Days Post Discharge: A Prospective Study," PLOS ONE, Public Library of Science, vol. 9(11), pages 1-13, November.
  • Handle: RePEc:plo:pone00:0112944
    DOI: 10.1371/journal.pone.0112944
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    Cited by:

    1. Shiying Hao & Yue Wang & Bo Jin & Andrew Young Shin & Chunqing Zhu & Min Huang & Le Zheng & Jin Luo & Zhongkai Hu & Changlin Fu & Dorothy Dai & Yicheng Wang & Devore S Culver & Shaun T Alfreds & Todd , 2015. "Development, Validation and Deployment of a Real Time 30 Day Hospital Readmission Risk Assessment Tool in the Maine Healthcare Information Exchange," PLOS ONE, Public Library of Science, vol. 10(10), pages 1-15, October.
    2. Chien-Lung Chan & Wender Lin & Nan-Ping Yang & K Robert Lai & Hsin-Tsung Huang, 2015. "Pre-Emergency-Department Care-Seeking Patterns Are Associated with the Severity of Presenting Condition for Emergency Department Visit and Subsequent Adverse Events: A Timeframe Episode Analysis," PLOS ONE, Public Library of Science, vol. 10(6), pages 1-16, June.
    3. Jacques-Henri Veyron & Patrick Friocourt & Olivier Jeanjean & Laurence Luquel & Nicolas Bonifas & Fabrice Denis & Joël Belmin, 2019. "Home care aides’ observations and machine learning algorithms for the prediction of visits to emergency departments by older community-dwelling individuals receiving home care assistance: A proof of c," PLOS ONE, Public Library of Science, vol. 14(8), pages 1-13, August.

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