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Updated: Feb 24, 2026

Setting Up a Stroke Team Algorithm and Conducting Simulation-based Training in the Emergency Department - A Practical Guide
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Published on: January 15, 2017

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Time-series Machine Learning Models to Support Emergency Department Operational Planning.

Tamanna T K Munia1, Kyle Marshall1, Kitae Kim1

  • 1Geisinger, Danville, PA.

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|February 23, 2026
PubMed
Summary
This summary is machine-generated.

Forecasting emergency department (ED) utilization using the Prophet model aids hospital resource planning. This user-centered approach improves daily operational decisions for staff scheduling and patient flow management.

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Last Updated: Feb 24, 2026

Setting Up a Stroke Team Algorithm and Conducting Simulation-based Training in the Emergency Department - A Practical Guide
09:52

Setting Up a Stroke Team Algorithm and Conducting Simulation-based Training in the Emergency Department - A Practical Guide

Published on: January 15, 2017

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Area of Science:

  • Health Services Research
  • Operations Research
  • Data Science

Background:

  • Effective emergency department (ED) utilization prediction is crucial for hospital resource management and staff scheduling.
  • Existing forecasting methods have rarely been implemented in real-world operational settings.
  • A user-centered design approach is needed to bridge the gap between predictive models and operational needs.

Purpose of the Study:

  • To develop and implement an accurate ED utilization prediction model tailored for operational planning.
  • To engage nursing operations managers in selecting key metrics, models, and prediction horizons.
  • To create a production dashboard for ED operational leaders.

Main Methods:

  • Employed a user-centered design approach involving nursing operations managers across multiple hospital sites.
  • Evaluated various time series and machine learning models using Mean Absolute Error (MAE) and Mean Absolute Percentage Error (MAPE).
  • Selected and implemented the Prophet model, an open-source forecasting tool, for its superior performance.

Main Results:

  • The Prophet model demonstrated the best performance across multiple hospital sites based on MAE and MAPE.
  • Daily, 14-day ahead predictions were generated for critical ED metrics including arrivals, admissions, sitter needs, and ED holds.
  • The model's implementation and monitoring design were established for ongoing operational use.

Conclusions:

  • A user-centered approach successfully integrated advanced forecasting (Prophet model) into ED operational planning.
  • Accurate, short-term ED utilization predictions can significantly enhance resource allocation and staffing decisions.
  • This methodology provides a scalable solution for improving ED management within integrated health systems.