Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example

The need to control rising costs in healthcare has led to an increase in the use of data analytics to develop more efficient healthcare business models. This article discusses a simulation that uses data analytics to minimize the number of physicians and nurses needed in healthcare facilities during...

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Main Authors: Lily Popova Zhuhadar, Evelyn Thrasher
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/11/2208
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spelling doaj-83391d4ac17045068eaf1269482d740e2020-11-24T22:01:18ZengMDPI AGApplied Sciences2076-34172019-05-01911220810.3390/app9112208app9112208Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study ExampleLily Popova Zhuhadar0Evelyn Thrasher1Information-Systems Faculty, Western Kentucky University, Bowling Green, KY 42101, USAInformation-Systems Faculty, Western Kentucky University, Bowling Green, KY 42101, USAThe need to control rising costs in healthcare has led to an increase in the use of data analytics to develop more efficient healthcare business models. This article discusses a simulation that uses data analytics to minimize the number of physicians and nurses needed in healthcare facilities during a crisis situation. Using a hypothetical emergency scenario, the hospital uses a healthcare analytical system to predict the necessary resources to govern the situation. Based on historical data regarding the flow of patients through the facility, a discrete-event simulation estimates resource scheduling and the resulting impact on both wait times and personnel demand. Furthermore, the value of multiple replications for discrete-event simulation models is discussed and defined, along with factors that enable greater control of multiple design points with this simulated experiment. The results of this study demonstrate the value of simulation modeling in effective resource planning. The addition of only a single doctor significantly reduced predicted wait times for patients during the crisis. Further, the findings support the use of data analytics and predictive modeling to mitigate rising healthcare costs in the United States through efficient planning and resource allocation.https://www.mdpi.com/2076-3417/9/11/2208healthcare analyticsdata analyticshealthcareinformation systemshospital data analyticshealthcare crisisdiscrete-event simulationdata analysis simulationsimulation
collection DOAJ
language English
format Article
sources DOAJ
author Lily Popova Zhuhadar
Evelyn Thrasher
spellingShingle Lily Popova Zhuhadar
Evelyn Thrasher
Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
Applied Sciences
healthcare analytics
data analytics
healthcare
information systems
hospital data analytics
healthcare crisis
discrete-event simulation
data analysis simulation
simulation
author_facet Lily Popova Zhuhadar
Evelyn Thrasher
author_sort Lily Popova Zhuhadar
title Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
title_short Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
title_full Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
title_fullStr Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
title_full_unstemmed Data Analytics and Its Advantages for Addressing the Complexity of Healthcare: A Simulated Zika Case Study Example
title_sort data analytics and its advantages for addressing the complexity of healthcare: a simulated zika case study example
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-05-01
description The need to control rising costs in healthcare has led to an increase in the use of data analytics to develop more efficient healthcare business models. This article discusses a simulation that uses data analytics to minimize the number of physicians and nurses needed in healthcare facilities during a crisis situation. Using a hypothetical emergency scenario, the hospital uses a healthcare analytical system to predict the necessary resources to govern the situation. Based on historical data regarding the flow of patients through the facility, a discrete-event simulation estimates resource scheduling and the resulting impact on both wait times and personnel demand. Furthermore, the value of multiple replications for discrete-event simulation models is discussed and defined, along with factors that enable greater control of multiple design points with this simulated experiment. The results of this study demonstrate the value of simulation modeling in effective resource planning. The addition of only a single doctor significantly reduced predicted wait times for patients during the crisis. Further, the findings support the use of data analytics and predictive modeling to mitigate rising healthcare costs in the United States through efficient planning and resource allocation.
topic healthcare analytics
data analytics
healthcare
information systems
hospital data analytics
healthcare crisis
discrete-event simulation
data analysis simulation
simulation
url https://www.mdpi.com/2076-3417/9/11/2208
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