Regression Analysis of Cloud Computing Adoption for U.S. Hospitals

Industrial experts agree that cloud computing can significantly improve business and public access to low cost computing power and storage. Despite the benefits of cloud computing, recent research surveys indicated that its adoption in U.S. hospitals is slower than expected. The purpose of this stud...

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Main Author: Lee, Terence H.
Format: Others
Language:en
Published: ScholarWorks 2015
Subjects:
Online Access:https://scholarworks.waldenu.edu/dissertations/588
https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=1587&context=dissertations
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spelling ndltd-waldenu.edu-oai-scholarworks.waldenu.edu-dissertations-15872019-10-30T01:21:34Z Regression Analysis of Cloud Computing Adoption for U.S. Hospitals Lee, Terence H. Industrial experts agree that cloud computing can significantly improve business and public access to low cost computing power and storage. Despite the benefits of cloud computing, recent research surveys indicated that its adoption in U.S. hospitals is slower than expected. The purpose of this study was to understand what factors influence cloud adoption in U.S. hospitals. The theoretical foundation of the research was the diffusion of innovations and technology-organization-environment framework. The research question was to examine the predictability of cloud computing adoption for U.S. hospitals as a function of 6 influential factors: relative advantage, compatibility, complexity, organizational size, structure, and culture. The research methodology included a cross-sectional survey with an existing validated questionnaire. A stratified random sample of 118 information technology managers from qualified U.S. hospitals completed the questionnaire. The categorical regression analysis rendered F statistics and R2 values to test the predictive models. The research results revealed that all 6 influential factors had significant correlations with the public cloud adoption intent (adjusted R2 = .583) while only the 3 technological factors had significant correlations with the private cloud adoption intent (adjusted R2 = .785). The recommendation is to include environmental factors and increase sample size in the similar future research. The developed predictive models provided a clearer understanding among hospital IT executives and cloud service providers of cloud adoption drivers. The potential implications for positive social change can be the increase of efficiency and effectiveness in U.S. hospital operation once their speed of cloud adoption has increased. 2015-01-01T08:00:00Z text application/pdf https://scholarworks.waldenu.edu/dissertations/588 https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=1587&context=dissertations Walden Dissertations and Doctoral Studies en ScholarWorks cloud adoption cloud computing hospital cloud hospital information system statistical regression technology adoption Databases and Information Systems Health and Medical Administration Social and Behavioral Sciences
collection NDLTD
language en
format Others
sources NDLTD
topic cloud adoption
cloud computing
hospital cloud
hospital information system
statistical regression
technology adoption
Databases and Information Systems
Health and Medical Administration
Social and Behavioral Sciences
spellingShingle cloud adoption
cloud computing
hospital cloud
hospital information system
statistical regression
technology adoption
Databases and Information Systems
Health and Medical Administration
Social and Behavioral Sciences
Lee, Terence H.
Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
description Industrial experts agree that cloud computing can significantly improve business and public access to low cost computing power and storage. Despite the benefits of cloud computing, recent research surveys indicated that its adoption in U.S. hospitals is slower than expected. The purpose of this study was to understand what factors influence cloud adoption in U.S. hospitals. The theoretical foundation of the research was the diffusion of innovations and technology-organization-environment framework. The research question was to examine the predictability of cloud computing adoption for U.S. hospitals as a function of 6 influential factors: relative advantage, compatibility, complexity, organizational size, structure, and culture. The research methodology included a cross-sectional survey with an existing validated questionnaire. A stratified random sample of 118 information technology managers from qualified U.S. hospitals completed the questionnaire. The categorical regression analysis rendered F statistics and R2 values to test the predictive models. The research results revealed that all 6 influential factors had significant correlations with the public cloud adoption intent (adjusted R2 = .583) while only the 3 technological factors had significant correlations with the private cloud adoption intent (adjusted R2 = .785). The recommendation is to include environmental factors and increase sample size in the similar future research. The developed predictive models provided a clearer understanding among hospital IT executives and cloud service providers of cloud adoption drivers. The potential implications for positive social change can be the increase of efficiency and effectiveness in U.S. hospital operation once their speed of cloud adoption has increased.
author Lee, Terence H.
author_facet Lee, Terence H.
author_sort Lee, Terence H.
title Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
title_short Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
title_full Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
title_fullStr Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
title_full_unstemmed Regression Analysis of Cloud Computing Adoption for U.S. Hospitals
title_sort regression analysis of cloud computing adoption for u.s. hospitals
publisher ScholarWorks
publishDate 2015
url https://scholarworks.waldenu.edu/dissertations/588
https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=1587&context=dissertations
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