The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan

Electronic Medical Record (EMR) is able to reduce medical errors, cost and time for data storage and retrieval. It is also capable of improving information workflow and work efficiency. Despite the benefits of using EMR, low acceptance among doctors is a common problem in many countries including Jo...

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Main Author: Khorma, Ola Taiseer
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eng
Published: 2012
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Online Access:https://etd.uum.edu.my/2963/1/Ola_Taiseer_Khorma.pdf
https://etd.uum.edu.my/2963/3/Ola_Taiseer_Khorma.pdf
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institution Universiti Utara Malaysia
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language eng
eng
advisor Baharom, Fauziah
Mohd, Haslina
topic T58.5-58.64 Information technology
spellingShingle T58.5-58.64 Information technology
Khorma, Ola Taiseer
The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
description Electronic Medical Record (EMR) is able to reduce medical errors, cost and time for data storage and retrieval. It is also capable of improving information workflow and work efficiency. Despite the benefits of using EMR, low acceptance among doctors is a common problem in many countries including Jordan. The present acceptance studies of EMR have yet to integrate Self-Efficacy and Perceived Behavioural Control as individual capabilities that influence Perceived Usefulness and Perceived Ease of Use among doctors in Jordan. Therefore, the main objective of this study is to develop an extended Technology Acceptance Model that measures doctor’s acceptance of EMR in private hospitals in Jordan by incorporating three perspectives: individual capabilities, technological, and behavioural. Self-Efficacy and Perceived Behavioural Control were added as factors of individual capabilities perspective while Perceived Usefulness and Perceived Ease of Use were included as technological perspective, and Behavioural Intention as a factor for behavioural perspective. This study applied a Cross-Sectional survey, and used the Random Sampling technique to select the sample in the targeted hospitals in Jordan. This study also used self-administered questionnaires. In validating the model, the data were analysed using the Structural Equation Model, based on the Partial Least Square approach. The findings indicated that Perceived Usefulness has a positive direct effect on Behavioural Intention to use EMR, and Self-Efficacy has a direct effect on Perceived Ease of Use. Furthermore, Perceived Behavioural Control has a direct positive effect on Perceived Usefulness and Perceived Ease of Use. These outcomes could assist the healthcare top management in restructuring their strategic planning to improve the EMR implementation. In future, this model can be further tested and extended in other Information Technology (IT) applications, which means that this model can be generalized into the IT domain.
format Thesis
qualification_name masters
qualification_level Master's degree
author Khorma, Ola Taiseer
author_facet Khorma, Ola Taiseer
author_sort Khorma, Ola Taiseer
title The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
title_short The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
title_full The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
title_fullStr The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
title_full_unstemmed The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan
title_sort applicability of an extended technology acceptance model for electronic medical records in jordan
granting_institution Universiti Utara Malaysia
granting_department Awang Had Salleh Graduate School of Arts & Sciences
publishDate 2012
url https://etd.uum.edu.my/2963/1/Ola_Taiseer_Khorma.pdf
https://etd.uum.edu.my/2963/3/Ola_Taiseer_Khorma.pdf
_version_ 1747827472021323776
spelling my-uum-etd.29632016-04-27T02:47:10Z The Applicability of an Extended Technology Acceptance Model for Electronic Medical Records in Jordan 2012 Khorma, Ola Taiseer Baharom, Fauziah Mohd, Haslina Awang Had Salleh Graduate School of Arts & Sciences Awang Had Salleh Graduate School of Arts and Sciences T58.5-58.64 Information technology Electronic Medical Record (EMR) is able to reduce medical errors, cost and time for data storage and retrieval. It is also capable of improving information workflow and work efficiency. Despite the benefits of using EMR, low acceptance among doctors is a common problem in many countries including Jordan. The present acceptance studies of EMR have yet to integrate Self-Efficacy and Perceived Behavioural Control as individual capabilities that influence Perceived Usefulness and Perceived Ease of Use among doctors in Jordan. Therefore, the main objective of this study is to develop an extended Technology Acceptance Model that measures doctor’s acceptance of EMR in private hospitals in Jordan by incorporating three perspectives: individual capabilities, technological, and behavioural. Self-Efficacy and Perceived Behavioural Control were added as factors of individual capabilities perspective while Perceived Usefulness and Perceived Ease of Use were included as technological perspective, and Behavioural Intention as a factor for behavioural perspective. This study applied a Cross-Sectional survey, and used the Random Sampling technique to select the sample in the targeted hospitals in Jordan. This study also used self-administered questionnaires. In validating the model, the data were analysed using the Structural Equation Model, based on the Partial Least Square approach. The findings indicated that Perceived Usefulness has a positive direct effect on Behavioural Intention to use EMR, and Self-Efficacy has a direct effect on Perceived Ease of Use. Furthermore, Perceived Behavioural Control has a direct positive effect on Perceived Usefulness and Perceived Ease of Use. These outcomes could assist the healthcare top management in restructuring their strategic planning to improve the EMR implementation. In future, this model can be further tested and extended in other Information Technology (IT) applications, which means that this model can be generalized into the IT domain. 2012 Thesis https://etd.uum.edu.my/2963/ https://etd.uum.edu.my/2963/1/Ola_Taiseer_Khorma.pdf text eng validuser https://etd.uum.edu.my/2963/3/Ola_Taiseer_Khorma.pdf text eng public masters masters Universiti Utara Malaysia Abbad, M. M., Morris, D., & Nahlik, C. d. (2009). Looking under the Bonnet: Factors Affecting Student Adoption of E-Learning Systems in Jordan. 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