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Growing Science » International Journal of Data and Network Science » Determinants of behavioral intentions to use mobile healthcare applications in Jordan

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International Journal of Data and Network Science

ISSN 2561-8156 (Online) - ISSN 2561-8148 (Print)
Quarterly Publication
Volume 5 Issue 4 pp. 547-556 , 2021

Determinants of behavioral intentions to use mobile healthcare applications in Jordan Pages 547-556 Right click to download the paper Download PDF

Authors: Nawras M. Nusairat, Hadeel Abdellatif, Jassim Ahmad Al-Gasawneh, Abdel Hakim O. Akhorshaideh, Abdalrazzaq Aloqool, Saja Rabah, Alaeddin Mohammad Khalaf Ahmad

DOI: 10.5267/j.ijdns.2021.8.013

Keywords: Mobile healthcare, Behavioral intentions, Technology Acceptance Model

Abstract: The purpose of this study is to examine the determinants of behavioral intentions to use of mobile health (m-Health) applications in Jordan through examining the mediating role of perceived trust and its influence on the behavioral intention to use such applications. A conceptual model was developed based on the extant literature. A questionnaire survey was administered to a convenient sample of 318. Data was analyzed using smart PLS 3. The findings suggest that patients’ behavioral intentions to use m-Health applications are positively affected by perceived ease of use, perceived security, social influence and perceived trust of these applications. Perceived Trust was also found to mediate the relationship between these factors and the behavioral intention. Discussion, conclusions, implications, research limitations and areas for future research are also provided.

How to cite this paper
Nusairat, N., Abdellatif, H., Al-Gasawneh, J., Akhorshaideh, A., Aloqool, A., Rabah, S & Ahmad, A. (2021). Determinants of behavioral intentions to use mobile healthcare applications in Jordan.International Journal of Data and Network Science, 5(4), 547-556.

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Journal: International Journal of Data and Network Science | Year: 2021 | Volume: 5 | Issue: 4 | Views: 1578 | Reviews: 0

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