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AuthorOmar A., Nasseef
AuthorBaabdullah, Abdullah M.
AuthorAlalwan, Ali Abdallah
AuthorLal, Banita
AuthorDwivedi, Yogesh K.
Available date2023-03-30T19:51:56Z
Publication Date2021-08-09
Publication NameGovernment Information Quarterly
Identifierhttp://dx.doi.org/10.1016/j.giq.2021.101618
CitationNasseef, O. A., Baabdullah, A. M., Alalwan, A. A., Lal, B., & Dwivedi, Y. K. (2022). Artificial intelligence-based public healthcare systems: G2G knowledge-based exchange to enhance the decision-making process. Government Information Quarterly, 39(4), 101618.
ISSN0740-624X
URIhttps://www.sciencedirect.com/science/article/pii/S0740624X2100054X
URIhttp://hdl.handle.net/10576/41547
AbstractWith the rapid evolution of data over the last few years, many new technologies have arisen with artificial intelligent (AI) technologies at the top. Artificial intelligence (AI), with its infinite power, holds the potential to transform patient healthcare. Given the gaps revealed by the 2020 COVID-19 pandemic in healthcare systems, this research investigates the effects of using an artificial intelligence-driven public healthcare framework to enhance the decision-making process using an extended model of Shaft and Vessey (2006) cognitive fit model in healthcare organizations in Saudi Arabia. The model was validated based on empirical data collected using an online questionnaire distributed to healthcare organizations in Saudi Arabia. The main sample participants were healthcare CEOs, senior managers/managers, doctors, nurses, and other relevant healthcare practitioners under the MoH involved in the decision-making process relating to COVID-19. The measurement model was validated using SEM analyses. Empirical results largely supported the conceptual model proposed as all research hypotheses are significantly approved. This study makes several theoretical contributions. For example, it expands the theoretical horizon of Shaft and Vessey's (2006) CFT by considering new mechanisms, such as the inclusion of G2G Knowledge-based Exchange in addition to the moderation effect of Experience-based decision-making (EDBM) for enhancing the decision-making process related to the COVID-19 pandemic. More discussion regarding research limitations and future research directions are provided as well at the end of this study.
Languageen
PublisherElsevier
SubjectArtificial intelligence
Public healthcare
Cognitive fit model
G2G knowledge-based exchange
Experience-based decision-making
Decision-making
TitleArtificial intelligence-based public healthcare systems: G2G knowledge-based exchange to enhance the decision-making process
TypeArticle
Issue Number4
Volume Number39
ESSN1872-9517


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