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Impact of Innovative Technologies in Healthcare Organization Productivity with ERP

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Book cover Applications of Artificial Intelligence in Business, Education and Healthcare

Part of the book series: Studies in Computational Intelligence ((SCI,volume 954))

Abstract

This chapter discussed the importance of enterprise resource planning (ERP) in different organization and how it will enhance productivity for the workers and for the patients by providing best services using innovative technologies. Also, this research will define the impact of innovative technologies in organization productivity with ERP system. Moreover, this chapter determine dependent which is organization productivity and independent variables such as RFID, telemedicine, mobility, artificial intelligence and innovative technologies which can be integrated with ERP system and it will help in improving organization productivity to describe the best use of ERP system to the healthcare organization when adopting innovative technology. As a result, implementing innovative technologies within healthcare organizations it will benefit the patients and physicians working in organization. Hence, the critical role of IT department is to determine the overall success in organizations and provide flexible, economical services to physicians, patients and end users involved in the organization.

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Naqi, M., AL-Hashimi, M., Hamdan, A. (2021). Impact of Innovative Technologies in Healthcare Organization Productivity with ERP. In: Hamdan, A., Hassanien, A.E., Khamis, R., Alareeni, B., Razzaque, A., Awwad, B. (eds) Applications of Artificial Intelligence in Business, Education and Healthcare . Studies in Computational Intelligence, vol 954. Springer, Cham. https://doi.org/10.1007/978-3-030-72080-3_18

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