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The intelligent monitoring method for bidirectional referral information resource in hospital based on big data

Ying Cao and Can Cao

International Journal of Information Systems and Change Management, 2020, vol. 12, issue 1, 3-16

Abstract: In order to overcome the problem that traditional hospital visits and referrals take a long time and the costs are not clear, this paper proposes an intelligent two-way referral information resource monitoring method based on big data. This method is based on the big data provided by the integration and application of intelligent two-way referral information resources in hospitals. Based on the theory of system engineering, the monitoring elements of two-way referral are constituted according to the subject, object and content of monitoring. The whole process of monitoring involves all aspects of referral. According to the sequence from admission to recovery, multiple monitoring points are defined, and monitoring contents are defined based on each monitoring point, and monitoring is carried out in a targeted way. The experimental results show that the method is effective, less medical expenses, short time to see a doctor, and feasible.

Keywords: big data; bidirectional referral; resource monitoring. (search for similar items in EconPapers)
Date: 2020
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