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http://dx.doi.org/10.22156/CS4SMB.2019.9.4.001

Efficient Patient Information Transmission and Receiving Scheme Using Cloud Hospital IoT System  

Jeong, Yoon-Su (Department of information Communication Convergence Engineering, Mokwon University)
Publication Information
Journal of Convergence for Information Technology / v.9, no.4, 2019 , pp. 1-7 More about this Journal
Abstract
The medical environment, combined with IT technology, is changing the paradigm for medical services from treatment to prevention. In particular, as ICT convergence digital healthcare technology is applied to hospital medical systems, infrastructure technologies such as big data, Internet of Things, and artificial intelligence are being used in conjunction with the cloud. In particular, as medical services are used with IT devices, the quality of medical services is increasingly improving to make them easier for users to access. Medical institutions seeking to incorporate IoT services into cloud health care environment services are trying to reduce hospital operating costs and improve service quality, but have not yet been fully supported. In this paper, a patient information collection model from hospital IoT system, which has established a cloud environment, is proposed. The proposed model prevents third parties from illegally eavesdropping and interfering with patients' biometric information through IoT devices attached to the patient's body at hospitals in cloud environments that have established hospital IoT systems. The proposed model allows clinicians to analyze patients' disease information so that they can collect and treat diseases associated with their eating habits through IoT devices. The analyzed disease information minimizes hospital work to facilitate the handling of prescriptions and care according to the patient's degree of illness.
Keywords
Cloud services; IoT systems; User privacy; Medical information; Personal information collection;
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Times Cited By KSCI : 3  (Citation Analysis)
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