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Replica controlled sensor enabled architecture for management of electronic health records

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Abstract

Electronic health records (EHR) are awfully substantial for patients in managing their records in a distributed environment and endorse their status of rising or fall of health on a time-to-time basis. The replicas can be prevented through logic programming which cannot be managed on a time-to-time basis. The major objective of this paper is to design and propose a replica controlled and body area sensor enabled architecture model that would be capable of managing the EHR records based on life-threatening problems like irregular heartbeat, arrhythmia, biomedical problems, bio fabrication and organ-on-a-chip process. The proposed model assisted in managing the biomedical problems related to EHR data using a sensor-enabled environment where the patient can be tracked continuously. Also, the model conveys a distributed system to control the replica through consistent monitoring of redundant data that comes through the sensor device refresh process in a distributed system. The scope of the model included implementation in health centers, hospitals where data segregation and analysis on a time-to-time basis is recommended.

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Correspondence to M. Paul Arokiadass Jerald.

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Franklin, I.B., Bhuvaneswari, R., Vasanthi, V. et al. Replica controlled sensor enabled architecture for management of electronic health records. Int. j. inf. tecnol. 15, 3643–3653 (2023). https://doi.org/10.1007/s41870-023-01443-z

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  • DOI: https://doi.org/10.1007/s41870-023-01443-z

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