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INTERNATIONAL JOURNAL OF PHARMACEUTICAL RESEARCH

A Step Towards Excellence
Published by : Advanced Scientific Research
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0975-2366
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IJPR 9[3] July - September 2017 Special Issue

July - September 9[3] 2017

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Health Care Monitoring System Using Internet of Things (IoT)

Author: R. KAYALVIZHI, P. LAKSHMI PRABHA
Abstract: Under the various applications empowered by Internet of Things (IoT), a keen and associated healthcare service is especially a critical and necessary nowadays. The Arduino mega small scale controller is utilized to get the real time inputs and coordinate the sensors equipped from the field of interest. This procedure gives periodical monitoring of medical service for patient at home. To fulfill the different security necessities of cloud computing, the radio-frequency identification (RFID) technology is utilized for authentication purpose. This paper identifies three healthcare parameters, which are pulse rate, blood pressure and blood glucose level, acquired from the subject and enables the data to cloud for further computing. This information can be viewed by the doctor for clarification and suggestions. These parameters are organized and sent to a web page with the goal that user can see these parameters from any place in the world. The RFID tag is utilized as a security purpose to enact the patient module and enables the user to access the records. The microcontroller is additionally added with the buzzer to alert the guardian about the periodic updates obtained from the sensor yield. This would save the patient’s life and take the periodic measure during the critical situation. Result obtained from device are analyzed for multiple regression analysis with PPBS and FBPS as independent variable and observed with P Value less than 0.01. Based on the results it is observed that the health monitoring system can easily identify the abnormality of the patient in home with 89.47% of accuracy and 10.52% of error rate.
Keyword: Internet of Things, RFID, Pulse rate Sensor, Glucose sensor, Blood pressure sensor, Arduino, Embedded C.
DOI: https://doi.org/10.31838/ijpr/2020.12.03.194
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