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      1 Email: [email protected]

      2

      Heart Rate Monitoring System

       Ramapriya Ranganath*, Parag Jain†, Akarsh Kolekar‡, Sneha Baliga§, A. Srinivas¶ and M. Rajasekar**

       Microsoft, Intel, Delloite, PESU, Dayand Sagar, PESU, India

       Abstract

      Internet of Things (IoT) is a new and evolving concept that provides connectivity to the Internet via sensing devices and embedded systems to achieve intelligent identification and management in a heterogeneous connectivity environment without human–human or human–computer interactions. Current medical developments have essentially moved the patient monitoring devices typically found in a critical care room such as ECG, pulse oximeter, blood pressure, temperature, etc., into a discharged patient’s home, with the nurse’s station being a computing device connected to a broadband communication link. The primary limiting factor is the cost of this collection of devices. Mobile Healthcare, or mHealth, is defined as “mobile computing, medical sensor, and communications technologies for health care”. Our aim is to design a prototype of a wearable comprising of medical sensors, in this case, a pulse sensor, which transmits data to LinkIt One, a proto-typing board for IoT devices, which then sends real time data to a database, from where data is retrieved and used to plot a dynamic graph on an app (Android and iOS). mHealth is required to prevent medication errors from occurring and to increase efficiency and accuracy of existing medical health systems.

      Keywords: Internet of Things, LinkIT One, mobile computing, medical sensor, Mobile Healthcare

      Internet of Things (IoT) is the inter-communication of various sensors and embedded systems, without human to human interaction and human to sensor interaction, via the internet and its ability to transfer data over a network, which all work together in order to provide a feasible and much desired output. IoT is autonomous and independent of human interaction. It is the need of the hour. IoT in healthcare, is not only desired but is very necessary. Internet of things makes it possible to capture and analyze data sensed from the human body. IoT makes it possible to reach people anywhere and at any time. Using IoT, we can look out for people who stay in remote locations and provide them with high class medical treatment and constant monitoring [1].

      A major problem nowadays is the monitoring of patients. This includes both the discharged patients as well as admitted patients in a hospital. The elderly discharged patients are dependent on others. Some patients do not return to medical facilities for post-discharge testing, assessment and evaluation due to non-availability of their dependents. The proposed system intends to make communication of the patient with doctors and other family members much quicker and simpler. The patient can be monitored and prioritized by the doctor based on how critical their condition is. In the golden hour, each second matters. It is a life or death situation and the most critical patient is prioritized. Even for patients admitted, within the hospital there is prioritization. Using such IoT devices, data can be collected, processed and developed for a large sector of people which include the elderly and those with cardiovascular issues. A doctor can make the required administrations with full knowledge of the patient’s medical history and with continuous flow of real time data regarding the patient’s present condition.

      Implementation of IoT in healthcare is used to process one’s data effectively and diagnose the patient’s condition. The data is presented to the doctor in a clear setup. The patient registers on the app via Google authentication. Post-login, the doctor will be able to view the profiles of his subscribed patients through MQTT protocol. New patients have to register [2].

      Signals sent from the sensor to the LinkIt One are used to calculate the Inter Beat Interval (IBI), which is in turn used to calculate the Beats Per Minute (BPM) of the patient. The system supports the continuous flow of data from the patient, processed by the LinkIT ONE to be accessed by the doctor who is given accessibility to the patient’s information. If the data, crosses a given threshold (upper and lower) the doctor is alerted and immediate attention is given to secure the patient. Here, data is processed and displayed in highly efficient manner which is doctor-friendly and patient-friendly.

      Distinct advantages of the proposed system are cost-effectiveness and personalization for chronic patients. Doctors can monitor the health of their patients on their smartphones after the patient gets discharged from the hospital.

      A solution involving the Internet of Things has been provided. It includes designing a wearable which would transmit crucial medical sensor data such as pulse, etc. to a remote server, from which data could be accessed by authorized medical professionals on the app, and appointments could be made accordingly between the medical professional and the patient [5].

      The following are the objectives of the project:

       Configure existing devices/sensors to transmit data in a wireless manner to a server.

       Create a database to maintain the signal data.

       Design a cross platform app which can display critical medical parameters received from devices/sensors with minimum latency.

       Set up a pulse monitor on the app to display pulse.

       Implement emergency SMS service, when critical parameter threshold of patient is crossed.

      Patient

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