SMART Intravenous Infusion Dosing System

Authors

  • Prof. S. M. Borate  SPVPS S.B. Patil College of Engineering, Indapur, Pune, India
  • Wakade Pavan Govind  SPVPS S.B. Patil College of Engineering, Indapur, Pune, India
  • Waghamode Anjali Sadashiv  SPVPS S.B. Patil College of Engineering, Indapur, Pune, India
  • Lakade Komal Parshuram  SPVPS S.B. Patil College of Engineering, Indapur, Pune, India

Keywords:

Internet of Things (IoT), wireless intravenous system, intelligent IV infusion dosage system, IV therapy, IV bottle, IV chemotherapy, nurse response time, and remote infusion monitoring system

Abstract

With intravenous (IV) infusion therapy, the patient's vein can be used to administer the infusion fluid. It is used for blood transfusions or to administer drugs directly into the bloodstream. A hospitalized patient has a 60–80% chance of receiving intravenously administered infusion treatment. The describes a smart IV infusion dosage system for remote liquid in an IV bottle detection, signaling, and monitoring. It consists of three layers: sensing and computation (an IV fluid level detection and signaling system, and a system for controlling and stopping infusion flow); communication (a wireless information transfer between the hardware component of the system and the client); and user (monitoring and visualization of IV therapy).real-time reception at a distant place. Because each layer is modular, the entire system can be upgraded. The proposed system notifies medical staff when IV bottles need to be continuously and promptly changed, which can improve the success of IV therapy, particularly in oncology patients. For the cytostatics to work as intended, the IV chemotherapy drip time should be strictly adhered to.

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Published

2023-12-30

Issue

Section

Research Articles

How to Cite

[1]
Prof. S. M. Borate, Wakade Pavan Govind, Waghamode Anjali Sadashiv, Lakade Komal Parshuram "SMART Intravenous Infusion Dosing System" International Journal of Scientific Research in Science, Engineering and Technology (IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 10, Issue 6, pp.46-51, November-December-2023.