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2023 | OriginalPaper | Chapter

Intelligent Healthcare System

Authors : M. Senthamil Selvi, K. Abinaya, N. Jemy Sharon, R. Lakshmi Pooja

Published in: Intelligent Cyber Physical Systems and Internet of Things

Publisher: Springer International Publishing

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Abstract

Heart and kidney are the two major organs in a human cardiovascular disease (CVDs) and Chronic Kidney Disorders (CKDs) are the leading by causing death and health related issues globally. Mostly, cardiovascular diseases or any heart abnormalities can be prevented by addressing some of the risk factors such as using tobacco, unhealthy diet which leads to obesity, physical inactivity and massive consumption of alcohol. CKD means the kidneys are damaged and losing their ability to keep our body healthy by filtering the blood. CKDs can only be treated, by early clinical-diagnosis and treatment. So that it’s possible to slow down or stop the progression of kidney disease. The heart helps to pump the blood filled with oxygen through all parts of the body, including the kidneys. As we know, the kidneys help cleaning the blood, by removing the waste products and extra water in the body. Without the help of kidneys, the blood in our body would contain too much waste and extra water that is unnecessary, which can lead to be fatal infections sometimes. So, only by the proper functioning of both heart and kidney would help maintain our body functionalities properly. It is very important to understand that everybody with renal disease is at risk for heart problems, which can increase your chances of developing heart disease. The Intelligent health care system works as a web application in which users can enter some blood test parameters and blood pressure (BP) in order to find if there is any abnormality or not in their heart and kidney. This application creates awareness about the heart and kidney health. It is better to follow prevention than getting cured is the strategy followed here.

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Metadata
Title
Intelligent Healthcare System
Authors
M. Senthamil Selvi
K. Abinaya
N. Jemy Sharon
R. Lakshmi Pooja
Copyright Year
2023
DOI
https://doi.org/10.1007/978-3-031-18497-0_64

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