Prediction and diagnosis of cardiovascular disease using cloud and machine learning design

Abstract Predicting and accurately identifying heart disease is a significant challenge in the field of medicine, and the problem of cardiovascular disease predetermine in the health care system is regarded as an essential challenge. Patients have access to more expensive surgical procedures at thes...

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Main Authors: K. Babu, A. Gokula Chandar, S. Kannadhasan
Format: Article
Language:English
Published: SpringerOpen 2025-01-01
Series:Journal of Cloud Computing: Advances, Systems and Applications
Subjects:
Online Access:https://doi.org/10.1186/s13677-024-00720-x
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author K. Babu
A. Gokula Chandar
S. Kannadhasan
author_facet K. Babu
A. Gokula Chandar
S. Kannadhasan
author_sort K. Babu
collection DOAJ
description Abstract Predicting and accurately identifying heart disease is a significant challenge in the field of medicine, and the problem of cardiovascular disease predetermine in the health care system is regarded as an essential challenge. Patients have access to more expensive surgical procedures at these rapidly expanding health care organisations. Recent years have seen an increase in the prevalence of heart disease; this means that despite the progress that has been made in medicine, the prevalence of cardiovascular disease continues to rise at an alarming rate. The primary contributors to the development of these illnesses are a sedentary lifestyle, excessive use of alcohol, insufficient time spent being physically active, and the use of cigarette products. As a result, there is a requirement for a cloud-based framework (CBF) that is capable of monitoring health information and making accurate predictions regarding it. Recently, techniques from the field of machine learning have been applied in an effort to address issues of this nature. But the method that is being suggested uses a cloud-based and cloud-based four-step process to improve surveillance of patients’ health information. This is done to improve the process of forecasting patients’ health information. Detecting and categorising cardiac illness can be accomplished through the application of two distinct kinds of machine learning techniques. After that, an analysis is performed to determine how accurate those techniques are. In order to assess how effectively they work, evaluation parameters are utilised.
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spelling doaj-art-8c56f264e4954a34927db410a8bfb5682025-01-26T12:52:44ZengSpringerOpenJournal of Cloud Computing: Advances, Systems and Applications2192-113X2025-01-011411910.1186/s13677-024-00720-xPrediction and diagnosis of cardiovascular disease using cloud and machine learning designK. Babu0A. Gokula Chandar1S. Kannadhasan2Department of Computational Intelligence, SRM Institute of Science & TechnologyDepartment of ECE, VEMU Institute of technologyDepartment of ECE, Study World College of EngineeringAbstract Predicting and accurately identifying heart disease is a significant challenge in the field of medicine, and the problem of cardiovascular disease predetermine in the health care system is regarded as an essential challenge. Patients have access to more expensive surgical procedures at these rapidly expanding health care organisations. Recent years have seen an increase in the prevalence of heart disease; this means that despite the progress that has been made in medicine, the prevalence of cardiovascular disease continues to rise at an alarming rate. The primary contributors to the development of these illnesses are a sedentary lifestyle, excessive use of alcohol, insufficient time spent being physically active, and the use of cigarette products. As a result, there is a requirement for a cloud-based framework (CBF) that is capable of monitoring health information and making accurate predictions regarding it. Recently, techniques from the field of machine learning have been applied in an effort to address issues of this nature. But the method that is being suggested uses a cloud-based and cloud-based four-step process to improve surveillance of patients’ health information. This is done to improve the process of forecasting patients’ health information. Detecting and categorising cardiac illness can be accomplished through the application of two distinct kinds of machine learning techniques. After that, an analysis is performed to determine how accurate those techniques are. In order to assess how effectively they work, evaluation parameters are utilised.https://doi.org/10.1186/s13677-024-00720-xHeart diseasePredictionClassificationCBFMachine Learning Algorithms (MLA)
spellingShingle K. Babu
A. Gokula Chandar
S. Kannadhasan
Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
Journal of Cloud Computing: Advances, Systems and Applications
Heart disease
Prediction
Classification
CBF
Machine Learning Algorithms (MLA)
title Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
title_full Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
title_fullStr Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
title_full_unstemmed Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
title_short Prediction and diagnosis of cardiovascular disease using cloud and machine learning design
title_sort prediction and diagnosis of cardiovascular disease using cloud and machine learning design
topic Heart disease
Prediction
Classification
CBF
Machine Learning Algorithms (MLA)
url https://doi.org/10.1186/s13677-024-00720-x
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AT agokulachandar predictionanddiagnosisofcardiovasculardiseaseusingcloudandmachinelearningdesign
AT skannadhasan predictionanddiagnosisofcardiovasculardiseaseusingcloudandmachinelearningdesign