A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique

Machine learning has become an essential tool in daily life, or we can say it is a powerful tool in the majority of areas that we wish to optimize. Machine learning is being used to create techniques that can learn from labelled or unlabeled information, as well as learn from their surroundings. Mac...

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Main Authors: M. Dhinakaran, Khongdet Phasinam, Joel Alanya-Beltran, Kingshuk Srivastava, D. Vijendra Babu, Sitesh Kumar Singh
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Food Quality
Online Access:http://dx.doi.org/10.1155/2022/6274092
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author M. Dhinakaran
Khongdet Phasinam
Joel Alanya-Beltran
Kingshuk Srivastava
D. Vijendra Babu
Sitesh Kumar Singh
author_facet M. Dhinakaran
Khongdet Phasinam
Joel Alanya-Beltran
Kingshuk Srivastava
D. Vijendra Babu
Sitesh Kumar Singh
author_sort M. Dhinakaran
collection DOAJ
description Machine learning has become an essential tool in daily life, or we can say it is a powerful tool in the majority of areas that we wish to optimize. Machine learning is being used to create techniques that can learn from labelled or unlabeled information, as well as learn from their surroundings. Machine learning is utilized in various areas, but mainly in the healthcare industry, where it provides significant advantages via appropriate decision and prediction methods. The proposed work introduces a remote system that can continuously monitor the patient and can produce an alert whenever necessary. The proposed methodology makes use of different machine learning algorithms along with cloud computing for continuous data storage. Over the years, these technologies have resulted in significant advancements in the healthcare industry. Medical professionals utilize machine learning tools and methods to analyse medical data in order to detect hazards and offer appropriate diagnosis and treatment. The scope of remote healthcare includes anything from tracking chronically sick patients, elderly people, preterm children, and accident victims. The current study explores the machine learning technologies’ capability of monitoring remote patients and alerts their current condition through the remote system. New advances in contactless observation demonstrate that it is only necessary for the patient to be present within a few meters of the sensors for them to work. Sensors connected to the body and environmental sensors connected to the surroundings are examples of the technology available.
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institution Kabale University
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language English
publishDate 2022-01-01
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series Journal of Food Quality
spelling doaj-art-cf4ea6d6af9d46e68ff1a059af5094802025-02-03T07:23:56ZengWileyJournal of Food Quality1745-45572022-01-01202210.1155/2022/6274092A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning TechniqueM. Dhinakaran0Khongdet Phasinam1Joel Alanya-Beltran2Kingshuk Srivastava3D. Vijendra Babu4Sitesh Kumar Singh5Department of Electronics and Communication EngineeringSchool of Agricultural and Food EngineeringElectronic DepartmentDepartment of InformaticsDepartment of Electronics & Communication EngineeringDepartment of Civil EngineeringMachine learning has become an essential tool in daily life, or we can say it is a powerful tool in the majority of areas that we wish to optimize. Machine learning is being used to create techniques that can learn from labelled or unlabeled information, as well as learn from their surroundings. Machine learning is utilized in various areas, but mainly in the healthcare industry, where it provides significant advantages via appropriate decision and prediction methods. The proposed work introduces a remote system that can continuously monitor the patient and can produce an alert whenever necessary. The proposed methodology makes use of different machine learning algorithms along with cloud computing for continuous data storage. Over the years, these technologies have resulted in significant advancements in the healthcare industry. Medical professionals utilize machine learning tools and methods to analyse medical data in order to detect hazards and offer appropriate diagnosis and treatment. The scope of remote healthcare includes anything from tracking chronically sick patients, elderly people, preterm children, and accident victims. The current study explores the machine learning technologies’ capability of monitoring remote patients and alerts their current condition through the remote system. New advances in contactless observation demonstrate that it is only necessary for the patient to be present within a few meters of the sensors for them to work. Sensors connected to the body and environmental sensors connected to the surroundings are examples of the technology available.http://dx.doi.org/10.1155/2022/6274092
spellingShingle M. Dhinakaran
Khongdet Phasinam
Joel Alanya-Beltran
Kingshuk Srivastava
D. Vijendra Babu
Sitesh Kumar Singh
A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
Journal of Food Quality
title A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
title_full A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
title_fullStr A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
title_full_unstemmed A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
title_short A System of Remote Patients’ Monitoring and Alerting Using the Machine Learning Technique
title_sort system of remote patients monitoring and alerting using the machine learning technique
url http://dx.doi.org/10.1155/2022/6274092
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