A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge

Şükrü Mustafa Kaya,1 Atakan Erdem,2 Ali Güneş3 1Department of Computer Engineering, Institute of Graduate Studies, Istanbul Aydin University, Istanbul, Turkey; 2Jackson’s Lab, University of Calgary, Calgary, Canada; 3Department of Computer Engineering, Istanbul Aydin University...

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Main Authors: Kaya ŞM, Erdem A, Güneş A
Format: Article
Language:English
Published: Dove Medical Press 2021-08-01
Series:Smart Homecare Technology and TeleHealth
Subjects:
Online Access:https://www.dovepress.com/a-smart-data-pre-processing-approach-to-effective-management-of-big-he-peer-reviewed-fulltext-article-SHTT
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spelling doaj-869be6f3622c4b7196939619e9805af52021-08-31T20:24:17ZengDove Medical PressSmart Homecare Technology and TeleHealth2253-15642021-08-01Volume 892168385A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT EdgeKaya ŞMErdem AGüneş AŞükrü Mustafa Kaya,1 Atakan Erdem,2 Ali Güneş3 1Department of Computer Engineering, Institute of Graduate Studies, Istanbul Aydin University, Istanbul, Turkey; 2Jackson’s Lab, University of Calgary, Calgary, Canada; 3Department of Computer Engineering, Istanbul Aydin University, Istanbul, TurkeyCorrespondence: Şükrü Mustafa KayaDepartment of Computer Engineering, Institute of Graduate Studies, Istanbul Aydin University, Istanbul, TurkeyTel +90 545 205 57 01Email smustafakaya@stu.aydin.edu.trBackground: An IoT Big Data analysis platform should be able to dynamically manage IoT data and it should be appropriate the fundamental components, known as the 5V’s of big data. Therefore, speed and accuracy are two important criteria to consider. In this context, there are no similar studies that prioritize speed and accuracy criteria in big health data. It is thought that this study and the experimental results obtained are a new approach in the field of healthcare, hence it will add novelty to the studies to be carried out. The main objective of this paper is to detect anomalies at the edge of IoT for the effective management of big health data.Methods: This study focuses on detecting anomalies on the data stream created with IoT sensors between the sensing and network layer. The classification success and data processing speed of the random cut forest, logistic regression, Naive Bayes, and neural network algorithms used for anomaly detection are compared. In order to detect anomalies in a data stream consisting of temperature, age, gender, weight, height, and time data and compare algorithms.Results: The speed and accuracy performances of ML Algorithms were compared. The performance comparison shows that the LR algorithm will be more successful in IoT systems in terms of speed, although it is very close to the RCF in terms of accuracy.Conclusion: The experimental results show that using ML algorithms on IoT edges will help make effective and timely decisions in the healthcare domain. Thus, the big data generated by the IoT sensing layer in healthcare will be formed at a more manageable level. Also, thanks to this, service providers, users, and other interested sides will be minimally affected by the negative effects of anomalous data.Keywords: internet of things, big data management, big data analytics, data filteringhttps://www.dovepress.com/a-smart-data-pre-processing-approach-to-effective-management-of-big-he-peer-reviewed-fulltext-article-SHTTinternet of thingsbig data managementbig data analyticsdata filtering
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language English
format Article
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author Kaya ŞM
Erdem A
Güneş A
spellingShingle Kaya ŞM
Erdem A
Güneş A
A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
Smart Homecare Technology and TeleHealth
internet of things
big data management
big data analytics
data filtering
author_facet Kaya ŞM
Erdem A
Güneş A
author_sort Kaya ŞM
title A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
title_short A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
title_full A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
title_fullStr A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
title_full_unstemmed A Smart Data Pre-Processing Approach to Effective Management of Big Health Data in IoT Edge
title_sort smart data pre-processing approach to effective management of big health data in iot edge
publisher Dove Medical Press
series Smart Homecare Technology and TeleHealth
issn 2253-1564
publishDate 2021-08-01
description Şükrü Mustafa Kaya,1 Atakan Erdem,2 Ali Güneş3 1Department of Computer Engineering, Institute of Graduate Studies, Istanbul Aydin University, Istanbul, Turkey; 2Jackson’s Lab, University of Calgary, Calgary, Canada; 3Department of Computer Engineering, Istanbul Aydin University, Istanbul, TurkeyCorrespondence: Şükrü Mustafa KayaDepartment of Computer Engineering, Institute of Graduate Studies, Istanbul Aydin University, Istanbul, TurkeyTel +90 545 205 57 01Email smustafakaya@stu.aydin.edu.trBackground: An IoT Big Data analysis platform should be able to dynamically manage IoT data and it should be appropriate the fundamental components, known as the 5V’s of big data. Therefore, speed and accuracy are two important criteria to consider. In this context, there are no similar studies that prioritize speed and accuracy criteria in big health data. It is thought that this study and the experimental results obtained are a new approach in the field of healthcare, hence it will add novelty to the studies to be carried out. The main objective of this paper is to detect anomalies at the edge of IoT for the effective management of big health data.Methods: This study focuses on detecting anomalies on the data stream created with IoT sensors between the sensing and network layer. The classification success and data processing speed of the random cut forest, logistic regression, Naive Bayes, and neural network algorithms used for anomaly detection are compared. In order to detect anomalies in a data stream consisting of temperature, age, gender, weight, height, and time data and compare algorithms.Results: The speed and accuracy performances of ML Algorithms were compared. The performance comparison shows that the LR algorithm will be more successful in IoT systems in terms of speed, although it is very close to the RCF in terms of accuracy.Conclusion: The experimental results show that using ML algorithms on IoT edges will help make effective and timely decisions in the healthcare domain. Thus, the big data generated by the IoT sensing layer in healthcare will be formed at a more manageable level. Also, thanks to this, service providers, users, and other interested sides will be minimally affected by the negative effects of anomalous data.Keywords: internet of things, big data management, big data analytics, data filtering
topic internet of things
big data management
big data analytics
data filtering
url https://www.dovepress.com/a-smart-data-pre-processing-approach-to-effective-management-of-big-he-peer-reviewed-fulltext-article-SHTT
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