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Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems

With the increasing popularity of the Internet-of-Medical-Things (IoMT) and smart devices, huge volumes of data streams have been generated. This study aims to address the concept drift, which is a major challenge in the processing of voluminous data streams. Concept drift refers to overtime change...

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Autores principales: Toor, Affan Ahmed, Usman, Muhammad, Younas, Farah, M. Fong, Alvis Cheuk, Khan, Sajid Ali, Fong, Simon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7180875/
https://www.ncbi.nlm.nih.gov/pubmed/32283841
http://dx.doi.org/10.3390/s20072131
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author Toor, Affan Ahmed
Usman, Muhammad
Younas, Farah
M. Fong, Alvis Cheuk
Khan, Sajid Ali
Fong, Simon
author_facet Toor, Affan Ahmed
Usman, Muhammad
Younas, Farah
M. Fong, Alvis Cheuk
Khan, Sajid Ali
Fong, Simon
author_sort Toor, Affan Ahmed
collection PubMed
description With the increasing popularity of the Internet-of-Medical-Things (IoMT) and smart devices, huge volumes of data streams have been generated. This study aims to address the concept drift, which is a major challenge in the processing of voluminous data streams. Concept drift refers to overtime change in data distribution. It may occur in the medical domain, for example the medical sensors measuring for general healthcare or rehabilitation, which may switch their roles for ICU emergency operations when required. Detecting concept drifts becomes trickier when the class distributions in data are skewed, which is often true for medical sensors e-health data. Reactive Drift Detection Method (RDDM) is an efficient method for detecting long concepts. However, RDDM has a high error rate, and it does not handle class imbalance. We propose an Enhanced Reactive Drift Detection Method (ERDDM), which systematically generates strategies to handle concept drift with class imbalance in data streams. We conducted experiments to compare ERDDM with three contemporary techniques in terms of prediction error, drift detection delay, latency, and ability to handle data imbalance. The experimentation was done in Massive Online Analysis (MOA) on 48 synthetic datasets customized to possess the capabilities of data streams. ERDDM can handle abrupt and gradual drifts and performs better than all benchmarks in almost all experiments.
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spelling pubmed-71808752020-05-01 Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems Toor, Affan Ahmed Usman, Muhammad Younas, Farah M. Fong, Alvis Cheuk Khan, Sajid Ali Fong, Simon Sensors (Basel) Article With the increasing popularity of the Internet-of-Medical-Things (IoMT) and smart devices, huge volumes of data streams have been generated. This study aims to address the concept drift, which is a major challenge in the processing of voluminous data streams. Concept drift refers to overtime change in data distribution. It may occur in the medical domain, for example the medical sensors measuring for general healthcare or rehabilitation, which may switch their roles for ICU emergency operations when required. Detecting concept drifts becomes trickier when the class distributions in data are skewed, which is often true for medical sensors e-health data. Reactive Drift Detection Method (RDDM) is an efficient method for detecting long concepts. However, RDDM has a high error rate, and it does not handle class imbalance. We propose an Enhanced Reactive Drift Detection Method (ERDDM), which systematically generates strategies to handle concept drift with class imbalance in data streams. We conducted experiments to compare ERDDM with three contemporary techniques in terms of prediction error, drift detection delay, latency, and ability to handle data imbalance. The experimentation was done in Massive Online Analysis (MOA) on 48 synthetic datasets customized to possess the capabilities of data streams. ERDDM can handle abrupt and gradual drifts and performs better than all benchmarks in almost all experiments. MDPI 2020-04-09 /pmc/articles/PMC7180875/ /pubmed/32283841 http://dx.doi.org/10.3390/s20072131 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Toor, Affan Ahmed
Usman, Muhammad
Younas, Farah
M. Fong, Alvis Cheuk
Khan, Sajid Ali
Fong, Simon
Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title_full Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title_fullStr Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title_full_unstemmed Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title_short Mining Massive E-Health Data Streams for IoMT Enabled Healthcare Systems
title_sort mining massive e-health data streams for iomt enabled healthcare systems
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7180875/
https://www.ncbi.nlm.nih.gov/pubmed/32283841
http://dx.doi.org/10.3390/s20072131
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