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Status | 已發表Published |
Mining massive e-health data streams for IoMT enabled healthcare systems | |
Affan Ahmed Toor1; Muhammad Usman1; Farah Younas1; Alvis Cheuk M. Fong2; Sajid Ali Khan3; Simon Fong4 | |
2020-04-09 | |
Source Publication | Sensors (Switzerland) |
ISSN | 1424-8220 |
Volume | 20Issue:7Pages:2131 |
Abstract | 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. |
Keyword | Data Stream Mining Iomt Concept Drift Class Imbalance Machine Learning |
DOI | 10.3390/s20072131 |
URL | View the original |
Indexed By | SCIE |
Language | 英語English |
WOS Research Area | Chemistry ; Engineering ; Instruments & Instrumentation |
WOS Subject | Chemistry, Analytical ; Engineering, Electrical & Electronic ; Instruments & Instrumentation |
WOS ID | WOS:000537110500327 |
Publisher | MDPI, ST ALBAN-ANLAGE 66, CH-4052 BASEL, SWITZERLAND |
Scopus ID | 2-s2.0-85083387763 |
Fulltext Access | |
Citation statistics | |
Document Type | Journal article |
Collection | DEPARTMENT OF COMPUTER AND INFORMATION SCIENCE |
Corresponding Author | Alvis Cheuk M. Fong |
Affiliation | 1.Department of Computer Science,Shaheed Zulfikar Ali Bhutto Institute of Science and Technology,Islamabad,44000,Pakistan 2.Department of Computing,Western Michigan University,Gladstone,49837,United States 3.Department of Software Engineering,Foundation University Islamabad,Islambad,44000,Pakistan 4.Department of Computer and Information Science,University of Macau,Macau,999078,China |
Recommended Citation GB/T 7714 | Affan Ahmed Toor,Muhammad Usman,Farah Younas,et al. Mining massive e-health data streams for IoMT enabled healthcare systems[J]. Sensors (Switzerland), 2020, 20(7), 2131. |
APA | Affan Ahmed Toor., Muhammad Usman., Farah Younas., Alvis Cheuk M. Fong., Sajid Ali Khan., & Simon Fong (2020). Mining massive e-health data streams for IoMT enabled healthcare systems. Sensors (Switzerland), 20(7), 2131. |
MLA | Affan Ahmed Toor,et al."Mining massive e-health data streams for IoMT enabled healthcare systems".Sensors (Switzerland) 20.7(2020):2131. |
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