Advances in Data Science and Intelligent Data Communication Technologies for COVID-19: Innovative Solutions Against COVID-19

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

This book presents the emerging developments in intelligent computing, machine learning, and data mining. It also provides insights on communications, network technologies, and the Internet of things. It offers various insights on the role of the Internet of things against COVID-19 and its potential applications. It provides the latest cloud computing improvements and advanced computing and addresses data security and privacy to secure COVID-19 data.

Author(s): Aboul-Ella Hassanien; Sally M. Elghamrawy; Ivan Zelinka
Publisher: Springer
Year: 2021

Language: English
Pages: 140
City: Cham

Preface
Outline placeholder
Intelligent Computing, Machine Learning, and Data Mining
Big Data Analysis
Data Classification and Prediction
Data Visualization
Cloud and Edge Computing
Communications and Networking Technologies
Internet of Things (IoT)
Data Security and Privacy
Contents
About the Editors
Data Science Against COVID-19
1 Content-Based Retrieval of COVID-19 Affected Chest X-rays with Siamese CNN
Abstract
1 Introduction
2 Related Works
3 Preliminaries
3.1 Convolutional Neural Network (CNN)—Its Advantages and Disadvantages
3.2 Siamese CNN
4 Dataset Description
5 Implementation Requirements
6 Similarity Measurement
7 Evaluation Metrics
8 Experimental Results
9 Discussion
10 Conclusion and Future Work
References
2 A Machine Learning System for Awareness, Diagnosing and Predicting COVID-19
Abstract
1 Introduction
2 Literature Review
3 Stage One (Awareness Stage)
4 Stage Two (Chest X-Ray-Diagnosis)
5 Stage Three (COVID-19 Predictor Forecast Model)
6 System Deployment in Production
7 Conclusion
Acknowledgements
References
3 Social Distancing Model Utilizing Machine Learning Techniques
Abstract
1 Introduction
2 Literature Review
3 Proposed Methodology
3.1 People Detection
3.2 People Tracking
3.3 Distance Between People Measuring
4 Implementation and Experimental Results
4.1 Implementation
4.2 Dataset
4.3 Model Evaluation
4.4 Experimental Results
5 Conclusion
References
4 The Applications of Artificial Intelligence to Control COVID-19
Abstract
1 Introduction and Background
2 Successful Usability of AI Features in the Global Pandemic Situation
2.1 AI and Deep Learning Algorithms
2.2 AI Through Machine Learning and COVID-19
2.3 Visual Recognition
2.4 CCTV and Tracking Their Movement
2.5 Prediction Model of AI for COVID-19 and Its Role in Curing Coronavirus
2.6 Contributions of AI and Evolution of BlueDot
2.7 Contributions of AI Through Robotics
2.8 Contribution of AI Based Gadgets
2.9 Digital Information and Internet of Things (IOT)
2.10 AI and Saving Lives (Review of the Wearable IOT Devices Impact Our Lives)
2.11 Drone Traffic Monitoring
2.12 Facial Recognition
2.13 AI and Gadgets for Coronavirus Outbreak
2.14 Telemedicine and Coronavirus Application
2.15 Smartphone Apps for Fighting Coronavirus COVID-19
2.16 Successful Stories of AI in COVID-19 and Lesson Learned
3 Conclusion
References
5 System of Systems as a Solution to Mitigate the Spread of Covid-19
Abstract
1 Introduction
2 System of Systems
3 The Architecture of the SOS
3.1 Operational Architecture
3.2 Technical Architecture
3.3 System Architecture
4 The Requirement for a System of Systems
5 Covid-19 and Its Spread
6 Economic Effects of Covid-19
7 Creating SOS for Medical Sectors
8 Challenges of Implementing SOS for Covid-19
9 Suggested Solutions
10 Conclusion
References
6 Data Classification Model for COVID-19 Pandemic
Abstract
1 Introduction
2 Machine Learning in Fighting COVID-19 Pandemic
3 The Applicability and Challenges of Machine Learning for Fighting COVID-19
4 Classification Task for Combating COVID-19 Pandemic
5 Taxonomy of Data Classification Models for COVID-19
5.1 Classification Techniques
5.2 Data Classification Workflow
5.3 Problem Identification and Formulation
5.3.1 Problem Formulation for Modeling
5.4 Data Classification Models
5.4.1 Support Vector Machine (SVM)
5.4.2 Artificial Neural Network (ANN)
5.4.3 Extremely Randomized Trees (Extra Trees)
5.4.4 Random Forest
5.5 Indicators to Model Performance
6 Modeling and Analysis of COVID-19 with Data Classification Model
7 Results and Discussions
7.1 Confusion Matrix
7.2 ROC Curves
7.3 Precision-Recall Curve (PRC)
8 Conclusion
References
7 A Hybrid Automated Intelligent COVID-19 Classification System Based on Neutrosophic Logic and Machine Learning Techniques Using Chest X-Ray Images
Abstract
1 Introduction
2 Related Work
3 The Proposed COVID-19 Diagnostic System
3.1 Pre-processing
3.2 Feature Extraction
3.3 Neutrosophic Techniques (NTS)
3.4 Machine Learning and Classification
4 Experimental Results and Discussion
4.1 Data Set Collection
4.2 Performance Measures
4.3 Results and Discussion
5 Conclusion
References
8 COVID 19 Prediction Model Using Prophet Forecasting with Solution for Controlling Cases and Economy
Abstract
1 Introduction
2 State of Art
3 Analysis of Random Forest Regressor and Prediction Using Prophet Time Series Model
3.1 Prophet Procedure for Time-Series Forecasting
4 Solution
5 Conclusion
References
9 Artificial Intelligence for Strengthening Administrative and Support Services in Public Sector Amid COVID-19: Challenges and Opportunities in Pakistan
Abstract
1 Introduction
2 Literature Review and Proposed Hypotheses
2.1 Services Governance
2.2 Facilitative Administration
2.3 Information Governance
2.4 Communication
2.5 Socializing
2.6 Decision Making
2.7 Conceptual Framework
3 Methodology and AI-Centric Approach
3.1 Instrument/Scale Development
3.2 Respondent Profile & Relevancy
3.3 Sample & Data Collection Process
3.4 Measuring and Analysis of Data
4 Results and Discussion
5 Conclusion and Future Implications
6 Annexure
References
10 Artificial Intelligence in Healthcare and Medical Imaging: Role in Fighting the Spread of COVID-19
Abstract
1 Introduction
2 Literature Review
2.1 Artificial Intelligence in Healthcare
2.2 The Current State of Al in Healthcare
2.3 Point of View of Al in Healthcare
2.4 Current Researches
2.5 Implication
2.6 Expanding Care to Developing Nations
2.7 Disease Diagnostic and Prediction
2.8 Financing the Healthcare Application of Al
2.9 Sustainability
2.10 Emphasizing Diversity
2.11 Limitation of Al
2.12 The Physician–Patient Relationship
3 Artificial Intelligent in Medical Imaging
3.1 Impact on Oncology Imaging
3.2 Al Challenges in Medical Imaging
3.3 Future Perspectives
4 Role of Medical Imaging in Fighting the Coronavirus
5 Descriptive Analysis
5.1 Descriptive of Variables
6 Conclusion
References
Intelligent Data Communication Technologies Against COVID-19
11 An Intelligent Cloud Computing Context-Aware Model for Remote Monitoring COVID-19 Patients Using IoT Technology
Abstract
1 Introduction
2 Background and Literature Review
3 The Proposed Intelligent Cloud Computing Context-Aware Architecture for Remote Monitoring COVID-19 Patients
4 Proposed HCM
4.1 The Proposed CCM
5 Case Study
5.1 Case Study Description
5.2 Initial Setup
5.3 Data Generation
5.4 Dataset Exploration
5.5 Tools
6 Results
7 Conclusion
References
12 The Relationship Between the Government’s Official Facebook Pages and Healthcare Awareness During Covid-19 in Jordan
Abstract
1 Introduction
2 Literature Review
2.1 Facebook and Healthcare Awareness
2.2 The Facebook Pages of Official Institutions
2.3 Facebook and Health Awareness Regarding Coronavirus in Jordan
3 The Systematic Framework of the Chapter
4 Reliability of the Measuring Instrument
5 Findings and Discussion
5.1 Most Popular Health-Awareness Content Regarding Covid-19 on the Facebook Pages of Jordanian Institutions Concerned with Fighting Covid-19
5.2 Interaction with Posts for Healthcare Awareness Through the Facebook Pages of Jordanian Institutions Involved in Fighting Covid-19
5.3 Persuasive Appeals Used in Awareness Posts About COVID-9 on the Facebook Pages of Jordanian Institutions Involved in Fighting Covid-19
5.4 Factors Containing Health-Awareness Posts on the Pages of Jordanian Institutions Concerned with Fighting Covid-19
5.5 Forms, Language and Sources (Health-Awareness Posts) on Official Facebook Pages Concerned with Confronting Covid-19
6 Conclusion and Future Research
References
13 The Influence of YouTube Videos on the Learning Experience of Disabled People During the COVID-19 Outbreak
Abstract
1 Introduction
1.1 Videos Impact on the Education Process
1.2 Using YouTube in the Education Process
1.3 Using YouTube in the Education Process of People with Disabilities
1.4 Guidelines for Effective Educational YouTube Videos
2 Research Model and Study Hypotheses
2.1 Video Type (VT) and Learning Experience (LE)
2.2 YouTube Text (YT) and Learning Experience (LE)
2.3 Videos Quality (VQ) and Learning Experience (LE)
2.4 YouTube Usability (YU) and Learning Experience (LE)
2.5 Perceived Usefulness (PU) and Learning Experience (LE)
3 Methodology
3.1 Discriminant Validity
3.2 Coefficient of Determination—R2
3.3 Hypotheses Testing—Path Coefficient
4 Discussion and Conclusion
5 Study Contributions, Limitations and Recommendations
References
14 IoT-Based Wearable Body Sensor Network for COVID-19 Pandemic
Abstract
1 Introduction
2 Internet of Things Technology in Combating COVID-19
3 The Wearable Body Sensors Network in Fighting COVID-19 Pandemic
4 IoT-Based Wearable Sensors Network Framework for Combating COVID-19 Pandemic
5 The Practical Applicability of the Proposed Framework
6 Conclusion and Future Research Directions
References
15 The Dark Side of Social Media: Spreading Misleading Information During COVID-19 Crisis
Abstract
1 Introduction
2 Literature Review
2.1 The Rise of Social Media
2.2 The Benefits of Social Media
2.2.1 Governments in Social Media
2.2.2 Businesses in Social Media
2.2.3 People in Social Media
2.3 The Dark Side of Social Media
2.4 Dealing with Misleading Information
2.5 Who Should Deliver Messages to Stakeholders?
2.6 Crisis Management in Literature
2.7 The Concept of Crisis Communication
2.8 Best Practices in Crisis Communication
3 Conclusion and Limitations
3.1 Conclusion
3.2 Limitations
References