This book deeply discusses the major challenges and issues for security and privacy aspects of smart health-care systems.
The Internet-of-Things (IoT) has emerged as a powerful and promising technology, and though it has significant technological, social, and economic impacts, it also poses new security and privacy challenges. Compared with the traditional internet, the IoT has various embedded devices, mobile devices, a server, and the cloud, with different capabilities to support multiple services. The pervasiveness of these devices represents a huge attack surface and, since the IoT connects cyberspace to physical space, known as a cyber-physical system, IoT attacks not only have an impact on information systems, but also affect physical infrastructure, the environment, and even human security.
The purpose of this book is to help achieve a better integration between the work of researchers and practitioners in a single medium for capturing state-of-the-art IoT solutions in healthcare applications, and to address how to improve the proficiency of wireless sensor networks (WSNs) in healthcare. It explores possible automated solutions in everyday life, including the structures of healthcare systems built to handle large amounts of data, thereby improving clinical decisions. The 14 separate chapters address various aspects of the IoT system, such as design challenges, theory, various protocols, implementation issues, as well as several case studies.
Smart Healthcare System Design covers the introduction, development, and applications of smart healthcare models that represent the current state-of-the-art of various domains. The primary focus is on theory, algorithms, and their implementation targeted at real-world problems. It will deal with different applications to give the practitioner a flavor of how IoT architectures are designed and introduced into various situations.
Audience: Researchers and industry engineers in information technology, artificial intelligence, cyber security, as well as designers of healthcare systems, will find this book very valuable.
Table of Contents
Preface xvii
Acknowledgments xxiii
1 Machine Learning Technologies in IoT EEG-Based Healthcare Prediction 1
Karthikeyan M.P., Krishnaveni K. and Muthumani N.
1.1 Introduction 2
1.1.1 Descriptive Analytics 3
1.1.2 Analytical Methods 3
1.1.3 Predictive Analysis 4
1.1.4 Behavioral Analysis 4
1.1.5 Data Interpretation 4
1.1.6 Classification 4
1.2 Related Works 7
1.3 Problem Definition 9
1.4 Research Methodology 9
1.4.1 Components Used 10
1.4.2 Specifications and Description About Components 10
1.4.2.1 Arduino 10
1.4.2.2 EEG Sensor - Mindwave Mobile Headset 11
1.4.2.3 Raspberry pi 12
1.4.2.4 Working 13
1.4.3 Cloud Feature Extraction 13
1.4.4 Feature Optimization 14
1.4.5 Classification and Validation 15
1.5 Result and Discussion 16
1.5.1 Result 16
1.5.2 Discussion 23
1.6 Conclusion 27
1.6.1 Future Scope 27
References 28
2 Smart Health Application for Remote Tracking of Ambulatory Patients 33
Shariq Aziz Butt, Muhammad Waqas Anjum, Syed Areeb Hassan, Arindam Garai and Edeh Michael Onyema
2.1 Introduction 34
2.2 Literature Work 34
2.3 Smart Computing for Smart Health for Ambulatory Patients 35
2.4 Challenges With Smart Health 36
2.4.1 Emergency Support 36
2.4.2 The Issue With Chronic Disease Monitoring 38
2.4.3 An Issue With the Tele-Medication 38
2.4.4 Mobility of Doctor 40
2.4.5 Application User Interface Issue 40
2.5 Security Threats 41
2.5.1 Identity Privacy 41
2.5.2 Query Privacy 42
2.5.3 Location of Privacy 42
2.5.4 Footprint Privacy and Owner Privacy 43
2.6 Applications of Fuzzy Set Theory in Healthcare and Medical Problems 43
2.7 Conclusion 51
References 51
3 Data-Driven Decision Making in IoT Healthcare Systems - COVID-19: A Case Study 57
Saroja S., Haseena S. and Blessa Binolin Pepsi M.
3.1 Introduction 58
3.1.1 Pre-Processing 59
3.1.2 Classification Algorithms 60
3.1.2.1 Dummy Classifier 60
3.1.2.2 Support Vector Machine (SVM) 60
3.1.2.3 Gradient Boosting 61
3.1.2.4 Random Forest 62
3.1.2.5 Ada Boost 63
3.2 Experimental Analysis 63
3.3 Multi-Criteria Decision Making (MCDM) Procedure 63
3.3.1 Simple Multi Attribute Rating Technique (SMART) 64
3.3.1.1 COVID-19 Disease Classification Using SMART 64
3.3.2 Weighted Product Model (WPM) 66
3.3.2.1 COVID-19 Disease Classification Using WPM 66
3.3.3 Method for Order Preference by Similarity to the Ideal Solution (TOPSIS) 67
3.3.3.1 COVID-19 Disease Classification Using TOPSIS 68
3.4 Conclusion 69
References 69
4 Touch and Voice-Assisted Multilingual Communication Prototype for ICU Patients Specific to COVID-19 71
B. Rajesh Kanna and C.Vijayalakshmi
4.1 Introduction and Motivation 72
4.1.1 Existing Interaction Approaches and Technology 73
4.1.2 Challenges and Gaps 74
4.2 Proposed Prototype of Touch and Voice-Assisted Multilingual Communication 75
4.3 A Sample Case Study 82
4.4 Conclusion 82
References 84
5 Cloud-Assisted IoT System for Epidemic Disease Detection and Spread Monitoring 87
Himadri Nath Saha, Reek Roy and Sumanta Chakraborty
5.1 Introduction 88
5.2 Background & Related Works 92
5.3 Proposed Model 98
5.3.1 ThinkSpeak 100
5.3.2 Blood Oxygen Saturation (SpO2) 100
5.3.3 Blood Pressure (BP) 101
5.3.4 Electrocardiogram (ECG) 101
5.3.5 Body Temperature (BT) 102
5.3.6 Respiration Rate (RR) 102
5.3.7 Environmental Parameters 103
5.4 Methodology 103
5.5 Performance Analysis 110
5.6 Future Research Direction 111
5.7 Conclusion 112
References 113
6 Impact of Healthcare 4.0 Technologies for Future Capacity Building to Control Epidemic Diseases 115
Himadri Nath Saha, Sumanta Chakraborty, Sourav Paul, Rajdeep Ghosh and Dipanwita Chakraborty Bhattacharya
6.1 Introduction 116
6.2 Background and Related Works 120
6.3 System Design and Architecture 128
6.4 Methodology 131
6.5 Performance Analysis 138
6.6 Future Research Direction 138
6.7 Conclusion 139
References 139
7 Security and Privacy of IoT Devices in Healthcare Systems 143
Himadri Nath Saha and Subhradip Debnath
7.1 Introduction 144
7.2 Background and Related Works 145
7.3 Proposed System Design and Architecture 147
7.3.1 Modules 148
7.3.1.1 Wireless Body Area Network 148
7.3.1.2 Centralized Network Coordinator 149
7.3.1.3 Local Server 149
7.3.1.4 Cloud Server 150
7.3.1.5 Dedicated Network Connection 151
7.4 Methodology 151
7.5 Performance Analysis 160
7.6 Future Research Direction 161
7.7 Conclusion 163
References 164
8 An IoT-Based Diet Monitoring Healthcare System for Women 167
Suganyadevi S., Shamia D. and Balasamy K.
8.1 Introduction 168
8.2 Background 177
8.2.1 Food Consumption 177
8.2.2 Food Consumption Monitoring 178
8.2.3 Health Monitoring Methods Using Physical Methodology 179
8.2.3.1 Traditional Form of Self-Report 179
8.2.3.2 Self-Reporting Methodology Through Smart Phones 179
8.2.3.3 Food Frequency Questionnaire 179
8.2.4 Methods for Health Tracking Using Automated Approach 180
8.2.4.1 Pressure Process 180
8.2.4.2 Surveillance Video Method 180
8.2.4.3 Method of Doppler Sensing 180
8.3 Necessity of Wearable Approach? 181
8.4 Different Approaches for Wearable Sensing 181
8.4.1 Approach of Acoustics 182
8.4.1.1 Detection of Chewing 182
8.4.1.2 Detection of Swallowing 183
8.4.1.3 Shared Chewing/Swallowing Discovery 183
8.5 Description of the Methodology 184
8.6 Description of Various Components Used 185
8.6.1 Sensors 185
8.6.1.1 Sensors for Cardio-Vascular Monitoring 185
8.6.1.2 Sensors for Activity Monitoring 186
8.6.1.3 Sensors for Body Temperature Monitoring 187
8.6.1.4 Sensor for Galvanic Skin Response (GSR) Monitoring 188
8.6.1.5 Sensor for Monitoring the Blood Oxygen Saturation (SpO2 ) 189
8.7 Strategy of Communication for Wearable Systems 189
8.8 Conclusion 192
References 194
9 A Secure Framework for Protecting Clinical Data in Medical IoT Environment 203
Balasamy K., Krishnaraj N., Ramprasath J. and Ramprakash P.
9.1 Introduction 203
9.1.1 Medical IoT Background & Perspective 204
9.1.1.1 Medical IoT Communication Network 204
9.2 Medical IoT Application Domains 209
9.2.1 Smart Doctor 209
9.2.2 Smart Medical Practitioner 209
9.2.3 Smart Technology 209
9.2.4 Smart Receptionist 210
9.2.5 Disaster Response Systems (DRS) 210
9.3 Medical IoT Concerns 210
9.3.1 Security Concerns 211
9.3.2 Privacy Concerns 212
9.3.3 Trust Concerns 212
9.4 Need for Security in Medical IoT 212
9.5 Components for Enhancing Data Security in Medical IoT 214
9.5.1 Confidentiality 214
9.5.2 Integrity 214
9.5.3 Authentication 215
9.5.4 Non-Repudiation 215
9.5.5 Privacy 215
9.6 Vulnerabilities in Medical IoT Environment 215
9.6.1 Patient Privacy Protection 215
9.6.2 Patient Safety 216
9.6.3 Unauthorized Access 216
9.6.4 Medical IoT Security Constraints 217
9.7 Solutions for IoT Healthcare Cyber-Security 218
9.7.1 Architecture of the Smart Healthcare System 218
9.7.1.1 Data Perception Layer 218
9.7.1.2 Data Communication Layer 219
9.7.1.3 Data Storage Layer 219
9.7.1.4 Data Application Layer 219
9.8 Execution of Trusted Environment 220
9.8.1 Root of Trust Security Services 220
9.8.2 Chain of Trust Security Services 222
9.9 Patient Registration Using Medical IoT Devices 223
9.9.1 Encryption 224
9.9.2 Key Generation 225
9.9.3 Security by Isolation 225
9.9.4 Virtualization 225
9.10 Trusted Communication Using Block Chain 229
9.10.1 Record Creation Using IoT Gateways 229
9.10.2 Accessibility to Patient Medical History 230
9.10.3 Patient Enquiry With Hospital Authority 230
9.10.4 Block Chain Based IoT System Architecture 231
9.10.4.1 First Layer 231
9.10.4.2 Second Layer 231
9.10.4.3 Third Layer 232
9.11 Conclusion 232
References 233
10 Efficient Data Transmission and Remote Monitoring System for IoT Applications 235
Laith Farhan, Firas MaanAbdulsattar, Laith Alzubaidi, Mohammed A. Fadhel, Banu ÇalışUslu and Muthana Al-Amidie
10.1 Introduction 236
10.2 Network Configuration 236
10.2.1 Message Queuing Telemetry Transport (MQTT) Protocol 238
10.2.2 Embedded Database SQLite 242
10.2.3 Eclipse Paho Library 242
10.2.4 Raspberry Pi Single Board Computer 242
10.2.5 Custard Pi Add-On Board 243
10.2.6 Pressure Transmitter (Type 663) 244
10.3 Data Filtering and Predicting Processes 245
10.3.1 Filtering Process 245
10.3.2 Predicting Process 246
10.3.3 Remote Monitoring Systems 248
10.4 Experimental Setup 249
10.4.1 Implementation Using Python 251
10.4.1.1 Prerequisites 251
10.4.2 Monitoring Data 251
10.4.3 Experimental Results 255
10.4.3.1 IoT Device Results 255
10.4.3.2 Traditional Network Results 257
10.5 Conclusion 261
References 261
11 IoT in Current Times and its Prospective Advancements 265
T. Venkat Narayana Rao, Abhishek Duggirala, Muralidhar Kurni and Syed Tabassum Sultana
11.1 Introduction 266
11.1.1 Introduction to Industry 4.0 266
11.1.2 Introduction to IoT 266
11.1.3 Introduction to IIoT 267
11.2 How IIoT Advances Industrial Engineering in Industry 4.0 Era 267
11.3 IoT and its Current Applications 268
11.3.1 Home Automation 268
11.3.2 Wearables 269
11.3.3 Connected Cars 269
11.3.4 Smart Grid 269
11.4 Application Areas of IIoT 270
11.4.1 IIoT in Healthcare 270
11.4.2 IIoT in Mining 270
11.4.3 IIoT in Agriculture 271
11.4.4 IIoT in Aerospace 271
11.4.5 IIoT in Smart Cities 272
11.4.6 IIoT in Supply Chain Management 272
11.5 Challenges of Existing Systems 272
11.5.1 Security 272
11.5.2 Integration 273
11.5.3 Connectivity Issues 273
11.6 Future Advancements 273
11.6.1 Data Analytics in IoT 274
11.6.2 Edge Computing 274
11.6.3 Secured IoT Through Blockchain 274
11.6.4 A Fusion of AR and IoT 275
11.6.5 Accelerating IoT Through 5G 275
11.7 Case Study of DeWalt 275
11.8 Conclusion 276
References 276
12 Reliance on Artificial Intelligence, Machine Learning and Deep Learning in the Era of Industry 4.0 281
T. Venkat Narayana Rao, Akhila Gaddam, Muralidhar Kurni and K. Saritha
12.1 Introduction to Artificial Intelligence 282
12.1.1 History of AI 282
12.1.2 Views of AI 282
12.1.3 Types of AI 283
12.1.4 Intelligent Agents 284
12.2 AI and its Related Fields 286
12.3 What is Industry 4.0? 289
12.4 Industrial Revolutions 289
12.4.1 First Industrial Revolution (1765) 290
12.4.2 Second Industrial Revolution (1870) 290
12.4.3 Third Industrial Revolution (1969) 290
12.4.4 Fourth Industrial Revolution 291
12.5 Reasons for Shifting Towards Industry 4.0 291
12.6 Role of AI in Industry 4.0 292
12.7 Role of ML in Industry 4.0 292
12.8 Role of Deep Learning in Industry 4.0 293
12.9 Applications of AI, ML, and DL in Industry 4.0 294
12.10 Challenges 295
12.11 Top Companies That Use AI to Augment Manufacturing Processes in the Era of Industry 4.0 296
12.12 Conclusion 297
References 297
13 The Implementation of AI and AI-Empowered Imaging System to Fight Against COVID-19 - A Review 301
Sanjay Chakraborty and Lopamudra Dey
13.1 Introduction 302
13.2 AI-Assisted Methods 304
13.2.1 AI-Driven Tools to Diagnose COVID-19 and Drug Discovery 304
13.2.2 AI-Empowered Image Processing to Diagnosis 306
13.3 Optimistic Treatments and Cures 307
13.4 Challenges and Future Research Issues 308
13.5 Conclusion 308
References 309
14 Implementation of Machine Learning Techniques for the Analysis of Transmission Dynamics of COVID-19 313
C. Vijayalakshmi and S. Bangusha Devi
14.1 Introduction 314
14.2 Data Analysis 315
14.3 Methodology 315
14.3.1 Linear Regression Model 315
14.3.2 Time Series Model 318
14.4 Results and Discussions 320
14.4.1 Model Estimation and Studying its Adequacy 323
14.4.2 Regression Model for Daily New Cases and New Deaths 330
14.5 Conclusions 348
References 348
Index 351