Produktbild: Intelligent Pervasive Computing Systems for Smarter Healthcare

Intelligent Pervasive Computing Systems for Smarter Healthcare

Fr. 183.00

inkl. gesetzl. MwSt., Versandkostenfrei


Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

04.09.2019

Verlag

John Wiley & Sons

Seitenzahl

448

Maße (L/B/H)

23.5/15.7/2.8 cm

Gewicht

789 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-43896-0

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

04.09.2019

Verlag

John Wiley & Sons

Seitenzahl

448

Maße (L/B/H)

23.5/15.7/2.8 cm

Gewicht

789 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-43896-0

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

Kundinnen und Kunden meinen

0 Bewertungen

Informationen zu Bewertungen

Zur Abgabe einer Bewertung ist eine Anmeldung im Konto notwendig. Die Authentizität der Bewertungen wird von uns nicht überprüft. Wir behalten uns vor, Bewertungstexte, die unseren Richtlinien widersprechen, entsprechend zu kürzen oder zu löschen.

Die Bewertungen sind nach Format, Anzahl Sterne und Datum sortiert.

Verfassen Sie die erste Bewertung zu diesem Artikel

Helfen Sie anderen Kund*innen durch Ihre Meinung

Kundinnen und Kunden meinen

0 Bewertungen filtern

Die Leseprobe wird geladen.
  • Produktbild: Intelligent Pervasive Computing Systems for Smarter Healthcare
  • List of Contributors xvii

    1 Intelligent Sensing and Ubiquitous Systems (ISUS) for Smarter and Safer Home Healthcare 1
    Rui Silva Moreira, José Torres, Pedro Sobral, and Christophe Soares

    1.1 Introduction to Ubicomp for Home Healthcare 1

    1.2 Processing and Sensing Issues 3

    1.2.1 Remote Patient Monitoring in Home Environments 4

    1.2.1.1 Hardware Device 5

    1.2.1.2 Sensed Data Processing and Analysis 6

    1.2.2 Indoor Location Using Bluetooth Low Energy Beacons 8

    1.2.2.1 Bluetooth Low Energy 9

    1.2.2.2 Distance Estimation 9

    1.3 Integration and Management Issues 14

    1.3.1 Cloud-Based Integration of Personal Healthcare Systems 15

    1.3.2 SNMP-Based Integration and Interference Free Approach to Personal Healthcare 17

    1.4 Communication and Networking Issues 19

    1.4.1 Wireless Sensor Network for Home Healthcare 21

    1.4.1.1 Home Healthcare System Architecture 21

    1.4.1.2 Wireless Sensor Network Evaluation 25

    1.5 Intelligence and Reasoning Issues 26

    1.5.1 Intelligent Monitoring and Automation in Home Healthcare 26

    1.5.2 Personal Activity Detection During Daily Living 30

    1.6 Conclusion 32

    Bibliography 33

    2 PeMo-EC: An Intelligent, Pervasive and Mobile Platform for ECG Signal Acquisition, Processing, and Pre-Diagnostic Extraction 37
    Angelo Brayner, José Maria Monteiro, and João Paulo Madeiro

    2.1 Electrical System of the Heart 37

    2.2 The Electrocardiogram Signal: A Gold Standard for Monitoring People Suffering from Heart Diseases 38

    2.3 Pervasive and Mobile Computing: Basic Concepts 40

    2.4 Ubiquitous Computing and Healthcare Applications: State of the Art 42

    2.5 PeMo-EC: Description of the Proposed Framework 44

    2.5.1 Acquisition Module: Biosensors and ECG Data Conditioning 44

    2.5.2 Patient's Smartphone Application: ECG Signal Processing Module 49

    2.5.3 Physician's Smartphone Application: Query/Alarm Module 54

    2.5.4 The Collaborative Database: Data Integration Module 55

    2.5.4.1 Motivation 55

    2.5.4.2 The Design of the Collaborative Database 57

    2.5.4.3 Data Mining and Pattern Recognition 59

    2.6 Conclusions 61

    Acknowledgements 61

    Bibliography 62

    3 The Impact of Implantable Sensors in Biomedical Technology on the Future of Healthcare Systems 67
    Ashraf Darwish, Gehad Ismail Sayed, and Aboul Ella Hassanien

    3.1 Introduction 67

    3.2 Related Work 71

    3.3 Motivation and Contribution 74

    3.4 Fundamentals of IBANs for Healthcare Monitoring 75

    3.4.1 ISs in Biomedical Systems 75

    3.4.2 Applications of ISs in Biomedical Systems 78

    3.4.2.1 Brain Stimulator 78

    3.4.2.2 Heart Failure Monitoring 78

    3.4.2.3 Blood Glucose Level 80

    3.4.3 Security in Implantable Biomedical Systems 80

    3.5 Challenges and Future Trends 82

    3.6 Conclusion and Recommendation 85

    Bibliography 86

    4 Social Network's Security Related to Healthcare 91
    Fatna Elmendili, Habiba Chaoui, and Younés El Bouzekri El Idrissi

    4.1 The Use of Social Networks in Healthcare 91

    4.2 The Social Media Respond to a Primary Need of Security 92

    4.3 The Type of Medical Data 95

    4.3.1 Security of Medical Data 96

    4.4 Problematic 97

    4.5 Presentation of the Honeypots 98

    4.5.1 Principle of Honeypots 98

    4.6 Proposal System for Detecting Malicious Profiles on the Health Sector 99

    4.6.1 Proposed Solution 100

    4.6.1.1 Deployment of Social Honeypots 100

    4.6.1.2 Data Collection 103

    4.6.1.3 Classification of Users 104

    4.7 Results and Discussion 108

    4.8 Conclusion 111

    Bibliography 111

    5 Multi-Sensor Fusion for Context-Aware Applications 115
    Veeramuthu Venkatesh, Ponnuraman Balakrishnan, and Pethru Raj

    5.1 Introduction 115

    5.1.1 What Is an Intelligent Pervasive System? 115

    5.1.2 The Significance of Context Awareness for Next-Generation Smarter Environments 117

    5.1.2.1 Context-Aware Characteristics 118

    5.1.2.2 Context Types and Categorization Schemes 119

    5.1.2.3 Context Awareness Management Design Principles 121

    5.1.2.4 Context Life Cycle 122

    5.1.2.5 Interval (Called Occasionally) 124

    5.1.3 Pervasive Healthcare-Enabling Technologies 125

    5.1.3.1 Bio-Signal Acquisition 126

    5.1.3.2 Communication Technologies 126

    5.1.3.3 Data Classification 128

    5.1.3.4 Intelligent Agents 128

    5.1.3.5 Location-Based Technologies 128

    5.1.4 Pervasive Healthcare Challenges 128

    5.2 Ambient Methods Used for E-Health 130

    5.2.1 Body Area Networks (BANs) 130

    5.2.2 Home M2M Sensor Networks 131

    5.2.3 Microelectromechanical System (MEMS) 132

    5.2.4 Cloud-Based Intelligent Healthcare 132

    5.3 Algorithms and Methods 133

    5.3.1 Behavioral Pattern Discovery 133

    5.3.2 Decision Support System 134

    5.4 Intelligent Pervasive Healthcare Applications 134

    5.4.1 Health Information Management 134

    5.4.2 Location and Context-Aware Services 136

    5.4.3 Remote Patient Monitoring 136

    5.4.4 Waze: Community-Based Navigation App 138

    5.5 Conclusion 138

    Bibliography 139

    6 IoT-Based Noninvasive Wearable and Remote Intelligent Pervasive Healthcare Monitoring Systems for the Elderly People 141
    Stela Vitorino Sampaio

    6.1 Introduction 141

    6.2 Internet of Things (IoT) and Remote Health Monitoring 141

    6.3 Wearable Health Monitoring 143

    6.3.1 Wearable Sensors 143

    6.4 Related Work 145

    6.4.1 Existing Status 146

    6.5 Architectural Prototype 147

    6.5.1 Data Acquisition and Processing 150

    6.5.2 Pervasive and Intelligence Monitoring 151

    6.5.3 Communication 153

    6.5.4 Predictive Analytics 153

    6.5.5 Edge Analytics 154

    6.5.6 Ambient Intelligence 155

    6.5.7 Privacy and Security 155

    6.6 Summary 156

    Bibliography 156

    7 Pervasive Healthcare System Based on Environmental Monitoring 159
    Sangeetha Archunan and Amudha Thangavel

    7.1 Introduction 159

    7.2 Intelligent Pervasive Computing System 160

    7.2.1 Applications of Pervasive Computing 163

    7.3 Biosensors for Environmental Monitoring 163

    7.3.1 Environmental Monitoring 165

    7.3.1.1 Influence of Environmental Factors on Health 167

    7.4 IPCS for Healthcare 167

    7.4.1 Healthcare System Architecture Based on Environmental Monitoring 171

    7.5 Conclusion 174

    Bibliography 174

    8 Secure Pervasive Healthcare System and Diabetes Prediction Using Heuristic Algorithm 179
    Patitha Parameswaran and Rajalakshmi Shenbaga Moorthy

    8.1 Introduction 179

    8.2 Related Work 181

    8.3 System Design 182

    8.3.1 Data Collector 183

    8.3.2 Security Manager 183

    8.3.2.1 Proxy Re-encryption Algorithm 183

    8.3.2.2 Key Generator 184

    8.3.2.3 Patient 185

    8.3.2.4 Proxy Server 185

    8.3.2.5 Healthcare Professional 185

    8.3.3 Clusterer 186

    8.3.3.1 Hybrid Particle Swarm Optimization K-Means (HPSO-K) Algorithm 186

    8.3.4 Predictor 191

    8.3.4.1 Hidden Markov Model-Based Viterbi Algorithm (HMM-VA) 191

    8.4 Implementation 193

    8.5 Results and Discussions 196

    8.5.1 Analyzing the Performance of PRA 196

    8.5.1.1 Time Taken for Encryption 196

    8.5.1.2 Storage Space for Re-encrypted Data 196

    8.5.1.3 Time Take for Decryption 196

    8.5.2 Analyzing the Performance of HPSO-K Algorithm 197

    8.5.2.1 Number of Iterations (Generations) to Cluster Patients 198

    8.5.2.2 Comparison of Intra-cluster Distance 198

    8.5.2.3 Comparison of Inter-cluster Distance 199

    8.5.2.4 Number of Patients in Cluster 200

    8.5.2.5 Comparison of Time Complexity 201

    8.5.3 Analyzing the Performance of HMM-VA 201

    8.5.3.1 Forecasting Diabetes 201

    8.5.3.2 Comparison of Error Rate 203

    8.6 Conclusion 203

    Nomenclatures Used 203

    Bibliography 204

    9 Threshold-Based Energy-Efficient Routing Protocol for Critical Data Transmission to Increase Lifetime in Heterogeneous Wireless Body Area Sensor Network 207
    Deepalakshmi Perumalsamy and Navya Venkatamari

    9.1 Introduction 207

    9.2 Related Works 209

    9.3 Proposed Protocol: Threshold-Based Energy-Efficient Routing Protocol for Critical Data Transmission (EERPCDT) 213

    9.3.1 Background and Motivation 213

    9.3.2 Basic Communication Radio Model 214

    9.4 System Model 215

    9.4.1 Initialization Phase 216

    9.4.2 Routing Phase Selection of Forwarder Node 217

    9.4.3 Scheduling Phase 217

    9.4.4 Data Transmission Phase 218

    9.5 Analysis of Energy Consumption 218

    9.6 Simulation Results and Discussions 219

    9.6.1 Network Lifetime and Stability Period 219

    9.6.2 Residual Energy 220

    9.6.3 Throughput 221

    9.7 Conclusion and Future Work 222

    Bibliography 223

    10 Privacy and Security Issues on Wireless Body Area and IoT for Remote Healthcare Monitoring 227
    Prabha Selvaraj and Sumathi Doraikannan

    10.1 Introduction 227

    10.2 Healthcare Monitoring System 227

    10.2.1 Evolution of Healthcare Monitoring System 227

    10.3 Healthcare Monitoring System 228

    10.3.1 Sensor Network 230

    10.3.2 Wireless Sensor Network 230

    10.3.3 Wireless Body Area Network 230

    10.4 Privacy and Security 233

    10.4.1 Privacy and Security Issues in Wireless Body Area Network 234

    10.5 Attacks and Measures 237

    10.5.1 Security Models for Various Levels 241

    10.5.1.1 Security Models for Data Collection Level 241

    10.5.1.2 Security Models for Data Transmission Level 242

    10.5.1.3 Security Models for Data Storage and Access Level 242

    10.5.2 Privacy and Security Issues Pertained to Healthcare Applications 243

    10.5.3 Issues Related to Health Information Held by an Individual Organization 243

    10.5.4 Categorization of Organizational Threats 244

    10.6 Internet of Things 248

    10.6.1 WBAN Using IoT 248

    10.7 Projects and Related Works in Healthcare Monitoring System 249

    10.8 Summary 251

    Bibliography 251

    11 Remote Patient Monitoring: A Key Management and Authentication Framework for Wireless Body Area Networks 255
    Padma Theagarajan and Jayashree Nair

    11.1 Introduction 255

    11.2 RelatedWork 256

    11.3 Proposed Framework for Secure Remote Patient Monitoring 258

    11.3.1 Proposed Security Framework 259

    11.3.2 Key Generation Algorithm: PQSG 260

    11.3.3 Key Establishment in NetAMS: KEAMS 262

    11.3.3.1 Initiation of Communication by HPA 262

    11.3.3.2 Establishment of Key by HMS 263

    11.3.3.3 Authentication of HMS 263

    11.3.4 Key Establishment in NetSHA: KESHA 265

    11.3.4.1 Initiation of Communication by WSH 265

    11.3.4.2 Establishment of Key by the HPA 266

    11.3.4.3 Acknowledgment by HPA 266

    11.4 Performance Analysis 267

    11.4.1 Randomness 267

    11.4.2 Distinctiveness 268

    11.4.3 Complexity 269

    11.5 Discussion 271

    11.6 Conclusion 272

    Bibliography 273

    12 Image Analysis Using Smartphones for Medical Applications: A Survey 275
    Rajeswari Rajendran and Jothilakshmi Rajendiran

    12.1 Introduction 275

    12.2 Pervasive Healthcare Using Image-Based Smartphone Applications 276

    12.3 Smartphone-Based Image Diagnosis 277

    12.3.1 Diagnosis Using Built-In Camera 278

    12.3.2 Diagnosis Using External Sensors/Devices 280

    12.4 Libraries and Tools for Smartphone-Based Image Analysis 284

    12.4.1 Open-Source Libraries for Image Analysis in Smartphones 284

    12.4.2 Tools for Cross-Platform Smartphone Application Development 286

    12.5 Challenges and Future Perspectives 286

    12.6 Conclusion 288

    Bibliography 288

    13 Bounds of Spreading Rate of Virus for a Network Through an Intuitionistic Fuzzy Graph 291
    Deepa Ganesan, Praba Bashyam, Chandrasekaran Vellankoil Marappan, Rajakumar Krishnan, and Krishnamoorthy Venkatesan

    13.1 Intuitionistic Fuzzy Matrices Using Incoming and Outgoing Links 292

    13.2 Virus Spreading Rate Between Outgoing and Incoming Links 302

    13.3 Numerical Examples 305

    Bibliography 310

    14 Data Mining Techniques for the Detection of the Risk in Cardiovascular Diseases 313
    Dinakaran Karunakaran, Vishnu Priya, and Valarmathie Palanisamy

    14.1 Introduction 313

    14.2 PPG Signal Analysis 315

    14.2.1 Pulse Width 315

    14.2.2 Pulse Area 315

    14.2.3 Peak-to-Peak Interval 316

    14.2.4 Pulse Interval 316

    14.2.5 Augmentation Index 317

    14.2.6 Large Artery Stiffness Index 317

    14.2.7 Types of Photoplethysmography 319

    14.3 Related Works 319

    14.4 Methodology 322

    14.4.1 PPG Design and Recording Setup 322

    14.5 Preprocessing in PPG Signal 323

    14.6 Results and Discussion 325

    14.7 Conclusion 327

    Bibliography 328

    15 Smart Sensing System for Cardio Pulmonary Sound Signals 331
    Nersisson Ruban and A.Mary Mekala

    15.1 Introduction 331

    15.2 Background Theory 332

    15.2.1 Human Heart 333

    15.2.2 Heart Sounds 334

    15.2.3 Origin of Sounds 334

    15.2.4 Significance of Detection 334

    15.3 Heart Sound Detection 335

    15.3.1 Stethoscope 335

    15.4 Polyvinylidene Fluoride (PVDF) 336

    15.4.1 Properties of PVDF 337

    15.4.2 PVDF as Thin Film Piezoelectric Sensor 337

    15.4.3 Placement of the Sensor 338

    15.4.4 Development of PVDF Sensor 339

    15.4.4.1 Steps Involved in the Development of Sensor 340

    15.5 Hardware Implementation 341

    15.5.1 Charge Amplifier 341

    15.5.2 Signal Conditioning Circuits for PVDF Sensor 342

    15.5.3 Hardware Circuits 343

    15.5.3.1 Design of Charge Amplifier 343

    15.5.3.2 Filter Design 344

    15.6 LabVIEW Design 346

    15.6.1 Signal Acquisition 346

    15.6.1.1 Data Acquisition with LabVIEW 347

    15.6.2 Fixing of the Threshold Value 348

    15.6.3 Fixing the Threshold for Real-Time Signal 349

    15.6.4 Fixing the Threshold in Time Scale 350

    15.6.5 Separation of Peaks from Resultant Signal (Sample 1) 351

    15.6.6 Separation of Peaks from Resultant Signal (Sample 2) 351

    15.7 Heart Sound Segmentation 353

    15.7.1 Algorithm for Signal Separation 354

    15.7.1.1 Case Structure Algorithm 354

    15.7.2 Segmented S1 and S2 Sounds 354

    15.8 Conclusion 356

    Bibliography 357

    16 Anomaly Detection and Pattern Matching Algorithm for Healthcare Application: Identifying Ambulance Siren in Traffic 361
    Gowthambabu Karthikeyan, Sasikala Ramasamy, and Suresh Kumar Nagarajan

    16.1 Introduction 361

    16.2 Related Work 364

    16.2.1 Role of Sound Detection in Existing Systems 366

    16.2.2 Input and Output Parameters 367

    16.2.3 Features of Pattern Matching 367

    16.3 Pattern Matching Algorithm for Ambulance Siren Detection 368

    16.3.1 Sensors 368

    16.3.2 Sensor Deviations 368

    16.3.3 Traffic Signal 369

    16.3.3.1 How Do Traffic Signals Work? 369

    16.3.3.2 Traffic Signal 370

    16.3.3.3 Sound-Detecting Sensor 370

    16.3.4 Pattern Matching Algorithm: Anomaly Detection 372

    16.3.4.1 Algorithm and Implementation 374

    16.3.4.2 Sound Detection Module 375

    16.4 Results and Conclusion 375

    Bibliography 376

    17 Detecting Diabetic Retinopathy from Retinal Images Using CUDA Deep Neural Network 379
    Ricky Parmar, Ramanathan Lakshmanan, Swarnalatha Purushotham, and Rajkumar Soundrapandiyan

    17.1 Introduction 379

    17.2 Proposed Method 381

    17.2.1 Preprocessing 382

    17.2.2 Architecture 383

    17.2.3 Digital Artifacts 386

    17.2.4 Pseudo-classification 387

    17.3 Experimental Results 387

    17.3.1 Dataset 387

    17.3.2 Performance Evaluation Measures 388

    17.3.3 Validation of Datasets Using Exponential Power Distribution 388

    17.3.4 Ensemble 390

    17.3.5 Accuracy and Stats 390

    17.4 Conclusion and Future Work 393

    Bibliography 394

    18 An Energy-Efficient Wireless Body Area Network Design in Health Monitoring Scenarios 397
    Kannan Shanmugam and Karthik Subburathinam

    18.1 Wireless Body Area Network 397

    18.1.1 Overview 397

    18.1.2 Architectures of Wireless Body Area Network 398

    18.1.2.1 Tier 1: Intra-WBAN Communication 398

    18.1.2.2 Tier 2: Inter-WBAN Communication 398

    18.1.2.3 Tier 3: Beyond-WBAN Communication 399

    18.1.3 Challenges Faced in System Design 399

    18.1.3.1 Energy Constraint 401

    18.1.3.2 Interference in Communication 401

    18.1.3.3 Security 401

    18.1.4 Research Problems 401

    18.2 Proposed Opportunistic Scheduling 402

    18.2.1 Introduction 402

    18.2.2 System Model and Problem Formulation 403

    18.2.2.1 System Model 403

    18.2.2.2 Problem Formulation 404

    18.2.3 Heuristic Scheduling 404

    18.2.4 Dynamic Super-Frame Length Adjustment 407

    18.2.4.1 Problem Formulation 407

    18.3 Performance Analysis Environment and Metrics 408

    18.3.1 Heuristic Scheduling with Fixed Super-Frame Length 409

    18.3.2 Heuristic Scheduling with Dynamic Super-Frame Length 410

    18.4 Summary 410

    Bibliography 411

    Index 413