Description

Book Synopsis

Emerging Technologies for Healthcare begins with an IoT-based solution for the automated healthcare sector which is enhanced to provide solutions with advanced deep learning techniques.

The book provides feasible solutions through various machine learning approaches and applies them to disease analysis and prediction. An example of this is employing a three-dimensional matrix approach for treating chronic kidney disease, the diagnosis and prognostication of acquired demyelinating syndrome (ADS) and autism spectrum disorder, and the detection of pneumonia. In addition, it provides healthcare solutions for post COVID-19 outbreaks through various suitable approaches, Moreover, a detailed detection mechanism is discussed which is used to devise solutions for predicting personality through handwriting recognition; and novel approaches for sentiment analysis are also discussed with sufficient data and its dimensions.

This book not only covers theoretical approaches and algor

Table of Contents

Preface xvii

Part I: Basics of Smart Healthcare 1

1 An Overview of IoT in Health Sectors 3
Sheeba P. S.

1.1 Introduction 3

1.2 Influence of IoT in Healthcare Systems 6

1.2.1 Health Monitoring 6

1.2.2 Smart Hospitals 7

1.2.3 Tracking Patients 7

1.2.4 Transparent Insurance Claims 8

1.2.5 Healthier Cities 8

1.2.6 Research in Health Sector 8

1.3 Popular IoT Healthcare Devices 9

1.3.1 Hearables 9

1.3.2 Moodables 9

1.3.3 Ingestible Sensors 9

1.3.4 Computer Vision 10

1.3.5 Charting in Healthcare 10

1.4 Benefits of IoT 10

1.4.1 Reduction in Cost 10

1.4.2 Quick Diagnosis and Improved Treatment 10

1.4.3 Management of Equipment and Medicines 11

1.4.4 Error Reduction 11

1.4.5 Data Assortment and Analysis 11

1.4.6 Tracking and Alerts 11

1.4.7 Remote Medical Assistance 11

1.5 Challenges of IoT 12

1.5.1 Privacy and Data Security 12

1.5.2 Multiple Devices and Protocols Integration 12

1.5.3 Huge Data and Accuracy 12

1.5.4 Underdeveloped 12

1.5.5 Updating the Software Regularly 12

1.5.6 Global Healthcare Regulations 13

1.5.7 Cost 13

1.6 Disadvantages of IoT 13

1.6.1 Privacy 13

1.6.2 Access by Unauthorized Persons 13

1.7 Applications of IoT 13

1.7.1 Monitoring of Patients Remotely 13

1.7.2 Management of Hospital Operations 14

1.7.3 Monitoring of Glucose 14

1.7.4 Sensor Connected Inhaler 15

1.7.5 Interoperability 15

1.7.6 Connected Contact Lens 15

1.7.7 Hearing Aid 16

1.7.8 Coagulation of Blood 16

1.7.9 Depression Detection 16

1.7.10 Detection of Cancer 17

1.7.11 Monitoring Parkinson Patient 17

1.7.12 Ingestible Sensors 18

1.7.13 Surgery by Robotic Devices 18

1.7.14 Hand Sanitizing 18

1.7.15 Efficient Drug Management 19

1.7.16 Smart Sole 19

1.7.17 Body Scanning 19

1.7.18 Medical Waste Management 20

1.7.19 Monitoring the Heart Rate 20

1.7.20 Robot Nurse 20

1.8 Global Smart Healthcare Market 21

1.9 Recent Trends and Discussions 22

1.10 Conclusion 23

References 23

2 IoT-Based Solutions for Smart Healthcare 25
Pankaj Jain, Sonia F Panesar, Bableen Flora Talwar and Mahesh Kumar Sah

2.1 Introduction 26

2.1.1 Process Flow of Smart Healthcare System 26

2.1.1.1 Data Source 26

2.1.1.2 Data Acquisition 27

2.1.1.3 Data Pre-Processing 27

2.1.1.4 Data Segmentation 28

2.1.1.5 Feature Extraction 28

2.1.1.6 Data Analytics 28

2.2 IoT Smart Healthcare System 29

2.2.1 System Architecture 30

2.2.1.1 Stage 1: Perception Layer 30

2.2.1.2 Stage 2: Network Layer 32

2.2.1.3 Stage 3: Data Processing Layer 32

2.2.1.4 Stage 4: Application Layer 33

2.3 Locally and Cloud-Based IoT Architecture 33

2.3.1 System Architecture 33

2.3.1.1 Body Area Network (BAN) 34

2.3.1.2 Smart Server 34

2.3.1.3 Care Unit 35

2.4 Cloud Computing 35

2.4.1 Infrastructure as a Service (IaaS) 37

2.4.2 Platform as a Service (PaaS) 37

2.4.3 Software as a Service (SaaS) 37

2.4.4 Types of Cloud Computing 37

2.4.4.1 Public Cloud 37

2.4.4.2 Private Cloud 38

2.4.4.3 Hybrid Cloud 38

2.4.4.4 Community Cloud 38

2.5 Outbreak of Arduino Board 38

2.6 Applications of Smart Healthcare System 39

2.6.1 Disease Diagnosis and Treatment 41

2.6.2 Health Risk Monitoring 42

2.6.3 Voice Assistants 42

2.6.4 Smart Hospital 42

2.6.5 Assist in Research and Development 43

2.7 Smart Wearables and Apps 43

2.8 Deep Learning in Biomedical 44

2.8.1 Deep Learning 46

2.8.2 Deep Neural Network Architecture 47

2.8.3 Deep Learning in Bioinformatic 49

2.8.4 Deep Learning in Bioimaging 49

2.8.5 Deep Learning in Medical Imaging 50

2.8.6 Deep Learning in Human-Machine Interface 53

2.8.7 Deep Learning in Health Service Management 53

2.9 Conclusion 55

References 55

3 QLattice Environment and Feyn QGraph Models—A New Perspective Toward Deep Learning 69
Vinayak Bharadi

3.1 Introduction 70

3.1.1 Machine Learning Models 70

3.2 Machine Learning Model Lifecycle 71

3.2.1 Steps in Machine Learning Lifecycle 71

3.2.1.1 Data Preparation 72

3.2.1.2 Building the Machine Learning Model 72

3.2.1.3 Model Training 72

3.2.1.4 Parameter Selection 72

3.2.1.5 Transfer Learning 73

3.2.1.6 Model Verification 73

3.2.1.7 Model Deployment 74

3.2.1.8 Monitoring 74

3.3 A Model Deployment in Keras 75

3.3.1 Pima Indian Diabetes Dataset 75

3.3.2 Multi-Layered Perceptron Implementation in Keras 76

3.3.3 Multi-Layered Perceptron Implementation With Dropout and Added Noise 77

3.4 QLattice Environment 80

3.4.1 Feyn Models 80

3.4.1.1 Semantic Types 82

3.4.1.2 Interactions 83

3.4.1.3 Generating QLattice 83

3.4.2 QLattice Workflow 83

3.4.2.1 Preparing the Data 84

3.4.2.2 Connecting to QLattice 84

3.4.2.3 Generating QGraphs 84

3.4.2.4 Fitting, Sorting, and Updating QGraphs 85

3.4.2.5 Model Evaluation 86

3.5 Using QLattice Environment and QGraph Models for COVID-19 Impact Prediction 87

References 91

4 Sensitive Healthcare Data: Privacy and Security Issues and Proposed Solutions 93
Abhishek Vyas, Satheesh Abimannan and Ren-Hung Hwang

4.1 Introduction 94

4.1.1 Types of Technologies Used in Healthcare Industry 94

4.1.2 Technical Differences Between Security and Privacy 95

4.1.3 HIPAA Compliance 95

4.2 Medical Sensor Networks/Medical Internet of Things/Body Area Networks/WBANs 97

4.2.1 Security and Privacy Issues in WBANs/WMSNs/WMIOTs 101

4.3 Cloud Storage and Computing on Sensitive Healthcare Data 112

4.3.1 Security and Privacy in Cloud Computing and Storage for Sensitive Healthcare Data 114

4.4 Blockchain for Security and Privacy Enhancement in Sensitive Healthcare Data 119

4.5 Artificial Intelligence, Machine Learning, and Big Data in Healthcare and Its Efficacy in Security and Privacy of Sensitive Healthcare Data 122

4.5.1 Differential Privacy for Preserving Privacy of Big Medical Healthcare Data and for Its Analytics 124

4.6 Conclusion 124

References 125

Part II: Employment of Machine Learning in Disease Detection 129

5 Diabetes Prediction Model Based on Machine Learning 131
Ayush Kumar Gupta, Sourabh Yadav, Priyanka Bhartiya and Divesh Gupta

5.1 Introduction 131

5.2 Literature Review 133

5.3 Proposed Methodology 135

5.3.1 Data Accommodation 135

5.3.1.1 Data Collection 135

5.3.1.2 Data Preparation 136

5.3.2 Model Training 138

5.3.2.1 K Nearest Neighbor Classification Technique 139

5.3.2.2 Support Vector Machine 140

5.3.2.3 Random Forest Algorithm 142

5.3.2.4 Logistic Regression 144

5.3.3 Model Evaluation 145

5.3.4 User Interaction 145

5.3.4.1 User Inputs 146

5.3.4.2 Validation Using Classifier Model 146

5.3.4.3 Truth Probability 146

5.4 System Implementation 147

5.5 Conclusion 153

References 153

6 Lung Cancer Detection Using 3D CNN Based on Deep Learning 157
Siddhant Panda, Vasudha Chhetri, Vikas Kumar Jaiswal and Sourabh Yadav

6.1 Introduction 157

6.2 Literature Review 159

6.3 Proposed Methodology 161

6.3.1 Data Handling 161

6.3.1.1 Data Gathering 161

6.3.1.2 Data Pre-Processing 162

6.3.2 Data Visualization and Data Split 162

6.3.2.1 Data Visualization 162

6.3.2.2 Data Split 162

6.3.3 Model Training 163

6.3.3.1 Training Neural Network 163

6.3.3.2 Model Optimization 166

6.4 Results and Discussion 168

6.4.1 Gathering and Pre-Processing of Data 169

6.4.1.1 Gathering and Handling Data 169

6.4.1.2 Pre-Processing of Data 170

6.4.2 Data Visualization 171

6.4.2.1 Resampling 173

6.4.2.2 3D Plotting Scan 173

6.4.2.3 Lung Segmentation 173

6.4.3 Training and Testing of Data in 3D Architecture 175

6.5 Conclusion 178

References 178

7 Pneumonia Detection Using CNN and ANN Based on Deep Learning Approach 181
Priyanka Bhartiya, Sourabh Yadav, Ayush Gupta and Divesh Gupta

7.1 Introduction 182

7.2 Literature Review 183

7.3 Proposed Methodology 185

7.3.1 Data Gathering 185

7.3.1.1 Data Collection 185

7.3.1.2 Data Pre-Processing 186

7.3.1.3 Data Split 186

7.3.2 Model Training 187

7.3.2.1 Training of Convolutional Neural Network 189

7.3.2.2 Training of Artificial Neural Network 191

7.3.3 Model Fitting 193

7.3.3.1 Fit Generator 193

7.3.3.2 Validation of Accuracy and Loss Plot 193

7.3.3.3 Testing and Prediction 193

7.4 System Implementation 194

7.4.1 Data Gathering, Pre-Processing, and Split 194

7.4.1.1 Data Gathering 194

7.4.1.2 Data Pre-Processing 195

7.4.1.3 Data Split 196

7.4.2 Model Building 196

7.4.3 Model Fitting 197

7.4.3.1 Fit Generator 197

7.4.3.2 Validation of Accuracy and Loss Plot 197

7.4.3.3 Testing and Prediction 198

7.5 Conclusion 199

References 199

8 Personality Prediction and Handwriting Recognition Using Machine Learning 203
Vishal Patil and Harsh Mathur

8.1 Introduction to the System 204

8.1.1 Assumptions and Limitations 206

8.1.1.1 Assumptions 206

8.1.1.2 Limitations 206

8.1.2 Practical Needs 206

8.1.3 Non-Functional Needs 206

8.1.4 Specifications for Hardware 207

8.1.5 Specifications for Applications 207

8.1.6 Targets 207

8.1.7 Outcomes 207

8.2 Literature Survey 208

8.2.1 Computerized Human Behavior Identification Through Handwriting Samples 208

8.2.2 Behavior Prediction Through Handwriting Analysis 209

8.2.3 Handwriting Sample Analysis for a Finding of Personality Using Machine Learning Algorithms 209

8.2.4 Personality Detection Using Handwriting Analysis 210

8.2.5 Automatic Predict Personality Based on Structure of Handwriting 210

8.2.6 Personality Identification Through Handwriting Analysis: A Review 210

8.2.7 Text Independent Writer Identification Using Convolutional Neural Network 210

8.2.8 Writer Identification Using Machine Learning Approaches 211

8.2.9 Writer Identification from HandwrittenText Lines 211

8.3 Theory 212

8.3.1 Pre-Processing 212

8.3.2 Personality Analysis 215

8.3.3 Personality Characteristics 216

8.3.4 Writer Identification 217

8.3.5 Features Used 219

8.4 Algorithm To Be Used 220

8.5 Proposed Methodology 224

8.5.1 System Flow 225

8.6 Algorithms vs. Accuracy 226

8.6.1 Implementation 228

8.7 Experimental Results 231

8.8 Conclusion 232

8.9 Conclusion and Future Scope 232

Acknowledgment 232

References 233

9 Risk Mitigation in Children With Autism Spectrum Disorder Using Brain Source Localization 237
Joy Karan Singh, Deepti Kakkar and Tanu Wadhera

9.1 Introduction 238

9.2 Risk Factors Related to Autism 239

9.2.1 Assistive Technologies for Autism 240

9.2.2 Functional Connectivity as a Biomarker for Autism 241

9.2.3 Early Intervention and Diagnosis 242

9.3 Materials and Methodology 243

9.3.1 Subjects 243

9.3.2 Methods 243

9.3.3 Data Acquisition and Processing 243

9.3.4 sLORETA as a Diagnostic Tool 244

9.4 Results and Discussion 245

9.5 Conclusion and Future Scope 247

References 247

10 Predicting Chronic Kidney Disease Using Machine Learning 251
Monika Gupta and Parul Gupta

10.1 Introduction 252

10.2 Machine Learning Techniques for Prediction of Kidney Failure 253

10.2.1 Analysis and Empirical Learning 254

10.2.2 Supervised Learning 255

10.2.3 Unsupervised Learning 256

10.2.3.1 Understanding and Visualization 257

10.2.3.2 Odd Detection 257

10.2.3.3 Object Completion 258

10.2.3.4 Information Acquisition 258

10.2.3.5 Data Compression 258

10.2.3.6 Capital Market 258

10.2.4 Classification 259

10.2.4.1 Training Process 260

10.2.4.2 Testing Process 260

10.2.5 Decision Tree 261

10.2.6 Regression Analysis 263

10.2.6.1 Logistic Regression 263

10.2.6.2 Ordinal Logistic Regression 265

10.2.6.3 Estimating Parameters 266

10.2.6.4 Multivariate Regression 268

10.3 Data Sources 269

10.4 Data Analysis 272

10.5 Conclusion 274

10.6 Future Scope 274

References 274

Part III: Advanced Applications of Machine Learning in Healthcare 279

11 Behavioral Modeling Using Deep Neural Network Framework for ASD Diagnosis and Prognosis 281
Tanu Wadhera, Deepti Kakkar and Rajneesh Rani

11.1 Introduction 282

11.2 Automated Diagnosis of ASD 284

11.2.1 Deep Learning 289

11.2.2 Deep Learning in ASD 290

11.2.3 Transfer Learning Approach 290

11.3 Purpose of the Chapter 292

11.4 Proposed Diagnosis System 293

11.5 Conclusion 294

References 295

12 Random Forest Application of Twitter Data Sentiment Analysis in Online Social Network Prediction 299
Arnav Munshi, M. Arvindhan and Thirunavukkarasu K.

12.1 Introduction 300

12.1.1 Motivation 300

12.1.2 Domain Introduction 300

12.2 Literature Survey 302

12.3 Proposed Methodology 304

12.4 Implementation 311

12.5 Conclusion 311

References 311

13 Remedy to COVID-19: Social Distancing Analyzer 315
Sourabh Yadav

13.1 Introduction 315

13.2 Literature Review 318

13.3 Proposed Methodology 321

13.3.1 Person Detection 321

13.3.1.1 Frame Creation 324

13.3.1.2 Contour Detection 325

13.3.1.3 Matching with COCO Model 326

13.3.2 Distance Calculation 326

13.3.2.1 Calculation of Centroid 326

13.3.2.2 Distance Among Adjacent Centroids 327

13.4 System Implementation 328

13.5 Conclusion 333

References 334

14 IoT-Enabled Vehicle Assistance System of Highway Resourcing for Smart Healthcare and Sustainability 337
Shubham Joshi and Radha Krishna Rambola

14.1 Introduction 338

14.2 Related Work 340

14.2.1 Adoption of IoT in Vehicle to Ensure Driver Safety 341

14.2.2 IoT in Healthcare System 341

14.2.3 The Technology Used in Assistance Systems 343

14.2.3.1 Adaptive Cruise Control (ACC) 343

14.2.3.2 Lane Departure Warning 343

14.2.3.3 Parking Assistance 343

14.2.3.4 Collision Avoidance System 343

14.2.3.5 Driver Drowsiness Detection 344

14.2.3.6 Automotive Night Vision 344

14.3 Objectives, Context, and Ethical Approval 344

14.4 Technical Background 345

14.4.1 IoT With Health 345

14.4.2 Machine-to-Machine (M2M) Communication 345

14.4.3 Device-to-Device (D2D) Communication 345

14.4.4 Wireless Sensor Network 346

14.4.5 Crowdsensing 346

14.5 IoT Infrastructural Components for Vehicle Assistance System 346

14.5.1 Communication Technology 346

14.5.2 Sensor Network 347

14.5.3 Infrastructural Component 348

14.5.4 Human Health Detection by Sensors 348

14.6 IoT-Enabled Vehicle Assistance System of Highway Resourcing for Smart Healthcare and Sustainability 349

14.7 Challenges in Implementation 353

14.8 Conclusion 353

References 354

15 Aids of Machine Learning for Additively Manufactured Bone Scaffold 359
Nimisha Rahul Shirbhate and Sanjay Bokade

15.1 Introduction 360

15.1.1 Bone Scaffold 360

15.1.2 Bone Grafting 362

15.1.3 Comparison Bone Grafting and Bone Scaffold 363

15.2 Research Background 364

15.3 Statement of Problem 364

15.4 Research Gap 365

15.5 Significance of Research 366

15.6 Outline of Research Methodology 366

15.6.1 Customized Design of Bone Scaffold 366

15.6.2 Manufacturing Methods and Biocompatible Material 367

15.6.2.1 Conventional Scaffold Fabrication 368

15.6.2.2 Additive Manufacturing 369

15.6.2.3 Application of Additive Manufacturing/3D Printing in Healthcare 370

15.6.2.4 Automated Process Monitoring in 3D Printing Using Supervised Machine Learning 376

15.7 Conclusion 377

References 377

Index 381

Emerging Technologies for Healthcare

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A Hardback by Monika Mangla, Nonita Sharma, Poonam Garg

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    View other formats and editions of Emerging Technologies for Healthcare by Monika Mangla

    Publisher: John Wiley & Sons Inc
    Publication Date: 17/09/2021
    ISBN13: 9781119791720, 978-1119791720
    ISBN10: 1119791723

    Description

    Book Synopsis

    Emerging Technologies for Healthcare begins with an IoT-based solution for the automated healthcare sector which is enhanced to provide solutions with advanced deep learning techniques.

    The book provides feasible solutions through various machine learning approaches and applies them to disease analysis and prediction. An example of this is employing a three-dimensional matrix approach for treating chronic kidney disease, the diagnosis and prognostication of acquired demyelinating syndrome (ADS) and autism spectrum disorder, and the detection of pneumonia. In addition, it provides healthcare solutions for post COVID-19 outbreaks through various suitable approaches, Moreover, a detailed detection mechanism is discussed which is used to devise solutions for predicting personality through handwriting recognition; and novel approaches for sentiment analysis are also discussed with sufficient data and its dimensions.

    This book not only covers theoretical approaches and algor

    Table of Contents

    Preface xvii

    Part I: Basics of Smart Healthcare 1

    1 An Overview of IoT in Health Sectors 3
    Sheeba P. S.

    1.1 Introduction 3

    1.2 Influence of IoT in Healthcare Systems 6

    1.2.1 Health Monitoring 6

    1.2.2 Smart Hospitals 7

    1.2.3 Tracking Patients 7

    1.2.4 Transparent Insurance Claims 8

    1.2.5 Healthier Cities 8

    1.2.6 Research in Health Sector 8

    1.3 Popular IoT Healthcare Devices 9

    1.3.1 Hearables 9

    1.3.2 Moodables 9

    1.3.3 Ingestible Sensors 9

    1.3.4 Computer Vision 10

    1.3.5 Charting in Healthcare 10

    1.4 Benefits of IoT 10

    1.4.1 Reduction in Cost 10

    1.4.2 Quick Diagnosis and Improved Treatment 10

    1.4.3 Management of Equipment and Medicines 11

    1.4.4 Error Reduction 11

    1.4.5 Data Assortment and Analysis 11

    1.4.6 Tracking and Alerts 11

    1.4.7 Remote Medical Assistance 11

    1.5 Challenges of IoT 12

    1.5.1 Privacy and Data Security 12

    1.5.2 Multiple Devices and Protocols Integration 12

    1.5.3 Huge Data and Accuracy 12

    1.5.4 Underdeveloped 12

    1.5.5 Updating the Software Regularly 12

    1.5.6 Global Healthcare Regulations 13

    1.5.7 Cost 13

    1.6 Disadvantages of IoT 13

    1.6.1 Privacy 13

    1.6.2 Access by Unauthorized Persons 13

    1.7 Applications of IoT 13

    1.7.1 Monitoring of Patients Remotely 13

    1.7.2 Management of Hospital Operations 14

    1.7.3 Monitoring of Glucose 14

    1.7.4 Sensor Connected Inhaler 15

    1.7.5 Interoperability 15

    1.7.6 Connected Contact Lens 15

    1.7.7 Hearing Aid 16

    1.7.8 Coagulation of Blood 16

    1.7.9 Depression Detection 16

    1.7.10 Detection of Cancer 17

    1.7.11 Monitoring Parkinson Patient 17

    1.7.12 Ingestible Sensors 18

    1.7.13 Surgery by Robotic Devices 18

    1.7.14 Hand Sanitizing 18

    1.7.15 Efficient Drug Management 19

    1.7.16 Smart Sole 19

    1.7.17 Body Scanning 19

    1.7.18 Medical Waste Management 20

    1.7.19 Monitoring the Heart Rate 20

    1.7.20 Robot Nurse 20

    1.8 Global Smart Healthcare Market 21

    1.9 Recent Trends and Discussions 22

    1.10 Conclusion 23

    References 23

    2 IoT-Based Solutions for Smart Healthcare 25
    Pankaj Jain, Sonia F Panesar, Bableen Flora Talwar and Mahesh Kumar Sah

    2.1 Introduction 26

    2.1.1 Process Flow of Smart Healthcare System 26

    2.1.1.1 Data Source 26

    2.1.1.2 Data Acquisition 27

    2.1.1.3 Data Pre-Processing 27

    2.1.1.4 Data Segmentation 28

    2.1.1.5 Feature Extraction 28

    2.1.1.6 Data Analytics 28

    2.2 IoT Smart Healthcare System 29

    2.2.1 System Architecture 30

    2.2.1.1 Stage 1: Perception Layer 30

    2.2.1.2 Stage 2: Network Layer 32

    2.2.1.3 Stage 3: Data Processing Layer 32

    2.2.1.4 Stage 4: Application Layer 33

    2.3 Locally and Cloud-Based IoT Architecture 33

    2.3.1 System Architecture 33

    2.3.1.1 Body Area Network (BAN) 34

    2.3.1.2 Smart Server 34

    2.3.1.3 Care Unit 35

    2.4 Cloud Computing 35

    2.4.1 Infrastructure as a Service (IaaS) 37

    2.4.2 Platform as a Service (PaaS) 37

    2.4.3 Software as a Service (SaaS) 37

    2.4.4 Types of Cloud Computing 37

    2.4.4.1 Public Cloud 37

    2.4.4.2 Private Cloud 38

    2.4.4.3 Hybrid Cloud 38

    2.4.4.4 Community Cloud 38

    2.5 Outbreak of Arduino Board 38

    2.6 Applications of Smart Healthcare System 39

    2.6.1 Disease Diagnosis and Treatment 41

    2.6.2 Health Risk Monitoring 42

    2.6.3 Voice Assistants 42

    2.6.4 Smart Hospital 42

    2.6.5 Assist in Research and Development 43

    2.7 Smart Wearables and Apps 43

    2.8 Deep Learning in Biomedical 44

    2.8.1 Deep Learning 46

    2.8.2 Deep Neural Network Architecture 47

    2.8.3 Deep Learning in Bioinformatic 49

    2.8.4 Deep Learning in Bioimaging 49

    2.8.5 Deep Learning in Medical Imaging 50

    2.8.6 Deep Learning in Human-Machine Interface 53

    2.8.7 Deep Learning in Health Service Management 53

    2.9 Conclusion 55

    References 55

    3 QLattice Environment and Feyn QGraph Models—A New Perspective Toward Deep Learning 69
    Vinayak Bharadi

    3.1 Introduction 70

    3.1.1 Machine Learning Models 70

    3.2 Machine Learning Model Lifecycle 71

    3.2.1 Steps in Machine Learning Lifecycle 71

    3.2.1.1 Data Preparation 72

    3.2.1.2 Building the Machine Learning Model 72

    3.2.1.3 Model Training 72

    3.2.1.4 Parameter Selection 72

    3.2.1.5 Transfer Learning 73

    3.2.1.6 Model Verification 73

    3.2.1.7 Model Deployment 74

    3.2.1.8 Monitoring 74

    3.3 A Model Deployment in Keras 75

    3.3.1 Pima Indian Diabetes Dataset 75

    3.3.2 Multi-Layered Perceptron Implementation in Keras 76

    3.3.3 Multi-Layered Perceptron Implementation With Dropout and Added Noise 77

    3.4 QLattice Environment 80

    3.4.1 Feyn Models 80

    3.4.1.1 Semantic Types 82

    3.4.1.2 Interactions 83

    3.4.1.3 Generating QLattice 83

    3.4.2 QLattice Workflow 83

    3.4.2.1 Preparing the Data 84

    3.4.2.2 Connecting to QLattice 84

    3.4.2.3 Generating QGraphs 84

    3.4.2.4 Fitting, Sorting, and Updating QGraphs 85

    3.4.2.5 Model Evaluation 86

    3.5 Using QLattice Environment and QGraph Models for COVID-19 Impact Prediction 87

    References 91

    4 Sensitive Healthcare Data: Privacy and Security Issues and Proposed Solutions 93
    Abhishek Vyas, Satheesh Abimannan and Ren-Hung Hwang

    4.1 Introduction 94

    4.1.1 Types of Technologies Used in Healthcare Industry 94

    4.1.2 Technical Differences Between Security and Privacy 95

    4.1.3 HIPAA Compliance 95

    4.2 Medical Sensor Networks/Medical Internet of Things/Body Area Networks/WBANs 97

    4.2.1 Security and Privacy Issues in WBANs/WMSNs/WMIOTs 101

    4.3 Cloud Storage and Computing on Sensitive Healthcare Data 112

    4.3.1 Security and Privacy in Cloud Computing and Storage for Sensitive Healthcare Data 114

    4.4 Blockchain for Security and Privacy Enhancement in Sensitive Healthcare Data 119

    4.5 Artificial Intelligence, Machine Learning, and Big Data in Healthcare and Its Efficacy in Security and Privacy of Sensitive Healthcare Data 122

    4.5.1 Differential Privacy for Preserving Privacy of Big Medical Healthcare Data and for Its Analytics 124

    4.6 Conclusion 124

    References 125

    Part II: Employment of Machine Learning in Disease Detection 129

    5 Diabetes Prediction Model Based on Machine Learning 131
    Ayush Kumar Gupta, Sourabh Yadav, Priyanka Bhartiya and Divesh Gupta

    5.1 Introduction 131

    5.2 Literature Review 133

    5.3 Proposed Methodology 135

    5.3.1 Data Accommodation 135

    5.3.1.1 Data Collection 135

    5.3.1.2 Data Preparation 136

    5.3.2 Model Training 138

    5.3.2.1 K Nearest Neighbor Classification Technique 139

    5.3.2.2 Support Vector Machine 140

    5.3.2.3 Random Forest Algorithm 142

    5.3.2.4 Logistic Regression 144

    5.3.3 Model Evaluation 145

    5.3.4 User Interaction 145

    5.3.4.1 User Inputs 146

    5.3.4.2 Validation Using Classifier Model 146

    5.3.4.3 Truth Probability 146

    5.4 System Implementation 147

    5.5 Conclusion 153

    References 153

    6 Lung Cancer Detection Using 3D CNN Based on Deep Learning 157
    Siddhant Panda, Vasudha Chhetri, Vikas Kumar Jaiswal and Sourabh Yadav

    6.1 Introduction 157

    6.2 Literature Review 159

    6.3 Proposed Methodology 161

    6.3.1 Data Handling 161

    6.3.1.1 Data Gathering 161

    6.3.1.2 Data Pre-Processing 162

    6.3.2 Data Visualization and Data Split 162

    6.3.2.1 Data Visualization 162

    6.3.2.2 Data Split 162

    6.3.3 Model Training 163

    6.3.3.1 Training Neural Network 163

    6.3.3.2 Model Optimization 166

    6.4 Results and Discussion 168

    6.4.1 Gathering and Pre-Processing of Data 169

    6.4.1.1 Gathering and Handling Data 169

    6.4.1.2 Pre-Processing of Data 170

    6.4.2 Data Visualization 171

    6.4.2.1 Resampling 173

    6.4.2.2 3D Plotting Scan 173

    6.4.2.3 Lung Segmentation 173

    6.4.3 Training and Testing of Data in 3D Architecture 175

    6.5 Conclusion 178

    References 178

    7 Pneumonia Detection Using CNN and ANN Based on Deep Learning Approach 181
    Priyanka Bhartiya, Sourabh Yadav, Ayush Gupta and Divesh Gupta

    7.1 Introduction 182

    7.2 Literature Review 183

    7.3 Proposed Methodology 185

    7.3.1 Data Gathering 185

    7.3.1.1 Data Collection 185

    7.3.1.2 Data Pre-Processing 186

    7.3.1.3 Data Split 186

    7.3.2 Model Training 187

    7.3.2.1 Training of Convolutional Neural Network 189

    7.3.2.2 Training of Artificial Neural Network 191

    7.3.3 Model Fitting 193

    7.3.3.1 Fit Generator 193

    7.3.3.2 Validation of Accuracy and Loss Plot 193

    7.3.3.3 Testing and Prediction 193

    7.4 System Implementation 194

    7.4.1 Data Gathering, Pre-Processing, and Split 194

    7.4.1.1 Data Gathering 194

    7.4.1.2 Data Pre-Processing 195

    7.4.1.3 Data Split 196

    7.4.2 Model Building 196

    7.4.3 Model Fitting 197

    7.4.3.1 Fit Generator 197

    7.4.3.2 Validation of Accuracy and Loss Plot 197

    7.4.3.3 Testing and Prediction 198

    7.5 Conclusion 199

    References 199

    8 Personality Prediction and Handwriting Recognition Using Machine Learning 203
    Vishal Patil and Harsh Mathur

    8.1 Introduction to the System 204

    8.1.1 Assumptions and Limitations 206

    8.1.1.1 Assumptions 206

    8.1.1.2 Limitations 206

    8.1.2 Practical Needs 206

    8.1.3 Non-Functional Needs 206

    8.1.4 Specifications for Hardware 207

    8.1.5 Specifications for Applications 207

    8.1.6 Targets 207

    8.1.7 Outcomes 207

    8.2 Literature Survey 208

    8.2.1 Computerized Human Behavior Identification Through Handwriting Samples 208

    8.2.2 Behavior Prediction Through Handwriting Analysis 209

    8.2.3 Handwriting Sample Analysis for a Finding of Personality Using Machine Learning Algorithms 209

    8.2.4 Personality Detection Using Handwriting Analysis 210

    8.2.5 Automatic Predict Personality Based on Structure of Handwriting 210

    8.2.6 Personality Identification Through Handwriting Analysis: A Review 210

    8.2.7 Text Independent Writer Identification Using Convolutional Neural Network 210

    8.2.8 Writer Identification Using Machine Learning Approaches 211

    8.2.9 Writer Identification from HandwrittenText Lines 211

    8.3 Theory 212

    8.3.1 Pre-Processing 212

    8.3.2 Personality Analysis 215

    8.3.3 Personality Characteristics 216

    8.3.4 Writer Identification 217

    8.3.5 Features Used 219

    8.4 Algorithm To Be Used 220

    8.5 Proposed Methodology 224

    8.5.1 System Flow 225

    8.6 Algorithms vs. Accuracy 226

    8.6.1 Implementation 228

    8.7 Experimental Results 231

    8.8 Conclusion 232

    8.9 Conclusion and Future Scope 232

    Acknowledgment 232

    References 233

    9 Risk Mitigation in Children With Autism Spectrum Disorder Using Brain Source Localization 237
    Joy Karan Singh, Deepti Kakkar and Tanu Wadhera

    9.1 Introduction 238

    9.2 Risk Factors Related to Autism 239

    9.2.1 Assistive Technologies for Autism 240

    9.2.2 Functional Connectivity as a Biomarker for Autism 241

    9.2.3 Early Intervention and Diagnosis 242

    9.3 Materials and Methodology 243

    9.3.1 Subjects 243

    9.3.2 Methods 243

    9.3.3 Data Acquisition and Processing 243

    9.3.4 sLORETA as a Diagnostic Tool 244

    9.4 Results and Discussion 245

    9.5 Conclusion and Future Scope 247

    References 247

    10 Predicting Chronic Kidney Disease Using Machine Learning 251
    Monika Gupta and Parul Gupta

    10.1 Introduction 252

    10.2 Machine Learning Techniques for Prediction of Kidney Failure 253

    10.2.1 Analysis and Empirical Learning 254

    10.2.2 Supervised Learning 255

    10.2.3 Unsupervised Learning 256

    10.2.3.1 Understanding and Visualization 257

    10.2.3.2 Odd Detection 257

    10.2.3.3 Object Completion 258

    10.2.3.4 Information Acquisition 258

    10.2.3.5 Data Compression 258

    10.2.3.6 Capital Market 258

    10.2.4 Classification 259

    10.2.4.1 Training Process 260

    10.2.4.2 Testing Process 260

    10.2.5 Decision Tree 261

    10.2.6 Regression Analysis 263

    10.2.6.1 Logistic Regression 263

    10.2.6.2 Ordinal Logistic Regression 265

    10.2.6.3 Estimating Parameters 266

    10.2.6.4 Multivariate Regression 268

    10.3 Data Sources 269

    10.4 Data Analysis 272

    10.5 Conclusion 274

    10.6 Future Scope 274

    References 274

    Part III: Advanced Applications of Machine Learning in Healthcare 279

    11 Behavioral Modeling Using Deep Neural Network Framework for ASD Diagnosis and Prognosis 281
    Tanu Wadhera, Deepti Kakkar and Rajneesh Rani

    11.1 Introduction 282

    11.2 Automated Diagnosis of ASD 284

    11.2.1 Deep Learning 289

    11.2.2 Deep Learning in ASD 290

    11.2.3 Transfer Learning Approach 290

    11.3 Purpose of the Chapter 292

    11.4 Proposed Diagnosis System 293

    11.5 Conclusion 294

    References 295

    12 Random Forest Application of Twitter Data Sentiment Analysis in Online Social Network Prediction 299
    Arnav Munshi, M. Arvindhan and Thirunavukkarasu K.

    12.1 Introduction 300

    12.1.1 Motivation 300

    12.1.2 Domain Introduction 300

    12.2 Literature Survey 302

    12.3 Proposed Methodology 304

    12.4 Implementation 311

    12.5 Conclusion 311

    References 311

    13 Remedy to COVID-19: Social Distancing Analyzer 315
    Sourabh Yadav

    13.1 Introduction 315

    13.2 Literature Review 318

    13.3 Proposed Methodology 321

    13.3.1 Person Detection 321

    13.3.1.1 Frame Creation 324

    13.3.1.2 Contour Detection 325

    13.3.1.3 Matching with COCO Model 326

    13.3.2 Distance Calculation 326

    13.3.2.1 Calculation of Centroid 326

    13.3.2.2 Distance Among Adjacent Centroids 327

    13.4 System Implementation 328

    13.5 Conclusion 333

    References 334

    14 IoT-Enabled Vehicle Assistance System of Highway Resourcing for Smart Healthcare and Sustainability 337
    Shubham Joshi and Radha Krishna Rambola

    14.1 Introduction 338

    14.2 Related Work 340

    14.2.1 Adoption of IoT in Vehicle to Ensure Driver Safety 341

    14.2.2 IoT in Healthcare System 341

    14.2.3 The Technology Used in Assistance Systems 343

    14.2.3.1 Adaptive Cruise Control (ACC) 343

    14.2.3.2 Lane Departure Warning 343

    14.2.3.3 Parking Assistance 343

    14.2.3.4 Collision Avoidance System 343

    14.2.3.5 Driver Drowsiness Detection 344

    14.2.3.6 Automotive Night Vision 344

    14.3 Objectives, Context, and Ethical Approval 344

    14.4 Technical Background 345

    14.4.1 IoT With Health 345

    14.4.2 Machine-to-Machine (M2M) Communication 345

    14.4.3 Device-to-Device (D2D) Communication 345

    14.4.4 Wireless Sensor Network 346

    14.4.5 Crowdsensing 346

    14.5 IoT Infrastructural Components for Vehicle Assistance System 346

    14.5.1 Communication Technology 346

    14.5.2 Sensor Network 347

    14.5.3 Infrastructural Component 348

    14.5.4 Human Health Detection by Sensors 348

    14.6 IoT-Enabled Vehicle Assistance System of Highway Resourcing for Smart Healthcare and Sustainability 349

    14.7 Challenges in Implementation 353

    14.8 Conclusion 353

    References 354

    15 Aids of Machine Learning for Additively Manufactured Bone Scaffold 359
    Nimisha Rahul Shirbhate and Sanjay Bokade

    15.1 Introduction 360

    15.1.1 Bone Scaffold 360

    15.1.2 Bone Grafting 362

    15.1.3 Comparison Bone Grafting and Bone Scaffold 363

    15.2 Research Background 364

    15.3 Statement of Problem 364

    15.4 Research Gap 365

    15.5 Significance of Research 366

    15.6 Outline of Research Methodology 366

    15.6.1 Customized Design of Bone Scaffold 366

    15.6.2 Manufacturing Methods and Biocompatible Material 367

    15.6.2.1 Conventional Scaffold Fabrication 368

    15.6.2.2 Additive Manufacturing 369

    15.6.2.3 Application of Additive Manufacturing/3D Printing in Healthcare 370

    15.6.2.4 Automated Process Monitoring in 3D Printing Using Supervised Machine Learning 376

    15.7 Conclusion 377

    References 377

    Index 381

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