Deep learning for targeted treatments : transformation in healthcare / edited by Rishabha Malviya [and 4 others] - 1 online resource.

Includes bibliographical references and index.

Table of Contents

Preface xvii

Acknowledgement xix

1 Deep Learning and Site-Specific Drug Delivery: The Future and Intelligent Decision Support for Pharmaceutical Manufacturing Science 1
Dhanalekshmi Unnikrishnan Meenakshi, Selvasudha Nandakumar, Arul Prakash Francis, Pushpa Sweety, Shivkanya Fuloria, Neeraj Kumar Fuloria, Vetriselvan Subramaniyan and Shah Alam Khan

1.1 Introduction 2

1.2 Drug Discovery, Screening and Repurposing 5

1.3 DL and Pharmaceutical Formulation Strategy 11

1.3.1 DL in Dose and Formulation Prediction 11

1.3.2 DL in Dissolution and Release Studies 15

1.3.3 DL in the Manufacturing Process 16

1.4 Deep Learning Models for Nanoparticle-Based Drug Delivery 19

1.4.1 Nanoparticles With High Drug Delivery Capacities Using Perturbation Theory 20

1.4.2 Artificial Intelligence and Drug Delivery Algorithms 21

1.4.3 Nanoinformatics 22

1.5 Model Prediction for Site-Specific Drug Delivery 23

1.5.1 Prediction of Mode and a Site-Specific Action 23

1.5.2 Precision Medicine 26

1.6 Future Scope and Challenges 27

1.7 Conclusion 29

References 30

2 Role of Deep Learning, Blockchain and Internet of Things in Patient Care 39
Akanksha Sharma, Rishabha Malviya and Sonali Sundram

2.1 Introduction 40

2.2 IoT and WBAN in Healthcare Systems 42

2.2.1 IoT in Healthcare 42

2.2.2 WBAN 44

2.2.2.1 Key Features of Medical Networks in the Wireless Body Area 44

2.2.2.2 Data Transmission & Storage Health 45

2.2.2.3 Privacy and Security Concerns in Big Data 45

2.3 Blockchain Technology in Healthcare 46

2.3.1 Importance of Blockchain 46

2.3.2 Role of Blockchain in Healthcare 47

2.3.3 Benefits of Blockchain in Healthcare Applications 48

2.3.4 Elements of Blockchain 49

2.3.5 Situation Awareness and Healthcare Decision Support with Combined Machine Learning and Semantic Modeling 51

2.3.6 Mobile Health and Remote Monitoring 53

2.3.7 Different Mobile Health Application with Description of Usage in Area of Application 54

2.3.8 Patient-Centered Blockchain Mode 55

2.3.9 Electronic Medical Record 57

2.3.9.1 The Most Significant Barriers to Adoption Are 60

2.3.9.2 Concern Regarding Negative Unintended Consequences of Technology 60

2.4 Deep Learning in Healthcare 62

2.4.1 Deep Learning Models 63

2.4.1.1 Recurrent Neural Networks (RNN) 63

2.4.1.2 Convolutional Neural Networks (CNN) 64

2.4.1.3 Deep Belief Network (DBN) 65

2.4.1.4 Contrasts Between Models 66

2.4.1.5 Use of Deep Learning in Healthcare 66

2.5 Conclusion 70

2.6 Acknowledgments 70

References 70

3 Deep Learning on Site-Specific Drug Delivery System 77
Prem Shankar Mishra, Rakhi Mishra and Rupa Mazumder

3.1 Introduction 78

3.2 Deep Learning 81

3.2.1 Types of Algorithms Used in Deep Learning 81

3.2.1.1 Convolutional Neural Networks (CNNs) 82

3.2.1.2 Long Short-Term Memory Networks (LSTMs) 83

3.2.1.3 Recurrent Neural Networks 83

3.2.1.4 Generative Adversarial Networks (GANs) 84

3.2.1.5 Radial Basis Function Networks 84

3.2.1.6 Multilayer Perceptron 85

3.2.1.7 Self-Organizing Maps 85

3.2.1.8 Deep Belief Networks 85

3.3 Machine Learning and Deep Learning Comparison 86

3.4 Applications of Deep Learning in Drug Delivery System 87

3.5 Conclusion 90

References 90

4 Deep Learning Advancements in Target Delivery 101
Sudhanshu Mishra, Palak Gupta, Smriti Ojha, Vijay Sharma, Vicky Anthony and Disha Sharma

4.1 Introduction: Deep Learning and Targeted Drug Delivery 102

4.2 Different Models/Approaches of Deep Learning and Targeting Drug 104

4.3 QSAR Model 105

4.3.1 Model of Deep Long-Term Short-Term Memory 105

4.3.2 RNN Model 107

4.3.3 CNN Model 108

4.4 Deep Learning Process Applications in Pharmaceutical 109

4.5 Techniques for Predicting Pharmacotherapy 109

4.6 Approach to Diagnosis 110

4.7 Application 113

4.7.1 Deep Learning in Drug Discovery 114

4.7.2 Medical Imaging and Deep Learning Process 115

4.7.3 Deep Learning in Diagnostic and Screening 116

4.7.4 Clinical Trials Using Deep Learning Models 116

4.7.5 Learning for Personalized Medicine 117

4.8 Conclusion 121

Acknowledgment 122

References 122

5 Deep Learning and Precision Medicine: Lessons to Learn for the Preeminent Treatment for Malignant Tumors 127
Selvasudha Nandakumar, Shah Alam Khan, Poovi Ganesan, Pushpa Sweety, Arul Prakash Francis, Mahendran Sekar, Rukkumani Rajagopalan and Dhanalekshmi Unnikrishnan Meenakshi

5.1 Introduction 128

5.2 Role of DL in Gene Identification, Unique Genomic Analysis, and Precise Cancer Diagnosis 132

5.2.1 Gene Identification and Genome Data 133

5.2.2 Image Diagnosis 135

5.2.3 Radiomics, Radiogenomics, and Digital Biopsy 137

5.2.4 Medical Image Analysis in Mammography 138

5.2.5 Magnetic Resonance Imaging 139

5.2.6 CT Imaging 140

5.3 dl in Next-Generation Sequencing, Biomarkers, and Clinical Validation 141

5.3.1 Next-Generation Sequencing 141

5.3.2 Biomarkers and Clinical Validation 142

5.4 dl and Translational Oncology 144

5.4.1 Prediction 144

5.4.2 Segmentation 146

5.4.3 Knowledge Graphs and Cancer Drug Repurposing 147

5.4.4 Automated Treatment Planning 149

5.4.5 Clinical Benefits 150

5.5 DL in Clinical Trials—A Necessary Paradigm Shift 152

5.6 Challenges and Limitations 155

5.7 Conclusion 157

References 157

6 Personalized Therapy Using Deep Learning Advances 171
Nishant Gaur, Rashmi Dharwadkar and Jinsu Thomas

6.1 Introduction 172

6.2 Deep Learning 174

6.2.1 Convolutional Neural Networks 175

6.2.2 Autoencoders 180

6.2.3 Deep Belief Network (DBN) 182

6.2.4 Deep Reinforcement Learning 184

6.2.5 Generative Adversarial Network 186

6.2.6 Long Short-Term Memory Networks 188

References 191

7 Tele-Health Monitoring Using Artificial Intelligence Deep Learning Framework 199
Swati Verma, Rishabha Malviya, Md Aftab Alam and Bhuneshwar Dutta Tripathi

7.1 Introduction 200

7.2 Artificial Intelligence 200

7.2.1 Types of Artificial Intelligence 201

7.2.1.1 Machine Intelligence 201

7.2.1.2 Types of Machine Intelligence 203

7.2.2 Applications of Artificial Intelligence 204

7.2.2.1 Role in Healthcare Diagnostics 205

7.2.2.2 AI in Telehealth 205

7.2.2.3 Role in Structural Health Monitoring 205

7.2.2.4 Role in Remote Medicare Management 206

7.2.2.5 Predictive Analysis Using Big Data 207

7.2.2.6 AI’s Role in Virtual Monitoring of Patients 208

7.2.2.7 Functions of Devices 208

7.2.2.8 Clinical Outcomes Through Remote Patient Monitoring 210

7.2.2.9 Clinical Decision Support 211

7.2.3 Utilization of Artificial Intelligence in Telemedicine 211

7.2.3.1 Artificial Intelligence–Assisted Telemedicine 212

7.2.3.2 Telehealth and New Care Models 213

7.2.3.3 Strategy of Telecare Domain 214

7.2.3.4 Role of AI-Assisted Telemedicine in Various Domains 216

7.3 AI-Enabled Telehealth: Social and Ethical Considerations 218

7.4 Conclusion 219

References 220

8 Deep Learning Framework for Cancer Diagnosis and Treatment 229
Shiv Bahadur and Prashant Kumar

8.1 Deep Learning: An Emerging Field for Cancer Management 230

8.2 Deep Learning Framework in Diagnosis and Treatment of Cancer 232

8.3 Applications of Deep Learning in Cancer Diagnosis 233

8.3.1 Medical Imaging Through Artificial Intelligence 234

8.3.2 Biomarkers Identification in the Diagnosis of Cancer Through Deep Learning 234

8.3.3 Digital Pathology Through Deep Learning 235

8.3.4 Application of Artificial Intelligence in Surgery 236

8.3.5 Histopathological Images Using Deep Learning 237

8.3.6 MRI and Ultrasound Images Through Deep Learning 237

8.4 Clinical Applications of Deep Learning in the Management of Cancer 238

8.5 Ethical Considerations in Deep Learning–Based Robotic Therapy 239

8.6 Conclusion 240

Acknowledgments 240

References 241

9 Applications of Deep Learning in Radiation Therapy 247
Akanksha Sharma, Ashish Verma, Rishabha Malviya and Shalini Yadav

9.1 Introduction 248

9.2 History of Radiotherapy 250

9.3 Principal of Radiotherapy 251

9.4 Deep Learning 251

9.5 Radiation Therapy Techniques 254

9.5.1 External Beam Radiation Therapy 257

9.5.2 Three-Dimensional Conformal Radiation Therapy (3D-CRT) 259

9.5.3 Intensity Modulated Radiation Therapy (IMRT) 260

9.5.4 Image-Guided Radiation Therapy (IGRT) 261

9.5.5 Intraoperative Radiation Therapy (IORT) 263

9.5.6 Brachytherapy 265

9.5.7 Stereotactic Radiosurgery (SRS) 268

9.6 Different Role of Deep Learning with Corresponding Role of Medical Physicist 269

9.6.1 Deep Learning in Patient Assessment 269

9.6.1.1 Radiotherapy Results Prediction 269

9.6.1.2 Respiratory Signal Prediction 271

9.6.2 Simulation Computed Tomography 271

9.6.3 Targets and Organs-at-Risk Segmentation 273

9.6.4 Treatment Planning 274

9.6.4.1 Beam Angle Optimization 274

9.6.4.2 Dose Prediction 276

9.6.5 Other Role of Deep Learning in Corresponds with Medical Physicists 277

9.7 Conclusion 280

References 281

10 Application of Deep Learning in Radiation Therapy 289
Shilpa Rawat, Shilpa Singh, Md. Aftab Alam and Rishabha Malviya

10.1 Introduction 290

10.2 Radiotherapy 291

10.3 Principle of Deep Learning and Machine Learning 293

10.3.1 Deep Neural Networks (DNN) 294

10.3.2 Convolutional Neural Network 295

10.4 Role of AI and Deep Learning in Radiation Therapy 295

10.5 Platforms for Deep Learning and Tools for Radiotherapy 297

10.6 Radiation Therapy Implementation in Deep Learning 300

10.6.1 Deep Learning and Imaging Techniques 301

10.6.2 Image Segmentation 301

10.6.3 Lesion Segmentation 302

10.6.4 Computer-Aided Diagnosis 302

10.6.5 Computer-Aided Detection 303

10.6.6 Quality Assurance 304

10.6.7 Treatment Planning 305

10.6.8 Treatment Delivery 305

10.6.9 Response to Treatment 306

10.7 Prediction of Outcomes 307

10.7.1 Toxicity 309

10.7.2 Survival and the Ability to Respond 310

10.8 Deep Learning in Conjunction With Radiomoic 312

10.9 Planning for Treatment 314

10.9.1 Optimization of Beam Angle 315

10.9.2 Prediction of Dose 315

10.10 Deep Learning’s Challenges and Future Potential 316

10.11 Conclusion 317

References 318

11 Deep Learning Framework for Cancer 333
Pratishtha

11.1 Introduction 334

11.2 Brief History of Deep Learning 335

11.3 Types of Deep Learning Methods 336

11.4 Applications of Deep Learning 339

11.4.1 Toxicity Detection for Different Chemical Structures 339

11.4.2 Mitosis Detection 340

11.4.3 Radiology or Medical Imaging 341

11.4.4 Hallucination 342

11.4.5 Next-Generation Sequencing (NGS) 342

11.4.6 Drug Discovery 343

11.4.7 Sequence or Video Generation 343

11.4.8 Other Applications 343

11.5 Cancer 343

11.5.1 Factors 344

11.5.1.1 Heredity 345

11.5.1.2 Ionizing Radiation 345

11.5.1.3 Chemical Substances 345

11.5.1.4 Dietary Factors 345

11.5.1.5 Estrogen 346

11.5.1.6 Viruses 346

11.5.1.7 Stress 347

11.5.1.8 Age 347

11.5.2 Signs and Symptoms of Cancer 347

11.5.3 Types of Cancer Treatment Available 348

11.5.3.1 Surgery 348

11.5.3.2 Radiation Therapy 348

11.5.3.3 Chemotherapy 348

11.5.3.4 Immunotherapy 348

11.5.3.5 Targeted Therapy 349

11.5.3.6 Hormone Therapy 349

11.5.3.7 Stem Cell Transplant 349

11.5.3.8 Precision Medicine 349

11.5.4 Types of Cancer 349

11.5.4.1 Carcinoma 349

11.5.4.2 Sarcoma 349

11.5.4.3 Leukemia 350

11.5.4.4 Lymphoma and Myeloma 350

11.5.4.5 Central Nervous System (CNS) Cancers 350

11.5.5 The Development of Cancer (Pathogenesis) Cancer 350

11.6 Role of Deep Learning in Various Types of Cancer 350

11.6.1 Skin Cancer 351

11.6.1.1 Common Symptoms of Melanoma 351

11.6.1.2 Types of Skin Cancer 352

11.6.1.3 Prevention 353

11.6.1.4 Treatment 353

11.6.2 Deep Learning in Skin Cancer 354

11.6.3 Pancreatic Cancer 354

11.6.3.1 Symptoms of Pancreatic Cancer 355

11.6.3.2 Causes or Risk Factors of Pancreatic Cancer 355

11.6.3.3 Treatments of Pancreatic Cancer 355

11.6.4 Deep Learning in Pancreatic Cancer 355

11.6.5 Tobacco-Driven Lung Cancer 357

11.6.5.1 Symptoms of Lung Cancer 357

11.6.5.2 Causes or Risk Factors of Lung Cancer 358

11.6.5.3 Treatments Available for Lung Cancer 358

11.6.5.4 Deep Learning in Lung Cancer 358

11.6.6 Breast Cancer 359

11.6.6.1 Symptoms of Breast Cancer 360

11.6.6.2 Causes or Risk Factors of Breast Cancer 360

11.6.6.3 Treatments Available for Breast Cancer 361

11.6.7 Deep Learning in Breast Cancer 361

11.6.8 Prostate Cancer 362

11.6.9 Deep Learning in Prostate Cancer 362

11.7 Future Aspects of Deep Learning in Cancer 363

11.8 Conclusion 363

References 363

12 Cardiovascular Disease Prediction Using Deep Neural Network for Older People 369
Nagarjuna Telagam, B.Venkata Kranti and Nikhil Chandra Devarasetti

12.1 Introduction 370

12.2 Proposed System Model 375

12.2.1 Decision Tree Algorithm 375

12.2.1.1 Confusion Matrix 376

12.3 Random Forest Algorithm 381

12.4 Variable Importance for Random Forests 383

12.5 The Proposed Method Using a Deep Learning Model 384

12.5.1 Prevention of Overfitting 386

12.5.2 Batch Normalization 386

12.5.3 Dropout Technique 386

12.6 Results and Discussions 386

12.6.1 Linear Regression 386

12.6.2 Decision Tree Classifier 388

12.6.3 Voting Classifier 389

12.6.4 Bagging Classifier 389

12.6.5 Naïve Bayes 390

12.6.6 Logistic Regression 390

12.6.7 Extra Trees Classifier 391

12.6.8 K-Nearest Neighbor [KNN] Algorithm 391

12.6.9 Adaboost Classifier 392

12.6.10 Light Gradient Boost Classifier 393

12.6.11 Gradient Boosting Classifier 393

12.6.12 Stochastic Gradient Descent Algorithm 393

12.6.13 Linear Support Vector Classifier 394

12.6.14 Support Vector Machines 394

12.6.15 Gaussian Process Classification 395

12.6.16 Random Forest Classifier 395

12.7 Evaluation Metrics 396

12.8 Conclusion 401

References 402

13 Machine Learning: The Capabilities and Efficiency of Computers in Life Sciences 407
Shalini Yadav, Saurav Yadav, Shobhit Prakash Srivastava, Saurabh Kumar Gupta and Sudhanshu Mishra

13.1 Introduction 408

13.2 Supervised Learning 410

13.2.1 Workflow of Supervised Learning 410

13.2.2 Decision Tree 410

13.2.3 Support Vector Machine (SVM) 411

13.2.4 Naive Bayes 413

13.3 Deep Learning: A New Era of Machine Learning 414

13.4 Deep Learning in Artificial Intelligence (AI) 416

13.5 Using ML to Enhance Preventive and Treatment Insights 417

13.6 Different Additional Emergent Machine Learning Uses 418

13.6.1 Education 418

13.6.2 Pharmaceuticals 419

13.6.3 Manufacturing 419

13.7 Machine Learning 419

13.7.1 Neuroscience Research Advancements 420

13.7.2 Finding Patterns in Astronomical Data 420

13.8 Ethical and Social Issues Raised ! ! ! 421

13.8.1 Reliability and Safety 421

13.8.2 Transparency and Accountability 421

13.8.3 Data Privacy and Security 421

13.8.4 Malicious Use of AI 422

13.8.5 Effects on Healthcare Professionals 422

13.9 Future of Machine Learning in Healthcare 422

13.9.1 A Better Patient Journey 422

13.9.2 New Ways to Deliver Care 424

13.10 Challenges and Hesitations 424

13.10.1 Not Overlord Assistant Intelligent 424

13.10.2 Issues with Unlabeled Data 425

13.11 Concluding Thoughts 425

Acknowledgments 426

References 426

Index 431

Deep Learning for Targeted Treatments describes the importance of the deep learning framework for patient care, disease imaging/detection, and health management. Since deep learning can and does play a major role in a patient's healthcare management by controlling drug delivery to targeted tissues or organs, the main focus of the book is to leverage the various prospects of the DL framework for targeted therapy of various diseases. In terms of its industrial significance, this general-purpose automatic learning procedure is being widely implemented in pharmaceutical healthcare.


About the Author

Rishabha Malviya, PhD, is an associate professor in the Department of Pharmacy, School of Medical and Allied Sciences, Galgotias University. His areas of interest include formulation optimization, nanoformulation, targeted drug delivery, localized drug delivery, and characterization of natural polymers as pharmaceutical excipients. He has authored more than 150 research/review papers for national/international journals of repute. He has been granted more than 10 patents from different countries while a further 40 patents are published/under evaluation.

Gheorghita Ghinea, PhD, is a professor in Computing, Department of Computer Science Brunel University London. His research activities lie at the confluence of computer science, media, and psychology, and particularly interested in building semantically underpinned human-centered e-systems, particularly integrating human perceptual requirements. Has published more than 30+ articles and received 10+ research grants.

Rajesh Kumar Dhanaraj, PhD, is an associate professor in the School of Computing Science and Engineering at Galgotias University, Greater Noida, India. He has contributed 20+ books on various technologies and 35+ articles and papers in various refereed journals and international conferences and contributed chapters to the books. His research interests include machine learning, cyber-physical systems, and wireless sensor networks. He is an Expert Advisory Panel Member of Texas Instruments Inc USA.

Balamurugan Balusamy, PhD, is a professor at Galgotias University. He has published 30+ books on various technologies as well as more than 150 journal articles, conferences, and book chapters.

Sonali Sundram completed B. Pharm & M. Pharm (pharmacology) from AKTU, Lucknow, and is working at Galgotias University, Greater Noida. Her areas of interest are neurodegeneration, clinical research, and artificial intelligence. She has more than 8 patents to her credit.

9781119857327 9781119857976 111985797X 9781119857983 1119857988


Artificial intelligence--Medical applications.
Medical informatics.
Deep learning (Machine learning)


Electronic books.

R859.7.A78 / D44 2022

610.285