AI-driven Healthcare Innovations : Applications in Neurology and Medicine

個数:1
紙書籍版価格
¥36,502
  • 電子書籍
  • ポイントキャンペーン

AI-driven Healthcare Innovations : Applications in Neurology and Medicine

  • 著者名:Kumar, Abhishek (EDT)/Batta, Priya (EDT)/Ananth, J. P. (EDT)
  • 価格 ¥23,217 (本体¥21,107)
  • Wiley-ISTE(2026/04/14発売)
  • GWに本を読もう!Kinoppy 電子書籍・電子洋書 全点ポイント30倍キャンペーン(~5/6)
  • ポイント 6,330pt (実際に付与されるポイントはご注文内容確認画面でご確認下さい)
  • 言語:ENG
  • ISBN:9781836690962
  • eISBN:9781394452026

ファイル: /

Description

AI-driven Healthcare Innovations presents a timely and authoritative exploration of how artificial intelligence (AI) is transforming modern clinical practices and medical research. Positioned at the intersection of healthcare, data science and computational intelligence, this book provides a comprehensive context for understanding the growing role of AI in diagnosis, treatment and decision-making within neurology and broader medical domains.

The book systematically examines core AI techniques, including machine learning (ML), deep learning (DL) and intelligent optimization, and demonstrates their practical deployment across neurological disorders, medical imaging, predictive analytics and personalized care. Emphasis is placed on real-world clinical workflows, data acquisition and preprocessing, model interpretability and performance evaluation. In addition, we also address ethical considerations, regulatory challenges and data security issues critical to healthcare adoption. By combining theoretical foundations with applied case studies and future research directions, this book serves as a valuable resource for researchers, clinicians, graduate students and industry professionals seeking to leverage AI-driven innovations to improve patient outcomes and advance next-generation healthcare systems.

Table of Contents

Preface xxiii
Abhishek KUMAR, Priya BATTA and J.P. ANANTH

Chapter 1. Artificial Intelligence in Healthcare: Principles, Paradigms and Emerging Trends 1
Shilpa C. PATIL and Salim Allauddin CHAVAN

1.1. Introduction 2
1.2. Principles of AI in healthcare 3
1.3. Paradigms of AI in healthcare 5
1.4. Emerging trends in AI-driven healthcare 7
1.5. Challenges and limitations 10
1.6. Future directions 12
1.7. Conclusion 12
1.8. References 13

Chapter 2. Machine Learning Models for Diagnostic Decision-Making in Neurology 17
Sunil Ramrao YADAV and Kalpana MALPE

2.1. Introduction 17
2.2. Overview of ML in healthcare 19
2.3. Supervised learning models in neurological diagnosis 20
2.4. Unsupervised and semi-supervised approaches 21
2.5. DL for neuroimaging and signal analysis 24
2.6. Multimodal and integrative diagnostic models 27
2.7. XAI and clinical interpretability 28
2.8. Future directions in ML for neurological diagnostics 30
2.9. Conclusion 31
2.10. References 31

Chapter 3. Deep Learning Approaches to Neuroimaging and Brain Mapping 35
G.V. RAMDAS and G.M. VAIDYA

3.1. Introduction 35
3.2. Deep learning fundamentals for neuroimaging 37
3.3. Applications in structural neuroimaging (MRI, CT) 41
3.4. Applications in functional neuroimaging (fMRI, PET, EEG/MEG) 43
3.5. Brain mapping and connectomics with deep learning 45
3.6. Clinical applications and translational potential 46
3.7. Challenges, limitations and future directions 48
3.8. Conclusion 50
3.9. References 50

Chapter 4. Predictive Analytics for Early Detection of Neurodegenerative Disorders 53
Debabrata SAHANA and K. GAVHALE

4.1. Introduction 53
4.2. Predictive analytics framework for neurodegenerative disorders 55
4.3. Applications of predictive analytics in specific neurodegenerative disorders 59
4.4. Emerging trends and methodological advances 62
4.5. Challenges, ethical considerations and future directions 64
4.6. Conclusion 67
4.7. References 67

Chapter 5. AI-Enhanced Stroke Diagnosis, Prognosis and Rehabilitation Pathways 71
Rahul PATIL and Fazil SHEIKH

5.1. Introduction 71
5.2. AI in stroke diagnosis 73
5.3. AI in stroke prognosis 75
5.4. AI in stroke rehabilitation pathways 77
5.5. Integration into clinical workflows 79
5.6. Future directions 81
5.7. Conclusion 83
5.8. References 84

Chapter 6. Computational Biomarker Discovery for Neurological and Psychiatric Disorders 87
Chaitnya GODBOLE and Shamla MANTRI

6.1. Introduction 87
6.2. Computational approaches for biomarker discovery 89
6.3. Machine learning and AI in biomarker identification 92
6.4. Biomarkers in neurological disorders 96
6.5. Biomarkers in psychiatric disorders 98
6.6. Challenges and future directions 100
6.7. Conclusion 102
6.8. References 103

Chapter 7. Natural Language Processing for Clinical Narratives and Neurological Case Records 107
Shrikrishna N. BAMNE and Swapna KAMBLE

7.1. Introduction 108
7.2. NLP fundamentals in clinical narratives 109
7.3. Applications in neurology and case records 111
7.4. Advances in model architectures 113
7.5. Clinical Utility: diagnosis, prognosis and treatment support 115
7.6. Integration with EHR and clinical workflows 117
7.7. Challenges: bias, privacy, data scarcity and interpretability 118
7.8. Future perspectives 120
7.9. Conclusion 121
7.10. References 122

Chapter 8. AI-Integrated Wearable Technologies for Continuous Neurological Monitoring 125
Swati JAGTAP and Ashish N. PATIL

8.1. Introduction 125
8.2. AI in wearable neurological monitoring 127
8.3. Clinical applications 129
8.4. System architecture and data integration 133
8.5. Challenges and limitations 136
8.6. Future directions 138
8.7. Conclusion 139
8.8. References 140

Chapter 9. Epilepsy Forecasting and Seizure Prediction Through AI Algorithms 143
Ashwini R. GARGATE and Komal M. JUJAR

9.1. Introduction 144
9.2. Pathophysiology and challenges of seizure prediction 145
9.3. AI in epilepsy forecasting: an overview 146
9.4. Machine learning approaches for seizure prediction 148
9.5. Deep learning and neural network models 150
9.6. Multimodal data integration for seizure forecasting 152
9.7. Wearable devices and real-time forecasting 154
9.8. Privacy, ethics and data challenges 155
9.9. Future directions in AI-driven seizure forecasting 156
9.10. Conclusion 157
9.11. References 158

Chapter 10. Intelligent Robotic Systems for Neurorehabilitation and Assistive Care 161
Debabrata SAHANA and Atul Namdev PAWAR

10.1. Introduction 162
10.2. Principles of intelligent robotic systems 162
10.3. Robotics in neurorehabilitation 164
10.4. Assistive robotics for daily living 166
10.5. Technological paradigms and enablers 167
10.6. Clinical evidence and applications 168
10.7. Challenges and limitations 171
10.8. Emerging trends and future directions 173
10.9. Conclusion 174
10.10. References 175

Chapter 11. Personalized Medicine in Multiple Sclerosis Through AI-Driven Analytics 179
Chaitnya GODBOLE and Shrikant Rangrao KADAM

11.1. Introduction 180
11.2. Overview of multiple sclerosis and the need for personalization 181
11.3. AI in MS diagnosis and early detection 181
11.4. AI-driven prognostic modeling in MS 183
11.5. Personalized treatment strategies through AI analytics 184
11.6. Integration of multi-omics and biomarkers 186
11.7. Role of neuroimaging and computer vision 187
11.8. AI-powered monitoring and patient engagement 188
11.9. Challenges, ethical concerns and limitations 190
11.10. Future directions and clinical translation 191
11.11. Conclusion 193
11.12. References 193

Chapter 12. Artificial Intelligence Applications in Sleep Medicine and Neurological Disorders 197
Swati JAGTAP and Sharifnawaj Y. INAMDAR

12.1. Introduction 198
12.2. AI in sleep medicine 199
12.3. AI in neurological disorders 201
12.4. Multimodal data integration and predictive analytics 203
12.5. Ethical, legal and clinical challenges 206
12.6. Future directions 207
12.7. Conclusion 208
12.8. References 209

Chapter 13. Virtual and Augmented Reality Coupled with AI for Cognitive Rehabilitation 213
Omkar KULKARNI and Amruta B. KALE

13.1. Introduction 214
13.2. Foundations of cognitive rehabilitation 215
13.3. VR in cognitive rehabilitation 216
13.4. AR in cognitive rehabilitation 217
13.5. AI for adaptive therapy 218
13.6. Synergistic role of VR/AR coupled with AI 219
13.7. Clinical applications and case studies 221
13.8. Technological innovations and tools 222
13.9. Challenges and ethical considerations 223
13.10. Future directions and research opportunities 224
13.11. Conclusion 225
13.12. References 226

Chapter 14. AI-Driven Drug Discovery Pipelines for Neurological and Mental Health Therapies 229
Sharad KSHIRSAGAR and Ashish N. PATIL

14.1. Introduction 229
14.2. Principles of AI in drug discovery 231
14.3. AI in target identification and biomarker discovery 232
14.4. AI in hit discovery and lead optimization 233
14.5. AI in drug repurposing for neurological and mental health disorders 235
14.6. AI in preclinical and clinical trial design for neurological and mental health therapies 236
14.7. Ethical, regulatory, and societal implications of AI in neurological and psychiatric drug discovery 238
14.8. Future directions and emerging trends in AI-driven drug discovery for neurological and mental health therapies 241
14.9. Conclusion 242
14.10. References 242

Chapter 15. Ethical, Legal and Societal Implications of AI in Neurology and Medicine 245
Dipali JANKAR and Anil SAHU

15.1. Introduction 246
15.2. AI in neurology and medicine: an overview 247
15.3. Ethical implications 249
15.4. Legal implications 251
15.5. Societal implications 253
15.6. Challenges and future perspectives 256
15.7. Conclusion 258
15.8. References 258

Chapter 16. Federated Learning and Collaborative AI Models in Neuroscience Research 261
Dipali JANKAR and Sanjay L. BADJATE

16.1. Introduction 261
16.2. Fundamentals of FL in neuroscience 263
16.3. Collaborative AI models in neuroscience 265
16.4. Applications of FL and collaborative AI in neuroscience 267
16.5. Challenges and limitations of FL and collaborative AI in neuroscience 271
16.6. Future directions 274
16.7. Conclusion 274
16.8. References 275

Chapter 17. AI-enabled Approaches for Pain Prediction, Assessment and Management 279
Mario ANTONY and Salim Allauddin CHAVAN

17.1. Introduction 279
17.2. AI for pain prediction 281
17.3. AI for pain assessment 283
17.4. AI in pain management 285
17.5. Challenges and limitations of AI in pain medicine 287
17.6. Ethical, legal and future directions 290
17.7. Conclusion 291
17.8. References 292

Chapter 18. Conversational AI and Virtual Assistants for Neurological Patient Support 295
Nikhilchandra MAHAJAN and Piyush Ashokrao DALKE

18.1. Introduction 295
18.2. Technological foundations of conversational AI in healthcare 296
18.3. Clinical applications of conversational AI in neurological care 298
18.4. Benefits and opportunities of conversational AI for neurological support 302
18.5. Challenges and limitations 304
18.6. Future directions and research opportunities 305
18.7. Conclusion 308
18.8. References 308

Chapter 19. Brain–Computer Interfaces Enhanced by Artificial Intelligence 311
Rahul S.S. and Mrudula NIMBARTE

19.1. Introduction 311
19.2. Neural signal acquisition and preprocessing 313
19.3. AI-driven neural decoding and feature extraction 315
19.4. Applications of AI-enhanced BCIs 318
19.5. Challenges, ethical considerations and future directions 322
19.6. Conclusion 324
19.7. References 325

Chapter 20. The Future of AI in Neurology: Innovations, Challenges and Strategic Directions 329
Sunil Ramrao YADAV and Mrudula NIMBARTE

20.1. Introduction 329
20.2. AI in neurological diagnostics 331
20.3. AI in prognosis and disease progression modeling 333
20.4. AI in therapeutics and rehabilitation 335
20.5. Challenges and ethical considerations 339
20.6. Strategic directions for the future 341
20.7. Conclusion 342
20.8. References 343

List of Authors 347
Index 351

最近チェックした商品