Kumar / Das / Rathore | Targeted Chemotherapy with Personalized Immunotherapy | Buch | 978-1-394-27058-3 | www.sack.de

Buch, Englisch, 544 Seiten

Kumar / Das / Rathore

Targeted Chemotherapy with Personalized Immunotherapy

An AI Approach
1. Auflage 2025
ISBN: 978-1-394-27058-3
Verlag: Wiley

An AI Approach

Buch, Englisch, 544 Seiten

ISBN: 978-1-394-27058-3
Verlag: Wiley


Targeted Chemotherapy with Personalized Immunotherapy: An AI Approach is an essential guide for healthcare teams, offering groundbreaking insights into novel immunotherapies and personalized treatments to improve cancer patient care and quality of life.

In the last 20 years, there have been significant leaps forward in the treatment of cancer. We now have a far better understanding of how our cells interact with one another, how cancer suppresses and hides from the immune system, and how to support the body in reacting to stop the spread of cancer. Nevertheless, there is still a great deal more to learn in this field. Researchers are working to develop methods that will help pinpoint the most effective treatment for patients. Through this research, they have discovered that, for certain patients, the best results may be reached by combining precisely targeted chemotherapy with personalized immunotherapy.

Instead of treating patients with medications that are detrimental to the body as a whole, researchers now aim to identify the molecules that play an essential part in the communication that takes place between cells. This study will help pave the way for the development of novel immunotherapies that will help the body in its fight against cancer. In order to accurately plan cancer treatment, participation from a number of different members of the healthcare team is essential. This book is a comprehensive guide for all members of this team, providing insights into groundbreaking new treatments to cure more patients and improve quality of life.

Kumar / Das / Rathore Targeted Chemotherapy with Personalized Immunotherapy jetzt bestellen!

Weitere Infos & Material


Foreword xxi

Preface xxiii

1 Assessing Predictive Accuracy: Model Validation in Cancer Diagnostics 1
M. Sudha, Arun Elias, G. Gurumoorthy, S. Rajalakshmi and S. K. Muthusundar

1.1 Introduction 2

1.1.1 Conventional Cancer Diagnosis 3

1.1.2 Machine Learning in Cancer Diagnosis 3

1.1.3 Types of Cancer in Focus 4

1.1.3.1 Breast Cancer 4

1.1.3.2 Lung Cancer 4

1.1.3.3 Skin Cancer 4

1.1.4 Objectives of Study 4

1.1.5 Study Scope 5

1.1.6 Performance Metrics 6

1.1.7 Limitations and Future Directions 6

1.2 Literature Review 7

1.3 Methodology 9

1.3.1 Data Acquisition 9

1.3.2 Data Preprocessing 10

1.3.2.1 Dealing with Missing Data 10

1.3.2.2 Normalization and Standardization 10

1.3.2.3 Feature Selection and Dimensionality Reduction 11

1.3.3 Machine Learning Models 11

1.3.3.1 Support Vector Machine (SVM) 11

1.3.3.2 Random Forest (RF) 12

1.3.3.3 k-Nearest Neighbors (k-NN) 12

1.3.3.4 Logistic Regression (LR) 12

1.3.3.5 Hyperparameter Tuning 13

1.3.4 Performance Metrics 13

1.4 Analysis of Results 14

1.4.1 The Overall Performance of Each Model on the Breast Cancer Dataset 14

1.4.2 Models’ Performance for Lung Cancer Dataset 16

1.4.3 Model Performance on Skin Cancer Dataset 17

1.4.4 Analysis of Inter-Cancer Type Performance Comparison 18

1.5 Discussion of Results 19

1.6 Conclusion 20

References 21

2 Applying Transfer Learning to Accelerate Cancer Classification and Prediction 23
T. Ravi, Shashidhar Gurav, Nandhini, Vijayaraj and S. K. Muthusundar

2.1 Introduction 24

2.1.1 Background on Cancer Classification 24

2.1.2 Transfer Learning in Medical Imaging 25

2.1.3 Model Development 26

2.2 Literature Review 27

2.2.1 Application of Transfer Learning in Breast Cancer Diagnosis 27

2.3 Methodology 30

2.3.1 Introduction 30

2.3.2 Data Preparation 31

2.3.2.1 Data Source 31

2.3.2.2 Data Collection 31

2.3.2.3 Data Preprocessing 31

2.3.2.4 Normalization 31

2.3.2.5 Handling Missing Values 32

2.3.2.6 Feature Selection 32

2.3.2.7 Data Partitioning 32

2.3.3 Model Design 33

2.3.3.1 Transfer Learning Approach 33

2.3.4 Implementation Tools 35

2.4 Results 36

2.4.1 Data Distribution 36

2.4.2 Accuracy, Precision, Recall, and F1-Score 37

2.4.3 Confusion Matrix 37

2.4.4 ROC Curve Analysis 39

2.4.5 Comparison on Traditional Machine Learning Models 39

2.5 Discussion of Results 40

2.5.1 Model Strengths 40

2.5.2 Areas for Improvement 40

2.6 Conclusion 41

References 43

3 Artificial Intelligence in Cancer Screening: Innovations in Early Detection 45
Arun Elias, V. Vaithianathan, S.K. Rajesh Kanna, G.M. Raja and S.K. Muthusundar

3.1 Introduction 46

3.1.1 Background on Cancer Screening 46

3.1.2 Role of Artificial Intelligence 47

3.1.3 Research Methodology 47

3.1.4 AI in Medical Imaging 48

3.1.5 Challenges and Ethical Considerations 48

3.2 Literature Review 50

3.3 Methodology 53

3.3.1 Dataset Collection 53

3.3.2 Data Preprocessing 54

3.3.3 Architecture Model Design 55

3.3.4 Training and Validation 56

3.3.5 Metrics to Measure 57

3.4 Results 58

3.4.1 Model Performance Metrics 58

3.4.2 Confusion Matrix Analysis 59

3.4.3 Receiver Operating Characteristic Curve 60

3.4.4 Comparison with Existing Models 61

3.4.5 Error Analysis 62

3.5 Future Directions 62

3.6 Conclusion 63

References 64

4 Comprehensive Approaches to Survival Analysis and Prognostic Modeling in Cancer Research: Integrating Statistical Techniques, and Clinical Variables 67
B. Sriman, J. Maria Arockia Dass, R. Seetha and Ashish Kumar

4.1 Introduction 68

4.1.1 Objectives 70

4.2 Literature Review 71

4.3 Methodology 74

4.3.1 Collection and Preprocessing 75

4.3.2 Cox Proportional Hazards Model 76

4.3.3 Random Survival Forest (RSF) 76

4.3.4 DeepSurv: Neural Network-Based Survival Model 77

4.3.5 Model Evaluation and Comparison 78

4.4 Results 79

4.4.1 General Comparison of Ability 79

4.4.2 Results of Cox Proportional Hazards (CPH) Model 79

4.4.3 RSF Results 82

4.4.4 Results on DeepSurv 82

4.4.5 Model Comparison and Discussion 84

4.4.6 Impact on Personalized Medicine 86

4.5 Conclusion 86

References 87

5 Exploring Cancer Therapeutics: A Collection of Case Studies 89
L. Selvam, Annie Silviya S. H., Singaravelan M. and Ira Aditi

5.1 Introduction 90

5.1.1 Conventional Cancer Therapies: Limitations and Challenges 90

5.1.2 The New Era of Targeted Therapies 91

5.1.3 Immunotherapy 91

5.1.4 Case Study: Targeted Therapy in HER2-Positive Breast Cancer 92

5.1.5 Case Study: Immunotherapy in Advanced Melanoma 93

5.2 Literature Review 93

5.3 Methodology 96

5.3.1 Research Design 97

5.3.2 Patient Selection 97

5.3.2.1 Case Study: HER2-Positive Breast Cancer (Trastuzumab) 98

5.3.2.2 Advanced Melanoma Case Study (Pembrolizumab) 98

5.3.3 Treatment Protocols 98

5.3.3.1 Trastuzumab Protocol for HER2-Positive Breast Cancer 99

5.3.4 Data Collection 99

5.3.4.1 Clinical and Imaging Data 100

5.3.4.2 Immune and Genetic Markers 100

5.3.5 Statistical Analysis 100

5.4 Results 101

5.4.1 Tumor Response 101

5.4.2 Survival Analysis 103

5.4.3 Recurrence Rate and Disease Control 105

5.4.4 Immune-Related Adverse Events and Safety Profile 106

5.5 Conclusion 109

References 109

6 Predicting Cancer Outcomes Using Transfer Learning: Harnessing Pre-Trained Models and Cross-Domain Knowledge for Enhanced Prognosis and Personalized Treatment Strategies 111
R. Ramachandran, V. Vaissnave, Vijayaraj and S. K. Muthusundar

6.1 Introduction 112

6.1.1 Background 112

6.1.2 Objectives 113

6.2 Literature Review 114

6.3 Methodology 119

6.3.1 Data Collection 119

6.3.2 Preprocessing the Data 120

6.3.3 Modeling 121

6.3.4 Model Assessment 122

6.3.5 Implementation of the Integrated Model 122

6.4 Results 123

6.4.1 Model Performance Metrics 123

6.4.2 Baseline Model Comparisons 125

6.4.3 Feature Importance Analysis 125

6.4.4 Clinical Validation Results 127

6.5 Conclusion 128

References 129

7 Predicting Cancer Outcomes with RNNs: A Time Series Approach 133
M. Mahalakshmi, Annie Silviya S. H., Kumud Sachdeva and Rajan Sachdeva

7.1 Introduction 134

7.1.1 Background 134

7.1.2 Significance of Ensemble Learning 134

7.1.3 Objectives 135

7.1.4 Significance of the Study 136

7.2 Literature Review 136

7.3 Methodology 137

7.3.1 Objective 137

7.3.2 Data Collection 137

7.3.2.1 Dataset 137

7.3.3 Preprocessing 138

7.3.3.1 Data Drawing 138

7.3.3.2 Normalization Numerical Features 138

7.3.3.3 Point Selection 139

7.3.4 Feature Selection 139

7.3.5 Ensemble Learning Techniques 140

7.3.6 Model Evaluation Metrics 142

7.3.7 Cross-Validation 143

7.4 Results 143

7.4.1 Model Performance 143

7.5 Results 149

7.5.1 Cross-Validation Results 149

7.5.2 Model Comparison 149

7.6 Conclusion 151

References 151

8 AI in Cancer Screening and Early Detection 153
Priya Batta and Soumen Sardar

8.1 Introduction 153

8.2 Literature Review 157

8.3 Methodology 160

8.4 Results 162

8.5 Conclusion and Future Scope 163

References 164

9 Challenges and Limitations of AI in Oncology 167
Priya Batta

9.1 Introduction 167

9.2 Literature Review 170

9.3 Methodology 172

9.4 Results 174

9.5 Conclusion and Future Scope 174

References 175

10 Predictive Models for Cancer-Related Lymphedema: Enhancing Telerehabilitation and Physiotherapy Management 177
Madhusmita Jena, Charu Chhabra, Huma Parveen, Sahar Zaidi, Noor Fatima and Habiba Sundus

10.1 Introduction 178

10.1.1 Prevalence of Lymphedema 179

10.1.2 Diagnostic Technique for Lymphedema 180

10.1.3 Commonly Used Scales for Diagnosis of Lymphedema 181

10.2 Lymphedema’s Impact on Cancer Survivors 181

10.3 Current Challenges in Lymphedema Management 182

10.4 Role of AI in Lymphedema Management 183

10.4.1 Customizing Physiotherapy Regimens Based on AI Predictions 184

10.4.2 Integrating Telerehabilitation for Effective Lymphedema Management 185

10.5 Conclusion 186

References 186

11 Role of AI in the Prediction of Leukemia and AI-Driven Predictive Models for Rehabilitation Outcomes in Acute Lymphoblastic Leukemia 189
Huma Parveen, Charu Chhabra, Sahar Zaidi, Noor Fatima, Madhusmita Jena and Amaan Ali Khan

11.1 Acute Lymphoblastic Leukemia 190

11.2 Importance of Early Prediction and Rehabilitation in ALL 191

11.3 Role of AI in Healthcare 193

11.4 AI in Leukemia Prediction 194

11.5 AI-Driven Predictive Rehabilitation Outcomes in ALL 196

11.6 Data Privacy and Security in Healthcare Models 199

11.7 Framework for Protecting Data Privacy 200

11.7.1 Acts and Policies 200

11.7.2 National Policies 200

11.7.3 AI Models-Based Privacy Protection 201

11.8 Ethical Concerns in AI Healthcare 202

References 203

12 Data Privacy and Ethical Challenges in AI-Driven Cancer Care 207
Firdaus Jawed, Rabia Aziz, Sumbul Ansari, Shahnawaz Anwar and Sohrab Ahmad Khan

12.1 Introduction to Data Privacy and Ethics in AI-Driven Cancer Care 208

12.2 Types of Sensitive Data in AI-Driven Cancer Care 209

12.3 Ethical Frameworks and Guidelines for Data Privacy 212

12.4 Data Security and Protection Techniques 214

12.5 Bias, Fairness, and Algorithmic Transparency in AI-Driven Cancer Care 216

12.6 Regulatory and Compliance Challenges 219

12.7 Emerging Technologies and Innovations in Privacy 221

12.8 Future Directions in Ethical AI for Cancer Care 222

12.9 Conclusions 224

References 224

13 Cancer Rehabilitation in the Era of Targeted Chemotherapy and Personalized Immunotherapy 229
Rabia Aziz, Firdaus Jawed, Sumbul Ansari, Shahnawaz Anwar and Sohrab Ahmad Khan

13.1 Evolving Landscape of Cancer Treatment 230

13.2 Importance of Cancer Rehabilitation 231

13.3 Integrating Rehabilitation Into AI-Powered Cancer Rehabilitation 232

13.3.1 The Role of Data in Rehabilitation 238

13.3.2 Machine Learning and Predictive Analytics 239

13.3.3 Real-Time Monitoring and Feedback 239

13.3.4 Outcomes Measurement and Continuous Improvement 240

13.3.5 The Rationale for Integration 241

13.3.6 Utilizing Biomarkers in Rehabilitation 241

13.3.7 Multidisciplinary Collaboration 242

13.3.8 Early Intervention Strategies 242

13.3.9 Leveraging Technology for Monitoring and Feedback 243

13.4 Leveraging Data Analytics and AI for Adaptive Rehabilitation 243

13.4.1 The Role of Data Analytics in Rehabilitation 244

13.4.2 AI-Driven Personalization of Rehabilitation Programs 244

13.4.3 Integration of Wearable Technology and Telehealth 245

13.4.4 Virtual Reality (VR) and Augmented Reality (AR) Applications 245

13.5 Tailoring Rehabilitation Strategies for Targeted Therapies 246

13.5.1 Understanding Targeted Therapies and Their Implications 246

13.5.2 Personalized Assessment and Planning 247

13.5.3 Integrating Evidence-Based Interventions 247

13.5.3.1 Physical Therapy 247

13.5.3.2 Occupational Therapy 248

13.5.3.3 Psychosocial Support 249

13.5.3.4 Nutritional Counseling 249

13.5.4 Utilizing Technology for Enhanced Rehabilitation 250

13.6 Future Directions and Emerging Trends 251

13.7 Summary 251

References 252

14 Role of AI in Cancer Screening and Its Detection 257
Muskan, Shweta Sharma, Parul Sharma, Manoj Malik and Jaspreet Kaur

14.1 Introduction 258

14.2 Cancer Mechanisms and Various Pathologies 258

14.3 Conventional Methods of Cancer Screening 260

14.3.1 Mammography 260

14.3.2 Ultrasound 262

14.3.3 Magnetic Resonance Imaging 262

14.3.4 Liquid Biopsies 262

14.3.5 Pap Smear (Papanicolaou Test) 263

14.3.6 Barium X-Ray (Barium Swallow or Enema) 263

14.3.7 Photoacoustic Tomography (PAT) 263

14.3.8 SPECT (Single-Photon Emission Computed Tomography) and PET (Positron Emission Tomography) 263

14.4 Overview of AI (Artificial Intelligence) in Cancer Detection 264

14.5 AI Applications in Cancer Screening Using Deep Learning and Machine Learning 266

14.5.1 AI Models for Breast Cancer 266

14.5.2 AI Models for Lung Cancer 266

14.5.3 AI Models for Skin Cancer 267

14.5.4 AI Models for Gastric Cancers 267

14.5.5 AI Models for Prostate Cancers 269

14.6 Challenges in AI Adoption for Cancer Screening 270

14.7 Proposed Strategies for AI Implementation for Cancer Detection 271

14.8 Conclusion 272

14.9 Future Directions 273

References 274

15 Automated 3D U-Net Framework for Brain Tumor Segmentation and Classification with Insights Into AI-Driven Cancer Research Applications 279
S. Usharani, P. Manju Bala, T. Ananth kumar and G. Glorindal Selvam

15.1 Introduction 280

15.2 Literature Review 283

15.2.1 Brain Tumor MRI Image Segmentation 283

15.2.1.1 Methods for Manual Segmentation 283

15.2.1.2 Methods for Partly-Automated Segmentation 283

15.2.1.3 Methods for Absolutely Automated Segmentation 284

15.2.2 Brain Tumor MRI Classification 285

15.3 Materials and Methods 290

15.3.1 Materials 290

15.3.2 Methods 291

15.3.2.1 System Model 291

15.3.2.2 Multi Scale Feature Extraction Network 293

15.3.2.3 Incremental Feature Improvement 294

15.3.2.4 Loss Function 295

15.4 Experimental Setup 296

15.4.1 Experimental Analysis 296

15.5 Conclusion 301

References 302

16 Early Prediction of Bone Cancer: Integrating Deep Learning Models 309
R. Dhinesh, T. Ananth kumar, P. Kanimozhi and Sunday Adeola Ajagbe

16.1 Introduction 310

16.2 Related Works 311

16.3 Proposed Methodology 313

16.4 Results and Discussion 318

16.5 Conclusion 321

References 322

17 Machine Learning Techniques for Predicting Epileptic Seizures: A Data-Driven Analysis Using EEG Signals 325
Preeti Narooka, Ankit Vishnoi and Jatin Verma

17.1 Introduction 326

17.1.1 Background 326

17.1.2 Objective 326

17.2 Literature Survey 327

17.2.1 Study 1: Feature Extraction Techniques in EEG-Based Seizure Detection 327

17.2.2 Study 2: Application of Deep Learning in Neurological Disorders 327

17.2.3 Study 3: Comparative Analysis of ML Algorithms 328

17.2.4 Study 4: Transfer Learning in EEG Analysis 328

17.2.5 Study 5: Real-Time Seizure Prediction Systems 328

17.2.6 Study 6: Explainable Artificial Intelligence in Seizure Detection 328

17.2.7 Study 7: Challenges in EEG-Based Seizure Detection 329

17.2.8 Study 8: Multimodal Learning Approaches 329

17.3 Methodology 329

17.3.1 Dataset 329

17.3.2 Preprocessing 330

17.3.3 Feature Extraction 330

17.3.4 Model Architecture 331

17.4 Results and Discussion 332

17.4.1 Model Performance 332

17.4.2 Discussion 333

17.4.3 Implications for Healthcare Applications 334

17.5 Conclusion 334

References 334

18 Transfer Learning in Cancer Research 337
Mamta and Nitin

18.1 Definition and Overview of Transfer Learning 338

18.1.1 Transfer Learning Typically Involves the Following Components 338

18.1.2 Importance of Transfer Learning in Cancer Research 339

18.1.3 Challenges in Traditional Cancer Research Approaches 341

18.2 How Transfer Learning Works 344

18.2.1 Types of Transfer Learning 345

18.2.2 Transductive Transfer Learning 346

18.3 Applications of Transfer Learning in Cancer Research 346

18.4 Challenges in Transfer Learning for Cancer 348

18.4.1 Data Scarcity and Domain Adaptation 348

18.4.2 Model Interpretability 349

18.5 Future Directions: Personalized Medicine and Drug Discovery 351

18.5.1 Personalized Medicine: Tailoring Treatment to the Individual 352

18.6 Drug Discovery: Accelerating the Path to New Therapies 353

18.7 Challenges and Ethical Considerations 354

18.8 Conclusion 354

References 355

19 Machine Learning Approaches for Early Detection of Cervical Cancer: A Comparative Study of Classification Models 359
Inam Ul Haq, Janvi Malhotra, Vanshika Rawat, Jyoti Kumari and Gagandeep Kaur

19.1 Introduction 360

19.2 Literature Review of Some Research Papers 364

19.3 Methodology 368

19.4 Results 369

19.5 Conclusion and Future Scope 370

References 370

20 Interactive Data Management for Cancer Care: Leveraging Electronic Health Records and Proteomic Data 375
M. Rohini, S. Oswalt Manoj, J. P. Ananth and D. Surendran

20.1 Introduction 376

20.1.1 Need of Electronic Health Record Maintenance 376

20.1.2 Message Passing Protocol for Cancer EHR Updates 377

20.1.3 Reliable Messaging for Critical Data 379

20.1.4 Microservice-Oriented Cancer Data Staging and Deployment 380

20.2 HER Data Processing 382

20.2.1 Staging Service 382

20.2.1.1 Autoscaling Based on Criticality of EHR System 382

20.2.2 Internal Working of the Staging Service 383

20.2.2.1 Validate and Fetch Dashboard Details 383

20.2.2.2 Execute Stored Procedure 385

20.2.2.3 High-Availability Deployment Phase 386

20.3 Conclusion 388

References 389

21 Artificial Intelligence–Driven Personalized Cancer Treatment 391
Gurwinder Singh, Sarthak Sharma and Aastha Anand

21.1 Introduction: The Dawn of Artificial Intelligence–Powered Cancer Screening 392

21.2 Role of AI in Cancer Screening 395

21.3 Role of AI in Early Detection 399

21.4 Case Studies and Real-World Implementation 401

21.5 Benefits and Opportunities 404

21.6 Conclusion 406

21.7 Future Scope 407

References 408

22 Revolutionizing Breast Cancer Detection: Emerging Trends and Future Technologies 411
Gurmeet Kaur Saini, Inderdeep Kaur and Kanwaldeep Kaur

22.1 Overview 412

22.2 Risk Assessment Types 413

22.3 Risk Elements 413

22.4 Risk Factors for Hormones and Reproduction 413

22.5 Additional Risk Factors 414

22.6 Risk of Breast Cancer Over Time 414

22.6.1 Risk Assessment by Family History 414

22.7 Models for Risk Estimate 415

22.7.1 The Gail Model 415

22.7.2 Claus–Mammary Carcinoma Risk Assessment Model 416

22.7.3 The BRCAPRO Model 418

22.7.4 Tools for Risk Calculation 418

22.8 Clinical Breast Imaging Techniques 418

22.8.1 Mammography 418

22.8.2 Ultrasonic 420

22.8.3 Magnetic Resonance Imaging 420

22.9 Measurement Systems and Techniques for Microwave Breast Imaging 421

22.9.1 Tomography Using Microwaves 421

22.9.2 Microwave Imaging Using Radar Technology 421

22.9.3 Breast Cancer Detection Using Biosensors 422

22.9.4 Use of Thermography to Find Breast Cancer 422

22.10 Discussion 423

22.11 Present Developments and Prospects for Breast Cancer Screening Methods 423

22.12 Conclusion 426

References 426

23 Future of Neurological Research: Leveraging Artificial Intelligence for Precision and Discovery 431
Hemlata and Utsav Krishan Murari

23.1 Introduction 431

23.2 AI in Neuroimaging: A Revolution in Neurological Research 435

23.3 Computational Neuroscience and Modeling: Transforming Understanding of Neural Mechanisms through AI 438

23.4 AI and BCIs: Transforming Accessibility and Real-Time Neural Interaction 441

23.5 Ethics in the Integration of AI Into Neurological Research 445

23.6 Conclusion 448

References 449

24 Cervical Cancer Detection Using Machine Learning 451
Saranya. A., S. Ravi, Harsha Latha. P., T. Kalaichelvi and A. Anbarasi

24.1 Introduction 452

24.1.1 Overview of Medical Image Analysis 454

24.2 ml Techniques for Cervical Cancer Diagnosis 459

24.2.1 ml Algorithms 459

24.2.2 Methodology of ML Classification of Images 460

24.2.3 Cervical Cancer Image Dataset 462

24.3 Related Work 462

24.3.1 Cervical Cancer Detection Using ml 463

24.4 Findings 466

24.5 Performance Metrics in ml 470

24.6 Conclusion 471

References 472

25 Deep Learning Techniques–Based Medical Image Segmentation in Cervical Cancer 477
Saranya. A., S. Ravi, Harsha Latha. P. and T. Kalaichelvi

25.1 Introduction 478

25.2 Motivation of Computer-Aided Diagnosis 480

25.3 History of DL in Medical Imaging 482

25.4 Deep Learning Application of Cervical Cancer 482

25.5 Cervical Cancer Detection Based on DL Techniques for Medical Image Segmentation 483

25.5.1 Deep Learning in Image Segmentation 483

25.5.2 Deep Learning in Classification Task 487

25.6 Frameworks Used in Detecting Cervical Cancer 488

25.6.1 Comparison Between DL Segmentation and Classification 489

25.7 Performance Metrics 494

25.8 Conclusion 495

References 495

Index 499


Abhishek Kumar, PhD is an associate professor and Assistant Director in the Computer Science and Engineering Department at Chandigarh University with over 11 years of experience. He has over 100 publications in reputed, national and international journals, books, and conferences. His research interests include artificial intelligence, renewable energy image processing, computer vision, data mining, and machine learning.

Prasenjit Das, PhD is a professor in the Department of Computer Science and Engineering at Chandigarh University with over 19 years of experience. He has published two books, over 20 research papers, and 25 patents, three of which have been granted. His research interests include data mining, machine learning, image processing, and natural language processing.

Pramod Singh Rathore, PhD is an Assistant Professor in the Department of Computer and Communication Engineering at Manipal University Jaipur with over 12 years of teaching experience. He has published over 85 papers in peer-reviewed national and international journals, books, and conferences. His research interests include networking, image processing, and machine learning.

Sachin Ahuja, PhD has an illustrious academic and research career, marked by numerous impactful contributions. An accomplished editor, he has contributed to numerous high-quality academic books and served as a guest editor for special issues in reputed international journals, showcasing his expertise in emerging research domains. Additionally, he has successfully led several funded projects in advanced areas, including artificial intelligence, machine learning, and data mining, driving innovation and practical solutions.

Chetan Sharma is the Program Manager at the upGrad Campus for upGradEducation Private Limited. He has published one book, over 40 research articles in national and international journals and conferences, and 30 patents, eight of which have been granted. His research interests include natural language processing, machine learning, and management.



Ihre Fragen, Wünsche oder Anmerkungen
Vorname*
Nachname*
Ihre E-Mail-Adresse*
Kundennr.
Ihre Nachricht*
Lediglich mit * gekennzeichnete Felder sind Pflichtfelder.
Wenn Sie die im Kontaktformular eingegebenen Daten durch Klick auf den nachfolgenden Button übersenden, erklären Sie sich damit einverstanden, dass wir Ihr Angaben für die Beantwortung Ihrer Anfrage verwenden. Selbstverständlich werden Ihre Daten vertraulich behandelt und nicht an Dritte weitergegeben. Sie können der Verwendung Ihrer Daten jederzeit widersprechen. Das Datenhandling bei Sack Fachmedien erklären wir Ihnen in unserer Datenschutzerklärung.