The book explores the integration of AI into cancer research and treatment. It covers how AI is transforming cancer diagnosis, improving the accuracy of imaging techniques, and predicting patient outcomes. The content includes discussions on machine learning algorithms for early detection, personalized medicine approaches, and AI-driven drug discovery. Additionally, the book addresses ethical concerns, challenges in implementing AI in clinical practice, and real-world case studies showing the impact of AI in oncology.
The editors hope that the book can inspire new generations of doctors, engineers, and researchers to continue innovating in the field of cancer treatment through AI. The book is meant to serve as a guide for both healthcare and technology professionals in advancing cancer care through AI applications. Medical students, AI researchers, and academics may use the book as a comprehensive guide to understanding the intersection of AI technology and oncology.
Part I: AI in Cancer Prediction and Diagnosis.
Chapter 1 Seer Breast
Cancer Prediction and Analysis using a Machine Learning Approach.
Chapter 2
Automated MRI-Based Brain Tumor Classification with CNN Models.
Chapter 3
Personalized Transfer Learning-Based CNN for High-Precision Oral Cancer
Classification.
Chapter 4 CloudMedX: Cloud-Based Glioma Detection using Deep
Learning.
Chapter 5 Multi-Class Brain Tumor Detection via DieT Transformer
and Advanced Feature Selection.
Chapter 6 An investigation of AI-assisted
strategies for accurate detection of Oral Cancer in Assam.- Part II: Machine
Learning and Deep Learning in Oncology.
Chapter 7 Machine Learning-Based
Recommender System for Cancer Patients.
Chapter 8 Deep Learning Techniques
to Detect Brain Tumors Using EfficientNet-B0 CNN Architecture.
Chapter 9
Optimized Deep Learning Framework for Lung Cancer Detection in Computed
Tomography Scans.
Chapter 10 Hybrid Deep Learning Architectures for Brain
Tumor Classification Using Magnetic Resonance Imaging: ViT-GRU and GNet-SVM
Models.
Chapter 11 A Combination of CNN and Fuzzy Transform Framework for
Accurate Brain Tumor Detection.
Chapter 12 CorPML: A ML-based hybrid model
for effective Cancer diagnosis using CFS and PSO feature selection.
Chapter
13 Comparative Analysis of Machine Learning Algorithms for Lung and Colon
Cancer Classification Using Deep Feature Extraction.
Chapter 14 A Machine
Learning and Deep Learning Approach to Cancer Prediction.
Chapter 15
Enhanced Lung Cancer Classification Using SMOTE and Soft Voting Ensemble of
Decision Tree, XGBoost, and Logistic Regression.
Chapter 16 A Comprehensive
Analysis of Lung Cancer Prediction Using Machine Learning Models.
Chapter 17
Breast Cancer Prediction based on SMOTE and Ensemble Classifier.- Part III:
AI-Driven Medical Imaging and Diagnostic Approaches.-Chapter 18 Novel Method
for Assessing the Effectiveness of the Deep Learning-Based Unet Model in
Forecasting Brain Tumors Using MRI Scans.
Chapter 19 Binary Algorithm in AI
for Early Skin Cancer Identification with 3D-TBP.
Chapter 20 Mammograms
Classification Using Deep Neural Networks in Breast Cancer Detection.-
Chapter 21 Thermal and Mammographic Image Fusion for Breast Cancer Detection:
A Self-Supervised Bi-Pipeline Approach.
Chapter 22 ResNet-152 for Brain
Tumor Detection: A Deep Learning Approach for Medical Image Analysis.-
Chapter 23 Computational Diagnosis application of Cervical Cancer using Deep
Learning Application.
Chapter 24 The Impact of Preprocessing Techniques on
Automated Skin Cancer Detection Systems.
Chapter 25 Performance Analysis of
Intelligent models for Breast cancer classification.- Part IV: AI in Cancer
Treatment and Personalized Medicine.
Chapter 26 AI-Driven Advancements in
Oncology: Harnessing Pharmacogenomics for Precision Cancer Treatment and
Optimized Therapeutic Outcomes.
Chapter 27 Integrating Deep Learning in
Prostate Cancer Grading: Innovations in Computational Pathology.
Chapter 28
AI-Driven Radiotherapy Solutions for Rare and Complex Cancers Using
Multi-Omics Approaches.
Chapter 29 Artificial Intelligence Future in
Oncology for Breast Cancer: Risk Prediction and Monitoring.- Part V: AI in
Public Health and Oncology Nursing.
Chapter 30 AI in Public Health.
Chapter
31 The Impact of Artificial Intelligence on Oncology Nursing: Enhancing
Patient Care, Symptom Management, and Decision Support.
Chapter 32
Empowering Oncology Healthcare Professionals: Evaluating the Effect of
AI-Driven Training Modules on Awareness, Knowledge, Clinical Competence, and
Patient Care in Cancer Management.
Chapter 33 Revolutionizing Oncology
Education: The Impact of AI-Driven Tools on Patient Knowledge, Adherence, and
Satisfaction.
Chapter 34 Harnessing Artificial Intelligence in Oncology
Palliative Care: Current Status, Challenges, and Recommendations with
Reference to India.
Chapter 35 The Transformative Role of AI in Public
Health for Cancer Prevention, Early Detection, and Management.- Part VI: AI
and Predictive Analytics in Cancer Research.
Chapter 36 Health Care
Professionals Opinions on the Role of Artificial Intelligence (AI) in
Preventing Cancer.
Chapter 37 Transforming Oncology Care: The Role of
Artificial Intelligence in Improving Diagnostic Accuracy and Treatment
Decisions.
Chapter 38 Artificial Intelligence in Oncology: Comparative
Analysis and Insights into Diagnostics, Treatment, Challenges, and Future
Prospects.
Chapter 39 Utilizing Artificial Intelligence to Revolutionize
Cancer Screening Through the Application of Predictive Analytics in Public
Health.
Chapter 40 Translating Hybrid ANN-ARIMA Diagnostic Models for Early
Detection of Oncological Biomarkers.
Chapter 41 Correlating the Hallmarks of
Cancer: A Study Using Conditional Dependency Networks.
Chapter 42 Oncology
in the AI Era: Transforming Cancer Care Through Intelligent Diagnosis and
Treatment.
Chapter 43 Identifying Key Survival AI based Predictors in Breast
Cancer for Indian Women: A Retrospective Cohort Analysis.
Chapter 44
Artificial Intelligence in Cancer Management: Bridging Gaps in Global
Healthcare Systems.
Chapter 45 Insights into Women's Sentiments on Breast
Cancer Detection, Causes, and Treatments: A Comprehensive Analysis.
Chapter
46 A Comprehensive Study of Artificial Intelligence in Oncology.
Chapter 47
Potential Use of Artificial Intelligence in Diagnosing Acute Myeloid
Leukaemia: A Haematological Disorder.
Chapter 48 ANN-Based Binary
Classification for Breast Cancer: A Comparative Study with Machine Learning
Models.
Dr. Sachi Nandan Mohanty has been recognized among the Top 2% of World Scientists by Stanford University and Elsevier for the years 2022, 2023, and 2024. He earned his Ph.D. from IIT Kharagpur in 2015 with an MHRD scholarship and completed his Postdoctoral Fellowship at IIT Kanpur in 2019. His research spans data mining, big data analytics, cognitive science, fuzzy decision-making, brain-computer interfaces, and computational intelligence. Dr. Mohanty has authored and edited books published by renowned publishers, and has published over 240 high-quality international journal papers and guided nine Ph.D. scholars and 23 postgraduate students. He received four Best Paper Awards, including recognition from an international conference in Beijing and IIT Roorkee. His Ph.D. thesis was awarded first prize by the Computer Society of India in 2015. He has been granted international travel support four times by Indias Department of Science and Technology (DST) for presenting papers and delivering keynote talks globally. He is a Fellow of IEI, IETE, an EAI Ambassador, and a Senior Member of IEEE (Hyderabad Chapter). Dr. Mohanty has also received accolades like the Prof. Ganesh Mishra Memorial Award and Prof. Bhubaneswar Behera Lecture Award from IEI, and Fellow of Indian National Academy of Engineering (INAE). Įlvaro Rocha is recognized among the Worlds Top 1% Scientists by Stanford University and Elsevier, Top 0.05% by ScholarGPS, and Top 1% by ResearchGate in Information Science and Information Systems. He is a Professor at ISEG, University of Lisbon, and also serves as an Honorary Professor at Amity University and Invited Professor at the University of Calabria. He holds a D.Sc. in Information Science, a Ph.D. in Information Systems, and degrees in Information Management and Computer Science. Prof. Rocha is President of ITMA, Vice-Chair of IEEE SMC Portugal Chapter, and CEO of AMARITS Consulting. He is also the Scientific Manager of a Springer-Nature book series and researcher at ADVANCE and CINTESIS. His work focuses on information systems quality, e-Government, e-Health, and intelligent systems.
Dr. Pushan Kumar Dutta is an Assistant Professor Grade III at Amity University Kolkata in the Electronics and Communication Engineering department. He holds a Ph.D. from Jadavpur University and completed a post-doctorate as an Erasmus Mundus Scholar under the European Union Leaders Program (20152016) at the University of Oradea. His research interests include data mining, AI, edge computing, and predictive analytics, with applications in smart cities, healthcare, and sustainability. Dr. Dutta has published over 114 Scopus-indexed articles and numerous works in IEEE Xplore and Springer Lecture Notes. A recipient of the Mentor of Change by NITI Aayog and other awards, he is known for his innovative teaching methods, two Indian patents, and international contributions, including winning an international white paper contest.