Computational Intelligence in Cancer Diagnosis
Progress and Challenges
- 1st Edition - April 12, 2023
- Editors: Janmenjoy Nayak, Danilo Pelusi, Bighnaraj Naik, Manohar Mishra, Khan Muhammad, David Al-Dabass
- Language: English
- Paperback ISBN:9 7 8 - 0 - 3 2 3 - 8 5 2 4 0 - 1
- eBook ISBN:9 7 8 - 0 - 3 2 3 - 9 0 3 5 3 - 0
Computational Intelligence in Cancer Diagnosis: Progress and Challenges provides insights into the current strength and weaknesses of different applications and research findings… Read more

Purchase options
Institutional subscription on ScienceDirect
Request a sales quoteComputational Intelligence in Cancer Diagnosis: Progress and Challenges provides insights into the current strength and weaknesses of different applications and research findings on computational intelligence in cancer research. The book improves the exchange of ideas and coherence among various computational intelligence methods and enhances the relevance and exploitation of application areas for both experienced and novice end-users. Topics discussed include neural networks, fuzzy logic, connectionist systems, genetic algorithms, evolutionary computation, cellular automata, self-organizing systems, soft computing, fuzzy systems, and hybrid intelligent systems.
The book's chapters are written by international experts from both cancer research, oncology and computational sides to cover different aspects and make it comprehensible for readers with no background on informatics.
- Contains updated information about advanced computational intelligence, spanning the areas of neural networks, fuzzy logic, connectionist systems, genetic algorithms, evolutionary computation, cellular automata, self-organizing systems, soft computing, fuzzy systems, and hybrid intelligent systems in diagnosing cancer diseases
- Discusses several cancer types, including their detection, treatment and prevention
- Presents case studies that illustrate the applications of intelligent computing in data analysis to help readers to analyze and advance their research in cancer
- Cover
- Title page
- Table of Contents
- Copyright
- Contributors
- About the editors
- Foreword
- Preface
- Part 1: Introduction to computational intelligence approaches
- Part 2: Prediction of cancer susceptibility
- Part 3: Advance computational intelligence paradigms
- Part 1: Introduction to computational intelligence approaches
- Chapter 1: The roadmap to the adoption of computational intelligence in cancer diagnosis: The clinical-radiological perspective
- Abstract
- Introduction
- Radiomics and artificial intelligence for cancer diagnosis and treatment
- Challenges and perspectives
- Conclusion
- References
- Chapter 2: Deep learning approaches for high dimension cancer microarray data feature prediction: A review
- Abstract
- Introduction
- Background
- Microarray data
- Machine learning
- Deep learning
- Critical analysis: Challenges and future trends
- Software used
- Critical analysis
- Conclusion
- References
- Further reading
- Chapter 3: Integrative data analysis and automated deep learning technique for ovary cancer detection
- Abstract
- Introduction
- Related work
- Methodology
- Result analysis
- Conclusion
- References
- Chapter 4: Learning from multiple modalities of imaging data for cancer diagnosis
- Abstract
- Introduction
- Diagnosis in CT
- Diagnosis in MRI
- Diagnosis in X-ray
- Diagnosis in UI
- Diagnosis in PET
- Medical imaging and artificial intelligence
- Conclusion
- References
- Chapter 5: Neural network for lung cancer diagnosis
- Abstract
- Introduction
- The basics knowledge of neural network
- Neural network for detection of lung nodules
- Application of neural network to medical image segmentation in diagnosis of lung cancer
- Neural network for classification of lung cancer diagnosis
- Conclusion and future directions
- References
- Chapter 6: Machine learning for thyroid cancer diagnosis
- Abstract
- Introduction
- Literature survey
- Thyroid cancer detection by ultrasound imaging and machine learning/deep learning
- Machine learning/deep learning based thyroid cancer prediction using cytopathology whole-slide images and histopathology images
- Thyroid gland disorders and machine learning approaches
- Methods
- Support Vector Machine
- Multilayer Neural Network
- Probabilistic Neural Network
- Performance evaluation metrics
- Autoencoders
- Convolutional Neural Networks
- Long short-term memory network
- Results
- Conclusion
- References
- Part 2: Prediction of cancer susceptibility
- Chapter 7: Machine learning-based detection and classification of lung cancer
- Abstract
- Introduction
- Related work
- Problem definition
- Proposed methodology
- Result analysis and discussion
- Conclusion
- References
- Chapter 8: Deep learning techniques for oral cancer diagnosis
- Abstract
- Acknowledgment
- Introduction
- Deep neural networks (DNNs)
- Convolution neural networks (CNNs)
- 3D convolution neural networks (3D CNNs)
- CNN-based methods for oral cancer diagnosis
- Results and discussion
- Current challenges and future research direction
- Active and incremental learning for newly added samples and classes
- Use of explainable artificial intelligence (XAI) for understanding data
- Conclusion
- References
- Chapter 9: An intelligent deep learning approach for colon cancer diagnosis
- Abstract
- Introduction
- Literature study
- Materials and methods
- Experimental setup
- Result analysis
- Conclusion
- References
- Chapter 10: Effect of COVID-19 on cancer patients: Issues and future challenges
- Abstract
- Introduction
- Effect of COVID-19 on various types of cancer
- Scenario of the impact of COVID-19 on cancer patients in various countries
- Major challenges of oncology community and cancer patients during the COVID-19 pandemic
- Discussion and future directions
- Conclusion
- References
- Chapter 11: Empirical wavelet transform-based fast deep convolutional neural network for detection and classification of melanoma
- Abstract
- Introduction
- Dataset
- Continuous wavelet transform (CWT)
- Discrete wavelet transform (DWT)
- Empirical wavelet transform (EWT)
- Fast deep convolutional neural network (fast-DCNN)
- Result and discussion
- Conclusion
- References
- Part 3: Advance computational intelligence paradigms
- Chapter 12: Convolutional neural networks and stacked generalization ensemble method in breast cancer prognosis
- Abstract
- Introduction
- Literature study
- Methodology
- Experimental setup
- Results
- Discussion
- Conclusion
- References
- Chapter 13: Light-gradient boosting machine for identification of osteosarcoma cell type from histological features
- Abstract
- Introduction
- Background information
- Proposed model
- Result and analysis
- Conclusion
- References
- Chapter 14: Deep learning-based computer-aided cervical cancer diagnosis in digital histopathology images
- Abstract
- Acknowledgments
- Introduction
- Related work in cervical cancer detection
- Proposed methodology
- Description of dataset for experimental setup
- Evaluation method and result obtained
- Conclusion
- References
- Chapter 15: Deep learning techniques for hepatocellular carcinoma diagnosis
- Abstract
- Acknowledgment
- Introduction
- Diagnostic evaluation of HCC
- Deep learning models
- Deep learning approaches for diagnostic evaluation of HCC
- Challenges and future perspectives
- Conclusion
- References
- Further reading
- Chapter 16: Issues and future challenges in cancer prognosis: (Prostate cancer: A case study)
- Abstract
- Introduction
- Literature review
- Proposed methodology
- Materials and methods
- Experimentation and result analysis
- Conclusion
- References
- Further reading
- Chapter 17: A novel cancer drug target module mining approach using nonswarm intelligence
- Abstract
- Acknowledgment
- Nomenclature
- Introduction
- Related works
- Methods and material
- Proposed MR-CoCVFO
- Experimental analysis
- Conclusion
- References
- Index
- No. of pages: 420
- Language: English
- Edition: 1
- Published: April 12, 2023
- Imprint: Academic Press
- Paperback ISBN: 9780323852401
- eBook ISBN: 9780323903530
JN
Janmenjoy Nayak
DP
Danilo Pelusi
BN
Bighnaraj Naik
MM
Manohar Mishra
KM
Khan Muhammad
DA