<span>The book presents current researchΒ advances, both academic and industrial, in machine learning, artificial intelligence, and data analytics for biomedical and healthcare applications. The book deals with key challenges associated with biomedical data analysis including higher dimensions, class
Data Driven Approaches on Medical Imaging
β Scribed by Bin Zheng (editor), Stefan Andrei (editor), Md Kamruzzaman Sarker (editor), Kishor Datta Gupta (editor)
- Publisher
- Springer
- Year
- 2024
- Tongue
- English
- Leaves
- 236
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book deals with the recent advancements in computer vision techniques such as active learning, few-shot learning, zero shot learning, explainable and interpretable ML, online learning, AutoML etc. and their applications in medical domain. Moreover, the key challenges which affect the design, development, and performance of medical imaging systems are addressed. In addition, the state-of-the-art medical imaging methodologies for efficient, interpretable, explainable, and practical implementation of computer imaging techniques are discussed. At present, there are no textbook resources that address the medical imaging technologies. There are ongoing and novel research outcomes which would be useful for the development of novel medical imaging technologies/processes/equipment which can improve the current state of the art.
The book particularly focuses on the use of data driven new technologies on medical imaging vision such as Active learning, Online learning, few shot learning, AutoML, segmentation etc.
β¦ Table of Contents
Preface
Contents
Introduction of Medical Imaging Modalities
1 Introduction
2 Background Study
3 Methodology
4 Definition of Medical Imaging
5 Overview of Different Modalities
5.1 X-ray Imaging
5.2 Computed Tomography (CT) Imaging
5.3 Magnetic Resonance Imaging (MRI)
5.4 Ultrasound Imaging
5.5 Nuclear Medicine Imaging
5.6 Electrical Impedance Tomography (EIT)
5.7 Cardiovascular Imaging
6 X-ray Imaging
6.1 Basic Principles
6.2 Typical Clinical Applications
7 Computed Tomography (CT) Imaging
7.1 Basic Principles
7.2 Typical Clinical Applications
8 MRI and Magnetic Resonance Microscopy (MRM)
8.1 Basic Principles
8.2 Typical Clinical Applications
9 Nuclear Imaging
9.1 Basic Principles
9.2 Typical Clinical Applications
10 Ultrasound Imaging
10.1 Basic Principles
10.2 Typical Clinical Applications
11 Emerging Technologies for In Vivo Imaging
11.1 Electrical Impedance Tomography (EIT)
11.1.1 Basic Principles
11.1.2 Limited Typical Clinical Usage
11.2 Advancements and New Modalities
12 Comparative Analysis
13 Specialized Techniques
13.1 Contrast-Enhanced MRI
13.2 MR Approaches for Osteoarthritis
13.3 Cardiovascular Imaging
13.4 Medical Imaging Data Mining and Search
14 Discussion and Conclusion
Declaration
References
Introduction to Medical Imaging Informatics
1 Introduction
2 Literature Review
3 Medical Imaging Informatics
3.1 Types of Medical Imaging Modalities
3.2 Image Storage and Retrieval
3.3 Image Analysis and Interpretation
4 Image Processing
5 Feature Engineering
6 Machine Learning
6.1 How Machine Learning Model Learn
6.2 Types of Machine Learning
6.2.1 Supervised Learning
6.2.2 Unsupervised Learning
6.2.3 Reinforcement Learning
6.3 Limitations of Machine Learning
7 Deep Learning
7.1 How the Deep Learning Model Learns
7.2 Different Types of Deep Learning Models
7.3 Limitations of Deep Learning
8 Importance of Data in Machine Learning and Deep Learning
9 Recent Advancements in Computer Vision
9.1 Deep Learning
9.2 Transfer Learning
9.3 Generative Adversarial Networks (GANs)
9.4 Computer Vision in Robotics
9.5 Augmented Reality (AR)
9.6 Video Analysis
9.7 Medical Image Analysis
10 Conclusion and Future Direction
Declaration
References
Active Learning on Medical Image
1 Introduction
2 Literature Review
2.1 Machine Learning in the Context of Medical Images
2.2 Deep Learning in the Context of Medical Images
2.3 Issue of Inadequately Labeled Medical Data
2.4 Active Learning Concept for Medical Images
2.4.1 General Algorithm
3 Methodology
3.1 Case Description with Dataset Information
3.2 MRI Pre-processing
3.3 Framework for Active Learning Based on Transfer Learning Knowledge
3.4 Case Report and Analysis
4 Conclusion
Declaration
References
Few Shot Learning for Medical Imaging: A Comparative Analysis of Methodologies and Formal Mathematical Framework
1 Introduction
2 Related Work
3 Overview of Few Shots Learning
3.1 Important Terms of Few-Shot Learning
4 Few Shot Learning Classification-Based Algorithm
4.1 Prototypical Networks
4.2 Matching Networks
4.3 Relational Networks
4.4 Model-Agnostic Meta-learning
5 Formal Mathematical Statements of Few Shot Learning Problems
5.1 Problem 1 (Learning from New Examples)
5.2 Solution of Problem 1 with Theorem
5.3 Problem 2 (Learning from New Class)
5.4 Solution of Problem 2 with Theorem
6 Future Scope
7 Conclusion
Declaration
References
Automl Systems for Medical Imaging
1 Introduction
1.1 New Hope
1.2 Outline of the Chapter
2 Background Study and Motivation
2.1 Medical Image
2.2 AutoML
2.2.1 Automated Feature Engineering
2.2.2 Automated Hyperparameter Optimization
2.2.3 Neural Architecture Search (NAS)
2.3 Why AutoML Over Traditional ML
3 Application of AutoML in Medical Image
3.1 Helps in Medical Diagnosis
3.2 Machine Learning in Decision Making
3.3 Personalized Medicine
3.4 To Reduce the Risk of a Virus
3.5 Medical Image Segmentation
3.6 Medical Image Registration
3.7 Medical Image Synthesis
3.8 Medical Image Augmentation
3.9 Generative Adversarial Networks (GANs)
4 Challenges and Future Directions of Automatic Machine Learning in Medical Image
4.1 The Availability and Quality of Data
4.2 Data Privacy, Security, and Legal Issue
4.3 Heterogeneity of Medical Imaging Data
4.4 Lack of Existing Algorithms
4.5 Understanding the Model
4.6 Evaluation of Prediction Accuracy
4.7 Algorithm Transparency
5 Future Prospective and Unanswered Questions About Medical Image and AutoML
5.1 Integration with Clinical Workflow
5.2 Improve Model Performance
5.3 Data Privacy and Ethics
5.4 Integration with Other Technologies
6 Conclusion
Declaration
References
Online Learning for X-Ray, CT or MRI
1 Introduction
2 Related Works
3 Methodology
3.1 Image Processing
3.2 Machine Learning
3.3 Deep Learning
3.3.1 Custom CNN
3.3.2 Transfer Learning
3.3.3 CNN-ML
4 Performance Analysis
5 Conclusion
Declaration
References
Invariant Scattering Transform for Medical Imaging
1 Introduction
2 IST Background
2.1 Signal Processing
2.2 Challenges in Medical Image Processing and IST Solutions
2.3 Key Steps and Process to Apply IST in Medical Imaging
2.4 IST Parameters and Settings: Impact on Performance
2.5 IST for Medical Image Segmentation, Classification, and Registration
2.6 Dataset
3 Related Work
4 Discussions and Future Research Directions
5 Conclusion
Declaration
References
Generative Adversarial Networks for Data Augmentation
1 Introduction
2 Literature Review
2.1 Artificial Intelligence in the Context of Medical Images
2.2 Issue of Scarcity of Medical Data
2.3 Data Augmentation
2.4 Concept of General Adversarial Network
2.5 GAN Concept for Medical Images
3 Methodology
3.1 Data Collection
3.2 MRI Pre-processing
3.3 Workflow of GAN for Data Augmentation
3.3.1 General Algorithm
3.4 The Process of Data Augmentation Using GAN
3.5 Data Augmentation Using Variational Auto-Encoders (VAEs)
3.6 Result Analysis
4 Conclusion
Declaration
References
Bias, Ethical Concerns, and Explainable Decision-Making in Medical Imaging Research
1 Introduction
2 Bias in Medical Imaging Research
2.1 Acquisition Bias
2.2 Processing Bias
2.3 Interpretation Bias
2.4 Patient-Related Bias
3 Classification of Bias
3.1 Spectrum Bias
3.2 Verification Bias
3.3 Reader Bias
3.4 Prevalence Bias
3.5 Interpretation Bias
3.6 Selection Bias
3.7 Information Bias
3.8 Recall Bias
3.9 Publication Bias
3.10 Cognitive Bias
3.11 Classification Bias
3.12 Confounding Bias
4 Addressing Fairness in for Medical Imaging
4.1 Equitable and Inequitable Biases in Medical Imaging
4.2 Qualitative and Quantitative Biases in Medical Imaging
5 Ethical Concerns of Medical Imaging
5.1 Privacy and Confidentiality
5.2 Radiation Exposure
5.3 Informed Consent
5.4 Bias and Equity
5.5 Resource Allocation
6 Importance of Ethical Concern in Medical Imaging
6.1 Factors of Ethical Concern in Medical Imaging
7 Explainable Decision-Making in Medical Imaging Research
7.1 The Importance of Explainable Decision-Making
7.2 The Factors Contributing to Explainable Decision-Making in Medical Imaging
8 Conclusions
Declaration
References
Case Studies on X-ray Imaging, MRI and Nuclear Imaging
1 Introduction
2 Background Study and Related Works
2.1 Medical Imaging and Essential Study in Medical Science
2.1.1 Medical Imaging
2.1.2 X-ray in Medical Science
2.1.3 MRI in Medical Science
2.1.4 Nuclear Imaging in Medical Science
3 Materials and Methodology of Study
3.1 X-ray
3.1.1 Materials
3.1.2 Methodology
3.2 MRI
3.2.1 Materials
3.2.2 Methodology
3.3 Nuclear Imaging
4 Result and Analysis
5 Conclusion
Declaration
References
Index
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