Image Processing for Automated Diagnosis of Cardiac Diseases Rajeev 1st edition by Kumar Chauhan – Ebook PDF Instant Download/DeliveryISBN: 0323850650, 9780323850650
Full dowload Image Processing for Automated Diagnosis of Cardiac Diseases Rajeev 1st edition after payment.
Product details:
ISBN-10 : 0323850650
ISBN-13 : 9780323850650
Author: Kumar Chauhan, Kalpana Chauhan
Image Processing for Automated Diagnosis of Cardiac Diseases highlights current and emerging technologies for the automated diagnosis of cardiac diseases. It presents concepts and practical algorithms, including techniques for the automated diagnosis of organs in motion using image processing.
This book is suitable for biomedical engineering researchers, engineers and scientists in research and development, and clinicians who want to learn more about and develop advanced concepts in image processing to overcome the challenges of automated diagnosis of heart disease.
Image Processing for Automated Diagnosis of Cardiac Diseases Rajeev 1st Table of contents:
Chapter 1: Cardiac diseases and their diagnosis methods
Abstract
1.1: Introduction
1.2: Heart valves
1.3: Mitral valve regurgitation
1.4: Heart diseases
1.5: Mitral valve diseases
1.6: Cardiac disease diagnosis methods
1.7: Results and analysis
1.8: Discussion
1.9: Conclusions
Chapter 2: Cardiac multimodal image registration using machine learning techniques
Abstract
2.1: Introduction
2.2: Datasets
2.3: Convolutional neural networks for image registration
2.4: Cardiac image registration multimodalities
2.5: Evaluation of multimodal imaging
2.6: Conclusion and discussion
Chapter 3: Anatomical photo representations for cardiac imaging training
Abstract
3.1: Clinical background and motivation
3.2: Technical challenges in multimodal cardiac image analysis and objectives
3.3: Conclusions
Chapter 4: Cardiac function review by machine learning approaches
Abstract
4.1: Cardiac MR and ultrasound image segmentation
4.2: Super-resolution in magnetic resonance images
4.3: Multimodal cardiac image registration
4.4: Machine learning models in image analysis
4.5: Applications of ML models in medical imaging
4.6: Conclusion
Chapter 5: Despeckling in echocardiographic images using a hybrid fuzzy filter
Abstract
Acknowledgment
5.1: Introduction
5.2: Background of despeckle filtering
5.3: Proposed hybrid fuzzy filters (HFFs)
5.4: Experimental results and discussion
5.5: Conclusion
Chapter 6: Impetus to machine learning in cardiac disease diagnosis
Abstract
6.1: Impetus to machine learning in cardiac disease diagnosis
6.2: Introduction to medical imaging
6.3: Role of computers in medical imaging
6.4: Introduction to machine learning
6.5: Impact of machine learning in everyday life
6.6: Applications of machine learning in disease diagnosis
6.7: Machine learning in cardiac disease diagnosis
6.8: Potential challenges of using machine learning in disease diagnosis
6.9: Constraints of using machine learning
6.10: How to develop a machine learning model for the medical domain?
6.11: Validation and performance assessment
6.12: Results and discussions
6.13: Conclusion
Chapter 7: Wavelet transform for cardiac image retrieval
Abstract
7.1: Introduction
7.2: Discrete wavelet transform
7.3: Orthogonal wavelet transform
7.4: Biorthogonal wavelet transform
7.5: Gabor wavelet transform
7.6: Result analysis
7.7: Conclusion
Chapter 8: AI-based diagnosis techniques for cardiac disease analysis and predictions
Abstract
8.1: Introduction
8.2: AI-based cardiac disease diagnosis techniques
8.3: Future of automated diagnosis of cardiac disease
8.4: Cardiovascular disease and COVID-19
8.5: Analysis of electrocardiography
8.6: Results and discussion
8.7: Conclusion and future scope
Chapter 9: An improved regularization and fitting-based segmentation method for echocardiographic images
Abstract
9.1: Introduction
9.2: Materials and method
9.3: Theory and calculation
9.4: Results
9.5: Discussions
9.6: Conclusions
Chapter 10: Identification of heart failure from cine-MRI images using pattern-based features
Abstract
10.1: Introduction
10.2: Pattern-based features
10.3: System overview
10.4: Results and discussion
10.5: Conclusions
Chapter 11: Medical image fusion methods: Review and application in cardiac diagnosis
Abstract
11.1: Introduction
11.2: Cardiac image fusion
11.3: Analysis of fused images
11.4: Results and analysis of fusion
11.5: Conclusions
People also search for Image Processing for Automated Diagnosis of Cardiac Diseases Rajeev 1st
automated image diagnosis
imaging automation
digital image processing for medical applications pdf
automated image analysis
automated image