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Disruptive trends in computer aided diagnosis / edited by Rik Das, Sudarshan Nandy, and Siddhartha Bhattacharyya.
- Format:
- Book
- Series:
- Chapman & Hall/CRC computational intelligence and its applications.
- Computational Intelligence and its Applications
- Language:
- English
- Subjects (All):
- Diagnosis--Decision making--Data processing.
- Diagnosis.
- Clinical medicine--Decision making--Data processing.
- Clinical medicine.
- Physical Description:
- 1 online resource (219 pages)
- Edition:
- 1st ed.
- Place of Publication:
- Boca Raton, Florida ; London, England ; New York : CRC Press, [2022]
- Summary:
- "This book is an attempt to collate novel techniques and methodologies in the domain of content- based image classification and deep learning/machine learning techniques to design efficient computer aided diagnosis architecture. It is aimed to highlight new challenges and probable solutions"-- Provided by publisher.
- Contents:
- Cover
- Half Title
- Series Information
- Title Page
- Copyright Page
- Dedication
- Table of Contents
- Figures
- Tables
- Editor Biographies
- Contributors
- Preface
- 1 Evolution of Computer Aided Diagnosis: The Inception and Progress
- 1.1 Introduction
- 1.2 Literature Survey
- 1.3 Data Preprocessing Illustration for Computer Aided Diagnosis
- 1.4 Future Scope
- 1.5 Conclusion
- References
- 2 Computer Aided Diagnosis for a Sustainable World
- 2.1 Introduction
- 2.1.1 Background and Evolution
- 2.1.2 Meaning and Significance
- 2.2 Challenges for Computer Aided Diagnosis
- 2.2.1 Data Acquisition and Its Assessment
- 2.2.2 Segmentation of Acquired Data
- 2.2.3 Feature Extraction / Selection
- 2.2.4 Classification of Data and Data Mining Approaches
- 2.2.5 Challenge of Big Data
- 2.2.6 Standardized Performance Assessment Approaches
- 2.2.7 Adoption of Computer Aided Diagnosis in Clinical Practice
- 2.3 Sustainability
- 2.3.1 Attainment of Sustainability
- 2.3.2 New Paradigm
- 2.3.2.1 Cohorting and Characterizing Disease
- 2.3.2.2 Full-Cycle Feedback and Training
- 2.3.2.3 Power of Real Time Clinical Data
- 2.3.2.4 Better Healthcare in Even Modest Means
- 2.4 Conclusion
- 3 Applications of Computer Aided Diagnosis Techniques for a Sustainable World
- 3.1 Introduction
- 3.2 Computer Aided Diagnosis
- 3.3 Historical Background of Computer Aided Diagnosis
- 3.4 Applications of Computer Aided Diagnosis
- 3.5 Towards a Sustainable World
- 3.5.1 Environmental Sustainability
- 3.5.2 Social Sustainability
- 3.5.3 Economic Sustainability
- 3.6 Implications of Computer Aided Diagnosis
- 3.7 Limitations
- 3.8 Conclusion
- 3.9 The Road Ahead
- 4 Applications of Generative Adversarial Network On Computer Aided Diagnosis
- 4.1 Introduction
- 4.2 Background.
- 4.3 Computer Aided Detection and Research Progression
- 4.4 Implementation and Assessment of Clinical CAD
- 4.5 Application of Machine Learning and Deep Learning in Computer Aided Detection
- 4.5.1 Generative Adversarial Network - the State of the Art Architecture
- 4.5.2 Generative Adversarial Network - Evaluation Methodology
- 4.5.3 Case Study - Application of Generative Adversarial Network - CAD(x) Prediction of Congestive Heart Failure By GVR ...
- 4.5.3.1 Review of the Method
- 4.5.3.2 Review of Results
- 4.5.3.3 Conclusion
- 4.5.3.4 Inferences and Deduction for Patient Care
- 4.6 Computer Aided Diagnosis and Research Progression
- 4.6.1 Comparative Study of Generative Versus Discriminative Algorithms
- 4.6.1.1 Model Structures
- 4.6.1.2 Usage of Machine Learning and Deep Learning Algorithms in Computer Aided Diagnosis (Cad(x))
- 4.6.1.3 Emergence of GAN and Its Applications
- 4.6.1.4 Usage of GAN in Computer Aided Diagnosis and the Stage of Maturity
- 4.7 Generative Adversarial Network and Its Contribution to Computer Aided Diagnosis
- 4.7.1 Discussion and Conclusion
- 4.8 Future Scope
- 5 A Critical Review of Machine Learning Techniques for Diagnosing the Corona Virus Disease (COVID-19)
- 5.1 Introduction
- 5.2 Literature Review
- 5.3 Machine Learning Techniques for Diagnosis of Corona Virus Disease Through Medical Images
- 5.4 Discussion and Analysis
- 5.5 Conclusion
- 6 Cardiac Health Assessment Using ANN in Diabetic Population
- 6.1 Introduction
- 6.2 Relevance of Early Diagnosis of Myocardial Ischemia
- 6.3 Materials and Methods
- 6.3.1 HRV Analysis Tool
- 6.4 Overview of HRV Analysis
- 6.5 Data Acquisition Protocol, Inclusion and Exclusion Criterion
- 6.6 Need of Classifier
- 6.7 Feature Set Design
- 6.8 ANN Classifier Design
- 6.9 Cluster Analysis.
- 6.10 Results and Discussion
- 6.11 Scope and Limitations
- 7 Efficient, Accurate and Early Detection of Myocardial Infarction Using Machine Learning
- 7.1 Introduction
- 7.1.1 Myocardial Infarction
- 7.1.2 Types of MI
- 7.1.2.1 STEMI (ST-Segment Elevation Myocardial Infarction)
- 7.1.2.2 NSTEMI (non-ST Segment Elevation Myocardial Infarction)
- 7.1.2.3 Angina
- 7.1.2.4 Demand Ischemia (DI)
- 7.1.2.5 Cardiac Arrest
- 7.2 Literature Review
- 7.2.1 Clinical Investigations
- 7.2.2 Healthcare and Artificial Intelligence
- 7.3 Research Gap
- 7.3.1 Research Objectives
- 7.4 Proposed Methods
- 7.4.1 Bucketization
- 7.4.2 Feature Selection Techniques
- 7.4.2.1 Filter Method
- 7.4.2.2 Wrapper Method
- 7.4.2.3 Embedded Method
- 7.4.3 Data Cleaning and Pruning Technique
- 7.4.4 Normalization
- 7.4.5 Machine Learning
- 7.5 Experimental Result With Existing Dataset
- 7.6 Implementation
- 7.6.1 Survey
- 7.6.2 Experimental Result
- 7.6.3 Enhanced Experimental Result
- 7.7 Conclusion and Future Scope
- 7.7.1 Future Scope
- 8 Diagnostics and Decision Support for Cardiovascular System: A Tool Based On PPG Signature
- 8.1 Introduction and Background
- 8.2 PPG Data Acquisition System
- 8.3 Data Preprocessing
- 8.4 Beat Extraction
- 8.5 Fiducial Point Determination and Estimation of Clinical Parameters
- 8.6 Estimation of HRV Parameters
- 8.6.1 Estimation of Time Domain HRV Parameters Using PPG Signal
- 8.6.2 Estimation of Non-Linear HRV Parameter Using PPG Signal
- 8.7 Results and Discussions
- 8.8 Conclusion
- Acknowledgments
- 9 ARIMA Prediction Model Based Forecasting for COVID-19 Infected and Recovered Cases
- 9.1 Introduction
- 9.2 Literature Review
- 9.3 Proposed Method
- 9.3.1 Data Collection
- 9.3.2 Auto Regressive Integrated Moving Average.
- 9.4 Experimental Results and Discussion
- 9.5 Conclusion
- 10 Conclusion
- Index.
- Notes:
- Description based on print version record.
- ISBN:
- 1-00-304581-2
- 1-003-04581-2
- 1-000-41469-8
- 9781003045816
- OCLC:
- 1263871514
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