
Nature-inspired Optimization of Type-2 Fuzzy Neural Hybrid Models for Classification in Medical Diagnosis
Description
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Content
- Intro
- Preface
- Contents
- 1 Introduction to Soft Computing Applied in Medicine
- References
- 2 Theory of Soft Computing and Medical Terms
- 2.1 Hybrid Systems
- 2.1.1 Artificial Neural Networks
- 2.1.2 Type-1 Fuzzy Systems
- 2.1.3 Type-2 Fuzzy Logic
- 2.1.4 Optimization
- 2.1.5 CSO
- 2.1.6 CSA
- 2.1.7 FPA
- 2.1.8 BSA
- 2.2 Blood Pressure
- 2.2.1 Hypertension
- 2.2.2 Heart Rate
- 2.2.3 Nocturnal Blood Pressure Profile
- 2.2.4 Ambulatory Blood Pressure Monitoring
- 2.2.5 Framingham Heart Study
- 2.2.6 Cardiovascular Risk
- References
- 3 Proposed Model to Obtain the Medical Diagnosis
- 3.1 Neuro-Fuzzy Hybrid Model
- 3.2 IT2FS for Classification of Heart Rate Level
- 3.3 IT2FS for Classification of Nocturnal Bloor Pressure Profile
- 4 Study Cases to Test the Optimization Performed in the Hybrid Model
- 4.1 Optimization of the Fuzzy System to Provide the Correct Classification of the Nocturnal Blood Pressure Profile
- 4.1.1 Design of a Fuzzy System for Classification of Nocturnal Blood Pressure Profile
- 4.1.2 Experimentation and Results
- 4.1.3 Statistical Test
- 4.2 Fuzzy System Optimization to Obtain the Heart Rate Level
- 4.2.1 Proposed Method for Optimization of the Heart Rate Fuzzy Classifier
- 4.2.2 Type-1 Fuzzy System Optimization Using the BSA
- 4.2.3 Design and Optimization of the IT2FS
- 4.2.4 Results Obtained from Optimizing the Heart Rate Fuzzy System
- 4.3 Optimization of the Modular Neural Network to Obtain the Trend of the Blood Pressure
- 4.3.1 Proposed Method for Optimization of the Modular Neural Network
- 4.3.2 Results of the Optimization Made to the Modular Neural Network
- 4.4 Optimization of the Artificial Neural Network Used to Obtain the Risk of Developing Hypertension
- 4.4.1 Proposed Method for the Optimization of the Monolithic Neural Network Used to Obtain the Risk of Developing Hypertension
- 4.4.2 Results Obtained from the Optimization
- 4.4.3 Z-test of FPA and ALO Versus Simple Enumeration Method
- 4.5 Optimization of the Modular Neural Network to Obtain the Risk of Developing a Cardiovascular Event
- 4.5.1 Proposed Method for Optimizing the Modular Network for the Risk of Developing a Cardiovascular Event
- 4.5.2 Experimentation and Results of the Optimization
- 4.6 Fuzzy Bird Swarm Algorithm
- 4.6.1 Proposed Method for the Dynamic Parameter Adjustment
- 4.6.2 Experiments and Results
- 4.6.3 Results
- 4.6.4 Statistical Test
- References
- 5 Conclusions of the Hybrid Medical Model
- Appendix A Knowledge Representation
- Type-1 Fuzzy System Knowledge Representation for Heart Rate Classification
- Inputs Variables
- Output Variable
- IT2FS Knowledge Representation Using Gaussian Membership Functions
- Inputs Variables
- Output Variable
- Knowledge Representation of the Fuzzy Classifier to Obtain the Nocturnal Blood Pressure Profile
- Inputs Variables
- Appendix B Graphical User Interface
- Index
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