Library Hours
Monday to Friday: 9 a.m. to 9 p.m.
Saturday: 9 a.m. to 5 p.m.
Sunday: 1 p.m. to 9 p.m.
Naper Blvd. 1 p.m. to 5 p.m.
     
Results Page:  Previous Next

Title Intelligent data analysis for biomedical applications : challenges and solutions / edited by Jude Hemanth, Deepak Gupta, Valentina Emilia Balas. [O'Reilly electronic resource]

Publication Info. London : Academic Press, 2019.
QR Code
Description 1 online resource
Series Intelligent data centric systems
Intelligent data centric systems.
Bibliography Includes bibliographical references and index.
Summary Intelligent Data Analysis for Biomedical Applications: Challenges and Solutions presents specialized statistical, pattern recognition, machine learning, data abstraction and visualization tools for the analysis of data and discovery of mechanisms that create data. It provides computational methods and tools for intelligent data analysis, with an emphasis on problem-solving relating to automated data collection, such as computer-based patient records, data warehousing tools, intelligent alarming, effective and efficient monitoring, and more. This book provides useful references for educational institutions, industry professionals, researchers, scientists, engineers and practitioners interested in intelligent data analysis, knowledge discovery, and decision support in databases.
Contents Front Cover; Intelligent Data Analysis for Biomedical Applications; Copyright Page; Contents; List of Contributors; 1 IoT-Based Intelligent Capsule Endoscopy System: A Technical Review; 1.1 Introduction; 1.2 Data Acquisition; 1.2.1 Image Sensor; 1.2.2 Optical Sensor; 1.2.3 Pressure, Temperature, and pH-Monitoring Sensor; 1.2.4 Other Ingestible Sensors; 1.3 On-Chip Data-Processing Unit; 1.3.1 Image Compression; 1.3.2 Application Specific Integrated Circuit Design; 1.3.3 Radiofrequency Transmission; 1.3.4 Power Management; 1.4 Data Management of Wireless Capsule Endoscopy Systems
1.5 IoT-Based Wireless Capsule Endoscopy System1.5.1 Intelligence in the System; 1.5.2 Real-Time Sensing; 1.5.3 Internet of Things Protocol; 1.5.4 Connectivity; 1.5.5 Security; 1.5.6 Improved Outcomes of Treatment; 1.6 Future Challenges; 1.7 Conclusion; References; 2 Optimization of Methods for Image-Texture Segmentation Using Ant Colony Optimization; 2.1 Introduction; 2.2 Implementation of Ant Colony Optimization Algorithm; 2.2.1 Isula Framework; 2.2.2 Ant Route Construction; 2.2.3 Ant Pheromone Update; 2.3 Image Segmentation Techniques; 2.3.1 Threshold-Based Segmentation
2.3.1.1 Otsu' Algorithm2.3.1.2 Ant Colony Optimization-Based Multilevel Thresholds Selection; 2.3.1.3 Algorithm for Ant Colony Optimization; 2.3.2 Edge-Based Segmentation; 2.3.2.1 Ant Colony Optimization-Based Edge Detection Initialization; 2.3.2.2 Ant Colony Optimization-Based Structuring Process; 2.3.2.3 Ant Colony Optimization-Based Updating Process; 2.3.2.4 Decision Process; 2.4 Evaluation of Segmentation Techniques; 2.4.1 Mean-Square Error; 2.4.2 Root-Mean-Square-Error; 2.4.3 Signal-to-Noise Ratio; 2.4.4 Peak Signal-to-Noise Ratio; 2.5 Experiments and Results
2.5.1 Ant Colony Optimization-Image-Segmentation Using the Isula Framework2.5.2 Performance Testing Ant Colony Optimization Image Segmentation Algorithm; 2.5.3 Application of Ant Colony Optimization on Segmentation of Brain MRI; 2.5.4 Ant Colony Optimization-Image Segmentation on Iris Images; 2.5.5 Comparison of Results; 2.6 Conclusion; References; Further Reading; 3 A Feature Fusion-Based Discriminant Learning Model for Diagnosis of Neuromuscular Disorders Using Single-Channel Needle E ... ; 3.1 Introduction; 3.2 State-of-Art-Methods; 3.3 Theoretical Modeling of Learning from Big Data
3.3.1 Strategy Statement3.3.2 Discriminant Feature Fusion Framework; 3.3.3 Generalized Multidomain Learning; 3.4 Medical Measurements and Data Analysis; 3.4.1 Electromyogram Signal Recording Setup; 3.4.2 Electromyogram Datasets; 3.5 Results and Discussion; 3.5.1 Correlation Analysis; 3.5.2 Performance Investigation of Discriminant Learning Scheme; 3.5.3 Comparative Study; 3.6 Conclusion; References; Further Reading; 4 Evolution of Consciousness Systems With Bacterial Behaviour; 4.1 Introduction; 4.2 Proposal; 4.2.1 Working Assumptions?; 4.2.2 Real Life Assumptions; 4.2.3 Consciousness Theory
Subject Bioinformatics.
Medical sciences -- Data processing.
Data mining.
Big data.
Computational Biology
Medicine
Data Mining
Bio-informatique.
Sciences de la santé -- Informatique.
Exploration de données (Informatique)
Données volumineuses.
Big data
Bioinformatics
Data mining
Medical sciences -- Data processing
Added Author Hemanth, D. Jude, editor.
Gupta, Deepak, active 2015-2016, editor.
Balas, Valentina Emilia, editor.
Other Form: Print version: Intelligent data analysis for biomedical applications. London : Academic Press, 2019 0128155531 9780128155530 (OCoLC)1045449101
ISBN 9780128156438 (electronic bk.)
0128156430 (electronic bk.)
9780128155530 (electronic bk.)
0128155531 (electronic bk.)
Patron reviews: add a review
Click for more information
EBOOK
No one has rated this material

You can...
Also...
- Find similar reads
- Add a review
- Sign-up for Newsletter
- Suggest a purchase
- Can't find what you want?
More Information