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E-raamat: Deep Learning Models towards Health Informatics Management: Foundations, Challenges and Opportunities

Edited by , Edited by (Department of AI and ML, BMS Institute of Technology and Management, India), Edited by , Edited by (IFET College of Engineering)
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This book provides a comprehensive discussion of deep learning (DL) in medical and healthcare applications, including the fundamentals and current advances in medical image analysis, deep learning methods for medical image analysis, and deep learning-based clinical computer-aided diagnosis systems.



This book provides a comprehensive discussion of deep learning (DL) in medical and healthcare applications, including the fundamentals and current advances in medical image analysis, DL methods for medical image analysis, and DL-based clinical computer-aided diagnosis systems. It further presents algorithms, models, software, and tools in the field of bioinformatics.

This book:

  • Presents mathematical principles of DL algorithms such as convolutional
    neural networks and recurrent neural networks.
  •  Discusses applications of DL such as hyperparameter optimization and multimodal DL for bioinformatics.
  • Showcases how algorithms are applied to a broad range of application areas, including microscopy and pathology.                                                                                         
  • Covers DL techniques such as deep feedforward networks, sequence modeling, and convolutional networks.
  • Examines the importance of deep learning in biomedical image processing and enhancing biological diagnosis. 

It will serve as an ideal reference text for senior undergraduates, graduate students, and academic researchers in the areas such as electrical engineering, electronics, and communications engineering, computer engineering, and information technology.

 

1. Healthcare Informatics for Analyzing Patient Health Records.
2.
Advancements in Deep Learning for Medical Image Representation Techniques.
3.
Secure Steganographic Medical Image Compression by Using Winged Herbi-Hopper
Optimization Algorithm.
4. Shedding Light into the Dark: Early Oral Cancer
Detection using Hyperspectral Imaging.
5. Seeing the Unseen: An Automated
Early Breast Cancer Detection Using Hyperspectral Imaging.
6. Deep Generative
Models and Challenges in Synthesizing Histopathological Images for Breast
Cancer Diagnosis.
7. Deep Learning-Based Approach for Automated Cataract
Detection.
8. Analysis of Vision Health Assessment and Diagnosis Using
Advanced Deep Learning Techniques.
9. Diabetic Retinopathy Detection Using
Fine-Tuned ResNet-50, ResNet-152, and a Hybrid Classical-Quantum Model: A
Comprehensive Deep Learning Approach.
10. Deep Learning for Automated Tumor
Segmentation in MRI Images.
11. Neural Models for Embodied AI Agents in
Healthcare: Enhancing Patient Interaction, Diagnosis, and Treatment through
Autonomous Learning Systems.
12. Embodied AI in Healthcare and Assistive
Robotics.
13. Smart Human Intrusion Prevention: YOLO and CNN-Based Detection
and Alerting System.
14. Deep Learning for Clinical Decision Support Systems.
T. Ananth Kumar works as Research Head and Associate Professor in Computer Science and Engineering, IFET college of Engineering (Autonomous), India. He received his Ph.D. degree in VLSI Design from Manonmaniam Sundaranar University, Tirunelveli, India. He received his masters degree in VLSI Design from Anna University, Chennai, India and bachelors degree in Electronics and communication engineering from Anna University, Chennai, India. He has presented papers in various National and International Conferences and Journals. His fields of interest are Networks on Chips, Computer Architecture and ASIC design. He has received awards such as Young Innovator Award, Young Researcher Award, Class A Award IIT Bombay and Best Paper Award at INCODS 2017. He is a life member of ISTE, Senior Member IEEE and few membership bodies. He has many patents in various domains. He has edited 6 books and has written many book chapters in Springer, IET Press, and Taylor & Francis press. He is the author of the book Evolutionary Intelligence for Healthcare Applications.

Rajmohan Rajendrane earned his Doctoral Degree in Co-operative Networks under Anna University in the year 2022. Rajmohan has spent a decade in instructing, counseling, and down to earth application improvement. He is currently working as Assistant Professor in SRM Institute of Science and Technology (Deemed to be University), Kattankulathur campus, Tamil Nadu, India. His fields of interest are Artificial Intelligence, Data Science, Medical Imaging, Machine Learning, Wireless Network, Deep learning and IoT. He has published more than 60 papers in various reputed SCI, Scopus indexed and UGC care journals. He has published 3 patents in the domain of image processing and has edited 6 with international publishers of repute. He has authored over 20 book chapters and a book titled Evolutionary Intelligence for Healthcare Applications. He received Best Educator Award from International Institute of Organized Research (I2OR), India in 2017. He is the associate editor of PLOS ONE journal and reviewer for reputed international journals.

Niranjanamurthy M is an Associate Professor at the Department of Artificial Intelligence and Machine Learning, BMS Institute of Technology and Management. He completed his PhD in Computer Science. He has fifteen years of teaching experience and two years of industry experience as a Software Engineer. He has written twenty-five books and around hundred articles have been published in various National / International Conferences / International Journals. He has filled thirty-six patents and six of them have been granted. He is also a reviewer and an editorial board member of various International Journals. Alongside, he has been an examiner for doctoral research projects and has conducted various national level workshops and conferences and delivered lectures. He is associated with various professional bodies such as the IEEE, IAENG. The areas of his interest are Data Science, Software Testing, Software Engineering, Web Services, Web-Technologies, Cloud Computing, Big data analytics, and Networking.

Sambasivam Nanasekaran is an Assistant Professor in the School of Computing and Data Science, Xiamen University Malaysia, Sepang, Malaysia. He received a PhD degree in Computer Science and Engineering from Pondicherry University, Puducherry, India. He has held teaching positions in international universities and has also been a dean. He has published research articles in peer reviewed international journals and has presented papers in international conferences. He is also a member of IEEE. He has also been a reviewer in various peer-reviewed Journals and Conferences.