1st Edition

Bio-inspired Algorithms in Machine Learning and Deep Learning for Disease Detection

262 Pages 3 Color & 51 B/W Illustrations
by CRC Press

262 Pages 3 Color & 51 B/W Illustrations
by CRC Press

262 Pages 3 Color & 51 B/W Illustrations
by CRC Press

Currently, computational intelligence approaches are utilised in various science and engineering applications to analyse information, make decisions, and achieve optimisation goals. Over the past few decades, various techniques and algorithms have been created in disciplines such as genetic algorithms, artificial neural networks, evolutionary algorithms, and fuzzy algorithms. In the coming years,... Read more

Preface

1. Potential Benefits of BIAs-based ML/DL Models

Gopirajan P.V., Hariharan B., Wilfred Blessing N.R. and Anupama C.G.

2. BIAs-based Deep Learning (DL) Models

N. Sanjana, R. Immanual, K.M. Kirthika, S. Sangeetha, and K. Maharaja

3. Evaluation of Bio-Inspired Algorithm-based Machine Learning and Deep Learning Models

Selvam Durairaj, Malik Mohamed Umar and Natarajan B.

4. Disease Diagnosis: Traditional vs. Bio-Inspired Algorithm Approaches

Varun Saagar Saravanan, Dawn Sivan, K. Satheesh Kumar and Rajan Jose

5. Algorithmic Heartbeat with Bio-Inspired Algorithms in Cardiac Health Monitoring

Ashwini A., Kavitha V., Balasubramaniam S. and Seifedine Kadry

6. Bio-Inspired Algorithms-based Machine Learning and Deep Learning Models for Covid-19 Diagnosis

S. Sheik Asraf, M. Subash, P. Nagaraj V. Muneeswaran and Christopher Samuel Raj Balraj

7. Bio-Inspired Intelligence in Early Cancer Detection: A Machine Learning Approach

Ashwini A., Balasubramaniam S. and Sundaravadivazhagan B.

8. Bio-Inspired Algorithms in Machine Learning and Deep Learning for Diabetes Diagnosis

S. Aathilakshmi, Balasubramaniam S. and Ayodeji Olalekan Salau

9. A Multi-objective Optimized Bio-inspired Deep Learning framework for Autism Spectrum Disorder Diagnosis in Toddlers

K. Vijayalakshmi and Venkatesh Naganathan

10. Bio-Inspired Algorithms using Machine Learning and Deep Learning for Social Phobia Treatment

Abinaya M., Vadivu G., Balasubramaniam S. and Sundaravadivazhagan B.

11. Bio-Inspired Algorithms-based Machine Learning models for Neural Disorders Prediction: A Focus on Depression Detection

Tekulapally Shriya Reddy, Kishor Kumar Reddy C., Manoj Kumar Reddy D. and Srinath Doss

12. Research Directions and Challenges in Bio-Inspired Algorithms for Machine Learning and Deep Learning Models in Healthcare

Mani Deepak Choudhry, Sundarrajan M., Akshya Jothi and Seifedine Kadry

Index

Biography

Dr. Balasubramaniam S (IEEE Senior Member) is working as an Assistant Professor in School of Computer Science and Engineering, Kerala University of Digital Sciences, Innovation and Technology (Formerly IIITM-K), Digital University Kerala, Thiruvananthapuram, Kerala, India. He has totally around 15+ years of experience in teaching, research and industry. He has completed his Post Doctoral Research in Department of Applied Data Science, Noroff University College, Kristiansand, Norway. He holds a Ph.D degree in Computer Science and Engineering from Anna University, Chennai, India in 2015. He has published nearly 25+ research papers in reputed SCI/WoS/Scopus indexed Journals. He has also granted with 1 Australian patent and 2 Indian Patents and published 2 Indian patents. He has presented papers at conferences, contributed chapters to the edited books and editor in few books published by international publishers. His research and publication interests include machine learning and deep learning-based disease diagnosis, cloud computing security, Generative AI and Electric Vehicles.

Prof. Seifedine Kadry has a bachelor’s degree in 1999 from Lebanese University, MS degree in 2002 from Reims University (France) and EPFL (Lausanne), PhD in 2007 from Blaise Pascal University (France), HDR degree in 2017 from Rouen University (France). At present his research focuses on Data Science, education using technology, system prognostics, stochastic systems, and applied mathematics. He is an ABET program evaluator for computing, and ABET program evaluator for Engineering Tech. he is a full professor of data science at Noroff University College, Norway and Department of Computer Science, Lebanese American University, Beirut, Lebanon.

Prof. Manoj Kumar T K, currently serving as Dean (Research) and Professor at Kerala University of Digital Sciences, Innovation and Technology, Thiruvananthapuram, Kerala, India. He is having 5 years of post-doctoral research experience in prestigious institutions like IIT-Madras and Pohang University of Science & Technology, Korea. With an impressive 17-year track record in post-graduate teaching, Dr Manoj has imparted knowledge across a diverse range of subjects including Data Analytics, Deep Learning, Computational Sciences, Predictive Analytics, Big data technologies and Cloud computing, Discrete mathematics, Ordinary differential Equations, Automata, Data Structure and Algorithm, Artificial Intelligence, and Quantum Chemistry. Their scholarly contributions extend to 80 publications in international journals of high impact, marking a significant impact in their respective fields. Previously, he has holding key administrative roles such as Chair of the School of Digital Sciences; Registrar, Digital University Kerala; Registrar, Indian Institute of Information Technology and Management – Kerala and Director of the International Centre for Free and Open-Source Systems, Kerala, India.

Prof. K. Satheesh Kumar presently holds the role of Visiting Professor at the Kerala University of Digital Sciences, Innovation, and Technology, Thiruvananthapuram Kerala, India. Previously, he served as Professor and Head of the Department of Futures Studies at the University of Kerala, Kerala, India. Dr. Kumar’s academic journey began with a degree in mathematics, followed by doctoral research in suspension rheology and chaotic dynamics at the CSIR Lab in Thiruvananthapuram. He subsequently pursued post-doctoral research positions at Monash University, Australia, and POSTECH, South Korea. Dr. Kumar’s research interests span suspension and polymer rheology, chaotic dynamics, nonlinear time series analysis, geophysics, complex network analysis, and wind energy modeling and forecasting.