Fr. 195.00

Computational Intelligence Algorithms for the Diagnosis of - Neurological Disorder

Inglese · Copertina rigida

Pubblicazione il 04.08.2025

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PART A: Introduction and Challenges Chapter 1 Introduction to Neurological Disorders Chapter 2 Navigating the Complexities of the Brain Challenges and Opportunities in Computational Neurology Chapter 3 Challenges and Opportunities in Computational Neurology Chapter 4 Ethical Issues in Neurodisorder Diagnosis Chapter 5 Ethical Issues in Neurodisorder Diagnosis: Computational Intelligence towards Compassionate Psychiatric Treatment Part-B: Neuroimaging and Diagnostic Techniques Chapter 6 Improving Magnetic Resonance Imaging (MRI) for Better Understanding of Neurological Disorders Chapter 7 Advancements in Neuroimaging technique in Encephalopathy Chapter 8 Targeted Drug Delivery for Neurological Disorders Chapter 9 Intelligent Deep Learning Algorithms for Autism Spectrum Disorder Diagnosis Chapter 10 Advanced Neuroimaging with Generative Adversarial Networks Chapter 11 Machine Learning Strategy with Decision Trees for Parkinson's Detection by Analyzing the Energy of the Acoustic Data Chapter 12 Adaptive Convolution Neural Network-based Brain Tumor Detection from MR Images Chapter 13 STN-DRN: Integrating Spatial Transformer Network with Deep Residual Network for Multiclass Classification of Alzheimer's Disease Part C: Machine Learning & AI Applications in Neurological Disorders Chapter 14 Evaluation of Supervised Learning Algorithms in Detection of Neurodisorders: A Focus on Parkinson's Disease Chapter 15 Comparative Analysis of Supervised and Unsupervised Learning Algorithms in the Detection of Alzheimer's disease Chapter 16 Deep Learning Techniques in Neurological Disorder Detection Chapter 17 From Data to Diagnosis: Supervised Learning's Impact on Neuro-disorder detection, with a focus on Autism Spectrum Disorder Chapter 18 Parkinson's Disease Detection from Drawing Images using Deep Pretrained Models Chapter 19 Optimizing Digital Healthcare for Alzheimer's: A Deep Federated Learning Convolutional Neural Network Scheme (DFLCNNS) Chapter 20 Artificial Intelligence: A Game-Changer in Parkinson's Disease Neurorehabilitation Chapter 21 Targeting Upper Limb Sensory Gaps: New Rehab Insights for Chronic Neck Pain


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S. N. Kumar received his B.E. degree from the Department of Electrical and Electronics Engineering, Sun College of Engineering and Technology, in 2007, his M.E. degree in applied electronics from the Anna University of Technology, Tirunelveli, and his Ph.D. degree from the Sathyabama Institute of Science and Technology in 2019. He is currently an Associate Professor with the Department of Electrical and Electronics Engineering, Amal Jyothi College of Engineering, Kanjirappally, and his research areas include medical image processing and embedded systems.
Sherin Zafar is an Assistant Professor of Computer Science and Engineering at the School of Engineering Sciences and Technology, Jamia Hamdard University, with a decade of successful experience in teaching and research management. She specializes in wireless networks, soft computing, and network security.
Sameena Naaz is a Senior Lecturer at the Department of Computer Science, School of Arts, Humanities and Social Sciences at the University of Roehampton, London, UK, with more than 22 years of experience. She received her M.Tech. degree in Electronics with Specialization in Communication and Information Systems from Aligarh Muslim University in 2000 and completed her Ph.D. from Jamia Hamdard in the field of distributed systems in 2014. Her research interests include distributed systems, cloud computing, big data, machine learning, data mining, and image processing.


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