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Adversarial Deep Generative Techniques for Early Diagnosis of Neurological Conditions and Mental Health Practises

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Free Download Adversarial Deep Generative Techniques for Early Diagnosis of Neurological Conditions and Mental Health Practises: Theoretical Insights with Practical ... Systems Engineering and Management, 46) by Abhishek Kumar, Fernando Ortiz-Rodriguez, Jose Braga De Vasconcelos
English | July 16, 2025 | ISBN: 3031911466 | 425 pages | Epub PDF (True) | 47 Mb
This book explores a pioneering exploration of how deep generative models, including generative adversarial networks (GANs) and variational autoencoders (VAEs), renovating early neurological disorder detection. This book is a bridge between computational neuroscience and clinical neurology gaps, providing novel AI-driven methodologies for diagnosing conditions such as Alzheimer's, Parkinson's, epilepsy, and neurodevelopmental disorders. With a strong focus on neuroimaging, genomic data analysis, and biomedical informatics, the book equips researchers and practitioners with the tools to improve diagnostic accuracy and decision-making. It includes practical case studies, visual illustrations, and structured methodologies for training and validating deep learning models. Designed for neurologists, radiologists, data scientists, and AI researchers, this book is an essential resource for advancing precision medicine and next-generation healthcare innovation.​


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