Artificial Intelligence in Brain Disorders
Innovations in Diagnosis and Treatment
- 1st Edition - June 1, 2026
- Latest edition
- Editors: Pranav Kumar Prabhakar, Arun Kumar Singh, Prateek Agrawal, Radu Prodan
- Language: English
Artificial Intelligence in Brain Disorders: Innovations in Diagnosis and Treatment focuses on the utilization of AI and machine learning to enhance current practices in the diagno… Read more
As such, this book offers a detailed overview of AI and machine learning techniques relevant to neurological research.
- Offers a comprehensive exploration of cutting-edge AI, big data analytics, and machine learning methodologies specifically applied in the field of neurology
- Presents various machine learning techniques such as image segmentation, classification, neural networks, and image processing
- Showcases techniques in diagnosing early neurological disease identification and deep learning applications using advanced brain imaging technologies like EEG, MEG, fMRI, fNIRS, and PET
- Provides practical insights and case studies
2. Identification and evaluation of low-grade gliomas in the brain using machine learning
3. Cognitive therapy for brain diseases using deep learning models
4. Machine Intelligence in Clinical Neuroscience
5. Brain Informatics, by NL Swathy, Department Of Pharmacy Practice
6. Alzheimer's Disease Diagnosis using Artificial Intelligence
7. AI-enabled assistance support to Alzheimer Patients
8. Adolescents with serious depressive disorder: AI for detecting mental disorders
9. Modelling cognitive impairment in Parkinson s patients using deep learning
10. Parkinson’s disease diagnosis using AI
11. Artificial Intelligence shaping the future of neurology practice
12. Convergence of Artificial Intelligence and Neuroscience for Neurological Disorder Diagnosis
13. Early detection and prediction of brain tumurs in human patients using deep learning
14. Using deep learning to identify Brain tumors
15. Combining artificial intelligence and neuroscience to diagnose and predict neurological diseases
16. The role of AI in neuroethics and patients’ privacy
- Edition: 1
- Latest edition
- Published: June 1, 2026
- Language: English
PP
Pranav Kumar Prabhakar
AS
Arun Kumar Singh
Arun Kumar Singh has completed M. Pharm (Pharmaceutics) from Galgotias University, Greater Noida, India. Mr. Singh joined as an assistant professor in the Department of Pharmacy, Vivekanand Global University Jaipur Rajasthan 303012. His area of interest is in the area of nano-formulation, blockchain, IoT, machine learning, cancer, artificial intelligence, big data, and neuroscience. He has authored one book with IOP publishing and has published 5 chapters in big data with River Publisher in Denmark. He has also published 20 review papers among which two are in Biochimica et Biophysica Acta (BBA) – Reviews on Cancer. He has published 26 books with various publishers like IOP, Elsevier, CRC PRESS, and Wiley.
PA
Prateek Agrawal
Prateek Agrawal is professor and deputy dean at the School of Computer Science & Engineering, Lovely Professional University, Phagwara, Punjab, India. His research areas include natural language processing, computer vision, video processing, expert systems, deep learning applications, and other related topics. He is a senior member of IEEE and core member of IEEE India Council for Sustainable Development Activity, and is also a member of different reputed organizations like IET, MIR lab, and IAENG among others. Dr. Agarwal has published over 70 research papers in Scopus/SCIE indexed journals and conferences, 60 national patents, five edited books, and 10 book chapters. He is book series editor of the IOP series on next generation computing, and is a reviewer for many SCIE journals like Multimedia tools and Applications, Plos One, PeerJ, Oxford computer science, IEEE Access, and Ambient Intelligent & Humanized Computing.
RP
Radu Prodan
Radu Prodan is professor of distributed systems at the Institute of Information Technology (ITEC), University of Klagenfurt, Austria. He was an associate professor at the University of Innsbruck until 2018. His research interests include performance, optimization, and resource management tools for parallel and distributed systems, as well as middleware system tools for cloud, fog, and edge computing. He has participated in numerous projects, including coordinating the Horizon 2020 project ARTICONF. He has coauthored over 200 publications and received three IEEE best paper awards. He is a member of ACM.