When it comes to Parkinson's disease, one of the most important issues revolves around early detection and accurate diagnosis. The intricacies of this neurodegenerative disorder often elude timely identification, leaving patients and healthcare providers grappling with its progressive symptoms. Ethical concerns surrounding the use of machine learning to aid in diagnosis further complicate this challenge. This issue is particularly significant for research scholars, PhD fellows, post-doc fellows, and medical and biomedical scholars seeking to unravel the mysteries of Parkinson's disease and develop more effective treatments. Intelligent Technologies and Parkinson's Disease: Prediction and Diagnosis serves as a beacon of hope in the quest to revolutionize Parkinson's disease diagnosis and treatment. It unveils the remarkable potential of artificial intelligence (AI) and machine learning (ML) in remodeling the way we approach this debilitating condition. With a comprehensive exploration of AI's capacity to analyze speech patterns, brain imaging data, and gait patterns, this book offers a powerful solution to the challenges of early detection and accurate diagnosis. Whether you're a seasoned academic scholar or a passionate researcher, this book is your key to unlocking the future of Parkinson's disease management. It not only sheds light on the ethical considerations of using machine learning but also highlights the benefits, challenges, and real-world impact on patient care, diagnostic accuracy, and cost-effectiveness. With a diverse range of recommended topics, from handwriting kinematics to voice recordings and deep learning-CNN applications, this book equips you with the knowledge and tools you need to make a difference in the fight against Parkinson's disease.