
Advanced Machine Learning for Complex Medical Data Analysis
Advanced Machine Learning for Complex Medical Data Analysis is a definitive guide to leveraging machine learning to solve critical challenges in medical data analysis. This book discusses cutting-edge methodologies, from predictive modeling to neural networks, tailored to address the unique complexities of medical and healthcare data. It combines theoretical frameworks with practical applications, ensuring readers gain a comprehensive understanding of both concepts and real-world implementations. The book covers diverse topics, including medical image denoising, the transformative role of GANs, IoT applications in healthcare, early disease detection using speech data, and COVID detection using autoencoders. It also explores the impact of big data, statistical approaches to medical analytics, and public health improvements through technology. Key Features: - Practical insights into deploying advanced machine learning models for healthcare. - Real-world case studies on diverse diseases and datasets. - Cutting-edge topics like explainable AI, federated learning, and ethical considerations. - Methods for improving data accuracy, efficiency, and privacy. Readership: Researchers, academics, graduate students, and professionals in data science, bioinformatics, and healthcare analytics. Advanced Machine Learning for Complex Medical Data Analysis is a definitive guide to leveraging machine learning to solve critical challenges in medical data analysis. This book discusses cutting-edge methodologies, from predictive modeling to neural networks, tailored to address the unique complexities of medical and healthcare data. It combines theoretical frameworks with practical applications, ensuring readers gain a comprehensive understanding of both concepts and real-world implementations. The book covers diverse topics, including medical image denoising, the transformative role of GANs, IoT applications in healthcare, early disease detection using speech data, and COVID detection using autoencoders. It also explores the impact of big data, statistical approaches to medical analytics, and public health improvements through technology. Key Features: - Practical insights into deploying advanced machine learning models for healthcare. - Real-world case studies on diverse diseases and datasets. - Cutting-edge topics like explainable AI, federated learning, and ethical considerations. - Methods for improving data accuracy, efficiency, and privacy. Readership: Researchers, academics, graduate students, and professionals in data science, bioinformatics, and healthcare analytics.
forme de livre
licence de livre
$ 59.00
Commentaires
Aperçu de la notation
Sélectionnez une ligne ci-dessous pour filtrer les avis.
0
0
0
0
0
0
Global
Notes moyennes des clients
Critique de ce livre
Partagez vos réflexions avec d'autres lecteurs
Le plus populaire
description_of_book
Advanced Machine Learning for Complex Medical Data Analysis is a definitive guide to leveraging machine learning to solve critical challenges in medical data analysis. This book discusses cutting-edg
Informations supplémentaires
Table des matières