This book presents how multimedia data analysis, information retrieval and indexing are central for comprehensive, personalized, adaptive quality care and the prolongation of independent living at home. With sophisticated technologies in monitoring, diagnosis, and treatment, multimodal data plays an increasingly central role in healthcare. Experts in computer vision, image processing, medical imaging, biomedical engineering, medical informatics, physical education and motor control, visual learning, nursing and human sciences, information retrieval, content based image retrieval, eHealth, information fusion, multimedia communications and human computer interaction come together to provide a thorough overview of multimedia analysis in medicine and daily life.
This book presents how multimedia data analysis, information retrieval and indexing are central for comprehensive, personalized, adaptive quality care and the prolongation of independent living at home. With sophisticated technologies in monitoring, diagnosis, and treatment, multimodal data plays an increasingly central role in healthcare. Experts in computer vision, image processing, medical imaging, biomedical engineering, medical informatics, physical education and motor control, visual learning, nursing and human sciences, information retrieval, content based image retrieval, eHealth, information fusion, multimedia communications and human computer interaction come together to provide a thorough overview of multimedia analysis in medicine and daily life.
Artificial Intelligence (AI) in Healthcare is more than a comprehensive introduction to artificial intelligence as a tool in the generation and analysis of healthcare data. The book is split into two sections where the first section describes the current healthcare challenges and the rise of AI in this arena. The ten following chapters are written by specialists in each area, covering the whole healthcare ecosystem. First, the AI applications in drug design and drug development are presented followed by its applications in the field of cancer diagnostics, treatment and medical imaging. Subsequently, the application of AI in medical devices and surgery are covered as well as remote patient monitoring. Finally, the book dives into the topics of security, privacy, information sharing, health insurances and legal aspects of AI in healthcare. - Highlights different data techniques in healthcare data analysis, including machine learning and data mining - Illustrates different applications and challenges across the design, implementation and management of intelligent systems and healthcare data networks - Includes applications and case studies across all areas of AI in healthcare data
The book sheds light on medical cyber-physical systems while addressing image processing, microscopy, security, biomedical imaging, automation, robotics, network layers’ issues, software design, and biometrics, among other areas. Hence, solving the dimensionality conundrum caused by the necessity to balance data acquisition, image modalities, different resolutions, dissimilar picture representations, subspace decompositions, compressed sensing, and communications constraints. Lighter computational implementations can circumvent the heavy computational burden of healthcare processing applications. Soft computing, metaheuristic, and deep learning ascend as potential solutions to efficient super-resolution deployment. The amount of multi-resolution and multi-modal images has been augmenting the need for more efficient and intelligent analyses, e.g., computer-aided diagnosis via computational intelligence techniques. This book consolidates the work on artificial intelligence methods and clever design paradigms for healthcare to foster research and implementations in many domains. It will serve researchers, technology professionals, academia, and students working in the area of the latest advances and upcoming technologies employing smart systems’ design practices and computational intelligence tactics for medical usage. The book explores deep learning practices within particularly difficult computational types of health problems. It aspires to provide an assortment of novel research works that focuses on the broad challenges of designing better healthcare services.
Sustainable Development Goals (SDGs) are goals set by the United Nations to address the global challenges and foster sustainable development and harmony. To effectively achieve these goals, leveraging advanced technologies and engineering techniques is paramount. This edited volume explores the pivotal role of technology and engineering in advancing the SDGs across various sectors such as green energy, water management, healthcare, agriculture, and smart manufacturing. From innovative solutions in clean energy production to precision agriculture and smart cities, technological advancements offer scalable and efficient approaches to tackle complex sustainability issues.
Fully updated and revised, this new edition of a highly successful text provides students, clinicians, and academics with a thorough introduction to aging and mental health. The third edition of Aging and Mental Health is filled with new updates and features, including the impact of the DSM-5 on diagnosis and treatment of older adults. Like its predecessors, it uses case examples to introduce readers to the field of aging and mental health. It also provides both a synopsis of basic gerontology needed for clinical work with older adults and an analysis of several facets of aging well. Introductory chapters are followed by a series of chapters that describe the major theoretical models used to understand mental health and mental disorders among older adults. Following entries are devoted to the major forms of mental disorders in later life, with a focus on diagnosis, assessment, and treatment issues. Finally, the book focuses on the settings and contexts of professional mental health practice and on emerging policy issues that affect research and practice. This combination of theory and practice helps readers conceptualize mental health problems in later life and negotiate the complex decisions involved with the assessment and treatment of those problems. Features new material on important topics including positive mental health, hoarding disorder, chronic pain, housing, caregiving, and ethical and legal concerns Substantially revised and updated throughout, including reference to the DSM-5 Offers chapter-end recommendations of websites for further information Includes discussion questions and critical thinking questions at the end of each chapter Aging and Mental Health, Third Edition is an ideal text for advanced undergraduate and graduate students in psychology, for service providers in psychology, psychiatry, social work, and counseling, and for clinicians who are experienced mental health service providers but who have not had much experience working specifically with older adults and their families.
Realizing the growing importance of semantic adaptation and personalization of media, the editors of this book brought together leading researchers and practitioners of the field to discuss the state-of-the-art, and explore emerging exciting developments. This volume comprises extended versions of selected papers presented at the 1st International Workshop on Semantic Media Adaptation and Personalization (SMAP 2006), which took place in Athens in December 2006.
This book presents a detailed review of high-performance computing infrastructures for next-generation big data and fast data analytics. Features: includes case studies and learning activities throughout the book and self-study exercises in every chapter; presents detailed case studies on social media analytics for intelligent businesses and on big data analytics (BDA) in the healthcare sector; describes the network infrastructure requirements for effective transfer of big data, and the storage infrastructure requirements of applications which generate big data; examines real-time analytics solutions; introduces in-database processing and in-memory analytics techniques for data mining; discusses the use of mainframes for handling real-time big data and the latest types of data management systems for BDA; provides information on the use of cluster, grid and cloud computing systems for BDA; reviews the peer-to-peer techniques and tools and the common information visualization techniques, used in BDA.