Within the healthcare domain, big data is defined as any ``high volume, high diversity biological, clinical, environmental, and lifestyle information collected from single individuals to large cohorts, in relation to their health and wellness status, at one or several time points.'' Such data is crucial because within it lies vast amounts of invaluable information that could potentially change a patient's life, opening doors to alternate therapies, drugs, and diagnostic tools. Signal Processing and Machine Learning for Biomedical Big Data thus discusses modalities; the numerous ways in which this data is captured via sensors; and various sample rates and dimensionalities. Capturing, analyzing, storing, and visualizing such massive data has required new shifts in signal processing paradigms and new ways of combining signal processing with machine learning tools. This book covers several of these aspects in two ways: firstly, through theoretical signal processing chapters where tools aimed at big data (be it biomedical or otherwise) are described; and, secondly, through application-driven chapters focusing on existing applications of signal processing and machine learning for big biomedical data. This text aimed at the curious researcher working in the field, as well as undergraduate and graduate students eager to learn how signal processing can help with big data analysis. It is the hope of Drs. Sejdic and Falk that this book will bring together signal processing and machine learning researchers to unlock existing bottlenecks within the healthcare field, thereby improving patient quality-of-life.
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Ervin Sejdic is currently an Assistant Professor with the Department of Electrical Engineering and Biomedical Engineering at the University of Pittsburg. He has extensive research experience in biomedical and theoretical signal processing, swallowing difficulties, gait and balance. assistive technologies, rehabilitation engineering, anticipatory medical devices, and advanced information systems in medicine.
Tiago Falk is the founder and director of the Multimodal Signal Analysis and Enhancement Lab at the University of Quebec in Montreal. His work on signal processing for big multimedia and biomedical data has engenered numerous awards, including the 2015 CMBES Early Career Award and the 2014 WearHacks Creativity Award and the IEEE Kingston Section Ph.D Excellence Award.
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Librería: killarneybooks, Inagh, CLARE, Irlanda
Hardcover. Condición: Very Good. 1st Edition. Oversized hardcover, weight: 1840g, xviii + 605 pages, NOT ex-library. Printed and bound in the UK. Interior is clean and bright throughout, with unmarked text, free of inscriptions and stamps, firmly bound. Boards show gentle shelfwear and small scuff-marks. Issued without a dust jacket. -- This reference work addresses the critical intersection of massive medical datasets and advanced computational analysis. The text serves as a bridge for researchers and students, detailing how new signal processing paradigms can unlock the potential of "big data" to improve clinical outcomes and patient quality of life. Thematic Structure: The book is organized into two primary segments to balance fundamental theory with practical implementation: - Theoretical Foundations: These chapters focus on signal processing tools specifically designed for large-scale data environments. Topics include data quality, compression, and statistical and graph signal processing techniques. - Application-Driven Research: The second half explores existing deployments of machine learning and signal processing across diverse medical domains, including neuroimaging, cardiac monitoring, retinal analysis, and genomic sequencing. Key Technical Areas: - Bio-Signal Modalities: Detailed discussions on capturing data through various sensors, addressing the challenges of differing sample rates, high dimensionality, and massive storage requirements; - Machine Learning Integration: The text explores the transition from traditional algorithms to deep learning models for predictive analytics in critical care, sleep studies, and rehabilitation; - Clinical Impact: A significant focus is placed on using expert domain knowledge to enhance algorithms for patient outcome prediction and real-time monitoring in intensive care units (ICUs). Nº de ref. del artículo: 007119
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Librería: GreatBookPricesUK, Woodford Green, Reino Unido
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Librería: Majestic Books, Hounslow, Reino Unido
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Librería: moluna, Greven, Alemania
Gebunden. Condición: New. Ervin Sejdic is currently an Assistant Professor with the Department of Electrical Engineering and Biomedical Engineering at the University of Pittsburg. He has extensive research experience in biomedical and theoretical signal processin. Nº de ref. del artículo: 596131411
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Librería: Books Puddle, New York, NY, Estados Unidos de America
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Librería: Revaluation Books, Exeter, Reino Unido
Hardcover. Condición: Brand New. 500 pages. 11.00x8.50x1.50 inches. In Stock. Nº de ref. del artículo: __1498773451
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