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Applied Computing in Medicine and Health Emerging Topics in Computer Science and Applied Computing Series

Langue : Anglais

Auteurs :

Couverture de l’ouvrage Applied Computing in Medicine and Health

Applied Computing in Medicine and Health is a comprehensive presentation of on-going investigations into current applied computing challenges and advances, with a focus on a particular class of applications, primarily artificial intelligence methods and techniques in medicine and health.

Applied computing is the use of practical computer science knowledge to enable use of the latest technology and techniques in a variety of different fields ranging from business to scientific research. One of the most important and relevant areas in applied computing is the use of artificial intelligence (AI) in health and medicine. Artificial intelligence in health and medicine (AIHM) is assuming the challenge of creating and distributing tools that can support medical doctors and specialists in new endeavors. The material included covers a wide variety of interdisciplinary perspectives concerning the theory and practice of applied computing in medicine, human biology, and health care.

Particular attention is given to AI-based clinical decision-making, medical knowledge engineering, knowledge-based systems in medical education and research, intelligent medical information systems, intelligent databases, intelligent devices and instruments, medical AI tools, reasoning and metareasoning in medicine, and methodological, philosophical, ethical, and intelligent medical data analysis.

Chapter 1: Early Diagnosis of Neurodegenerative Diseases from Gait Discrimination to Neural SynchronizationChapter 2: Lifelogging Technologies to Detect Negative Emotions Associated with Cardiovascular DiseaseChapter 3: Gene Selection Methods for Microarray DataChapter 4: Brain MRI Intensity Inhomogeneity Correction using Region of Interest, Anatomic Structural Map and Outlier DetectionChapter 5 Leveraging Big Data Analytics for Personalised Elderly Care: Opportunities and ChallengesChapter 6: Prediction of Intrapartum Hypoxia from Cardiotocography Data Using Machine LearningChapter 7: Recurrent Neural Networks in Medical Data Analysis and ClassificationsChapter 8: Assured Decision and Meta-Governance for Mobile Medical Support SystemsChapter 9: Identifying Preferences and Developing an Interactive Data Model and Assessment for an Intelligent Mobile Application to Manage Young Patients Diagnosed with HydrocephalusChapter 10: Sociocultural and Technological Barriers Across all Phases of Implementation for mobile Health in Developing CountriesChapter 11: Application of Real-Valued Negative Selection Algorithm to Improve Medical DiagnosisChapter 12: Development and Applications of Mobile Farming Information System for Food Traceability in Health ManagementChapter 13 Telehealth in Primary Healthcare: Analysis of Liverpool NHS experienceChapter 14 Swarm Based-Artificial Neural System for Human Health Data Classification

  • Discusses applications of artificial intelligence in medical data analysis and classifications
  • Provides an overview of mobile health and telemedicine with specific examples and case studies
  • Explains how behavioral intervention technologies use smart phones to support a patient centered approach
  • Covers the design and implementation of medical decision support systems in clinical practice using an applied case study approach

Date de parution :

Ouvrage de 366 p.

19x23.3 cm

Disponible chez l'éditeur (délai d'approvisionnement : 14 jours).

103,74 €

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Mots-clés :

ACTVAGE; Ambulatory Monitoring; Barriers; Behavior classification; Bias Field; Big Data analytics; Bio-Inspired algorithms; Breast Cancer; CAPIM; Cardiotocography; Cardiovascular Disease; Clinical Decision Support; Clinical Management; Coherence; Combining Classifiers; Community Matrons; context-awareness; Cross-correlation; Data mining; Data Processing; Developing Countries; Disease data; Dynamic neural network; Elderly care; Electroencephalographic Signals; Electrohysterography; electromyography; Elman; Farming data; Feature Extraction; Feature Selection; Filter; Food traceability; Formal Methods; framework; Gene Selection; Global Guided Artificial Bee Colony; Governance; Guided Artificial Bee Colony; Guideline Implementation; Health management; Hybrid Approaches; Hydrocephalus; Hypoxia; Implementation; independent living; intelligent health care systems; Lifelogging; lifestyle-oriented; Machine Learning; Magnetic Resonance Imaging (MRI)Intensity Inhomogeneity; Mann�Whitney U Test; Medical data analysis; medical health systems; mHealth; Microarray Data; Mobile Computing; Mobile data collection; Mobile Health; Mobility; Movement Signals; Multilayer Perceptron; National Health Service (NHS)Telehealth; Negative Selection Algorithm; Neural Networks; Neural Synchronization; Neurodegenerative Diseases; Nonnested Generalized Exemplars; Patient Experience; Pattern Recognition; personalized care; personalized health; Phase synchrony; Prediction; Quick response code; Region of Interest (ROI)Locally Smooth and Globally Nonsmooth; Sequential Minimal Optimization; Signal Processing; Sociocultural; Stress Management; Supervised and Unsupervised Feature Selection; Technological; Ubiquitous Computing; Uterine Electrohysterography signals; Variable Detector; Vital Signs; Wrapper and Embedded