Berry R. Handbook of AI and Data Sciences for Sleep Disorders 2024
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Berry R. Handbook of AI and Data Sciences for Sleep Disorders 2024
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Added: 2025-03-10 23:39:04
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Description:
Textbook in PDF format
The rise of lifestyle changes resulting from constant connectivity, irregular work schedules, heightened stress, and disruptive sleep patterns, have contributed to increasing insomnia rates. Exacerbated by the COVID-19 pandemic, sleep disorders are more prevalent than ever. This handbook offers a comprehensive exploration of the fusion of Artificial Intelligence (AI) and data science within the realm of sleep disorders, presenting innovative approaches to diagnosis, treatment, and personalized care.
The interdisciplinary nature of this handbook fosters collaboration between experts from diverse fields, including computer science, engineering, neuroscience, medicine, public health, AI, data science, and sleep medicine. Each chapter delves into specific aspects of sleep disorder analysis, innovative methodologies, novel insights, and real-world applications that showcase the transformative potential of AI and data science in sleep medicine, from analyzing sleep patterns and predicting disorder risk factors to utilizing big data analytics for large-scale epidemiological studies. This handbook hopes to offer a comprehensive resource for researchers, clinicians, and policymakers striving to address the challenges in sleep medicine.
Preface
Empowering Sleep Health: Unleashing the Potential of Artificial Intelligence and Data Science in Sleep Disorders
Polysomnography Raw Data Extraction, Exploration, and Preprocessing
Sleep Stage Probabilities Derived from Neurological or Cardiorespiratory Signals by Means of Artificial Intelligence
From Screening at Clinic to Diagnosis at Home: How AI/ML/DL Algorithms Are Transforming Sleep Apnea Detection
Modeling and Analysis of Mechanical Work of Breathing
A Probabilistic Perspective: Bayesian Neural Network for Sleep Apnea Detection
Automatic and Machine Learning Methods for Detection and Characterization of REM Sleep Behavior Disorder
Sleep Cyclic Alternating Pattern (CAP) as a Neurophysiological Marker of Brain Health
Deep Learning with Electrocardiograms
Machine Learning Automated Analysis Applied to Mandibular Jaw Movements During Sleep: A Window on Polysomnography
Nightmare Disorder: An Overview