Advances in ubiquitous sensing applications for healthcare - ... - cover

Advances in ubiquitous sensing applications for healthcare - ...

  • 24 maart 2026
  • 9780443452536
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Samenvatting:

Natural Language Processing for Healthcare: The Rise of Intelligent Assistants addresses the critical gap between cutting-edge AI research and its practical applications in healthcare, offering an accessible guide tailored to the unique challenges of medical environments. It highlights how NLP technologies are revolutionizing patient care, medical documentation, and clinical decision-making while emphasizing ethical, legal, and interoperability considerations. Structured into four sections, the book begins by laying foundational knowledge in NLP and healthcare data, covering concepts such as tokenization, medical ontologies like UMLS and SNOMED CT, machine learning models, including BioBERT and ClinicalBERT, and emerging impacts of large language models like GPT.The applications section explores real-world implementations of intelligent assistants, such as virtual health chatbots, clinical documentation tools, conversational AI for patient engagement, and voice recognition integrated into electronic health records. Technical chapters provide insights into system architectures, evaluation metrics, data privacy, security, and interoperability standards like FHIR. The final section looks ahead to future directions including multilingual NLP, federated learning for privacy preservation, and the evolving landscape of AI-driven healthcare assistants. This book is an indispensable resource for a broad audience. - Bridges AI research and healthcare practice with accessible, healthcare-focused NLP insights for clinical and operational use - Provides practical guidance on designing and deploying intelligent virtual assistants to enhance patient care and engagement - Addresses ethical, legal, and interoperability challenges unique to healthcare NLP applications - Explores cutting-edge technologies, including large language models and federated learning in real-world medical contexts - Equips data scientists and clinicians with tools to analyze unstructured medical data and improve clinical decision-making

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