Skip to product information
1 of 1
Regular price £89.19 GBP
Regular price £108.00 GBP Sale price £89.19 GBP
Sale Sold out
Free UK Shipping

Freshly Printed - allow 10 days lead

Semantic Models in IoT and eHealth Applications

Presents advanced coverage of semantic models and ontologies in eHealth

Sanju Tiwari (Edited by), Fernando Ortiz Rodriguez (Edited by), M.A. Jabbar (Edited by)

9780323917735, Elsevier Science

Paperback / softback, published 23 September 2022

290 pages
23.5 x 19 x 1.9 cm, 0.45 kg

Semantic Models in IoT and eHealth Applications explores the key role of semantic web modeling in eHealth technologies, including remote monitoring, mobile health, cloud data and biomedical ontologies. The book explores different challenges and issues through the lens of various case studies of healthcare systems currently adopting these technologies. Chapters introduce the concepts of semantic interoperability within a healthcare model setting and explore how semantic representation is key to classifying, analyzing and understanding the massive amounts of biomedical data being generated by connected medical devices.

Continuous health monitoring is a strong solution which can provide eHealth services to a community through the use of IoT-based devices that collect sensor data for efficient health diagnosis, monitoring and treatment. All of this collected data needs to be represented in the form of ontologies which are considered the cornerstone of the Semantic Web for knowledge sharing, information integration and information extraction.

1. Semantic Modelling for Healthcare Applications: An Introduction
2. Role of IoT and semantics in Ehealth
3. Evaluation and Visualization of Healthcare Semantic Models
4. Role of Connected objects in Healthcare Semantic Models
5. The Security and Privacy Aspects in Semantic Web enabled IoT based Healthcare Information Systems
6. Knowledge-based System as a Context-aware Approach for the Internet of Medical Connected Objects
7. Towards a Knowledge Graph for Medical Diagnosis: Issues and Usage Scenarios
8. A Naturopathy Knowledge Graph and Recommendation System to Boost the Immune System
9. SAREF4EHAW-Compliant Knowledge Discovery and Reasoning \for IoT-based Preventive Healthcare and Well-Being
10. Reasoning Over Personalized Healthcare Knowledge Graph: A Case Study of Patients with Allergies and Symptoms
11. Integrated Context-aware Ontology for MNCH Decision Support
12.  IntelliOntoRec: A Knowledge Infused Semiautomatic Approach for Ontology Formulation in Healthcare and Medical Science

Subject Areas: Artificial intelligence [UYQ], Robotics [TJFM1], Biomedical engineering [MQW]

View full details