Fr. 459.60

Diagnostic Applications of Health Intelligence and Surveillance Systems

English · Hardback

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Description

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Health surveillance and intelligence play an important role in modern health systems as more data must be collected and analyzed. It is crucial that this data is interpreted and analyzed effectively and efficiently in order to assist with diagnoses and predictions. Diagnostic Applications of Health Intelligence and Surveillance Systems is an essential reference book that examines recent studies that are driving artificial intelligence in the health sector and helping practitioners to predict and diagnose diseases. Chapters within the book focus on health intelligence and how health surveillance data can be made useful and meaningful. Covering topics that include computational intelligence, data analytics, mobile health, and neural networks, this book is crucial for healthcare practitioners, IT specialists, academicians, researchers, and students.

Summary

Examines recent studies that are driving artificial intelligence in the health sector and helping practitioners to predict and diagnose diseases. Chapters focus on health intelligence and how health surveillance data can be made useful and meaningful.

Product details

Assisted by Abhay Bansal (Editor), Madhulika Bhatia (Editor), Madhurima Hooda (Editor), Jorge Morato (Editor), Divakar Yadav (Editor)
Publisher Medical Information Science Reference
 
Languages English
Product format Hardback
Released 31.01.2021
 
EAN 9781799865278
ISBN 978-1-79986-527-8
No. of pages 360
Dimensions 221 mm x 286 mm x 24 mm
Weight 1165 g
Subject Natural sciences, medicine, IT, technology > Medicine > General

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