Fr. 69.00

Anonymization of Electronic Medical Records to Support Clinical Analysis

English · Paperback / Softback

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Description

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Anonymization of Electronic Medical Records to Support Clinical Analysis closely examines the privacy threats that may arise from medical data sharing, and surveys the state-of-the-art methods developed to safeguard data against these threats.
To motivate the need for computational methods, the book first explores the main challenges facing the privacy-protection of medical data using the existing policies, practices and regulations. Then, it takes an in-depth look at the popular computational privacy-preserving methods that have been developed for demographic, clinical and genomic data sharing, and closely analyzes the privacy principles behind these methods, as well as the optimization and algorithmic strategies that they employ. Finally, through a series of in-depth case studies that highlight data from the US Census as well as the Vanderbilt University Medical Center, the book outlines a new, innovative class of privacy-preserving methods designed to ensure the integrityof transferred medical data for subsequent analysis, such as discovering or validating associations between clinical and genomic information.
Anonymization of Electronic Medical Records to Support Clinical Analysis is intended for professionals as a reference guide for safeguarding the privacy and data integrity of sensitive medical records. Academics and other research scientists will also find the book invaluable.

List of contents

Introduction.- Overview of patient data anonymization.- Re-identification of clinical data through diagnosis information.- Preventing re-identification while supporting GWAS.- Case study on electronic medical records data.- Conclusions and open research challenges.- Index.

Summary

Anonymization of Electronic Medical Records to Support Clinical Analysis closely examines the privacy threats that may arise from medical data sharing, and surveys the state-of-the-art methods developed to safeguard data against these threats.
To motivate the need for computational methods, the book first explores the main challenges facing the privacy-protection of medical data using the existing policies, practices and regulations. Then, it takes an in-depth look at the popular computational privacy-preserving methods that have been developed for demographic, clinical and genomic data sharing, and closely analyzes the privacy principles behind these methods, as well as the optimization and algorithmic strategies that they employ. Finally, through a series of in-depth case studies that highlight data from the US Census as well as the Vanderbilt University Medical Center, the book outlines a new, innovative class of privacy-preserving methods designed to ensure the integrityof transferred medical data for subsequent analysis, such as discovering or validating associations between clinical and genomic information.
Anonymization of Electronic Medical Records to Support Clinical Analysis is intended for professionals as a reference guide for safeguarding the privacy and data integrity of sensitive medical records. Academics and other research scientists will also find the book invaluable.

Product details

Authors Ari Gkoulalas-Divanis, Aris Gkoulalas-Divanis, Grigorios Loukides
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 09.08.2012
 
EAN 9781461456674
ISBN 978-1-4614-5667-4
No. of pages 72
Dimensions 171 mm x 10 mm x 238 mm
Weight 149 g
Illustrations XV, 72 p. 23 illus.
Series SpringerBriefs in Electrical and Computer Engineering
SpringerBriefs in Electrical and Computer Engineering
Subject Natural sciences, medicine, IT, technology > Medicine > General

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