With this practical book, you will learn proven methods for
anonymizing health data to help your organization share meaningful
datasets, without exposing patient identity. Leading experts Khaled
El Emam and Luk Arbuckle walk you through a risk-based methodology,
using case studies from their efforts to de-identify hundreds of
datasets.
Clinical data is valuable for research and other types of
analytics, but making it anonymous without compromising data
quality is tricky. This book demonstrates techniques for handling
different data types, based on the authors' experiences with a
maternal-child registry, inpatient discharge abstracts, health
insurance claims, electronic medical record databases, and the
World Trade Center disaster registry, among others.Understand
different methods for working with cross-sectional and longitudinal
datasetsAssess the risk of adversaries who attempt to re-identify
patients in anonymized datasetsReduce the size and complexity of
massive datasets without losing key information or jeopardizing
privacyUse methods to anonymize unstructured free-form text
dataMinimize the risks inherent in geospatial data, without
omitting critical location-based health informationLook at ways to
anonymize coding information in health dataLearn the challenge of
anonymously linking related datasets
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