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Protecting the privacy of individual general practice patient electronic records for geospatial epidemiology research
Author(s) -
Mazumdar Soumya,
Konings Paul,
Hewett Michael,
Bagheri Nasser,
McRae Ian,
Del Fante Peter
Publication year - 2014
Publication title -
australian and new zealand journal of public health
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.946
H-Index - 76
eISSN - 1753-6405
pISSN - 1326-0200
DOI - 10.1111/1753-6405.12262
Subject(s) - geospatial analysis , audit , geographic information system , public health , volunteered geographic information , data science , health geography , population , environmental epidemiology , unit (ring theory) , spatial epidemiology , computer science , population health , spatial analysis , geocoding , epidemiology , medicine , geography , environmental health , cartography , psychology , business , health policy , nursing , international health , accounting , mathematics education , remote sensing
Background: General practitioner (GP) practices in Australia are increasingly storing patient information in electronic databases. These practice databases can be accessed by clinical audit software to generate reports that inform clinical or population health decision making and public health surveillance. Many audit software applications also have the capacity to generate de‐identified patient unit record data. However, the de‐identified nature of the extracted data means that these records often lack geographic information. Without spatial references, it is impossible to build maps reflecting the spatial distribution of patients with particular conditions and needs. Links to socioeconomic, demographic, environmental or other geographically based information are also not possible. In some cases, relatively coarse geographies such as postcode are available, but these are of limited use and researchers cannot undertake precision spatial analyses such as calculating travel times. Methods: We describe a method that allows researchers to implement meaningful mapping and spatial epidemiological analyses of practice level patient data while preserving privacy. Results: This solution has been piloted in a diabetes risk research project in the patient population of a practice in Adelaide. Conclusions and Implications: The method offers researchers a powerful means of analysing geographic clinic data in a privacy‐protected manner.

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