Novel linkage approach to join community-acquired and national data

Author:

Tochel Claire,Pead Emma,McTrusty Alice,Buckmaster Fiona,MacGillivray Tom,Tatham Andrew J.,Strang Niall C.,Dhillon Baljean,Bernabeu Miguel O.

Abstract

Abstract Background Community optometrists in Scotland have performed regular free-at-point-of-care eye examinations for all, for over 15 years. Eye examinations include retinal imaging but image storage is fragmented and they are not used for research. The Scottish Collaborative Optometry-Ophthalmology Network e-research project aimed to collect these images and create a repository linked to routinely collected healthcare data, supporting the development of pre-symptomatic diagnostic tools. Methods As the image record was usually separate from the patient record and contained minimal patient information, we developed an efficient matching algorithm using a combination of deterministic and probabilistic steps which minimised the risk of false positives, to facilitate national health record linkage. We visited two practices and assessed the data contained in their image device and Practice Management Systems. Practice activities were explored to understand the context of data collection processes. Iteratively, we tested a series of matching rules which captured a high proportion of true positive records compared to manual matches. The approach was validated by testing manual matching against automated steps in three further practices. Results A sequence of deterministic rules successfully matched 95% of records in the three test practices compared to manual matching. Adding two probabilistic rules to the algorithm successfully matched 99% of records. Conclusions The potential value of community-acquired retinal images can be harnessed only if they are linked to centrally-held healthcare care data. Despite the lack of interoperability between systems within optometry practices and inconsistent use of unique identifiers, data linkage is possible using robust, almost entirely automated processes.

Funder

Edinburgh & Lothians Health Foundation

Sight Scotland

Royal College of Surgeons of Edinburgh

Chief Scientist Office

RS Macdonald Charitable Trust

Publisher

Springer Science and Business Media LLC

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