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BACKGROUND: Integration of information on individuals (record linkage) is a key problem in healthcare delivery, epidemiology, and "business intelligence" applications. It is now common to be required to link very large numbers of records, often containing various combinations of theoretically unique identifiers, such as NHS numbers, which are both incomplete and error-prone. METHODS: We describe a two-step record linkage algorithm in which identifiers with high cardinality are identified or generated, and used to perform an initial exact match based linkage. Subsequently, the resulting clusters are studied and, if appropriate, partitioned using a graph based algorithm detecting erroneous identifiers. RESULTS: The system was used to cluster over 250 million health records from five data sources within a large UK hospital group. Linkage, which was completed in about 30 minutes, yielded 3.6 million clusters of which about 99.8% contain, with high likelihood, records from one patient. Although computationally efficient, the algorithm's requirement for exact matching of at least one identifier of each record to another for cluster formation may be a limitation in some databases containing records of low identifier quality. CONCLUSIONS: The technique described offers a simple, fast and highly efficient two-step method for large scale initial linkage for records commonly found in the UK's National Health Service.

Original publication

DOI

10.1186/1472-6947-11-7

Type

Journal article

Journal

BMC Med Inform Decis Mak

Publication Date

01/02/2011

Volume

11

Keywords

Algorithms, Cluster Analysis, Electronic Health Records, Fuzzy Logic, Humans, Logistic Models, Medical Record Linkage, Multivariate Analysis, United Kingdom