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Record linkage for routinely collected health data in an African health information exchange

INTRODUCTION: The Patient Master Index (PMI) plays an important role in management of patient information and epidemiological research, and the availability of unique patient identifiers improves the accuracy when linking patient records across disparate datasets. In our environment, however, a uniq...

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Autores principales: Mutemaringa, Themba, Heekes, Alexa, Smith, Mariette, Boulle, Andrew, Tiffin, Nicki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Swansea University 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448229/
https://www.ncbi.nlm.nih.gov/pubmed/37636832
http://dx.doi.org/10.23889/ijpds.v8i1.1771
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author Mutemaringa, Themba
Heekes, Alexa
Smith, Mariette
Boulle, Andrew
Tiffin, Nicki
author_facet Mutemaringa, Themba
Heekes, Alexa
Smith, Mariette
Boulle, Andrew
Tiffin, Nicki
author_sort Mutemaringa, Themba
collection PubMed
description INTRODUCTION: The Patient Master Index (PMI) plays an important role in management of patient information and epidemiological research, and the availability of unique patient identifiers improves the accuracy when linking patient records across disparate datasets. In our environment, however, a unique identifier is seldom present in all datasets containing patient information. Quasi identifiers are used to attempt to link patient records but sometimes present higher risk of over-linking. Data quality and completeness thus affect the ability to make correct linkages. AIM: This paper describes the record linkage system that is currently implemented at the Provincial Health Data Centre (PHDC) in the Western Cape, South Africa, and assesses its output to date. METHODS: We apply a stepwise deterministic record linkage approach to link patient data that are routinely collected from health information systems in the Western Cape province of South Africa. Variables used in the linkage process include South African National Identity number (RSA ID), date of birth, year of birth, month of birth, day of birth, residential address and contact information. Descriptive analyses are used to estimate the level and extent of duplication in the provincial PMI. RESULTS: The percentage of duplicates in the provincial PMI lies between 10% and 20%. Duplicates mainly arise from spelling errors, and surname and first names carry most of the errors, with the first names and surname being different for the same individual in approximately 22% of duplicates. The RSA ID is the variable mostly affected by poor completeness with less than 30% of the records having an RSA ID. The current linkage algorithm requires refinement as it makes use of algorithms that have been developed and validated on anglicised names which might not work well for local names. Linkage is also affected by data quality-related issues that are associated with the routine nature of the data which often make it difficult to validate and enforce integrity at the point of data capture.
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spelling pubmed-104482292023-08-25 Record linkage for routinely collected health data in an African health information exchange Mutemaringa, Themba Heekes, Alexa Smith, Mariette Boulle, Andrew Tiffin, Nicki Int J Popul Data Sci Population Data Science INTRODUCTION: The Patient Master Index (PMI) plays an important role in management of patient information and epidemiological research, and the availability of unique patient identifiers improves the accuracy when linking patient records across disparate datasets. In our environment, however, a unique identifier is seldom present in all datasets containing patient information. Quasi identifiers are used to attempt to link patient records but sometimes present higher risk of over-linking. Data quality and completeness thus affect the ability to make correct linkages. AIM: This paper describes the record linkage system that is currently implemented at the Provincial Health Data Centre (PHDC) in the Western Cape, South Africa, and assesses its output to date. METHODS: We apply a stepwise deterministic record linkage approach to link patient data that are routinely collected from health information systems in the Western Cape province of South Africa. Variables used in the linkage process include South African National Identity number (RSA ID), date of birth, year of birth, month of birth, day of birth, residential address and contact information. Descriptive analyses are used to estimate the level and extent of duplication in the provincial PMI. RESULTS: The percentage of duplicates in the provincial PMI lies between 10% and 20%. Duplicates mainly arise from spelling errors, and surname and first names carry most of the errors, with the first names and surname being different for the same individual in approximately 22% of duplicates. The RSA ID is the variable mostly affected by poor completeness with less than 30% of the records having an RSA ID. The current linkage algorithm requires refinement as it makes use of algorithms that have been developed and validated on anglicised names which might not work well for local names. Linkage is also affected by data quality-related issues that are associated with the routine nature of the data which often make it difficult to validate and enforce integrity at the point of data capture. Swansea University 2023-02-28 /pmc/articles/PMC10448229/ /pubmed/37636832 http://dx.doi.org/10.23889/ijpds.v8i1.1771 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
spellingShingle Population Data Science
Mutemaringa, Themba
Heekes, Alexa
Smith, Mariette
Boulle, Andrew
Tiffin, Nicki
Record linkage for routinely collected health data in an African health information exchange
title Record linkage for routinely collected health data in an African health information exchange
title_full Record linkage for routinely collected health data in an African health information exchange
title_fullStr Record linkage for routinely collected health data in an African health information exchange
title_full_unstemmed Record linkage for routinely collected health data in an African health information exchange
title_short Record linkage for routinely collected health data in an African health information exchange
title_sort record linkage for routinely collected health data in an african health information exchange
topic Population Data Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448229/
https://www.ncbi.nlm.nih.gov/pubmed/37636832
http://dx.doi.org/10.23889/ijpds.v8i1.1771
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