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Linking national immigration data to provincial repositories: The case of Canada

BACKGROUND: Canadian health data repositories link datasets at the provincial level, based on their residents’ registrations to provincial health insurance plans. Linking national datasets with provincial health care registries poses several challenges that may result in misclassification and impact...

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Autores principales: Urquia, Marcelo L., Walld, Randy, Wanigaratne, Susitha, Eze, Nkiruka D., Azimaee, Mahmoud, McDonald, James Ted, Guttmann, Astrid
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Swansea University 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8147743/
https://www.ncbi.nlm.nih.gov/pubmed/34104802
http://dx.doi.org/10.23889/ijpds.v6i1.1412
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author Urquia, Marcelo L.
Walld, Randy
Wanigaratne, Susitha
Eze, Nkiruka D.
Azimaee, Mahmoud
McDonald, James Ted
Guttmann, Astrid
author_facet Urquia, Marcelo L.
Walld, Randy
Wanigaratne, Susitha
Eze, Nkiruka D.
Azimaee, Mahmoud
McDonald, James Ted
Guttmann, Astrid
author_sort Urquia, Marcelo L.
collection PubMed
description BACKGROUND: Canadian health data repositories link datasets at the provincial level, based on their residents’ registrations to provincial health insurance plans. Linking national datasets with provincial health care registries poses several challenges that may result in misclassification and impact the estimation of linkage rates. A recent linkage of a federal immigration database in the province of Manitoba illustrates these challenges. OBJECTIVES: a) To describe the linkage of the federal Immigration, Refugees and Citizenship Canada Permanent Resident (IRCC-PR) database with the Manitoba healthcare registry and b) compare data linkage methods and rates between four Canadian provinces accounting for interprovincial mobility of immigrants. METHODS: We compared linkage rates by immigrant’s province of intended destination (province vs. rest of Canada). We used external nationwide immigrant tax filing records to approximate actual settlement and obtain linkage rates corrected for interprovincial mobility. RESULTS: The immigrant linkage rates in Manitoba before and after accounting for interprovincial mobility were 84.8% and 96.1, respectively. Linkage rates did not substantially differ according to immigrants’ characteristics, with a few exceptions. Observed linkage rates across the four provinces ranged from 74.0% to 86.7%. After correction for interprovincial mobility, the estimated linkage rates increased > 10 percentage points for the provinces that stratified by intended destination (British Columbia and Manitoba) and decreased up to 18 percentage points for provinces that could not use immigration records of those who did not intend to settle in the province (New Brunswick and Ontario). CONCLUSIONS: Despite variations in methodology, provincial linkage rates were relatively high. The use of a national immigration dataset for linkage to provincial repositories allows a more comprehensive linkage than that of province-specific subsets. Observed linkage rates can be biased downwards by interprovincial migration, and methods that use external data sources can contribute to assessing potential selection bias and misclassification.
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spelling pubmed-81477432021-06-07 Linking national immigration data to provincial repositories: The case of Canada Urquia, Marcelo L. Walld, Randy Wanigaratne, Susitha Eze, Nkiruka D. Azimaee, Mahmoud McDonald, James Ted Guttmann, Astrid Int J Popul Data Sci Population Data Science BACKGROUND: Canadian health data repositories link datasets at the provincial level, based on their residents’ registrations to provincial health insurance plans. Linking national datasets with provincial health care registries poses several challenges that may result in misclassification and impact the estimation of linkage rates. A recent linkage of a federal immigration database in the province of Manitoba illustrates these challenges. OBJECTIVES: a) To describe the linkage of the federal Immigration, Refugees and Citizenship Canada Permanent Resident (IRCC-PR) database with the Manitoba healthcare registry and b) compare data linkage methods and rates between four Canadian provinces accounting for interprovincial mobility of immigrants. METHODS: We compared linkage rates by immigrant’s province of intended destination (province vs. rest of Canada). We used external nationwide immigrant tax filing records to approximate actual settlement and obtain linkage rates corrected for interprovincial mobility. RESULTS: The immigrant linkage rates in Manitoba before and after accounting for interprovincial mobility were 84.8% and 96.1, respectively. Linkage rates did not substantially differ according to immigrants’ characteristics, with a few exceptions. Observed linkage rates across the four provinces ranged from 74.0% to 86.7%. After correction for interprovincial mobility, the estimated linkage rates increased > 10 percentage points for the provinces that stratified by intended destination (British Columbia and Manitoba) and decreased up to 18 percentage points for provinces that could not use immigration records of those who did not intend to settle in the province (New Brunswick and Ontario). CONCLUSIONS: Despite variations in methodology, provincial linkage rates were relatively high. The use of a national immigration dataset for linkage to provincial repositories allows a more comprehensive linkage than that of province-specific subsets. Observed linkage rates can be biased downwards by interprovincial migration, and methods that use external data sources can contribute to assessing potential selection bias and misclassification. Swansea University 2021-05-25 /pmc/articles/PMC8147743/ /pubmed/34104802 http://dx.doi.org/10.23889/ijpds.v6i1.1412 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
Urquia, Marcelo L.
Walld, Randy
Wanigaratne, Susitha
Eze, Nkiruka D.
Azimaee, Mahmoud
McDonald, James Ted
Guttmann, Astrid
Linking national immigration data to provincial repositories: The case of Canada
title Linking national immigration data to provincial repositories: The case of Canada
title_full Linking national immigration data to provincial repositories: The case of Canada
title_fullStr Linking national immigration data to provincial repositories: The case of Canada
title_full_unstemmed Linking national immigration data to provincial repositories: The case of Canada
title_short Linking national immigration data to provincial repositories: The case of Canada
title_sort linking national immigration data to provincial repositories: the case of canada
topic Population Data Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8147743/
https://www.ncbi.nlm.nih.gov/pubmed/34104802
http://dx.doi.org/10.23889/ijpds.v6i1.1412
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