Tracking health disparities through natural-language processing
M.L. Wieland,
S.T. Wu,
V.C. Kaggal and
B.P. Yawn
American Journal of Public Health, 2013, vol. 103, issue 3, 448-449
Abstract:
Health disparities and solutions are heterogeneous within and among racial and ethnic groups, yet existing administrative databases lack the granularity to reflect important sociocultural distinctions. We measured the efficacy of a naturallanguage- processing algorithm to identify a specific immigrant group. The algorithm demonstrated accuracy and precision in identifying Somali patients from the electronic medical records at a single institution. This technology holds promise to identify and track immigrants and refugees in the United States in local health care settings.
Date: 2013
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Persistent link: https://EconPapers.repec.org/RePEc:aph:ajpbhl:10.2105/ajpj.2012.300943_0
DOI: 10.2105/AJPJ.2012.300943
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