Incomplete contingency tables with censored cells with application to estimating the number of people who inject drugs in Scotland
Incomplete contingency tables with censored cells with application to estimating the number of people who inject drugs in Scotland
Estimating the size of hidden or difficult to reach populations is often of interest for economic, sociological or public health reasons. In order to estimate such populations, administrative data lists are often collated to form multi-list cross-counts and displayed in the form of an incomplete contingency table. Log-linear models are typically fitted to such data to obtain an estimate of the total population size by estimating the number of individuals not observed by any of the data-sources. This approach has been taken to estimate the current number of people who inject drugs (PWID) in Scotland, with the Hepatitis C virus diagnosis database used as one of the data-sources to identify PWID. However, the Hepatitis C virus diagnosis data-source does not distinguish between current and former PWID, which, if ignored, will lead to overestimation of the total population size of current PWID. We extend the standard model-fitting approach to allow for a data-source, which contains a mixture of target and non-target individuals (i.e. in this case, current and former PWID). We apply the proposed approach to data for PWID in Scotland in 2003, 2006 and 2009 and compare with the results from standard log-linear models.
1564-1579
Overstall, Antony
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King, Ruth
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Bird, Sheila
41cceac3-4dd3-4bf3-9faa-89fe223de976
Hutchinson, Sharon
8e124af1-1224-4532-bcec-9f95b17fca36
Hay, Gordon
b87a1ece-b82e-4555-a6f0-4085ed49e04e
30 April 2014
Overstall, Antony
c1d6c8bd-1c5f-49ee-a845-ec9ec7b20910
King, Ruth
64ab7d0e-2ce7-4c68-96c3-e25d876542be
Bird, Sheila
41cceac3-4dd3-4bf3-9faa-89fe223de976
Hutchinson, Sharon
8e124af1-1224-4532-bcec-9f95b17fca36
Hay, Gordon
b87a1ece-b82e-4555-a6f0-4085ed49e04e
Overstall, Antony, King, Ruth, Bird, Sheila, Hutchinson, Sharon and Hay, Gordon
(2014)
Incomplete contingency tables with censored cells with application to estimating the number of people who inject drugs in Scotland.
Statistics in Medicine, 33 (9), .
(doi:10.1002/sim.6047).
Abstract
Estimating the size of hidden or difficult to reach populations is often of interest for economic, sociological or public health reasons. In order to estimate such populations, administrative data lists are often collated to form multi-list cross-counts and displayed in the form of an incomplete contingency table. Log-linear models are typically fitted to such data to obtain an estimate of the total population size by estimating the number of individuals not observed by any of the data-sources. This approach has been taken to estimate the current number of people who inject drugs (PWID) in Scotland, with the Hepatitis C virus diagnosis database used as one of the data-sources to identify PWID. However, the Hepatitis C virus diagnosis data-source does not distinguish between current and former PWID, which, if ignored, will lead to overestimation of the total population size of current PWID. We extend the standard model-fitting approach to allow for a data-source, which contains a mixture of target and non-target individuals (i.e. in this case, current and former PWID). We apply the proposed approach to data for PWID in Scotland in 2003, 2006 and 2009 and compare with the results from standard log-linear models.
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Accepted/In Press date: 3 November 2013
e-pub ahead of print date: 1 December 2013
Published date: 30 April 2014
Organisations:
Statistics
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Local EPrints ID: 401174
URI: http://eprints.soton.ac.uk/id/eprint/401174
ISSN: 0277-6715
PURE UUID: 1a094a98-5441-441a-a64b-10abe2d37f5b
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Date deposited: 05 Oct 2016 14:18
Last modified: 15 Mar 2024 03:27
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Author:
Ruth King
Author:
Sheila Bird
Author:
Sharon Hutchinson
Author:
Gordon Hay
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