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Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia

INTRODUCTION: The World Health Organization recommends viral load (VL) monitoring at six and twelve months and then annually after initiating antiretroviral treatment for HIV. In many African countries, expansion of VL testing has been slow due to a lack of efficient blood sample transportation netw...

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Autores principales: Nichols, Brooke E, Girdwood, Sarah J, Crompton, Thomas, Stewart‐Isherwood, Lynsey, Berrie, Leigh, Chimhamhiwa, Dorman, Moyo, Crispin, Kuehnle, John, Stevens, Wendy, Rosen, Sydney
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6280013/
https://www.ncbi.nlm.nih.gov/pubmed/30515997
http://dx.doi.org/10.1002/jia2.25206
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author Nichols, Brooke E
Girdwood, Sarah J
Crompton, Thomas
Stewart‐Isherwood, Lynsey
Berrie, Leigh
Chimhamhiwa, Dorman
Moyo, Crispin
Kuehnle, John
Stevens, Wendy
Rosen, Sydney
author_facet Nichols, Brooke E
Girdwood, Sarah J
Crompton, Thomas
Stewart‐Isherwood, Lynsey
Berrie, Leigh
Chimhamhiwa, Dorman
Moyo, Crispin
Kuehnle, John
Stevens, Wendy
Rosen, Sydney
author_sort Nichols, Brooke E
collection PubMed
description INTRODUCTION: The World Health Organization recommends viral load (VL) monitoring at six and twelve months and then annually after initiating antiretroviral treatment for HIV. In many African countries, expansion of VL testing has been slow due to a lack of efficient blood sample transportation networks (STN). To assist Zambia in scaling up testing capacity, we modelled an optimal STN to minimize the cost of a national VL STN. METHODS: The model optimizes a STN in Zambia for the anticipated 1.5 million VL tests that will be needed in 2020, taking into account geography, district political boundaries, and road, laboratory and facility infrastructure. We evaluated all‐inclusive STN costs of two alternative scenarios: (1) optimized status quo: each district provides its own weekly or daily sample transport; and (2) optimized borderless STN: ignores district boundaries, provides weekly or daily sample transport, and reaches all Scenario 1 facilities. RESULTS: Under both scenarios, VL testing coverage would increase to from 10% in 2016 to 91% in 2020. The mean transport cost per VL in Scenario 2 was $2.11 per test (SD $0.28), 52% less than the mean cost/test in Scenario 1, $4.37 (SD $0.69), comprising 10% and 19% of the cost of a VL respectively. CONCLUSIONS: An efficient STN that optimizes sample transport on the basis of geography and test volume, rather than political boundaries, can cut the cost of sample transport by more than half, providing a cost savings opportunity for countries that face significant resource constraints.
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spelling pubmed-62800132018-12-10 Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia Nichols, Brooke E Girdwood, Sarah J Crompton, Thomas Stewart‐Isherwood, Lynsey Berrie, Leigh Chimhamhiwa, Dorman Moyo, Crispin Kuehnle, John Stevens, Wendy Rosen, Sydney J Int AIDS Soc Research Articles INTRODUCTION: The World Health Organization recommends viral load (VL) monitoring at six and twelve months and then annually after initiating antiretroviral treatment for HIV. In many African countries, expansion of VL testing has been slow due to a lack of efficient blood sample transportation networks (STN). To assist Zambia in scaling up testing capacity, we modelled an optimal STN to minimize the cost of a national VL STN. METHODS: The model optimizes a STN in Zambia for the anticipated 1.5 million VL tests that will be needed in 2020, taking into account geography, district political boundaries, and road, laboratory and facility infrastructure. We evaluated all‐inclusive STN costs of two alternative scenarios: (1) optimized status quo: each district provides its own weekly or daily sample transport; and (2) optimized borderless STN: ignores district boundaries, provides weekly or daily sample transport, and reaches all Scenario 1 facilities. RESULTS: Under both scenarios, VL testing coverage would increase to from 10% in 2016 to 91% in 2020. The mean transport cost per VL in Scenario 2 was $2.11 per test (SD $0.28), 52% less than the mean cost/test in Scenario 1, $4.37 (SD $0.69), comprising 10% and 19% of the cost of a VL respectively. CONCLUSIONS: An efficient STN that optimizes sample transport on the basis of geography and test volume, rather than political boundaries, can cut the cost of sample transport by more than half, providing a cost savings opportunity for countries that face significant resource constraints. John Wiley and Sons Inc. 2018-12-04 /pmc/articles/PMC6280013/ /pubmed/30515997 http://dx.doi.org/10.1002/jia2.25206 Text en © 2018 The Authors. Journal of the International AIDS Society published by John Wiley & Sons Ltd on behalf of the International AIDS Society This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Nichols, Brooke E
Girdwood, Sarah J
Crompton, Thomas
Stewart‐Isherwood, Lynsey
Berrie, Leigh
Chimhamhiwa, Dorman
Moyo, Crispin
Kuehnle, John
Stevens, Wendy
Rosen, Sydney
Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title_full Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title_fullStr Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title_full_unstemmed Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title_short Impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for Zambia
title_sort impact of a borderless sample transport network for scaling up viral load monitoring: results of a geospatial optimization model for zambia
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6280013/
https://www.ncbi.nlm.nih.gov/pubmed/30515997
http://dx.doi.org/10.1002/jia2.25206
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