Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach

Background: Several promising new diagnostic methods and algorithms for tuberculosis have been endorsed by WHO. National tuberculosis programmes now face the decision on which methods to implement and where to place them in the diagnostic algorithm. Methods: We used an integrated model to assess th...

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Main Authors: Ivor Langley, MSc, Dr. Hsien-Ho Lin, MD, Saidi Egwaga, MD, Basra Doulla, MSc, Chu-Chang Ku, BS, Prof. Megan Murray, MD, Ted Cohen, MD, Prof. S Bertel Squire, MD
Format: Article
Language:English
Published: Elsevier 2014-10-01
Series:The Lancet Global Health
Online Access:http://www.sciencedirect.com/science/article/pii/S2214109X14702918
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spelling doaj-71d4597d4c424ae49c1d03a5a500643a2020-11-25T02:29:30ZengElsevierThe Lancet Global Health2214-109X2014-10-01210e581e59110.1016/S2214-109X(14)70291-8Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approachIvor Langley, MSc0Dr. Hsien-Ho Lin, MD1Saidi Egwaga, MD2Basra Doulla, MSc3Chu-Chang Ku, BS4Prof. Megan Murray, MD5Ted Cohen, MD6Prof. S Bertel Squire, MD7Liverpool School of Tropical Medicine, Liverpool, UKInstitute of Epidemiology and Preventive Medicine, National Taiwan University, TaiwanNational Tuberculosis and Leprosy Programme, Dar es Salaam, TanzaniaNational Tuberculosis and Leprosy Programme, Dar es Salaam, TanzaniaInstitute of Epidemiology and Preventive Medicine, National Taiwan University, TaiwanDepartment of Epidemiology, Harvard School of Public Health, Boston, MA, USADepartment of Epidemiology, Harvard School of Public Health, Boston, MA, USALiverpool School of Tropical Medicine, Liverpool, UK Background: Several promising new diagnostic methods and algorithms for tuberculosis have been endorsed by WHO. National tuberculosis programmes now face the decision on which methods to implement and where to place them in the diagnostic algorithm. Methods: We used an integrated model to assess the effects of different algorithms of Xpert MTB/RIF and light-emitting diode (LED) fluorescence microscopy in Tanzania. To understand the effects of new diagnostics from the patient, health system, and population perspective, the model incorporated and linked a detailed operational component and a transmission component. The model was designed to represent the operational and epidemiological context of Tanzania and was used to compare the effects and cost-effectiveness of different diagnostic options. Findings: Among the diagnostic options considered, we identified three strategies as cost effective in Tanzania. Full scale-up of Xpert would have the greatest population-level effect with the highest incremental cost: 346 000 disability-adjusted life-years (DALYs) averted with an additional cost of US$36·9 million over 10 years. The incremental cost-effectiveness ratio (ICER) of Xpert scale-up ($169 per DALY averted, 95% credible interval [CrI] 104–265) is below the willingness-to-pay threshold ($599) for Tanzania. Same-day LED fluorescence microscopy is the next most effective strategy with an ICER of $45 (95% CrI 25–74), followed by LED fluorescence microscopy with an ICER of $29 (6–59). Compared with same-day LED fluorescence microscopy and Xpert full rollout, targeted use of Xpert in presumptive tuberculosis cases with HIV infection, either as an initial diagnostic test or as a follow-on test to microscopy, would produce DALY gains at a higher incremental cost and therefore is dominated in the context of Tanzania. Interpretation: For Tanzania, this integrated modelling approach predicts that full rollout of Xpert is a cost-effective option for tuberculosis diagnosis and has the potential to substantially reduce the national tuberculosis burden. It also estimates the substantial level of funding that will need to be mobilised to translate this into clinical practice. This approach could be adapted and replicated in other developing countries to inform rational health policy formulation. Funding: United States Agency for International Development. http://www.sciencedirect.com/science/article/pii/S2214109X14702918
collection DOAJ
language English
format Article
sources DOAJ
author Ivor Langley, MSc
Dr. Hsien-Ho Lin, MD
Saidi Egwaga, MD
Basra Doulla, MSc
Chu-Chang Ku, BS
Prof. Megan Murray, MD
Ted Cohen, MD
Prof. S Bertel Squire, MD
spellingShingle Ivor Langley, MSc
Dr. Hsien-Ho Lin, MD
Saidi Egwaga, MD
Basra Doulla, MSc
Chu-Chang Ku, BS
Prof. Megan Murray, MD
Ted Cohen, MD
Prof. S Bertel Squire, MD
Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
The Lancet Global Health
author_facet Ivor Langley, MSc
Dr. Hsien-Ho Lin, MD
Saidi Egwaga, MD
Basra Doulla, MSc
Chu-Chang Ku, BS
Prof. Megan Murray, MD
Ted Cohen, MD
Prof. S Bertel Squire, MD
author_sort Ivor Langley, MSc
title Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
title_short Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
title_full Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
title_fullStr Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
title_full_unstemmed Assessment of the patient, health system, and population effects of Xpert MTB/RIF and alternative diagnostics for tuberculosis in Tanzania: an integrated modelling approach
title_sort assessment of the patient, health system, and population effects of xpert mtb/rif and alternative diagnostics for tuberculosis in tanzania: an integrated modelling approach
publisher Elsevier
series The Lancet Global Health
issn 2214-109X
publishDate 2014-10-01
description Background: Several promising new diagnostic methods and algorithms for tuberculosis have been endorsed by WHO. National tuberculosis programmes now face the decision on which methods to implement and where to place them in the diagnostic algorithm. Methods: We used an integrated model to assess the effects of different algorithms of Xpert MTB/RIF and light-emitting diode (LED) fluorescence microscopy in Tanzania. To understand the effects of new diagnostics from the patient, health system, and population perspective, the model incorporated and linked a detailed operational component and a transmission component. The model was designed to represent the operational and epidemiological context of Tanzania and was used to compare the effects and cost-effectiveness of different diagnostic options. Findings: Among the diagnostic options considered, we identified three strategies as cost effective in Tanzania. Full scale-up of Xpert would have the greatest population-level effect with the highest incremental cost: 346 000 disability-adjusted life-years (DALYs) averted with an additional cost of US$36·9 million over 10 years. The incremental cost-effectiveness ratio (ICER) of Xpert scale-up ($169 per DALY averted, 95% credible interval [CrI] 104–265) is below the willingness-to-pay threshold ($599) for Tanzania. Same-day LED fluorescence microscopy is the next most effective strategy with an ICER of $45 (95% CrI 25–74), followed by LED fluorescence microscopy with an ICER of $29 (6–59). Compared with same-day LED fluorescence microscopy and Xpert full rollout, targeted use of Xpert in presumptive tuberculosis cases with HIV infection, either as an initial diagnostic test or as a follow-on test to microscopy, would produce DALY gains at a higher incremental cost and therefore is dominated in the context of Tanzania. Interpretation: For Tanzania, this integrated modelling approach predicts that full rollout of Xpert is a cost-effective option for tuberculosis diagnosis and has the potential to substantially reduce the national tuberculosis burden. It also estimates the substantial level of funding that will need to be mobilised to translate this into clinical practice. This approach could be adapted and replicated in other developing countries to inform rational health policy formulation. Funding: United States Agency for International Development.
url http://www.sciencedirect.com/science/article/pii/S2214109X14702918
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