Driving the usage of tuberculosis diagnostic data through capacity building in low- and middle-income countries

African Journal of Laboratory Medicine

 
 
Field Value
 
Title Driving the usage of tuberculosis diagnostic data through capacity building in low- and middle-income countries
 
Creator Gous, Natasha Nyaruhirira, Alaine U. Cunningham, Bradford Macek, Chris
 
Subject Clinical; Diagnostics tuberculosis; GeneXpert; diagnostic data; monitoring and evaluation; data analysis; programmatic
Description Background: Connectivity platforms collect a wealth of data from connected GeneXpert instruments, with the potential to provide valuable insights into the burden of disease and effectiveness of tuberculosis programmes. The challenge faced by many countries is a lack of training, analytical skills, and resources required to understand and translate this data into patient management and programme improvement.Objective: We describe a novel training programme, the tuberculosis Data Fellowship, designed to build capacity in low- and middle- income countries for tuberculosis data analytics.Methods: The programme consisted of classroom and remote training plus mentorship over a 12-month period. The focus was on skills development in Tableau software, followed by training in exploration, analysis, and interpretation of GeneXpert tuberculosis data across five key programme areas: patient services, programme monitoring, quality of testing, inventory management, and disease burden.Results: The programme was piloted in six countries (Bangladesh, Ethiopia, Ghana, Malawi, Mozambique) in July 2018 and Nigeria in September 2018; 20 participants completed the training. A number of key outputs have been achieved, such as improved instrument utilisation rates, decreased error rates, and improved instrument management.Conclusion: The training programme empowers local tuberculosis programme staff to discover and fix critical inefficiencies, provides high-level technical and operational support to the tuberculosis programme, and provides a platform for continued sharing of insights and best practices between countries. It supports the notion that connectivity can increase efficiencies and clinical benefits with better data for decision making, if coupled with commensurate capacity building in data analysis and interpretation.
 
Publisher AOSIS
 
Contributor Neal Myrick and Jason Schumacher, Tableau Foundation Sarah Hinrichsen, Tableau Iwan Rÿnders, Moyo Business Advisory
Date 2020-11-18
 
Type info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion — —
Format text/html application/epub+zip text/xml application/pdf
Identifier 10.4102/ajlm.v9i2.1092
 
Source African Journal of Laboratory Medicine; Vol 9, No 2 (2020); 6 pages 2225-2010 2225-2002
 
Language eng
 
Relation
The following web links (URLs) may trigger a file download or direct you to an alternative webpage to gain access to a publication file format of the published article:

https://ajlmonline.org/index.php/ajlm/article/view/1092/1730 https://ajlmonline.org/index.php/ajlm/article/view/1092/1729 https://ajlmonline.org/index.php/ajlm/article/view/1092/1731 https://ajlmonline.org/index.php/ajlm/article/view/1092/1728
 
Coverage Low- and middle-income countries — —
Rights Copyright (c) 2020 Natasha Gous, Alaine U. Nyaruhirira, Bradford Cunningham, Chris Macek https://creativecommons.org/licenses/by/4.0
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