TY - JOUR
T1 - Development of treatment-decision algorithms for children evaluated for pulmonary tuberculosis
T2 - an individual participant data meta-analysis
AU - Gunasekera, Kenneth S.
AU - Marcy, Olivier
AU - Muñoz, Johanna
AU - Lopez-Varela, Elisa
AU - Sekadde, Moorine P.
AU - Franke, Molly F.
AU - Bonnet, Maryline
AU - Ahmed, Shakil
AU - Amanullah, Farhana
AU - Anwar, Aliya
AU - Augusto, Orvalho
AU - Aurilio, Rafaela Baroni
AU - Banu, Sayera
AU - Batool, Iraj
AU - Brands, Annemieke
AU - Cain, Kevin P.
AU - Carratalá-Castro, Lucía
AU - Caws, Maxine
AU - Click, Eleanor S.
AU - Cranmer, Lisa M.
AU - García-Basteiro, Alberto L.
AU - Hesseling, Anneke C.
AU - Huynh, Julie
AU - Kabir, Senjuti
AU - Lecca, Leonid
AU - Mandalakas, Anna
AU - Mavhunga, Farai
AU - Myint, Aye Aye
AU - Myo, Kyaw
AU - Nampijja, Dorah
AU - Nicol, Mark P.
AU - Orikiriza, Patrick
AU - Palmer, Megan
AU - Sant'Anna, Clemax Couto
AU - Siddiqui, Sara Ahmed
AU - Smith, Jonathan P.
AU - Song, Rinn
AU - Thuong Thuong, Nguyen Thuy
AU - Ung, Vibol
AU - van der Zalm, Marieke M.
AU - Verkuijl, Sabine
AU - Viney, Kerri
AU - Walters, Elisabetta G.
AU - Warren, Joshua L.
AU - Zar, Heather J.
AU - Marais, Ben J.
AU - Graham, Stephen M.
AU - Debray, Thomas P.A.
AU - Cohen, Ted
AU - Seddon, James A.
N1 - Publisher Copyright:
© 2023 World Health Organization
PY - 2023/5
Y1 - 2023/5
N2 - Background: Many children with pulmonary tuberculosis remain undiagnosed and untreated with related high morbidity and mortality. Recent advances in childhood tuberculosis algorithm development have incorporated prediction modelling, but studies so far have been small and localised, with limited generalisability. We aimed to evaluate the performance of currently used diagnostic algorithms and to use prediction modelling to develop evidence-based algorithms to assist in tuberculosis treatment decision making for children presenting to primary health-care centres. Methods: For this meta-analysis, we identified individual participant data from a WHO public call for data on the management of tuberculosis in children and adolescents and referral from childhood tuberculosis experts. We included studies that prospectively recruited consecutive participants younger than 10 years attending health-care centres in countries with a high tuberculosis incidence for clinical evaluation of pulmonary tuberculosis. We collated individual participant data including clinical, bacteriological, and radiological information and a standardised reference classification of pulmonary tuberculosis. Using this dataset, we first retrospectively evaluated the performance of several existing treatment-decision algorithms. We then used the data to develop two multivariable prediction models that included features used in clinical evaluation of pulmonary tuberculosis—one with chest x-ray features and one without—and we investigated each model's generalisability using internal–external cross-validation. The parameter coefficient estimates of the two models were scaled into two scoring systems to classify tuberculosis with a prespecified sensitivity target. The two scoring systems were used to develop two pragmatic, treatment-decision algorithms for use in primary health-care settings. Findings: Of 4718 children from 13 studies from 12 countries, 1811 (38·4%) were classified as having pulmonary tuberculosis: 541 (29·9%) bacteriologically confirmed and 1270 (70·1%) unconfirmed. Existing treatment-decision algorithms had highly variable diagnostic performance. The scoring system derived from the prediction model that included clinical features and features from chest x-ray had a combined sensitivity of 0·86 [95% CI 0·68–0·94] and specificity of 0·37 [0·15–0·66] against a composite reference standard. The scoring system derived from the model that included only clinical features had a combined sensitivity of 0·84 [95% CI 0·66–0·93] and specificity of 0·30 [0·13-0·56] against a composite reference standard. The scoring system from each model was placed after triage steps, including assessment of illness acuity and risk of poor tuberculosis-related outcomes, to develop treatment-decision algorithms. Interpretation: We adopted an evidence-based approach to develop pragmatic algorithms to guide tuberculosis treatment decisions in children, irrespective of the resources locally available. This approach will empower health workers in primary health-care settings with high tuberculosis incidence and limited resources to initiate tuberculosis treatment in children to improve access to care and reduce tuberculosis-related mortality. These algorithms have been included in the operational handbook accompanying the latest WHO guidelines on the management of tuberculosis in children and adolescents. Future prospective evaluation of algorithms, including those developed in this work, is necessary to investigate clinical performance. Funding: WHO, US National Institutes of Health.
AB - Background: Many children with pulmonary tuberculosis remain undiagnosed and untreated with related high morbidity and mortality. Recent advances in childhood tuberculosis algorithm development have incorporated prediction modelling, but studies so far have been small and localised, with limited generalisability. We aimed to evaluate the performance of currently used diagnostic algorithms and to use prediction modelling to develop evidence-based algorithms to assist in tuberculosis treatment decision making for children presenting to primary health-care centres. Methods: For this meta-analysis, we identified individual participant data from a WHO public call for data on the management of tuberculosis in children and adolescents and referral from childhood tuberculosis experts. We included studies that prospectively recruited consecutive participants younger than 10 years attending health-care centres in countries with a high tuberculosis incidence for clinical evaluation of pulmonary tuberculosis. We collated individual participant data including clinical, bacteriological, and radiological information and a standardised reference classification of pulmonary tuberculosis. Using this dataset, we first retrospectively evaluated the performance of several existing treatment-decision algorithms. We then used the data to develop two multivariable prediction models that included features used in clinical evaluation of pulmonary tuberculosis—one with chest x-ray features and one without—and we investigated each model's generalisability using internal–external cross-validation. The parameter coefficient estimates of the two models were scaled into two scoring systems to classify tuberculosis with a prespecified sensitivity target. The two scoring systems were used to develop two pragmatic, treatment-decision algorithms for use in primary health-care settings. Findings: Of 4718 children from 13 studies from 12 countries, 1811 (38·4%) were classified as having pulmonary tuberculosis: 541 (29·9%) bacteriologically confirmed and 1270 (70·1%) unconfirmed. Existing treatment-decision algorithms had highly variable diagnostic performance. The scoring system derived from the prediction model that included clinical features and features from chest x-ray had a combined sensitivity of 0·86 [95% CI 0·68–0·94] and specificity of 0·37 [0·15–0·66] against a composite reference standard. The scoring system derived from the model that included only clinical features had a combined sensitivity of 0·84 [95% CI 0·66–0·93] and specificity of 0·30 [0·13-0·56] against a composite reference standard. The scoring system from each model was placed after triage steps, including assessment of illness acuity and risk of poor tuberculosis-related outcomes, to develop treatment-decision algorithms. Interpretation: We adopted an evidence-based approach to develop pragmatic algorithms to guide tuberculosis treatment decisions in children, irrespective of the resources locally available. This approach will empower health workers in primary health-care settings with high tuberculosis incidence and limited resources to initiate tuberculosis treatment in children to improve access to care and reduce tuberculosis-related mortality. These algorithms have been included in the operational handbook accompanying the latest WHO guidelines on the management of tuberculosis in children and adolescents. Future prospective evaluation of algorithms, including those developed in this work, is necessary to investigate clinical performance. Funding: WHO, US National Institutes of Health.
UR - http://www.scopus.com/inward/record.url?scp=85151564895&partnerID=8YFLogxK
U2 - 10.1016/S2352-4642(23)00004-4
DO - 10.1016/S2352-4642(23)00004-4
M3 - Article
C2 - 36924781
AN - SCOPUS:85151564895
SN - 2352-4642
VL - 7
SP - 336
EP - 346
JO - The Lancet Child and Adolescent Health
JF - The Lancet Child and Adolescent Health
IS - 5
ER -