Cargando…
A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa
BACKGROUND: In highly resource-limited settings, many clinics lack same-day microbiological testing for active tuberculosis (TB). In these contexts, risk of pretreatment loss to follow-up is high, and a simple, easy-to-use clinical risk score could be useful. METHODS AND FINDINGS: We analyzed data f...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7654801/ https://www.ncbi.nlm.nih.gov/pubmed/33170838 http://dx.doi.org/10.1371/journal.pmed.1003420 |
_version_ | 1783608120884330496 |
---|---|
author | Baik, Yeonsoo Rickman, Hannah M. Hanrahan, Colleen F. Mmolawa, Lesego Kitonsa, Peter J. Sewelana, Tsundzukana Nalutaaya, Annet Kendall, Emily A. Lebina, Limakatso Martinson, Neil Katamba, Achilles Dowdy, David W. |
author_facet | Baik, Yeonsoo Rickman, Hannah M. Hanrahan, Colleen F. Mmolawa, Lesego Kitonsa, Peter J. Sewelana, Tsundzukana Nalutaaya, Annet Kendall, Emily A. Lebina, Limakatso Martinson, Neil Katamba, Achilles Dowdy, David W. |
author_sort | Baik, Yeonsoo |
collection | PubMed |
description | BACKGROUND: In highly resource-limited settings, many clinics lack same-day microbiological testing for active tuberculosis (TB). In these contexts, risk of pretreatment loss to follow-up is high, and a simple, easy-to-use clinical risk score could be useful. METHODS AND FINDINGS: We analyzed data from adults tested for TB with Xpert MTB/RIF across 28 primary health clinics in rural South Africa (between July 2016 and January 2018). We used least absolute shrinkage and selection operator regression to identify characteristics associated with Xpert-confirmed TB and converted coefficients into a simple score. We assessed discrimination using receiver operating characteristic (ROC) curves, calibration using Cox linear logistic regression, and clinical utility using decision curves. We validated the score externally in a population of adults tested for TB across 4 primary health clinics in urban Uganda (between May 2018 and December 2019). Model development was repeated de novo with the Ugandan population to compare clinical scores. The South African and Ugandan cohorts included 701 and 106 individuals who tested positive for TB, respectively, and 686 and 281 randomly selected individuals who tested negative. Compared to the Ugandan cohort, the South African cohort was older (41% versus 19% aged 45 years or older), had similar breakdown of biological sex (48% versus 50% female), and had higher HIV prevalence (45% versus 34%). The final prediction model, scored from 0 to 10, included 6 characteristics: age, sex, HIV (2 points), diabetes, number of classical TB symptoms (cough, fever, weight loss, and night sweats; 1 point each), and >14-day symptom duration. Discrimination was moderate in the derivation (c-statistic = 0.82, 95% CI = 0.81 to 0.82) and validation (c-statistic = 0.75, 95% CI = 0.69 to 0.80) populations. A patient with 10% pretest probability of TB would have a posttest probability of 4% with a score of 3/10 versus 43% with a score of 7/10. The de novo Ugandan model contained similar characteristics and performed equally well. Our study may be subject to spectrum bias as we only included a random sample of people without TB from each cohort. This score is only meant to guide management while awaiting microbiological results, not intended as a community-based triage test (i.e., to identify individuals who should receive further testing). CONCLUSIONS: In this study, we observed that a simple clinical risk score reasonably distinguished individuals with and without TB among those submitting sputum for diagnosis. Subject to prospective validation, this score might be useful in settings with constrained diagnostic resources where concern for pretreatment loss to follow-up is high. |
format | Online Article Text |
id | pubmed-7654801 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-76548012020-11-18 A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa Baik, Yeonsoo Rickman, Hannah M. Hanrahan, Colleen F. Mmolawa, Lesego Kitonsa, Peter J. Sewelana, Tsundzukana Nalutaaya, Annet Kendall, Emily A. Lebina, Limakatso Martinson, Neil Katamba, Achilles Dowdy, David W. PLoS Med Research Article BACKGROUND: In highly resource-limited settings, many clinics lack same-day microbiological testing for active tuberculosis (TB). In these contexts, risk of pretreatment loss to follow-up is high, and a simple, easy-to-use clinical risk score could be useful. METHODS AND FINDINGS: We analyzed data from adults tested for TB with Xpert MTB/RIF across 28 primary health clinics in rural South Africa (between July 2016 and January 2018). We used least absolute shrinkage and selection operator regression to identify characteristics associated with Xpert-confirmed TB and converted coefficients into a simple score. We assessed discrimination using receiver operating characteristic (ROC) curves, calibration using Cox linear logistic regression, and clinical utility using decision curves. We validated the score externally in a population of adults tested for TB across 4 primary health clinics in urban Uganda (between May 2018 and December 2019). Model development was repeated de novo with the Ugandan population to compare clinical scores. The South African and Ugandan cohorts included 701 and 106 individuals who tested positive for TB, respectively, and 686 and 281 randomly selected individuals who tested negative. Compared to the Ugandan cohort, the South African cohort was older (41% versus 19% aged 45 years or older), had similar breakdown of biological sex (48% versus 50% female), and had higher HIV prevalence (45% versus 34%). The final prediction model, scored from 0 to 10, included 6 characteristics: age, sex, HIV (2 points), diabetes, number of classical TB symptoms (cough, fever, weight loss, and night sweats; 1 point each), and >14-day symptom duration. Discrimination was moderate in the derivation (c-statistic = 0.82, 95% CI = 0.81 to 0.82) and validation (c-statistic = 0.75, 95% CI = 0.69 to 0.80) populations. A patient with 10% pretest probability of TB would have a posttest probability of 4% with a score of 3/10 versus 43% with a score of 7/10. The de novo Ugandan model contained similar characteristics and performed equally well. Our study may be subject to spectrum bias as we only included a random sample of people without TB from each cohort. This score is only meant to guide management while awaiting microbiological results, not intended as a community-based triage test (i.e., to identify individuals who should receive further testing). CONCLUSIONS: In this study, we observed that a simple clinical risk score reasonably distinguished individuals with and without TB among those submitting sputum for diagnosis. Subject to prospective validation, this score might be useful in settings with constrained diagnostic resources where concern for pretreatment loss to follow-up is high. Public Library of Science 2020-11-10 /pmc/articles/PMC7654801/ /pubmed/33170838 http://dx.doi.org/10.1371/journal.pmed.1003420 Text en © 2020 Baik et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
spellingShingle | Research Article Baik, Yeonsoo Rickman, Hannah M. Hanrahan, Colleen F. Mmolawa, Lesego Kitonsa, Peter J. Sewelana, Tsundzukana Nalutaaya, Annet Kendall, Emily A. Lebina, Limakatso Martinson, Neil Katamba, Achilles Dowdy, David W. A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title | A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title_full | A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title_fullStr | A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title_full_unstemmed | A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title_short | A clinical score for identifying active tuberculosis while awaiting microbiological results: Development and validation of a multivariable prediction model in sub-Saharan Africa |
title_sort | clinical score for identifying active tuberculosis while awaiting microbiological results: development and validation of a multivariable prediction model in sub-saharan africa |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7654801/ https://www.ncbi.nlm.nih.gov/pubmed/33170838 http://dx.doi.org/10.1371/journal.pmed.1003420 |
work_keys_str_mv | AT baikyeonsoo aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT rickmanhannahm aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT hanrahancolleenf aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT mmolawalesego aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT kitonsapeterj aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT sewelanatsundzukana aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT nalutaayaannet aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT kendallemilya aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT lebinalimakatso aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT martinsonneil aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT katambaachilles aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT dowdydavidw aclinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT baikyeonsoo clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT rickmanhannahm clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT hanrahancolleenf clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT mmolawalesego clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT kitonsapeterj clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT sewelanatsundzukana clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT nalutaayaannet clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT kendallemilya clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT lebinalimakatso clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT martinsonneil clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT katambaachilles clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica AT dowdydavidw clinicalscoreforidentifyingactivetuberculosiswhileawaitingmicrobiologicalresultsdevelopmentandvalidationofamultivariablepredictionmodelinsubsaharanafrica |