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Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey

Community-based screening for tuberculosis (TB) could improve detection but is resource intensive. We set out to evaluate the accuracy of computer-aided TB screening using digital chest X-ray (CXR) to determine if this approach met target product profiles (TPP) for community-based screening. CXR ima...

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Autores principales: Mungai, Brenda, Ong‘angò, Jane, Ku, Chu Chang, Henrion, Marc Y. R., Morton, Ben, Joekes, Elizabeth, Onyango, Elizabeth, Kiplimo, Richard, Kirathe, Dickson, Masini, Enos, Sitienei, Joseph, Manduku, Veronica, Mugi, Beatrice, Squire, Stephen Bertel, MacPherson, Peter
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10022380/
https://www.ncbi.nlm.nih.gov/pubmed/36962655
http://dx.doi.org/10.1371/journal.pgph.0001272
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author Mungai, Brenda
Ong‘angò, Jane
Ku, Chu Chang
Henrion, Marc Y. R.
Morton, Ben
Joekes, Elizabeth
Onyango, Elizabeth
Kiplimo, Richard
Kirathe, Dickson
Masini, Enos
Sitienei, Joseph
Manduku, Veronica
Mugi, Beatrice
Squire, Stephen Bertel
MacPherson, Peter
author_facet Mungai, Brenda
Ong‘angò, Jane
Ku, Chu Chang
Henrion, Marc Y. R.
Morton, Ben
Joekes, Elizabeth
Onyango, Elizabeth
Kiplimo, Richard
Kirathe, Dickson
Masini, Enos
Sitienei, Joseph
Manduku, Veronica
Mugi, Beatrice
Squire, Stephen Bertel
MacPherson, Peter
author_sort Mungai, Brenda
collection PubMed
description Community-based screening for tuberculosis (TB) could improve detection but is resource intensive. We set out to evaluate the accuracy of computer-aided TB screening using digital chest X-ray (CXR) to determine if this approach met target product profiles (TPP) for community-based screening. CXR images from participants in the 2016 Kenya National TB Prevalence Survey were evaluated using CAD4TBv6 (Delft Imaging), giving a probabilistic score for pulmonary TB ranging from 0 (low probability) to 99 (high probability). We constructed a Bayesian latent class model to estimate the accuracy of CAD4TBv6 screening compared to bacteriologically-confirmed TB across CAD4TBv6 threshold cut-offs, incorporating data on Clinical Officer CXR interpretation, participant demographics (age, sex, TB symptoms, previous TB history), and sputum results. We compared model-estimated sensitivity and specificity of CAD4TBv6 to optimum and minimum TPPs. Of 63,050 prevalence survey participants, 61,848 (98%) had analysable CXR images, and 8,966 (14.5%) underwent sputum bacteriological testing; 298 had bacteriologically-confirmed pulmonary TB. Median CAD4TBv6 scores for participants with bacteriologically-confirmed TB were significantly higher (72, IQR: 58–82.75) compared to participants with bacteriologically-negative sputum results (49, IQR: 44–57, p<0.0001). CAD4TBv6 met the optimum TPP; with the threshold set to achieve a mean sensitivity of 95% (optimum TPP), specificity was 83.3%, (95% credible interval [CrI]: 83.0%—83.7%, CAD4TBv6 threshold: 55). There was considerable variation in accuracy by participant characteristics, with older individuals and those with previous TB having lowest specificity. CAD4TBv6 met the optimal TPP for TB community screening. To optimise screening accuracy and efficiency of confirmatory sputum testing, we recommend that an adaptive approach to threshold setting is adopted based on participant characteristics.
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spelling pubmed-100223802023-03-17 Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey Mungai, Brenda Ong‘angò, Jane Ku, Chu Chang Henrion, Marc Y. R. Morton, Ben Joekes, Elizabeth Onyango, Elizabeth Kiplimo, Richard Kirathe, Dickson Masini, Enos Sitienei, Joseph Manduku, Veronica Mugi, Beatrice Squire, Stephen Bertel MacPherson, Peter PLOS Glob Public Health Research Article Community-based screening for tuberculosis (TB) could improve detection but is resource intensive. We set out to evaluate the accuracy of computer-aided TB screening using digital chest X-ray (CXR) to determine if this approach met target product profiles (TPP) for community-based screening. CXR images from participants in the 2016 Kenya National TB Prevalence Survey were evaluated using CAD4TBv6 (Delft Imaging), giving a probabilistic score for pulmonary TB ranging from 0 (low probability) to 99 (high probability). We constructed a Bayesian latent class model to estimate the accuracy of CAD4TBv6 screening compared to bacteriologically-confirmed TB across CAD4TBv6 threshold cut-offs, incorporating data on Clinical Officer CXR interpretation, participant demographics (age, sex, TB symptoms, previous TB history), and sputum results. We compared model-estimated sensitivity and specificity of CAD4TBv6 to optimum and minimum TPPs. Of 63,050 prevalence survey participants, 61,848 (98%) had analysable CXR images, and 8,966 (14.5%) underwent sputum bacteriological testing; 298 had bacteriologically-confirmed pulmonary TB. Median CAD4TBv6 scores for participants with bacteriologically-confirmed TB were significantly higher (72, IQR: 58–82.75) compared to participants with bacteriologically-negative sputum results (49, IQR: 44–57, p<0.0001). CAD4TBv6 met the optimum TPP; with the threshold set to achieve a mean sensitivity of 95% (optimum TPP), specificity was 83.3%, (95% credible interval [CrI]: 83.0%—83.7%, CAD4TBv6 threshold: 55). There was considerable variation in accuracy by participant characteristics, with older individuals and those with previous TB having lowest specificity. CAD4TBv6 met the optimal TPP for TB community screening. To optimise screening accuracy and efficiency of confirmatory sputum testing, we recommend that an adaptive approach to threshold setting is adopted based on participant characteristics. Public Library of Science 2022-11-23 /pmc/articles/PMC10022380/ /pubmed/36962655 http://dx.doi.org/10.1371/journal.pgph.0001272 Text en © 2022 Mungai et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://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
Mungai, Brenda
Ong‘angò, Jane
Ku, Chu Chang
Henrion, Marc Y. R.
Morton, Ben
Joekes, Elizabeth
Onyango, Elizabeth
Kiplimo, Richard
Kirathe, Dickson
Masini, Enos
Sitienei, Joseph
Manduku, Veronica
Mugi, Beatrice
Squire, Stephen Bertel
MacPherson, Peter
Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title_full Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title_fullStr Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title_full_unstemmed Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title_short Accuracy of computer-aided chest X-ray in community-based tuberculosis screening: Lessons from the 2016 Kenya National Tuberculosis Prevalence Survey
title_sort accuracy of computer-aided chest x-ray in community-based tuberculosis screening: lessons from the 2016 kenya national tuberculosis prevalence survey
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10022380/
https://www.ncbi.nlm.nih.gov/pubmed/36962655
http://dx.doi.org/10.1371/journal.pgph.0001272
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