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A Clinical Prediction Model for Unsuccessful Pulmonary Tuberculosis Treatment Outcomes

Authors :
Lauren S, Peetluk
Peter F, Rebeiro
Felipe M, Ridolfi
Bruno B, Andrade
Marcelo, Cordeiro-Santos
Afranio, Kritski
Betina, Durovni
Solange, Calvacante
Marina C, Figueiredo
David W, Haas
Dandan, Liu
Valeria C, Rolla
Timothy R, Sterling
Laise, de Moraes
Source :
Clin Infect Dis
Publication Year :
2021
Publisher :
Oxford University Press (OUP), 2021.

Abstract

Background Despite widespread availability of curative therapy, tuberculosis (TB) treatment outcomes remain suboptimal. Clinical prediction models can inform treatment strategies to improve outcomes. Using baseline clinical data, we developed a prediction model for unsuccessful TB treatment outcome and evaluated the incremental value of human immunodeficiency virus (HIV)–related severity and isoniazid acetylator status. Methods Data originated from the Regional Prospective Observational Research for Tuberculosis Brazil cohort, which enrolled newly diagnosed TB patients in Brazil from 2015 through 2019. This analysis included participants with culture-confirmed, drug-susceptible pulmonary TB who started first-line anti-TB therapy and had ≥12 months of follow-up. The end point was unsuccessful TB treatment: composite of death, treatment failure, regimen switch, incomplete treatment, or not evaluated. Missing predictors were imputed. Predictors were chosen via bootstrapped backward selection. Discrimination and calibration were evaluated with c-statistics and calibration plots, respectively. Bootstrap internal validation estimated overfitting, and a shrinkage factor was applied to improve out-of-sample prediction. Incremental value was evaluated with likelihood ratio–based measures. Results Of 944 participants, 191 (20%) had unsuccessful treatment outcomes. The final model included 7 baseline predictors: hemoglobin, HIV infection, drug use, diabetes, age, education, and tobacco use. The model demonstrated good discrimination (c-statistic = 0.77; 95% confidence interval, .73–.80) and was well calibrated (optimism-corrected intercept and slope, –0.12 and 0.89, respectively). HIV-related factors and isoniazid acetylation status did not improve prediction of the final model. Conclusions Using information readily available at treatment initiation, the prediction model performed well in this population. The findings may guide future work to allocate resources or inform targeted interventions for high-risk patients.

Details

ISSN :
15376591 and 10584838
Volume :
74
Database :
OpenAIRE
Journal :
Clinical Infectious Diseases
Accession number :
edsair.doi.dedup.....12354cc5941abd195ba8b99b00dbadc2