Prediction of anti-tuberculosis treatment duration based on a 22-gene transcriptomic model

Author:

Heyckendorf JanORCID,Marwitz Sebastian,Reimann MajaORCID,Avsar Korkut,DiNardo Andrew R.,Günther Gunar,Hoelscher MichaelORCID,Ibraim Elmira,Kalsdorf Barbara,Kaufmann Stefan H.E.,Kontsevaya Irina,van Leth FrankORCID,Mandalakas Anna M.ORCID,Maurer Florian P.ORCID,Müller Marius,Nitschkowski Dörte,Olaru Ioana D.ORCID,Popa Cristina,Rachow Andrea,Rolling ThierryORCID,Rybniker Jan,Salzer Helmut J.F.,Sanchez-Carballo Patricia,Schuhmann Maren,Schaub Dagmar,Spinu Victor,Suárez IsabelleORCID,Terhalle Elena,Unnewehr Markus,Weiner January,Goldmann TorstenORCID,Lange Christoph

Abstract

BackgroundThe World Health Organization recommends standardised treatment durations for patients with tuberculosis (TB). We identified and validated a host-RNA signature as a biomarker for individualised therapy durations for patients with drug-susceptible (DS)- and multidrug-resistant (MDR)-TB.MethodsAdult patients with pulmonary TB were prospectively enrolled into five independent cohorts in Germany and Romania. Clinical and microbiological data and whole blood for RNA transcriptomic analysis were collected at pre-defined time points throughout therapy. Treatment outcomes were ascertained by TBnet criteria (6-month culture status/1-year follow-up). A whole-blood RNA therapy-end model was developed in a multistep process involving a machine-learning algorithm to identify hypothetical individual end-of-treatment time points.Results50 patients with DS-TB and 30 patients with MDR-TB were recruited in the German identification cohorts (DS-GIC and MDR-GIC, respectively); 28 patients with DS-TB and 32 patients with MDR-TB in the German validation cohorts (DS-GVC and MDR-GVC, respectively); and 52 patients with MDR-TB in the Romanian validation cohort (MDR-RVC). A 22-gene RNA model (TB22) that defined cure-associated end-of-therapy time points was derived from the DS- and MDR-GIC data. The TB22 model was superior to other published signatures to accurately predict clinical outcomes for patients in the DS-GVC (area under the curve 0.94, 95% CI 0.9–0.98) and suggests that cure may be achieved with shorter treatment durations for TB patients in the MDR-GIC (mean reduction 218.0 days, 34.2%; p<0.001), the MDR-GVC (mean reduction 211.0 days, 32.9%; p<0.001) and the MDR-RVC (mean reduction of 161.0 days, 23.4%; p=0.001).ConclusionBiomarker-guided management may substantially shorten the duration of therapy for many patients with MDR-TB.

Funder

Deutsche Zentrum für Lungenforschung

Deutsches Zentrum für Infektionsforschung

Publisher

European Respiratory Society (ERS)

Subject

Pulmonary and Respiratory Medicine

Reference46 articles.

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5. World Health Organization (WHO) . WHO Treatment Guidelines for Drug-Resistant Tuberculosis, 2016 Update. Geneva, WHO, 2016. Available from: www.who.int/publications/i/item/9789241549639

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