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    Whole genome sequencing-based drug resistance predictions of multidrug-resistant Mycobacterium tuberculosis isolates from Tanzania

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    Date
    2022-04-21
    Author
    Mbelele, Peter
    Utpatel, Christian
    Sauli, Elingarami
    Mpolya, Emmanuel
    Mutayoba, Beatrice
    Barilar, Ivan
    Dreyer, Viola
    Merker, Matthias
    Sariko, Margaretha
    Swema, Buliga
    Mmbaga, Blandina
    Gratz, Jean
    Addo, Kennedy
    Pletschette, Michel
    Niemann, Stefan
    Houpt, Eric
    Mpagama, Stellah
    Heysell, Scott
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    Abstract
    Background: Rifampicin- or multidrug-resistant (RR/MDR) Mycobacterium tuberculosis complex (MTBC) strains account for considerable morbidity and mortality globally. WGS-based prediction of drug resistance may guide clinical decisions, especially for the design of RR/MDR-TB therapies. Methods: We compared WGS-based drug resistance-predictive mutations for 42 MTBC isolates from MDR-TB pa tients in Tanzania with the MICs of 14 antibiotics measured in the Sensititre™ MycoTB assay. An isolate was phenotypically categorized as resistant if it had an MIC above the epidemiological-cut-off (ECOFF) value, or as susceptible if it had an MIC below or equal to the ECOFF. Results: Overall, genotypically non-wild-type MTBC isolates with high-level resistance mutations (gNWT-R) cor related with isolates with MIC values above the ECOFF. For instance, the median MIC value (mg/L) for rifampicin gNWT-R strains was .4.0 (IQR 4.0–4.0) compared with 0.5 (IQR 0.38–0.50) in genotypically wild-type (gWT-S, P,0.001); isoniazid-gNWT-R .4.0 (IQR 2.0–4.0) compared with 0.25 (IQR 0.12–1.00) among gWT-S (P= 0.001); ethionamide-gNWT-R 15.0 (IQR 10.0–20.0) compared with 2.50 (IQR; 2.50–5.00) among gWT-S (P, 0.001). WGS correctly predicted resistance in 95% (36/38) and 100% (38/38) of the rifampicin-resistant isolates with ECOFFs .0.5 and .0.125 mg/L, respectively. No known resistance-conferring mutations were present in genes associated with resistance to fluoroquinolones, aminoglycosides, capreomycin, bedaquiline, delamanid, linezolid, clofazimine, cycloserine, or p-amino salicylic acid. Conclusions: WGS-based drug resistance prediction worked well to rule-in phenotypic drug resistance and the absence of second-line drug resistance-mediating mutations has the potential to guide the design of RR/MDR-TB regimens in the future.
    URI
    https://doi.org/10.1093/jacamr/dlac042
    https://dspace.nm-aist.ac.tz/handle/20.500.12479/1446
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