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首页> 外文期刊>BMC Bioinformatics >Genomic prediction of tuberculosis drug-resistance: benchmarking existing databases and prediction algorithms
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Genomic prediction of tuberculosis drug-resistance: benchmarking existing databases and prediction algorithms

机译:结核病药物阻力的基因组预测:基准测试现有数据库与预测算法

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It is possible to predict whether a tuberculosis (TB) patient will fail to respond to specific antibiotics by sequencing the genome of the infecting Mycobacterium tuberculosis (Mtb) and observing whether the pathogen carries specific mutations at drug-resistance sites. This advancement has led to the collation of TB databases such as PATRIC and ReSeqTB that possess both whole genome sequences and drug resistance phenotypes of infecting Mtb isolates. Bioinformatics tools have also been developed to predict drug resistance from whole genome sequencing (WGS) data. Here, we evaluate the performance of four popular tools (TBProfiler, MyKrobe, KvarQ, PhyResSE) with 6746 isolates compiled from publicly available databases, and subsequently identify highly probable phenotyping errors in the databases by genetically predicting the drug phenotypes using all four software. Our results show that these bioinformatics tools generally perform well in predicting the resistance status for two key first-line agents (isoniazid, rifampicin), but the accuracy is lower for second-line injectables and fluoroquinolones. The error rates in the databases are also non-trivial, reaching as high as 31.1% for prothionamide, and that phenotypes from ReSeqTB are more susceptible to errors. The good performance of the automated software for drug resistance prediction from TB WGS data shown in this study further substantiates the usefulness and promise of utilising genetic data to accurately profile TB drug resistance, thereby reducing misdiagnoses arising from error-prone culture-based drug susceptibility testing.
机译:可以预测结核病(TB)患者是否通过测序感染分枝杆菌(MTB)的基因组并观察病原体在耐药位点上的特异性突变,患者是否不能响应特异性抗生素。该进步导致结核病数据库的整理,例如Patric和ReseqTB,其具有传染MTB分离株的全基因组序列和耐药表型。还开发了生物信息学工具以预测全基因组测序(WGS)数据的耐药性。在这里,我们评估了来自公开数据库的6746个分离液的四个流行工具(TBProfiler,MyKrobe,KVARQ,Phyresse)的性能,随后通过基因预测使用所有四种软件来预测药物表型来识别数据库中的高度可能的表型错误。我们的研究结果表明,这些生物信息学工具通常在预测两个关键一线剂的阻力状态(异烟肼,利福平),但二线注射剂和氟喹诺酮类药物的精度降低。数据库中的错误率也是非琐碎的,普罗什酰胺的高达31.1%,并且来自ReseqTB的表型更容易受到误差。本研究中所示的Tb WGS数据的耐药性预测的自动化软件的良好性能进一步证实了利用遗传数据准确突出耐药性的有用性和承诺,从而减少了易受易受培养的药物易感性测试产生的误诊。

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