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A Comparison of Three Different Bioinformatics Analyses of the 16S–23S rRNA Encoding Region for Bacterial Identification

机译:16S–23S rRNA编码区用于细菌鉴定的三种不同生物信息学分析的比较

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摘要

Rapid and reliable identification of bacterial pathogens directly from patient samples is required for optimizing antimicrobial therapy. Although Sanger sequencing of the 16S ribosomal RNA (rRNA) gene is used as a molecular method, species identification and discrimination is not always achievable for bacteria as their 16S rRNA genes have sometimes high sequence homology. Recently, next generation sequencing (NGS) of the 16S–23S rRNA encoding region has been proposed for reliable identification of pathogens directly from patient samples. However, data analysis is laborious and time-consuming and a database for the complete 16S–23S rRNA encoding region is not available. Therefore, a better, faster, and stronger approach is needed for NGS data analysis of the 16S–23S rRNA encoding region. We compared speed and diagnostic accuracy of different data analysis approaches: de novo assembly followed by Basic Local Alignment Search Tool (BLAST), operational taxonomic unit (OTU) clustering, or mapping using an in-house developed 16S–23S rRNA encoding region database for the identification of bacterial species. De novo assembly followed by BLAST using the in-house database was superior to the other methods, resulting in the shortest turnaround time (2 h and 5 min), approximately 2 h less than OTU clustering and 4.5 h less than mapping, and a sensitivity of 80%. Mapping was the slowest and most laborious data analysis approach with a sensitivity of 60%, whereas OTU clustering was the least laborious approach with 70% sensitivity. Although the in-house database requires more sequence entries to improve the sensitivity, the combination of de novo assembly and BLAST currently appears to be the optimal approach for data analysis.
机译:需要直接从患者样本中快速可靠地鉴定细菌病原体,以优化抗菌治疗。尽管将16S核糖体RNA(rRNA)基因的Sanger测序用作分子方法,但细菌的16S rRNA基因有时具有高度的序列同源性,因此并不总是能够对细菌进行物种鉴定和区分。最近,已经提出了16S–23S rRNA编码区的下一代测序(NGS),用于直接从患者样本中可靠地鉴定病原体。但是,数据分析既费力又费时,并且没有完整的16S-23S rRNA编码区的数据库。因此,对于16S-23S rRNA编码区的NGS数据分析,需要一种更好,更快和更强的方法。我们比较了不同数据分析方法的速度和诊断准确性:从头开始组装,然后进行基本局部比对搜索工具(BLAST),可操作分类单位(OTU)聚类,或使用内部开发的16S-23S rRNA编码区域数据库进行映射细菌种类的鉴定。从头开始组装,然后使用内部数据库进行BLAST优于其他方法,从而使周转时间最短(2小时和5分钟),比OTU聚类大约少2小时,比映射少4.5小时,并且灵敏度高80%。映射是最慢,最费力的数据分析方法,灵敏度为60%,而OTU聚类是最不费力的方法,灵敏度为70%。尽管内部数据库需要更多的序列条目以提高灵敏度,但从头组装和BLAST的组合目前似乎是进行数据分析的最佳方法。

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