Francois Patrice, Charbonnier Yvan, Jacquet Jean, Utinger Dominic, Bento Manuela, Lew Daniel, Kresbach Gerhard M, Ehrat Markus, Schlegel Werner, Schrenzel Jacques
University Hospitals of Geneva, Genomic Research Laboratory, Service of Infectious Diseases, Switzerland.
J Microbiol Methods. 2006 Jun;65(3):390-403. doi: 10.1016/j.mimet.2005.08.012. Epub 2005 Oct 10.
Bacterial identification relies primarily on culture-based methodologies and requires 48-72 h to deliver results. We developed and used i) a bioinformatics strategy to select oligonucleotide signature probes, ii) a rapid procedure for RNA labelling and hybridization, iii) an evanescent-waveguide oligoarray with exquisite signal/noise performance, and iv) informatics methods for microarray data analysis. Unique 19-mer signature oligonucleotides were selected in the 5'-end of 16s rDNA genes of human pathogenic bacteria. Oligonucleotides spotted onto a Ta(2)O(5)-coated microarray surface were incubated with chemically labelled total bacterial RNA. Rapid hybridization and stringent washings were performed before scanning and analyzing the slide. In the present paper, the eight most abundant bacterial pathogens representing >54% of positive blood cultures were selected. Hierarchical clustering analysis of hybridization data revealed characteristic patterns, even for closely related species. We then evaluated artificial intelligence-based approaches that outperformed conventional threshold-based identification schemes on cognate probes. At this stage, the complete procedure applied to spiked blood cultures was completed in less than 6 h. In conclusion, when coupled to optimal signal detection strategy, microarrays provide bacterial identification within a few hours post-sampling, allowing targeted antimicrobial prescription.
细菌鉴定主要依赖基于培养的方法,需要48 - 72小时才能得出结果。我们开发并使用了:i)一种生物信息学策略来选择寡核苷酸特征探针;ii)一种用于RNA标记和杂交的快速程序;iii)一种具有出色信噪比性能的倏逝波导寡核苷酸芯片;iv)用于微阵列数据分析的信息学方法。在人类致病细菌的16s rDNA基因的5'端选择独特的19聚体特征寡核苷酸。将点样在涂有Ta(2)O(5)的微阵列表面上的寡核苷酸与化学标记的总细菌RNA一起孵育。在扫描和分析载玻片之前进行快速杂交和严格洗涤。在本文中,选择了占阳性血培养物>54%的八种最常见的细菌病原体。杂交数据的层次聚类分析揭示了特征模式,即使对于密切相关的物种也是如此。然后,我们评估了基于人工智能的方法,该方法在同源探针上优于传统的基于阈值的鉴定方案。在此阶段,应用于加标血培养物的完整程序在不到6小时内完成。总之,当与最佳信号检测策略相结合时,微阵列可在采样后几小时内实现细菌鉴定,从而实现有针对性的抗菌药物处方。