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Comparison between two PCR‐based bacterial identification methods through artificial neural network data analysis

机译:通过人工神经网络数据分析比较两种基于PCR的细菌鉴定方法

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摘要

The 16S ribosomal ribonucleic acid (rRNA) and 16S‐23S rRNA spacer region genes are commonly used as taxonomic and phylogenetic tools. In this study, two pairs of fluorescent‐labeled primers for 16S rRNA genes and one pair of primers for 16S‐23S rRNA spacer region genes were selected to amplify target sequences of 317 isolates from positive blood cultures. The polymerase chain reaction (PCR) products of both were then subjected to restriction fragment length polymorphism (RFLP) analysis by capillary electrophoresis after incomplete digestion by . For products of 16S rRNA genes, single‐strand conformation polymorphism (SSCP) analysis was also performed directly. When the data were processed by artificial neural network (ANN), the accuracy of prediction based on 16S‐23S rRNA spacer region gene RFLP data was much higher than that of prediction based on 16S rRNA gene SSCP analysis data(98.0% vs. 79.6%). This study proved that the utilization of ANN as a pattern recognition method was a valuable strategy to simplify bacterial identification when relatively complex data were encountered. J. Clin. Lab. Anal. 22:14–20, 2008. © 2008 Wiley‐Liss, Inc.
机译:16S核糖体核糖核酸(rRNA)和16S-23S rRNA间隔区基因通常用作分类和系统发育工具。在这项研究中,选择了两对用于16S rRNA基因的荧光标记引物和一对用于16S-23S rRNA间隔区基因的引物,以扩增阳性血液培养物中317个分离株的靶序列。然后,在未完全消化的情况下,通过毛细管电泳对两者的聚合酶链反应(PCR)产物进行限制性片段长度多态性(RFLP)分析。对于16S rRNA基因的产物,还直接进行了单链构象多态性(SSCP)分析。当使用人工神经网络(ANN)处理数据时,基于16S-23S rRNA间隔区基因RFLP数据的预测准确性远高于基于16S rRNA基因SSCP分析数据的预测准确性(98.0%对79.6%) )。这项研究证明,当遇到相对复杂的数据时,利用ANN作为模式识别方法是简化细菌鉴定的一种有价值的策略。 J.临床实验室肛门2008年22:14–20。©2008 Wiley-Liss,Inc.

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