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首页> 外文期刊>BMC Biology >LSTrAP-Crowd: prediction of novel components of bacterial ribosomes with crowd-sourced analysis of RNA sequencing data
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LSTrAP-Crowd: prediction of novel components of bacterial ribosomes with crowd-sourced analysis of RNA sequencing data

机译:LSTRAP-人群:预测细菌核糖体的新组分,具有RNA测序数据的人群源分析

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摘要

Bacterial resistance to antibiotics is a growing health problem that is projected to cause more deaths than cancer by 2050. Consequently, novel antibiotics are urgently needed. Since more than half of the available antibiotics target the structurally conserved bacterial ribosomes, factors involved in protein synthesis are thus prime targets for the development of novel antibiotics. However, experimental identification of these potential antibiotic target proteins can be labor-intensive and challenging, as these proteins are likely to be poorly characterized and specific to few bacteria. Here, we use a bioinformatics approach to identify novel components of protein synthesis. In order to identify these novel proteins, we established a Large-Scale Transcriptomic Analysis Pipeline in Crowd (LSTrAP-Crowd), where 285 individuals processed 26 terabytes of RNA-sequencing data of the 17 most notorious bacterial pathogens. In total, the crowd processed 26,269 RNA-seq experiments and used the data to construct gene co-expression networks, which were used to identify more than a hundred uncharacterized genes that were transcriptionally associated with protein synthesis. We provide the identity of these genes together with the processed gene expression data. We identified genes related to protein synthesis in common bacterial pathogens and thus provide a resource of potential antibiotic development targets for experimental validation. The data can be used to explore additional vulnerabilities of bacteria, while our approach demonstrates how the processing of gene expression data can be easily crowd-sourced.
机译:细菌性抗生素是一种日益增长的健康问题,其预计将在2050年之前引起比癌症更多的死亡。因此,迫切需要新的抗生素。由于超过一半的可用抗生素靶向结构保守的细菌核糖体,因此参与蛋白质合成的因素是新型抗生素的发展的主要目标。然而,这些潜在的抗生素靶蛋白的实验鉴定可以是劳动密集型和挑战性的,因为这些蛋白质可能表征差并且特异性少量细菌。在这里,我们使用生物信息学方法来识别蛋白质合成的新组分。为了鉴定这些新的蛋白质,我们在人群(LSTRAP-Crowd)中建立了大规模的转录组分析管道,其中285个个体加工了17个最臭名昭着的细菌病原体的26次RNA测序数据。共有人群加工26,269 RNA-SEQ实验,并使用该数据来构建基因共表达网络,其用于鉴定与蛋白质合成相关的一百以上的非特征基因。我们将这些基因的同一性与加工后的基因表达数据一起提供。我们鉴定了与常见的细菌病原体中蛋白质合成相关的基因,从而提供了用于实验验证的潜在抗生素发育目标的资源。数据可用于探索细菌的额外漏洞,而我们的方法展示了基因表达数据的处理是如何容易地挤出的。

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