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Mining Genomic Patterns in Mycobacterium tuberculosis H37Rv Using a Web Server Tuber-Gene

机译:使用Web Server Tuber基因挖掘结核分枝杆菌H37Rv中的基因组模式

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摘要

Mycobacterium tuberculosis (MTB), causative agent of tuberculosis, is one of the most dreaded diseases of the century. It has long been studied by researchers throughout the world using various wet-lab and dry-lab techniques. In this study, we focus on mining useful patterns at genomic level that can be applied for in silico functional characterization of genes from the MTB complex. The model developed on the basis of the patterns found in this study can correctly identify 99.77% of the input genes from the genome of MTB strain H37Rv. The model was tested against four other MTB strains and the homologue M. bovis to further evaluate its generalization capability. The mean prediction accuracy was 85.76%. It was also observed that the GC content remained fairly constant throughout the genome, implicating the absence of any pathogenicity island transferred from other organisms. This study reveals that dinucleotide composition is an efficient functional class discriminator for MTB complex. To facilitate the application of this model, a web server Tuber-Gene has been developed, which can be freely accessed at .
机译:结核分枝杆菌(MTB)是结核病的病原体,是本世纪最可怕的疾病之一。长期以来,全世界的研究人员都使用湿实验室和干实验室技术对其进行了研究。在这项研究中,我们专注于在基因组水平上挖掘有用的模式,这些模式可用于对MTB复合体的基因进行计算机功能表征。根据本研究中发现的模式开发的模型可以从MTB株H37Rv的基因组中正确识别出99.77%的输入基因。该模型针对其他四个MTB菌株和同系牛分枝杆菌进行了测试,以进一步评估其泛化能力。平均预测准确性为85.76%。还观察到,GC含量在整个基因组中保持相当恒定,这意味着不存在从其他生物体转移来的任何致病岛。这项研究表明,二核苷酸成分是MTB复合物的有效功能类别识别剂。为了促进该模型的应用,已经开发了Web服务器Tuber-Gene,可以从访问该服务器。

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