Biocomputational strategies for microbial drug target identification.

Kishore R Sakharkar, Meena K Sakharkar, Vincent T K Chow
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引用次数: 18

Abstract

The complete genome sequences of about 300 bacteria (mostly pathogenic) have been determined, and many more such projects are currently in progress. The detection of bacterial genes that are non-homologous to human genes and are essential for the survival of the pathogen represent a promising means of identifying novel drug targets. We present a subtractive genomics approach for the identification of putative drug targets in microbial genomes and demonstrate its execution using Pseudomonas aeruginosa as an example. The resultant analyses are in good agreement with the results of systematic gene deletion experiments. This strategy enables rapid potential drug target identification, thereby greatly facilitating the search for new antibiotics. It should be recognized that there are limitations to this computational approach for drug target identification. Distant gene relationships may be missed since the alignment scores are likely to have low statistical significance. In conclusion, the results of such a strategy underscore the utility of large genomic databases for in silico systematic drug target identification in the post-genomic era.

微生物药物靶标鉴定的生物计算策略。
已经确定了大约300种细菌(大多数是致病细菌)的完整基因组序列,目前还有更多这样的项目正在进行中。检测与人类基因非同源且对病原体生存至关重要的细菌基因是鉴定新型药物靶点的一种很有前途的方法。我们提出了一种减法基因组学方法,用于鉴定微生物基因组中假定的药物靶点,并以铜绿假单胞菌为例演示其执行情况。所得到的分析结果与系统基因缺失实验的结果一致。这种策略能够快速识别潜在的药物靶点,从而极大地促进了新抗生素的寻找。应该认识到,这种用于药物靶标识别的计算方法存在局限性。由于比对得分可能具有较低的统计显著性,因此可能会遗漏远缘基因关系。总之,这种策略的结果强调了大型基因组数据库在后基因组时代用于计算机系统药物靶点识别的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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