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Advanced in silico analysis of expressed sequence tag (EST) data for parasitic nematodes of major socio-economic importance - Fundamental insights toward biotechnological outcomes

机译:具有重大社会经济意义的寄生线虫的表达序列标签(EST)数据的高级计算机模拟分析-对生物技术成果的基本见解

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摘要

Parasitic nematodes infect humans, other animals and plants, and impose a significant public health and economic burden worldwide due to the diseases that they cause. A better understanding of parasite genomes, host-parasite relationships and the molecular biology of parasites themselves will enable the rational development of diagnostic tests and/or safe anti-parasitic compounds, following the functional annotation of parasite genomic sequences. With only a few completely sequenced nematode genomes, expressed sequence tag (EST) datasets provide a low-cost alternative (''poor man's genome'') to whole genome sequences and a glimpse of the transcriptome of an organism. EST data require a number of computational methods for their pre-processing, clustering, assembly and annotation to yield biologically relevant information. In this article, we review the steps involved in EST data analysis, the development of new semi-automated bioinformatic pipelines and their application to parasitic nematodes of major socio-economic significance, focused on identifying molecules involved in key biological processes or pathways that might serve as targets for new drugs or vaccines.
机译:寄生线虫感染人类,其他动植物,并由于其引起的疾病而在世界范围内造成巨大的公共卫生和经济负担。更好地了解寄生虫基因组,宿主-寄生虫之间的关系以及寄生虫本身的分子生物学,将能够根据寄生虫基因组序列的功能性注释,合理开发诊断测试和/或安全的抗寄生虫化合物。仅有少数几个完全测序的线虫基因组,表达的序列标签(EST)数据集为整个基因组序列提供了低成本的替代方案(“穷人基因组”),并使人们可以一窥生物的转录组。 EST数据需要多种计算方法进行预处理,聚类,组装和注释,以产生生物学上相关的信息。在本文中,我们回顾了EST数据分析,新的半自动化生物信息管道的开发及其在具有重大社会经济意义的寄生线虫中的应用,重点是确定了可能参与关键生物过程或途径的分子作为新药或疫苗的目标。

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