Performances of Bioinformatics Pipelines for the Identification of Pathogensin Clinical Samples with the De Novo Assembly Approaches: Focuson 2009 Pandemic Influenza A (H1N1)

Q3 Computer Science Open Bioinformatics Journal Pub Date : 2014-12-31 DOI:10.2174/1875036201408010001
T. Biagini, B. Bartolini, E. Giombini, M. Capobianchi, F. Ferrè, G. Chillemi, A. Desideri
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引用次数: 1

Abstract

Diagnostic assays for pathogen detection are critical components of public-health monitoring efforts. In view of the limitations of methods that target specific agents, new approaches are required for the identification of novel, modi- fied or 'unsuspected' pathogens in public-health monitoring schemes. Metagenomic approach is an attractive possibility for rapid identification of these pathogens. The analysis of metagenomic libraries requires fast computation and appropri- ate algorithms to characterize sequences. In this paper, we compared the computational efficiency of different bioinfor- matic pipelines ad hoc established, based on de novo assembly of pathogen genomes, using a data set generated with a 454 genome sequencer from respiratory samples of patients with diagnosis of 2009 pandemic influenza A (H1N1). The results indicate high computational efficiency of the different bioinformatic pipelines, reducing the number of alignments respect to the identification based on the alignment of individual reads. The resulting computational time, added to the processing/sequencing time, is well compatible with diagnostic needs. The pipelines here described are useful in the unbi- ased analysis of clinical samples from patients with infectious diseases that may be relevant not only for the rapid identifi- cation but also for the extensive genetic characterization of viral pathogens without the need of culture amplification.
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基于De Novo组装方法的生物信息学管道在临床样本病原体鉴定中的应用——以2009年甲型H1N1流感为例
病原检测诊断分析是公共卫生监测工作的重要组成部分。鉴于针对特定病原体的方法的局限性,需要在公共卫生监测计划中采用新的方法来识别新的、改良的或"未怀疑的"病原体。宏基因组方法是快速鉴定这些病原体的一种有吸引力的可能性。宏基因组文库的分析需要快速计算和适当的算法来表征序列。在本文中,我们使用来自2009年甲型H1N1流感大流行诊断患者呼吸道样本的454基因组测序仪生成的数据集,比较了基于病原体基因组从头组装而建立的不同生物信息管道的计算效率。结果表明,不同的生物信息学管道具有较高的计算效率,减少了基于单个reads比对的鉴定的比对次数。由此产生的计算时间,加上处理/测序时间,与诊断需求很好地兼容。这里描述的管道在对传染病患者临床样本的无基础分析中是有用的,这可能不仅与快速鉴定有关,而且与不需要培养扩增的病毒病原体的广泛遗传特征有关。
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来源期刊
Open Bioinformatics Journal
Open Bioinformatics Journal Computer Science-Computer Science (miscellaneous)
CiteScore
2.40
自引率
0.00%
发文量
4
期刊介绍: The Open Bioinformatics Journal is an Open Access online journal, which publishes research articles, reviews/mini-reviews, letters, clinical trial studies and guest edited single topic issues in all areas of bioinformatics and computational biology. The coverage includes biomedicine, focusing on large data acquisition, analysis and curation, computational and statistical methods for the modeling and analysis of biological data, and descriptions of new algorithms and databases. The Open Bioinformatics Journal, a peer reviewed journal, is an important and reliable source of current information on the developments in the field. The emphasis will be on publishing quality articles rapidly and freely available worldwide.
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