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ELM: enhanced lowest common ancestor based method for detecting a pathogenic virus from a large sequence dataset

机译:ELM:用于从大序列数据集中检测病原病毒的增强的基于最低共同祖先的方法

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Background Emerging viral diseases, most of which are caused by the transmission of viruses from animals to humans, pose a threat to public health. Discovering pathogenic viruses through surveillance is the key to preparedness for this potential threat. Next generation sequencing (NGS) helps us to identify viruses without the design of a specific PCR primer. The major task in NGS data analysis is taxonomic identification for vast numbers of sequences. However, taxonomic identification via a BLAST search against all the known sequences is a computational bottleneck. Description Here we propose an enhanced lowest-common-ancestor based method (ELM) to effectively identify viruses from massive sequence data. To reduce the computational cost, ELM uses a customized database composed only of viral sequences for the BLAST search. At the same time, ELM adopts a novel criterion to suppress the rise in false positive assignments caused by the small database. As a result, identification by ELM is more than 1,000 times faster than the conventional methods without loss of accuracy. Conclusions We anticipate that ELM will contribute to direct diagnosis of viral infections. The web server and the customized viral database are freely available at http://bioinformatics.czc.hokudai.ac.jp/ELM/ webcite .
机译:背景技术新兴的病毒性疾病多数是由病毒从动物传播给人类引起的,对公共健康构成了威胁。通过监视发现病原性病毒是对此潜在威胁做好准备的关键。下一代测序(NGS)可以帮助我们无需设计特定的PCR引物即可鉴定病毒。 NGS数据分析的主要任务是对大量序列进行分类识别。但是,通过针对所有已知序列的BLAST搜索进行分类识别是计算的瓶颈。描述在这里,我们提出一种增强的基于最低共同祖先的方法(ELM),以有效地从大量序列数据中识别病毒。为了降低计算成本,ELM使用仅包含病毒序列的定制数据库进行BLAST搜索。同时,ELM采用了一种新颖的标准来抑制由小型数据库引起的错误肯定分配的增加。结果,通过ELM进行的识别比传统方法快了1000倍以上,而不会降低准确性。结论我们预期ELM将有助于直接诊断病毒感染。 Web服务器和定制的病毒数据库可从http://bioinformatics.czc.hokudai.ac.jp/ELM/ webcite免费获得。

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