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System To Assess Genome Sequencing Needs for Viral Protein Diagnostics and Therapeutics

机译:评估病毒蛋白诊断和治疗的基因组测序需求的系统

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摘要

Computational analyses of genome sequences may elucidate protein signatures unique to a target pathogen. We constructed a Protein Signature Pipeline to guide the selection of short peptide sequences to serve as targets for detection and therapeutics. In silico identification of good target peptides that are conserved among strains and unique compared to other species generates a list of peptides. These peptides may be developed in the laboratory as targets of antibody, peptide, and ligand binding for detection assays and therapeutics or as targets for vaccine development. In this paper, we assess how the amount of sequence data affects our ability to identify conserved, unique protein signature candidates. To determine the amount of sequence data required to select good protein signature candidates, we have built a computationally intensive system called the Sequencing Analysis Pipeline (SAP). The SAP performs thousands of Monte Carlo simulations, each calling the Protein Signature Pipeline, to assess how the amount of sequence data for a target organism affects the ability to predict peptide signature candidates. Viral species differ substantially in the number of genomes required to predict protein signature targets. Patterns do not appear based on genome structure. There are more protein than DNA signatures due to greater intraspecific conservation at the protein than at the nucleotide level. We conclude that it is necessary to use the SAP as a dynamic system to assess the need for continued sequencing for each species individually and to update predictions with each additional genome that is sequenced.
机译:基因组序列的计算分析可以阐明目标病原体特有的蛋白质特征。我们构建了蛋白质签名管道,以指导短肽序列的选择,以作为检测和治疗的靶标。在计算机上鉴定在菌株中保守且与其他物种相比唯一的优良靶标肽会生成一系列肽段。这些肽可以在实验室中开发为抗体,肽和配体结合的靶标,用于检测分析和治疗,也可以作为疫苗开发的靶标。在本文中,我们评估了序列数据的数量如何影响我们识别保守的,独特的蛋白质特征候选物的能力。为了确定选择良好蛋白质签名候选者所需的序列数据量,我们建立了一个计算密集型系统,称为序列分析管道(SAP)。 SAP执行数千次Monte Carlo模拟,每个模拟都称为蛋白质签名管道,以评估目标生物的序列数据量如何影响预测候选肽签名的能力。病毒种类在预测蛋白质特征靶标所需的基因组数量上有很大不同。模式不会基于基因组结构出现。由于与蛋白质相比在核苷酸水平上的种内保守性更高,因此蛋白质比DNA标记更多。我们得出结论,有必要使用SAP作为动态系统来评估对每个物种进行连续测序的需求,并使用每个已测序的其他基因组更新预测。

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