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Predicting Antigenicity of Proteins in a Bacterial Proteome; a Protein Microarray and Naïve Bayes Classification Approach

机译:预测蛋白质在细菌蛋白质组的抗原性;蛋白微阵列和朴素贝叶斯分类方法

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摘要

Discovery of novel antigens associated with infectious diseases is fundamental to the development of serodiagnostic tests and protein subunit vaccines against existing and emerging pathogens. Efforts to predict antigenicity have relied on a few computational algorithms predicting signal peptide sequences (SignalP), transmembrane domains, or subcellular localization (pSort). An empirical protein microarray approach was developed to scan the entire proteome of any infectious microorganism and empirically determine immunoglobulin reactivity against all the antigens from a microorganism in infected individuals. The current database from this activity contains quantitative antibody reactivity data against 35,000 proteins derived from 25 infectious microorganisms and more than 30 million data points derived from 15,000 patient sera. Interrogation of these data sets has revealed ten proteomic features that are associated with antigenicity, allowing an in silico protein sequence and functional annotation based approach to triage the least likely antigenic proteins from those that are more likely to be antigenic. The first iteration of this approach applied to Brucella melitensis predicted 37% of the bacterial proteome containing 91% of the antigens empirically identified by probing proteome microarrays. In this study, we describe a naïve Bayes classification approach that can be used to assign a relative score to the likelihood that an antigen will be immunoreactive and serodiagnostic in a bacterial proteome. This algorithm predicted 20% of the B. melitensis proteome including 91% of the serodiagnostic antigens, a nearly twofold improvement in specificity of the predictor. These results give us confidence that further development of this approach will lead to further improvements in the sensitivity and specificity of this in silico predictive algorithm.
机译:发现与传染病相关的新型抗原是对现有和新出现的病原体的血清诊断测试和蛋白质亚基疫苗的发展是基础。预测抗原性的努力依赖于预测信号肽序列(信号分),跨膜域或亚细胞定位(Psort)的少数计算算法。开发了一种经验蛋白质微阵列方法以扫描任何感染性微生物的整个蛋白质组,并经验从感染的个体中的微生物中的所有抗原鉴定免疫球蛋白反应性。来自该活性的当前数据库含有针对来自25例感染微生物的35,000个蛋白质的定量抗体反应性数据,衍生自15,000例患者血清的超过3000万数据点。这些数据集的询问揭示了与抗原性相关的10个蛋白质组学特征,允许基于硅蛋白序列和基于功能的抗原蛋白的硅蛋白序列和功能的抗原蛋白,这些抗原蛋白更容易成为抗原性。这种方法的第一次迭代适用于Brucella melitensis的37%的细菌蛋白质组,所述细菌蛋白质含有91%通过探测蛋白质组微阵列鉴定的抗原。在这项研究中,我们描述了一种幼稚贝叶斯分类方法,可用于将相对得分分配给抗原将在细菌蛋白质组中的免疫反应和血清结构的可能性。该算法预测了B.Melitensis蛋白质组的20%,包括91%的血清诊断抗原,其特异性提高了预测器的特异性。这些结果让我们信心进一步发展这种方法将导致在硅预测算法中进一步改善这一点的灵敏度和特异性。

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  • 作者

    Li Liang; Philip L. Felgner;

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  • 年(卷),期 -1(9),5
  • 年度 -1
  • 页码 977–990
  • 总页数 18
  • 原文格式 PDF
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