完整后设资料纪录
DC 栏位 | 值 | 语言 |
---|---|---|
dc.contributor.author | 黄章维 | en_US |
dc.contributor.author | Jhang-Wei Huang | en_US |
dc.contributor.author | 杨进木 | en_US |
dc.contributor.author | Jinn-Moon Yang | en_US |
dc.date.accessioned | 2014-12-12T03:00:07Z | - |
dc.date.available | 2014-12-12T03:00:07Z | - |
dc.date.issued | 2005 | en_US |
dc.identifier.uri | http://140.113.39.130/cdrfb3/record/nctu/#GT009351502 | en_US |
dc.identifier.uri | http://hdl.handle.net/11536/79854 | - |
dc.description.abstract | 具有疾病性之禽类与人类流行性感冒病毒曾对人类文明社会带来严重的伤害与经济损失,因此了解流感病毒之抗原性演化对于预防流感与疫苗株之挑选是很重要的议题。大多数的相关研究在预测抗原性演化与预测未来造成流行之病毒株时只统计位于红血球凝集素(HA)上之突变点数与使用演化式之分析方法。近来有几份研究发现位于血球凝集素上之突变点数量与抗原-抗体亲和力有关联性,换句话说,发现了基因演化与抗原性演化之关联性。此发现显示抗原性演化比基因演化更具有不连续之跳跃性,且基因序列上的改变有时会造成不等价之钜大抗原性影响。 在这份论文中,我们研究的重要议题是“位于HA的序列中,那些重要位置的改变会与HI滴定量改变有高度的相关性”。资讯获得量被用来衡量并且代表基因演化与抗原性演化之关联性。位于HA序列上之一个胺基酸位置若具有高的资讯获得量则表示发生在此位置上之点突变会与代表抗原性特性之血球凝集抑制抗体效价高度相关。此显示了每个位置的资讯获得量可以用来预测HA序列上之基因改变与抗原性改变之相关性。决策树方法(C4.5)根据资讯获得量被用来选择21个重要的位置。这21个位置被进一步分成6群,每一群内高度相关之位置具有共同演化之特性。根据每个位置之资讯获得量与共同演化之资讯,在研究中建立了一个模组来预测基因演化与抗原性演化之关联性。 我们的方法分别使用序列上之特征值与结构上之特征值(Contact Map),此两者在训练模组之预测率分别91%与96%。此方法在同一组资料集上之预测率比传统使用汉明距离法具有较高的预测率。大部分我们找到重要的位置都落在Epitope上并且与之前的相关研究有一致性。 最后该预测模组(使用资讯获得量所选择之重要位置)被应用于2个测试资料上。对于WER之50笔疫苗株资料之预测率为74%,对于5928笔历史资料之预测率为87%并且能成功地预测流感病毒群体间之转移(99%)。由以上的结果,显示我们的方法具有robust之特性并且有助于预测基因与抗原性演化之关联性,此方法亦具潜力助于疫苗发展。 | zh_TW |
dc.description.abstract | Pathogenic avian and human influenza virus could cause disastrous damage to human society and economics. Understanding antigenic evolution of influenza viruses is a very important issue for vaccine strain selection and prophylaxis. To predict antigenic drift most current approaches use only hemagglutinin protein (HA) sequences of influenza by number of mutations and phylogenetic analyses to select viruses which will probably be the progenitor of viruses in the next epidemic. Recently, several reports had indicated that there were relationships between mutations of HA protein sequences and antigen-antibody affinity, i.e., the relationships between the viral genetic evolution and antigenic drift. They observed that antigenic drift was more punctuated than genetic evolution, and genetic changes sometime had a disproportionately large antigenic effect. In this thesis, we study an important issue: “whether certain amino acid positions change in the HA protein sequences are correlated to the change of binding HI titer values”. The information gain is used to calculate the degree of association between the genetic evolution and antigenic drift. An amino acid with high information gain at a specific position (i.e., 1 ~ 329 positions for a HA sequence) means that amino acid mutation on this position is highly correlated to antigenic change on HI titer value. This implied that the value of information gain in each position is able to predict the association between genetic and antigenic change for HA sequences. Here, a decision tree tool (C 4.5) was used to select 21 important positions based on information gain. These 21 positions are further clustered into 6 groups and the amino acid positions on the same cluster are high co-evolution. According to the information gain of each position and co-evolution, we have built a model to predict the association between the genetic and antigenic evolution. Our method yielded both sequence features (position-specific amino acid changes) and structure features (contact maps). The accuracies of our model were 91% and 96% by using sequence and structure features, respectively. The accuracy is much better than a traditional hamming distance method on the same data set. Most of the immunodominant positions identified by our method are located on the epitope sites and are consistent with previous works. Finally, the predicted model (positions selected by information gain) was applied on two test sets. The predicting accuracy for 50 cases from WER vaccine strains was 74% and for 5928 historical real cases was 87%. These results demonstrate that our approach is robust and useful for predicting the relationship between genetic evolution and antigenic drift and is potential useful for vaccine development. | en_US |
dc.language.iso | en_US | en_US |
dc.subject | 流感 | zh_TW |
dc.subject | 抗原性 | zh_TW |
dc.subject | Influenza | en_US |
dc.subject | Antigenic | en_US |
dc.title | 藉由建立基因演化与抗原性漂移之关联性预测A型H3N2流行性感冒病毒之抗原性变异 | zh_TW |
dc.title | Predicting Antigenic Variants of Influenza A H3N2 Viruses by Building Relationships between Genetic Evolution and Antigenic Drift | en_US |
dc.type | Thesis | en_US |
dc.contributor.department | 生物资讯及系统生物研究所 | zh_TW |
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