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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Time series computational prediction of vaccines for influenza A H3N2 with recurrent neural networks
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Time series computational prediction of vaccines for influenza A H3N2 with recurrent neural networks

机译:流动性神经网络的流感A H3N2疫苗的时间序列计算预测

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摘要

Influenza viruses are persistently threatening public health, causing annual epidemics and sporadic pandemics due to rapid viral evolution. Vaccines are used to prevent influenza infections but the composition of the influenza vaccines have to be updated regularly to ensure its efficacy. Computational tools and analyses have become increasingly important in guiding the process of vaccine selection. By constructing time-series training samples with splittings and embeddings, we develop a computational method for predicting suitable strains as the recommendation of the influenza vaccines using recurrent neural networks (RNNs). The Encoderdecoder architecture of RNN model enables us to perform sequence-to-sequence prediction. We employ this model to predict the prevalent sequence of the H3N2 viruses sampled from 2006 to 2017. The identity between our predicted sequence and recommended vaccines is greater than 98% and the P-epitope < 0.2 indicates their antigenic similarity. The multi-step vaccine prediction further demonstrates the robustness of our method which achieves comparable results in contrast to single step prediction. The results show significant matches of the recommended vaccine strains to the circulating strains. We believe it would facilitate the process of vaccine selection and surveillance of seasonal in degrees uenza epidemics.
机译:流感病毒持续威胁公共卫生,由于快速的病毒进化,致致因病毒进化的年度流行病和散发性大疱。疫苗用于预防流感感染,但必须定期更新流感疫苗的组成,以确保其功效。计算工具和分析在引导疫苗选择过程方面变得越来越重要。通过用分裂和嵌入构建时间序列训练样本,我们开发了一种计算方法,用于预测使用反复性神经网络(RNN)的流感疫苗的建议。 RNN模型的EncoderDecoder体系结构使我们能够执行序列到序列预测。我们使用该模型预测从2006年至2017年采样的H3N2病毒的普遍存在的序列。我们的预测序列和推荐疫苗之间的身份大于98%,P表率<0.2表示它们的抗原相似性。多步疫苗预测进一步展示了我们对对比的与单步预测相比的可比结果的鲁棒性。结果显示推荐疫苗菌株与循环菌株的显着比赛。我们认为它将促进疫苗选择和季节性季节性监测的过程。

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