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首页> 外文期刊>Journal of Translational Medicine >Computer-aided prediction of antigen presenting cell modulators for designing peptide-based vaccine adjuvants
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Computer-aided prediction of antigen presenting cell modulators for designing peptide-based vaccine adjuvants

机译:用于设计肽基疫苗佐剂的抗原呈递抗原的计算机辅助预测

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摘要

Evidences in literature strongly advocate the potential of immunomodulatory peptides for use as vaccine adjuvants. All the mechanisms of vaccine adjuvants ensuing immunostimulatory effects directly or indirectly stimulate antigen presenting cells (APCs). While numerous methods have been developed in the past for predicting B cell and T-cell epitopes; no method is available for predicting the peptides that can modulate the APCs. We named the peptides that can activate APCs as A-cell epitopes and developed methods for their prediction in this study. A dataset of experimentally validated A-cell epitopes was collected and compiled from various resources. To predict A-cell epitopes, we developed support vector machine-based machine learning models using different sequence-based features. A hybrid model developed on a combination of sequence-based features (dipeptide composition and motif occurrence), achieved the highest accuracy of 95.71% with Matthews correlation coefficient (MCC) value of 0.91 on the training dataset. We also evaluated the hybrid models on an independent dataset and achieved a comparable accuracy of 95.00% with MCC 0.90. The models developed in this study were implemented in a web-based platform VaxinPAD to predict and design immunomodulatory peptides or A-cell epitopes. This web server available at http://webs.iiitd.edu.in/raghava/vaxinpad/ will facilitate researchers in designing peptide-based vaccine adjuvants.
机译:文学的证据强烈倡导免疫调节肽用作疫苗佐剂的潜力。疫苗辅助剂直接或间接刺激抗原呈递细胞(APC)的所有机制。过去已经开发了许多方法以预测B细胞和T细胞表位;没有方法可用于预测可以调节APC的肽。我们将肽命名为可以激活APC作为一种细胞表位和在本研究预测的方法中开发的方法。收集实验验证的A细胞表位的数据集并从各种资源编制。为了预测A细胞介绍,我们使用不同的基于序列的特征开发了支持向量机的机器学习模型。在基于序列的特征(二肽组合物和基序)的组合中开发的混合模型,在训练数据集上实现了95.71%的最高精度为95.71%,在训练数据集中的0.91的相关系数(MCC)值为0.91。我们还在独立数据集中评估了混合模型,并通过MCC 0.90实现了95.00%的可比精度。本研究开发的模型在基于Web的平台Vaxinpad中实现,以预测和设计免疫调节肽或细胞表位。此Web服务器可用于http://webs.iiitd.edu.in/raghava/vaxinpad/将促进研究人员设计基于肽的疫苗佐剂。

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