Department of Bioinformatics and Biostatistics, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, China.
Sheng Yushou Center of Cell Biology and Immunology, Joint International Research Laboratory of Metabolic and Developmental Sciences, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, China.
BMC Bioinformatics. 2021 May 5;22(1):231. doi: 10.1186/s12859-021-04155-y.
Epitope prediction is a useful approach in cancer immunology and immunotherapy. Many computational methods, including machine learning and network analysis, have been developed quickly for such purposes. However, regarding clinical applications, the existing tools are insufficient because few of the predicted binding molecules are immunogenic. Hence, to develop more potent and effective vaccines, it is important to understand binding and immunogenic potential. Here, we observed that the interactive association constituted by human leukocyte antigen (HLA)-peptide pairs can be regarded as a network in which each HLA and peptide is taken as a node. We speculated whether this network could detect the essential interactive propensities embedded in HLA-peptide pairs. Thus, we developed a network-based deep learning method called DeepNetBim by harnessing binding and immunogenic information to predict HLA-peptide interactions.
Quantitative class I HLA-peptide binding data and qualitative immunogenic data (including data generated from T cell activation assays, major histocompatibility complex (MHC) binding assays and MHC ligand elution assays) were retrieved from the Immune Epitope Database database. The weighted HLA-peptide binding network and immunogenic network were integrated into a network-based deep learning algorithm constituted by a convolutional neural network and an attention mechanism. The results showed that the integration of network centrality metrics increased the power of both binding and immunogenicity predictions, while the new model significantly outperformed those that did not include network features and those with shuffled networks. Applied on benchmark and independent datasets, DeepNetBim achieved an AUC score of 93.74% in HLA-peptide binding prediction, outperforming 11 state-of-the-art relevant models. Furthermore, the performance enhancement of the combined model, which filtered out negative immunogenic predictions, was confirmed on neoantigen identification by an increase in both positive predictive value (PPV) and the proportion of neoantigen recognition.
We developed a network-based deep learning method called DeepNetBim as a pan-specific epitope prediction tool. It extracted the attributes of the network as new features from HLA-peptide binding and immunogenic models. We observed that not only did DeepNetBim binding model outperform other updated methods but the combination of our two models showed better performance. This indicates further applications in clinical practice.
表位预测是癌症免疫学和免疫疗法中的一种有用方法。为了达到这一目的,包括机器学习和网络分析在内的许多计算方法迅速发展起来。然而,就临床应用而言,现有的工具还不够完善,因为预测的结合分子中很少有免疫原性。因此,为了开发更有效和有效的疫苗,了解结合和免疫原性潜力非常重要。在这里,我们观察到人类白细胞抗原(HLA)-肽对构成的相互作用关联可以看作是一个网络,其中每个 HLA 和肽都被视为一个节点。我们推测这个网络是否可以检测到 HLA-肽对中嵌入的基本相互作用倾向。因此,我们开发了一种基于网络的深度学习方法,称为 DeepNetBim,通过利用结合和免疫信息来预测 HLA-肽相互作用。
从免疫表位数据库中检索到定量 I 类 HLA-肽结合数据和定性免疫数据(包括来自 T 细胞激活测定、主要组织相容性复合体(MHC)结合测定和 MHC 配体洗脱测定的数据)。整合加权 HLA-肽结合网络和免疫网络的算法,是由卷积神经网络和注意力机制组成的网络深度学习算法。结果表明,网络中心性度量的整合提高了结合和免疫预测的能力,而新模型显著优于不包括网络特征和具有随机网络的模型。在基准和独立数据集上的应用表明,DeepNetBim 在 HLA-肽结合预测中的 AUC 评分为 93.74%,优于 11 种最先进的相关模型。此外,通过提高阳性预测值(PPV)和新抗原识别比例,证实了组合模型(筛选出阴性免疫预测)的性能增强,在新抗原鉴定方面得到了确认。
我们开发了一种称为 DeepNetBim 的基于网络的深度学习方法,作为一种泛特异性表位预测工具。它从 HLA-肽结合和免疫模型中提取网络属性作为新特征。我们观察到,DeepNetBim 结合模型不仅优于其他更新的方法,而且我们的两个模型的组合表现更好。这表明它在临床实践中有进一步的应用。