Abstract B093: Development of prediction software PrDx, trained on peptide-MHC stability assays, shows new important positions in the binding patterns of the peptides-MHC I and II complexes

Stephan Thorgrimsen, S. Justesen, N. Rapin
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引用次数: 0

Abstract

Mutations in cancer cells may lead to the formation of neo-epitopes potentially presented by both major histocompatibility complex (MHC) class I or II. These neo-epitopes may be recognized by CD8+ or CD4+ T-cells, and trigger an immune response. Only a small fraction of the neoepitopes will be displayed by the MHC class I or II. One of the challenges of cancer immunotherapy is therefore to predict which neoepitopes are susceptible to elicit a T-cell response. Software tools such as netMHC, MHC Flury and many others are over-predictive as the bulk part of the data used to train these methods are based on affinity assays. Several publications have indicated that stability assays may provide data that better correlate with epitope presentation by MHC. Prediction tools trained on stability assays may therefore be better at selecting neoepitopes resulting in more effective cancer vaccine design. We performed stability assay measurements for 10 MHC class I and 10 MHC class II alleles using a peptide scan library approach. In brief, random 9-mers where one position is known were used to measure stability of the peptide MHC complex. Next, the data were used to train a prediction tool, PrDx, that relies on a combination of different machine learning methods (random forest, feed forward neural networks and recurrent neural networks), of which the outputs are gathered in an assemble model. The model was then further trained with peptides predicted to bind with high stability, to the MHC alleles, until satisfactory performances were attained. To our surprise, PrDx showed new binding patterns for the alleles we trained. Although mostly similar to the binding patterns seen with affinity data trained method, the stability trained method is able to show new important positions in the binding patterns of the peptide-MHC complexes. Through retrospective analysis, our method seems able to select more accurately peptides susceptible to elicit a T-cell response, compared to state-of-the-art epitope prediction methods. Our results suggest that PrDx may be an attractive prediction tool for neo-epitopes discovery. Citation Format: Stephan Thorgrimsen, Sune Justesen, Nicolas Rapin. Development of prediction software PrDx, trained on peptide-MHC stability assays, shows new important positions in the binding patterns of the peptides-MHC I and II complexes [abstract]. In: Proceedings of the Fourth CRI-CIMT-EATI-AACR International Cancer Immunotherapy Conference: Translating Science into Survival; Sept 30-Oct 3, 2018; New York, NY. Philadelphia (PA): AACR; Cancer Immunol Res 2019;7(2 Suppl):Abstract nr B093.
摘要:基于肽- mhc稳定性分析的预测软件PrDx的开发,在肽- mhc I和II复合物的结合模式中显示了新的重要位置
癌细胞中的突变可能导致新表位的形成,这些新表位可能由主要组织相容性复合体(MHC) I类或II类呈现。这些新表位可能被CD8+或CD4+ t细胞识别,并引发免疫反应。只有一小部分新表位会被MHC I类或II类所显示。因此,癌症免疫治疗的挑战之一是预测哪些新表位容易引起t细胞反应。netMHC、MHC Flury等软件工具的预测能力太强,因为用于训练这些方法的大部分数据都是基于亲和性分析。一些出版物表明,稳定性测定可以提供更好地与MHC表位呈递相关的数据。因此,经过稳定性试验训练的预测工具可能更擅长选择新表位,从而设计出更有效的癌症疫苗。我们使用肽扫描文库方法对10个MHC I类和10个MHC II类等位基因进行了稳定性测定。简而言之,随机9-mers,其中一个位置是已知的,用于测量肽MHC复合物的稳定性。接下来,这些数据被用来训练一个预测工具PrDx,它依赖于不同机器学习方法(随机森林、前馈神经网络和循环神经网络)的组合,其中的输出被收集在一个组装模型中。然后用预测与MHC等位基因结合具有高稳定性的肽进一步训练模型,直到获得满意的性能。令我们惊讶的是,PrDx显示了我们训练的等位基因的新结合模式。虽然与亲和数据训练方法所见的结合模式大致相似,但稳定性训练方法能够在肽- mhc复合物的结合模式中显示新的重要位置。通过回顾性分析,与最先进的表位预测方法相比,我们的方法似乎能够更准确地选择易引起t细胞反应的肽。我们的研究结果表明,PrDx可能是发现新表位的一个有吸引力的预测工具。引文格式:Stephan Thorgrimsen, Sune Justesen, Nicolas Rapin。基于肽- mhc稳定性分析的预测软件PrDx的开发,显示了肽- mhc I和II复合物结合模式中新的重要位置[摘要]。第四届CRI-CIMT-EATI-AACR国际癌症免疫治疗会议:将科学转化为生存;2018年9月30日至10月3日;纽约,纽约。费城(PA): AACR;癌症免疫学杂志,2019;7(2增刊):摘要nr B093。
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