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An efficient T-cell epitope discovery strategy using in silico prediction and the iTopia assay platform

机译:使用计算机模拟和iTopia检测平台的有效T细胞表位发现策略

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摘要

Functional T-cell epitope discovery is a key process for the development of novel immunotherapies, particularly for cancer immunology. In silico epitope prediction is a common strategy to try to achieve this objective. However, this approach suffers from a significant rate of false-negative results and epitope ranking lists that often are not validated by practical experience. A high-throughput platform for the identification and prioritization of potential T-cell epitopes is the iTopiaTM Epitope Discovery SystemTM, which allows measuring binding and stability of selected peptides to MHC Class I molecules. So far, the value of iTopia combined with in silico epitope prediction has not been investigated systematically. In this study, we have developed a novel in silico selection strategy based on three criteria: (1) predicted binding to one out of five common MHC Class I alleles; (2) uniqueness to the antigen of interest; and (3) increased likelihood of natural processing. We predicted in silico and characterized by iTopia 225 candidate T-cell epitopes and fixed-anchor analogs from three human tumor-associated antigens: CEA, HER2 and TERT. HLA-A2-restricted fragments were further screened for their ability to induce cell-mediated responses in HLA-A2 transgenic mice. The iTopia binding assay was only marginally informative while the stability assay proved to be a valuable experimental screening method complementary to in silico prediction. Thirteen novel T-cell epitopes and analogs were characterized and additional potential epitopes identified, providing the basis for novel anticancer immunotherapies. In conclusion, we show that combination of in silico prediction and an iTopia-based assay may be an accurate and efficient method for MHC Class I epitope discovery among tumor-associated antigens.
机译:功能性T细胞表位的发现是开发新型免疫疗法(尤其是癌症免疫学)的关键过程。电子计算机中的表位预测是尝试实现此目标的常用策略。但是,这种方法遭受的假阴性结果和抗原决定簇排名表的比率很高,而实践经验常常没有对此进行验证。 iTopia TM Epitope Discovery System TM 是用于潜在T细胞表位鉴定和优先级排序的高通量平台,该平台可用于测量所选肽与MHC的结合和稳定性一级分子。到目前为止,尚未对iTopia与计算机电子表位预测相结合的价值进行系统研究。在这项研究中,我们基于三个标准开发了一种新颖的计算机选择策略:(1)预测与五个常见的MHC I类等位基因之一结合。 (2)目的抗原的唯一性; (3)增加自然加工的可能性。我们通过计算机预测,并以iTopia 225个候选T细胞表位和来自三种人类肿瘤相关抗原:CEA,HER2和TERT的固定锚类似物为特征。进一步筛选了HLA-A2限制性片段在HLA-A2转基因小鼠中诱导细胞介导的应答的能力。 iTopia结合测定仅提供少量信息,而稳定性测定被证明是对计算机预测的一种有价值的实验筛选方法。表征了13种新型T细胞表位和类似物,并鉴定了其他潜在表位,为新型抗癌免疫疗法提供了基础。总之,我们表明,计算机预测与基于iTopia的检测相结合可能是一种在肿瘤相关抗原中发现MHC I类表位的准确有效的方法。

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