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Candidate epitope identification using peptide property models: application to cancer immunotherapy.

机译:使用肽特性模型鉴定候选表位:在癌症免疫治疗中的应用。

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Peptides derived from pathogens or tumors are selectively presented by the major histocompatibility complex proteins (MHC) to the T lymphocytes. Antigenic peptide-MHC complexes on the cell surface are specifically recognized by T cells and, in conjunction with co-factor interactions, can activate the T cells to initiate the necessary immune response against the target cells. Peptides that are capable of binding to multiple MHC molecules are potential T cell epitopes for diverse human populations that may be useful in vaccine design. Bioinformatical approaches to predict MHC binding peptides can facilitate the resource-consuming effort of T cell epitope identification. We describe a new method for predicting MHC binding based on peptide property models constructed using biophysical parameters of the constituent amino acids and a training set of known binders. The models can be applied to development of anti-tumor vaccines by scanning proteins over-expressed in cancer cells for peptides that bind to a variety of MHC molecules. The complete algorithm is described and illustrated in the context of identifying candidate T cell epitopes for melanomas and breast cancers. We analyzed MART-1, S-100, MBP, and CD63 for melanoma and p53, MUC1, cyclin B1, HER-2eu, and CEA for breast cancer. In general, proteins over-expressed in cancer cells may be identified using DNA microarray expression profiling. Comparisons of model predictions with available experimental data were assessed. The candidate epitopes identified by such a computational approach must be evaluated experimentally but the approach can provide an efficient and focused strategy for anti-cancer immunotherapy development.
机译:主要的组织相容性复合蛋白(MHC)选择性地将源自病原体或肿瘤的肽呈递给T淋巴细胞。 T细胞可特异性识别细胞表面的抗原肽-MHC复合物,并与辅因子相互作用一起激活T细胞,以启动针对靶细胞的必要免疫反应。能够结合多个MHC分子的肽是可能适用于疫苗设计的多种人群的潜在T细胞表位。预测MHC结合肽的生物信息学方法可以促进T细胞表位鉴定的资源消耗工作。我们描述了一种新的预测MHC结合的方法,该方法基于使用组成氨基酸的生物物理参数和一组已知粘合剂的生物物理参数构建的肽特性模型。通过扫描癌细胞中过表达的蛋白质中与多种MHC分子结合的肽,该模型可用于开发抗肿瘤疫苗。在识别黑色素瘤和乳腺癌的候选T细胞表位的背景下描述和说明了完整的算法。我们分析了黑色素瘤的MART-1,S-100,MBP和CD63,乳腺癌的分析了p53,MUC1,cyclin B1,HER-2 / neu和CEA。通常,可以使用DNA微阵列表达谱来鉴定在癌细胞中过度表达的蛋白质。评估了模型预测与可用实验数据的比较。通过这种计算方法鉴定出的候选表位必须进行实验评估,但是该方法可以为抗癌免疫疗法的发展提供有效且集中的策略。

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