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Computational Tools for the Identification and Interpretation of Sequence Motifs in Immunopeptidomes

机译:免疫肽瘤中序列基序鉴定和解释的计算工具

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Abstract Recent advances in proteomics and mass‐spectrometry have widely expanded the detectable peptide repertoire presented by major histocompatibility complex (MHC) molecules on the cell surface, collectively known as the immunopeptidome. Finely characterizing the immunopeptidome brings about important basic insights into the mechanisms of antigen presentation, but can also reveal promising targets for vaccine development and cancer immunotherapy. This report describes a number of practical and efficient approaches to analyze immunopeptidomics data, discussing the identification of meaningful sequence motifs in various scenarios and considering current limitations. Guidelines are provided for the filtering of false hits and contaminants, and to address the problem of motif deconvolution in cell lines expressing multiple MHC alleles, both for the MHC class I and class II systems. Finally, it is demonstrated how machine learning can be readily employed by non‐expert users to generate accurate prediction models directly from mass‐spectrometry eluted ligand data sets.
机译:摘要蛋白质组学和质谱的最近进展广泛地扩展了通过细胞表面上的主要组织相容性络合物(MHC)分子呈现的可检测的肽曲目,统称为免疫肽体。精细表征免疫肽体带来了对抗原呈现机制的重要基本见解,但也可以揭示有前途的疫苗发育和癌症免疫疗法的目标。本报告描述了分析免疫蛋白质数据的许多实用和有效的方法,讨论了各种场景中有意义的序列图案的识别,并考虑到当前限制。提供指南用于过滤虚假点击和污染物,并解决表达MHC I类和II类系统的多种MHC等位基因中表达多种MHC等位基因的细胞系中的基序卷积问题。最后,说明了非专家用户如何容易地使用机器学习,以直接从质谱层洗脱的配体数据集生成精确的预测模型。

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