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Learning a peptide-protein binding affinity predictor with kernel ridge regression

机译:通过核岭回归学习肽-蛋白质结合亲和力预测因子

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摘要

BackgroundThe cellular function of a vast majority of proteins is performed through physical interactions with other biomolecules, which, most of the time, are other proteins. Peptides represent templates of choice for mimicking a secondary structure in order to modulate protein-protein interaction. They are thus an interesting class of therapeutics since they also display strong activity, high selectivity, low toxicity and few drug-drug interactions. Furthermore, predicting peptides that would bind to a specific MHC alleles would be of tremendous benefit to improve vaccine based therapy and possibly generate antibodies with greater affinity. Modern computational methods have the potential to accelerate and lower the cost of drug and vaccine discovery by selecting potential compounds for testing in silico prior to biological validation.
机译:背景技术绝大多数蛋白质的细胞功能是通过与其他生物分子的物理相互作用来实现的,而生物分子在大多数情况下是其他蛋白质。肽代表用于模拟二级结构以调节蛋白质-蛋白质相互作用的选择模板。由于它们还显示出强活性,高选择性,低毒性和很少的药物-药物相互作用,因此它们是一类有趣的疗法。此外,预测将与特定的MHC等位基因结合的肽对改善基于疫苗的疗法并可能产生具有更高亲和力的抗体具有巨大的益处。通过在生物验证之前选择用于计算机测试的潜在化合物,现代计算方法具有加速和降低药物和疫苗发现成本的潜力。

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