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Novel Machine Learning Methods for MHC Class I Binding Prediction

机译:MHC类I绑定预测的新型机器学习方法

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MHC class I molecules are key players in the human immune system. They bind small peptides derived from intracellular proteins and present them on the cell surface for surveillance by the immune system. Prediction of such MHC class I binding peptides is a vital step in the design of peptide-based vaccines and therefore one of the major problems in computational immunology. Thousands of different types of MHC class I molecules exist, each displaying a distinct binding specificity. The lack of sufficient training data for the majority of these molecules hinders the application of Machine Learning to this problem. We propose two approaches to improve the predictive power of kernel-based Machine Learning methods for MHC class I binding prediction: First, a modification of the Weighted Degree string kernel that allows for the incorporation of amino acid properties. Second, we propose an enhanced Multitask kernel and an optimization procedure to fine-tune the kernel parameters. The combination of both approaches yields improved performance, which we demonstrate on the IEDB benchmark data set.
机译:MHC I类分子是人类免疫系统中的关键球员。它们与细胞内蛋白衍生的小肽结合并将其呈现在细胞表面上,以受免疫系统监测。这种MHC I类结合肽的预测是基于肽的疫苗设计的重要步骤,因此是计算免疫学中的主要问题之一。存在数千种不同类型的MHC I类分子,每个I分子显示出不同的结合特异性。对于大多数这些分子缺乏足够的训练数据阻碍了机器学习在这个问题上的应用。我们提出了两种方法来提高基于内核的机器学习方法的预测力,用于MHC类I结合预测:第一,允许掺入氨基酸性能的加权程度串核的修饰。其次,我们提出了一个增强的多任务内核和优化过程来微调内核参数。两种方法的组合产生了改进的性能,我们在IEDB基准数据集上演示。

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