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首页> 外文期刊>Journal of molecular recognition: JMR >Machine learning approaches for prediction of linear B-cell epitopes on proteins.
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Machine learning approaches for prediction of linear B-cell epitopes on proteins.

机译:用于预测蛋白质上线性B细胞表位的机器学习方法。

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摘要

Identification and characterization of antigenic determinants on proteins has received considerable attention utilizing both, experimental as well as computational methods. For computational routines mostly structural as well as physicochemical parameters have been utilized for predicting the antigenic propensity of protein sites. However, the performance of computational routines has been low when compared to experimental alternatives. Here we describe the construction of machine learning based classifiers to enhance the prediction quality for identifying linear B-cell epitopes on proteins. Our approach combines several parameters previously associated with antigenicity, and includes novel parameters based on frequencies of amino acids and amino acid neighborhood propensities. We utilized machine learning algorithms for deriving antigenicity classification functions assigning antigenic propensities to each amino acid of a given protein sequence. We compared the prediction quality of the novel classifiers with respect to established routines for epitope scoring, and tested prediction accuracy on experimental data available for HIV proteins. The major finding is that machine learning classifiers clearly outperform the reference classification systems on the HIV epitope validation set.
机译:蛋白质上抗原决定簇的鉴定和表征,无论是实验方法还是计算方法,都受到了相当大的关注。对于计算程序,大部分结构和物理化学参数已用于预测蛋白质位点的抗原倾向。但是,与实验方法相比,计算例程的性能很低。在这里,我们描述了基于机器学习的分类器的构建,以提高识别蛋白质上线性B细胞表位的预测质量。我们的方法结合了先前与抗原性相关的几个参数,并且包括基于氨基酸频率和氨基酸邻近倾向的新参数。我们利用机器学习算法来推导抗原性分类功能,从而将抗原性分配给给定蛋白质序列的每个氨基酸。我们比较了针对分类表位评分的常规程序的新型分类器的预测质量,并测试了可用于HIV蛋白质的实验数据的预测准确性。主要发现是,机器学习分类器明显优于HIV表位验证集上的参考分类系统。

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