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An SVM Model Based on Physicochemical Properties to Predict Antimicrobial Activity from Protein Sequences with Cysteine Knot Motifs

机译:基于物理化学特性的SVM模型,可从具有半胱氨酸结基序的蛋白质序列预测抗菌活性

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The cysteine knot motifs are widely spread in several classes of peptides including those with antimicrobial functions. These motifs offer a major stability to the protein structure. Nevertheless, the antimicrobial activity is modulated by physicochemical properties. In this paper, we create a model of support vector machine to predict antimicrobial activity from sequences with similar motifs, based on physicochemical properties: net charge, ratio between hydrophobic and charged residues, average hydrophobicity and hydrophobic moment. The support vector machine model was trained with 146 antimicrobial peptides with six cysteines from the antimicrobial peptides database and an equal number of random sequences predicted as transmembrane proteins. The polynomial kernel shows the best accuracy (77.4%) on 10-fold cross validation. Testing in a blind dataset, we observe an accuracy of 83.02%. Through this model, proteins of varied size with a cysteine knot motif can be predicted with good reliability.
机译:半胱氨酸结基序广泛分布在几类肽中,包括具有抗菌功能的肽。这些基序为蛋白质结构提供了主要的稳定性。然而,抗微生物活性是由理化性质调节的。在本文中,我们基于理化性质:净电荷,疏水残基与带电残基之间的比率,平均疏水性和疏水矩,创建了一个支持向量机模型,可从具有相似基序的序列中预测抗菌活性。用来自抗菌肽数据库的146个抗菌肽和六个半胱氨酸训练了支持载体机器模型,并预测了相等数量的随机序列作为跨膜蛋白。多项式内核在10倍交叉验证中显示出最高的准确性(77.4%)。在盲数据集中进行测试,我们观察到了83.02%的准确性。通过该模型,可以预测具有半胱氨酸结基序的大小不同的蛋白质,并且具有良好的可靠性。

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