Automatic classification of highly related Malate Dehydrogenase and L-Lactate Dehydrogenase based on 3D-pattern of active sites

Amir Rahimi, A. Madadkar-Sobhani, Rouzbeh Touserkani, B. Goliaei
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引用次数: 0

Abstract

Accurate protein function prediction is an important subject in bioinformatics, especially wheresequentially and structurally similar proteins have different functions. Malate dehydrogenaseand L-lactate dehydrogenase are two evolutionary related enzymes, which exist in a widevariety of organisms. These enzymes are sequentially and structurally similar and sharecommon active site residues, spatial patterns and molecular mechanisms. Here, we studyvarious features of the active site cavity of 229 PDB chain entries and try to classify themautomatically by various classifiers including the support vector machine, k nearest neighbourand random forest methods. The results show that the support vector machine yields the highestpredictive performance among mentioned classifiers. Despite very close and conserved patternsamong Malate dehydrogenases and L-lactate dehydrogenases, the SVM predicts the functionefficiently and achieves 0.973 Matthew’s correlation coefficient and 0.987 F-score. The sameapproach can be used in other enzyme families for automatic discrimination betweenhomologous enzymes with common active site elements, however, acting on differentsubstrates.
基于活性位点3d模式的高度相关苹果酸脱氢酶和l -乳酸脱氢酶的自动分类
准确的蛋白质功能预测是生物信息学中的一个重要课题,特别是在结构相似的蛋白质具有不同功能的情况下。苹果酸脱氢酶和l -乳酸脱氢酶是两种进化相关的酶,广泛存在于多种生物体内。这些酶在序列和结构上相似,具有共同的活性位点残基、空间模式和分子机制。在这里,我们研究了229个PDB链条目的活动站点空腔的各种特征,并尝试使用包括支持向量机、k近邻和随机森林方法在内的各种分类器对它们进行自动分类。结果表明,在上述分类器中,支持向量机的预测性能最高。尽管苹果酸脱氢酶和l -乳酸脱氢酶之间的模式非常接近和保守,但支持向量机预测功能有效,马修相关系数达到0.973,f分数达到0.987。同样的方法也可以用于其他酶家族,用于自动区分具有共同活性位点元件的同源酶,但是作用于不同的底物。
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