Binary coding, mRNA information and protein structure

N. Štambuk, P. Konjevoda, N. Gotovac
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引用次数: 1

Abstract

We describe new binary algorithm for the prediction of alpha and beta protein folding types from RNA, DNA and amino acid sequences. The method enables quick, simple and accurate prediction of alpha and beta protein folds on a personal computer by means of few binary patterns of coded amino acid and nucleotide physicochemical properties. The algorithm was tested with machine learning SMO (sequential minimal optimisation) classifier for the support vector machines and classification trees, on a dataset of 140 dissimilar protein folds. Depending on the method of testing, the overall classification accuracy was 91.43%-100% and the tenfold cross-validation result of the procedure was 83.57%->90%. Genetic code randomisation analysis based on 100,000 different codes tested for the protein fold prediction quality indicated that: a) there is a very low chance of p=2.7times10-4 that a better code than the natural one specified by the binary coding algorithm is randomly produced, b) dipeptides represent basic protein units with respect to the natural genetic code defining of the secondary protein structure
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二进制编码,mRNA信息和蛋白质结构
我们描述了一种新的二元算法,用于预测RNA、DNA和氨基酸序列中的α和β蛋白折叠类型。该方法利用编码氨基酸和核苷酸物理化学性质的几种二进制模式,在个人计算机上快速、简单、准确地预测α和β蛋白折叠。该算法在140个不同蛋白质折叠的数据集上使用支持向量机和分类树的机器学习SMO(顺序最小优化)分类器进行了测试。根据不同的检验方法,该方法的总体分类准确率为91.43% ~ 100%,十倍交叉验证结果为83.57% ~ >90%。遗传密码随机化分析结果表明:a)随机产生比二元编码算法指定的自然编码更好的遗传密码的概率(p=2.7 × 10-4)非常低;b)二肽代表了定义二级蛋白质结构的自然遗传密码的基本蛋白质单位
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