酶环二面角预测的人工神经网络:一种新方法。

Samer I Al-Gharabli, Salem Al-Agtash, Nathir A Rawashdeh, Khaled R Barqawi
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引用次数: 2

摘要

蛋白质的结构预测被认为是药物开发和新疗法引入的限制步骤和决定因素。由于蛋白质的三维结构决定了它们的功能,二面角的预测仍然是生物信息学中一个开放和重要的问题,也是发现三级结构的重要一步。本文提出了一种基于氨基酸序列数据预测酶环二面角φ和ψ值的方法。通过基于神经网络的挖掘机制实现二面角的预测。氨基酸序列数据代表6342个酶环链,18,882个残基。初始神经网络输入是115个特征的选择,输出是预测的二面角φ和ψ。模拟结果显示Pearson相关系数为0.64。通过确定不重要的特征进行特征选择后,输入特征向量的大小减少到45,同时保持接近相同的性能。
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Artificial neural networks for dihedral angles prediction in enzyme loops: a novel approach.

Structure prediction of proteins is considered a limiting step and determining factor in drug development and in the introduction of new therapies. Since the 3D structures of proteins determine their functionalities, prediction of dihedral angles remains an open and important problem in bioinformatics, as well as a major step in discovering tertiary structures. This work presents a method that predicts values of the dihedral angles φ and ψ for enzyme loops based on data derived from amino acid sequences. The prediction of dihedral angles is implemented through a neural network based mining mechanism. The amino acid sequence data represents 6342 enzyme loop chains with 18,882 residues. The initial neural network input was a selection of 115 features and the outputs were the predicted dihedral angles φ and ψ. The simulation results yielded a 0.64 Pearson's correlation coefficient. After feature selection through determining insignificant features, the input feature vector size was reduced to 45, while maintaining close to identical performance.

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来源期刊
International Journal of Bioinformatics Research and Applications
International Journal of Bioinformatics Research and Applications Health Professions-Health Information Management
CiteScore
0.60
自引率
0.00%
发文量
26
期刊介绍: Bioinformatics is an interdisciplinary research field that combines biology, computer science, mathematics and statistics into a broad-based field that will have profound impacts on all fields of biology. The emphasis of IJBRA is on basic bioinformatics research methods, tool development, performance evaluation and their applications in biology. IJBRA addresses the most innovative developments, research issues and solutions in bioinformatics and computational biology and their applications. Topics covered include Databases, bio-grid, system biology Biomedical image processing, modelling and simulation Bio-ontology and data mining, DNA assembly, clustering, mapping Computational genomics/proteomics Silico technology: computational intelligence, high performance computing E-health, telemedicine Gene expression, microarrays, identification, annotation Genetic algorithms, fuzzy logic, neural networks, data visualisation Hidden Markov models, machine learning, support vector machines Molecular evolution, phylogeny, modelling, simulation, sequence analysis Parallel algorithms/architectures, computational structural biology Phylogeny reconstruction algorithms, physiome, protein structure prediction Sequence assembly, search, alignment Signalling/computational biomedical data engineering Simulated annealing, statistical analysis, stochastic grammars.
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