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CRNPRED: highly accurate prediction of one-dimensional protein structures by large-scale critical random networks

机译:CRNPRED:通过大规模关键随机网络对一维蛋白质结构的高精度预测

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摘要

Background One-dimensional protein structures such as secondary structures or contact numbers are useful for three-dimensional structure prediction and helpful for intuitive understanding of the sequence-structure relationship. Accurate prediction methods will serve as a basis for these and other purposes. Results We implemented a program CRNPRED which predicts secondary structures, contact numbers and residue-wise contact orders. This program is based on a novel machine learning scheme called critical random networks. Unlike most conventional one-dimensional structure prediction methods which are based on local windows of an amino acid sequence, CRNPRED takes into account the whole sequence. CRNPRED achieves, on average per chain, Q 3 = 81% for secondary structure prediction, and correlation coefficients of 0.75 and 0.61 for contact number and residue-wise contact order predictions, respectively. Conclusion CRNPRED will be a useful tool for computational as well as experimental biologists who need accurate one-dimensional protein structure predictions.
机译:背景技术一维蛋白质结构(例如二级结构或接触数)可用于三维结构预测,并有助于直观理解序列-结构关系。准确的预测方法将作为这些目的和其他目的的基础。结果我们实施了一个CRNPRED程序,该程序可预测二级结构,联系电话和按残基分类的联系顺序。该程序基于一种称为关键随机网络的新型机器学习方案。与大多数传统的基于氨基酸序列局部窗口的一维结构预测方法不同,CRNPRED考虑了整个序列。对于二级结构预测,CRNPRED平均每条链达到Q 3 = 81%,对于接触数和残基接触顺序预测,相关系数分别为0.75和0.61。结论CRNPRED将为需要精确一维蛋白质结构预测的计算生物学家和实验生物学家提供有用的工具。

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