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首页> 外文期刊>The protein journal >Protein hypersaline adaptation: Insight from amino acids with machine learning algorithms
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Protein hypersaline adaptation: Insight from amino acids with machine learning algorithms

机译:蛋白质高盐适应性:通过机器学习算法从氨基酸中获得洞察

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摘要

Traditional bioinformatics methods performed systematic comparison between the halophilic proteins and their non-halophilic homologues, to investigate the features related to hypersaline adaptation. Therefore, proposing some quantitative models to explain the sequence-characteristic relationship of halophilic proteins might shed new light on haloadaptation and help to design new biocatalysts adapt to high salt concentration. Five machine learning algorithm, including three linear and two non-linear methods were used to discriminate halophilic and their non-halophilic counterparts and the prediction accuracy was encouraging. The best prediction reliability for halophilic proteins was achieved by artificial neural network and support vector machine and reached 80 %, for non-halophilic proteins, it was achieved by linear regression and reached 100 %. Besides, the linear models have captured some clues for protein halo-stability. Among them, lower frequency of Ser in halophilic protein has not been report before.
机译:传统的生物信息学方法对嗜盐蛋白及其非嗜盐同源物进行了系统的比较,以研究与高盐适应有关的特征。因此,提出一些定量模型来解释嗜盐蛋白的序列-特征关系可能为重载化提供新的思路,并有助于设计适应高盐浓度的新型生物催化剂。五种机器学习算法,包括三种线性和两种非线性方法,被用于区分嗜盐菌及其非嗜盐菌,预测准确性令人鼓舞。通过人工神经网络和支持向量机对嗜盐蛋白的最佳预测可靠性达到了80%,对于非嗜盐蛋白的线性回归得到了100%的最佳预测可靠性。此外,线性模型还为蛋白质的光晕稳定性提供了一些线索。其中,以前尚未报道过嗜盐蛋白中Ser的频率较低。

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