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Analysis and Prediction of QL14h by Database Application

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Abstract

In order to study the biological functions of Qulian and provide theoretical basis for studying the expression regulation of QL14h, which was screened by the bioinformatics computer software, database and online programs were used to predict and analyse the nucleotide sequence and amino acid sequence of QL14h. Results of gene structure analysis showed that its full length was 816 bp including 805 bp ORF which encoded 259 amino acids. QL14h had no signal peptide and no transmembrane domain, so it belonged to non-secretion protein; The results of the protein structure analysis showed that there were 150 α-helix, 0 β-sheet plus and 13 β-turn in QL14h; QL14h was a kind of hydrophilic protein and belonged to 14-3-3 protein family. Therefore the study showed that QL14h had biological significance, and these results could be the theoretical basis and provide evidences for further verifying the biological functions of QL14h.

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Acknowledgements

This work was supported by Applied Basic Research Programs of Science and Technology Commission Foundation of Yunnan Province (No. 2015FB147), National Natural Science Foundation of China (31460137, 81760694) and Yunnan Agricultural University Natural Science Foundation for Young Scientists Project (2015ZR15).

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Correspondence to Baijuan Wang.

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Zhao, Y., Yang, Q., Li, X. et al. Analysis and Prediction of QL14h by Database Application. Wireless Pers Commun 103, 585–593 (2018). https://doi.org/10.1007/s11277-018-5463-5

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  • DOI: https://doi.org/10.1007/s11277-018-5463-5

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