4.7 Article

mRNALocater: Enhance the prediction accuracy of eukaryotic mRNA subcellular localization by using model fusion strategy

Journal

MOLECULAR THERAPY
Volume 29, Issue 8, Pages 2617-2623

Publisher

CELL PRESS
DOI: 10.1016/j.ymthe.2021.04.004

Keywords

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Funding

  1. National Natural Science Foundation of China [31771471]
  2. Natural Science Foundation for Distinguished Young Scholar of Hebei Province [C2017209244]
  3. Youth Teacher Innovation Foundation of Xinglin Scholar of Chengdu University of TCM [ZRQN2019015]

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An innovative method called mRNALocater was proposed to detect the subcellular localization of eukaryotic mRNA by adopting a model fusion strategy. The method utilizes electron-ion interaction pseudopotential and pseudo k-tuple nucleotide composition to encode sequences and employs correlation coefficient filtering algorithm and feature forward search technology to mine hidden feature information, improving prediction accuracy. Results from independent dataset tests show promising performances for predicting eukaryotic mRNA sub-cellular localizations, making mRNALocater a powerful tool in practical applications.
The functions of mRNAs are closely correlated with their locations in cells. Knowledge about the subcellular locations of mRNA is helpful to understand their biological functions. In recent years, it has become a hot topic to develop effective computational models to predict eukaryotic mRNA subcellular localizations. However, existing state-of-the-art models still have certain deficiencies in terms of prediction accuracy and generalization ability. Therefore, it is urgent to develop novel methods to accurately predict mRNA subcellular localizations. In this study, a novel method called mRNALocater was proposed to detect the subcellular localization of eukaryotic mRNA by adopting the model fusion strategy. To fully extract information from mRNA sequences, the electron-ion interaction pseudopotential and pseudo k-tuple nucleotide composition were used to encode the sequences. Moreover, the correlation coefficient filtering algorithm and feature forward search technology were used to mine hidden feature information, which guarantees that mRNALocater can be more effectively applied to new sequences. The results based on the independent dataset tests demonstrate that mRNALocater yields promising performances for predicting eukaryotic mRNA sub-cellular localizations and is a powerful tool in practical applications. A freely available online web server for mRNALocater has been established at http://bio-bigdata.cn/mRNALocater.

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