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https://doi.org/10.1186/s12859-018-2292-1
Title: | miREM: An expectation-maximization approach for prioritizing miRNAs associated with gene-set | Authors: | Abdul Hadi L.H. Xuan Lin Q.X. Minh T.T. Loh M. Ng H.K. Salim A. Soong R. Benoukraf T. |
Keywords: | Forecasting Gene expression Genes Graphical user interfaces HTTP Maximum principle Cellular mechanisms Complex relationships Expectation - maximizations Expectation-maximization algorithms Expectation-maximization approaches Graphical interface MiRNA Mirna target predictions RNA messenger RNA microRNA algorithm animal biology genetics human mouse nucleic acid database procedures Algorithms Animals Computational Biology Databases, Nucleic Acid Humans Mice MicroRNAs RNA, Messenger |
Issue Date: | 2018 | Citation: | Abdul Hadi L.H., Xuan Lin Q.X., Minh T.T., Loh M., Ng H.K., Salim A., Soong R., Benoukraf T. (2018). miREM: An expectation-maximization approach for prioritizing miRNAs associated with gene-set. BMC Bioinformatics 19 (1) : 299. ScholarBank@NUS Repository. https://doi.org/10.1186/s12859-018-2292-1 | Abstract: | Background: The knowledge of miRNAs regulating the expression of sets of mRNAs has led to novel insights into numerous and diverse cellular mechanisms. While a single miRNA may regulate many genes, one gene can be regulated by multiple miRNAs, presenting a complex relationship to model for accurate predictions. Results: Here, we introduce miREM, a program that couples an expectation-maximization (EM) algorithm to the common approach of hypergeometric probability (HP), which improves the prediction and prioritization of miRNAs from gene-sets of interest. miREM has been made available through a web-server ( https://bioinfo-csi.nus.edu.sg/mirem2/ ) that can be accessed through an intuitive graphical user interface. The program incorporates a large compendium of human/mouse miRNA-target prediction databases to enhance prediction. Users may upload their genes of interest in various formats as an input and select whether to consider non-conserved miRNAs, amongst filtering options. Results are reported in a rich graphical interface that allows users to: (i) prioritize predicted miRNAs through a scatterplot of HP p-values and EM scores; (ii) visualize the predicted miRNAs and corresponding genes through a heatmap; and (iii) identify and filter homologous or duplicated predictions by clustering them according to their seed sequences. Conclusion: We tested miREM using RNAseq datasets from two single "spiked" knock-in miRNA experiments and two double knock-out miRNA experiments. miREM predicted these manipulated miRNAs as having high EM scores from the gene set signatures (i.e. top predictions for single knock-in and double knock-out miRNA experiments). Finally, we have demonstrated that miREM predictions are either similar or better than results provided by existing programs. © 2018 The Author(s). | Source Title: | BMC Bioinformatics | URI: | https://scholarbank.nus.edu.sg/handle/10635/175373 | ISSN: | 1471-2105 | DOI: | 10.1186/s12859-018-2292-1 |
Appears in Collections: | Staff Publications Elements |
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