4.6 Article

MICFuzzy: A maximal information content based fuzzy approach for reconstructing genetic networks

Journal

PLOS ONE
Volume 18, Issue 7, Pages -

Publisher

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pone.0288174

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In this paper, a new hybrid fuzzy gene regulatory network inference model called MICFuzzy is proposed, which aggregates the effects of Maximal Information Coefficient (MIC) using information theory and fuzzy concepts. The model filters relevant genes using the MIC component in the preprocessing stage to reduce computational burden. By determining the regulatory effect of identified activator-repressor gene pairs, the model can determine the expression levels of target genes. Experimental results on DREAM3, DREAM4, and SOS gene expression datasets demonstrate that MICFuzzy outperforms other state-of-the-art methods in terms of accuracy and efficiency.
In systems biology, the accurate reconstruction of Gene Regulatory Networks (GRNs) is crucial since these networks can facilitate the solving of complex biological problems. Amongst the plethora of methods available for GRN reconstruction, information theory and fuzzy concepts-based methods have abiding popularity. However, most of these methods are not only complex, incurring a high computational burden, but they may also produce a high number of false positives, leading to inaccurate inferred networks. In this paper, we propose a novel hybrid fuzzy GRN inference model called MICFuzzy which involves the aggregation of the effects of Maximal Information Coefficient (MIC). This model has an information theory-based pre-processing stage, the output of which is applied as an input to the novel fuzzy model. In this preprocessing stage, the MIC component filters relevant genes for each target gene to significantly reduce the computational burden of the fuzzy model when selecting the regulatory genes from these filtered gene lists. The novel fuzzy model uses the regulatory effect of the identified activator-repressor gene pairs to determine target gene expression levels. This approach facilitates accurate network inference by generating a high number of true regulatory interactions while significantly reducing false regulatory predictions. The performance of MICFuzzy was evaluated using DREAM3 and DREAM4 challenge data, and the SOS real gene expression dataset. MICFuzzy outperformed the other state-of-the-art methods in terms of F-score, Matthews Correlation Coefficient, Structural Accuracy, and SS_mean, and outperformed most of them in terms of efficiency. MICFuzzy also had improved efficiency compared with the classical fuzzy model since the design of MICFuzzy leads to a reduction in combinatorial computation.

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