A simple approach for representation of Gene Regulatory Networks (GRN)

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Abstract

Gene expressions are controlled by a series of processes known as Gene Regulation, and their abstract mapping is represented by Gene Regulatory Network (GRN) which is a descriptive model of gene interactions. Reverse engineering GRNs can reveal the complexity of gene interactions whose comprehension can lead to several other details. RNA-seq data provides better measurement of gene expressions; however it is difficult to infer GRNs using it because of its discreteness. Multiple other methods have already been proposed to infer GRN using RNA-seq data, but these methodologies are difficult to grasp. In this paper, a simple model is presented to infer GRNs, using RNA-seq based coexpression map provided by GeneFriends database, and a graph-based database tool is used to create regulatory network. The obtained results show that it is convenient to use graph database tools to work with regulatory networks instead of developing a new model from scratch.

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Raza-ul-Haq, Ferzund, J., & Hussain, S. (2018). A simple approach for representation of Gene Regulatory Networks (GRN). International Journal of Advanced Computer Science and Applications, 9(11), 288–292. https://doi.org/10.14569/ijacsa.2018.091139

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