
Towards precise reconstruction of gene regulatory networks by data integration
Author(s) -
Liu ZhiPing
Publication year - 2018
Publication title -
quantitative biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.707
H-Index - 15
eISSN - 2095-4697
pISSN - 2095-4689
DOI - 10.1007/s40484-018-0139-4
Subject(s) - gene regulatory network , decipher , data integration , computer science , data science , causality (physics) , data mining , computational biology , gene , bioinformatics , biology , genetics , gene expression , physics , quantum mechanics
Background More and more high‐throughput datasets are available from multiple levels of measuring gene regulations. The reverse engineering of gene regulatory networks from these data offers a valuable research paradigm to decipher regulatory mechanisms. So far, numerous methods have been developed for reconstructing gene regulatory networks. Results In this paper, we provide a review of bioinformatics methods for inferring gene regulatory network from omics data. To achieve the precision reconstruction of gene regulatory networks, an intuitive alternative is to integrate these available resources in a rational framework. We also provide computational perspectives in the endeavors of inferring gene regulatory networks from heterogeneous data. We highlight the importance of multi‐omics data integration with prior knowledge in gene regulatory network inferences. Conclusions We provide computational perspectives of inferring gene regulatory networks from multiple omics data and present theoretical analyses of existing challenges and possible solutions. We emphasize on prior knowledge and data integration in network inferences owing to their abilities of identifying regulatory causality.