A novel approach GRNTSTE to reconstruct gene regulatory interactions applied to a case study for rat pineal rhythm gene

Author:

Liu Zhenyu,Gao Jing,Li Tao,Jing Yi,Xu Cheng,Zhu Zhengtong,Zuo Dongshi,Chen Junjie

Abstract

AbstractAccurate inference and prediction of gene regulatory network are very important for understanding dynamic cellular processes. The large-scale time series genomics data are helpful to reveal the molecular dynamics and dynamic biological processes of complex biological systems. Firstly, we collected the time series data of the rat pineal gland tissue in the natural state according to a fixed sampling rate, and performed whole-genome sequencing. The large-scale time-series sequencing data set of rat pineal gland was constructed, which includes 480 time points, the time interval between adjacent time points is 3 min, and the sampling period is 24 h. Then, we proposed a new method of constructing gene expression regulatory network, named the gene regulatory network based on time series data and entropy transfer (GRNTSTE) method. The method is based on transfer entropy and large-scale time-series gene expression data to infer the causal regulatory relationship between genes in a data-driven mode. The comparative experiments prove that GRNTSTE has better performance than dynamical gene network inference with ensemble of trees (dynGENIE3) and SCRIBE, and has similar performance to TENET. Meanwhile, we proved that the performance of GRNTSTE is slightly lower than that of SINCERITIES method and better than other gene regulatory network construction methods in BEELINE framework, which is based on the BEELINE data set. Finally, the rat pineal rhythm gene expression regulatory network was constructed by us based on the GRNTSTE method, which provides an important reference for the study of the pineal rhythm mechanism, and is of great significance to the study of the pineal rhythm mechanism.

Funder

Research on efficient parallel algorithm and software for mutation detection and transcriptome differential expression analysis of whole genome resequencing data

Research and development of cloud computing application technology

Construction of livestock genetic resources database and information platform and development and utilization of germplasm resources in Mongolian Plateau

Research and application of key technologies of discipline inspection and supervision big data

Mapping the fine evolutionary map from lung infection to early lesions based on novel dynamic temporal transcriptome sequencing and transfer information theory

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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