Statistical and Machine Learning Approaches to Predict Gene Regulatory Networks From Transcriptome Datasets

被引:47
|
作者
Mochida, Keiichi [1 ,2 ,3 ,4 ]
Koda, Satoru [5 ]
Inoue, Komaki [1 ]
Nishii, Ryuei [6 ]
机构
[1] RIKEN Ctr Sustainable Resource Sci, Bioprod Informat Res Team, Yokohama, Kanagawa, Japan
[2] RIKEN Cluster Sci Technol & Innovat Hub, RIKEN Baton Zone Program, Microalgae Prod Control Technol Lab, Yokohama, Kanagawa, Japan
[3] Okayama Univ, Inst Plant Sci & Resources, Kurashiki, Okayama, Japan
[4] Yokohama City Univ, Kihara Inst Biol Res, Yokohama, Kanagawa, Japan
[5] Kyushu Univ, Grad Sch Math, Fukuoka, Fukuoka, Japan
[6] Kyushu Univ, Inst Math Ind, Fukuoka, Fukuoka, Japan
来源
基金
日本学术振兴会; 日本科学技术振兴机构;
关键词
machine learning; gene regulatory network; sparse modeling; transcriptome; time series analysis; INFERENCE; EXPRESSION; INTEGRATION; RESPONSES; BIOLOGY; OMICS;
D O I
10.3389/fpls.2018.01770
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Statistical and machine learning (ML)-based methods have recently advanced in construction of gene regulatory network (GRNs) based on high-throughput biological datasets. GRNs underlie almost all cellular phenomena; hence, comprehensive GRN maps are essential tools to elucidate gene function, thereby facilitating the identification and prioritization of candidate genes for functional analysis. High-throughput gene expression datasets have yielded various statistical and ML-based algorithms to infer causal relationship between genes and decipher GRNs. This review summarizes the recent advancements in the computational inference of GRNs, based on large-scale transcriptome sequencing datasets of model plants and crops. We highlight strategies to select contextual genes for GRN inference, and statistical and ML-based methods for inferring GRNs based on transcriptome datasets from plants. Furthermore, we discuss the challenges and opportunities for the elucidation of GRNs based on large-scale datasets obtained from emerging transcriptomic applications, such as from population-scale, single-cell level, and life-course transcriptome analyses.
引用
收藏
页数:7
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