TY - JOUR
T1 - Statistical and machine learning approaches to predict gene regulatory networks from transcriptome datasets
AU - Mochida, Keiichi
AU - Koda, Satoru
AU - Inoue, Komaki
AU - Nishii, Ryuei
N1 - Funding Information:
The work was partially supported by Grant-in-Aid for Scientific Research (B) (Grant No. 15KT0038 to KM) of the Japan Society for the Promotion of Science (JSPS), and by the Advanced Low Carbon Technology Research and Development Program (ALCA, J2013403C to KM and RN) of the Japan Science and Technology Agency (JST). This work was also supported by CREST, JST.
Publisher Copyright:
© 2018 Mochida, Koda, Inoue and Nishii.
PY - 2018
Y1 - 2018
N2 - 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.
AB - 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.
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U2 - 10.3389/fpls.2018.01770
DO - 10.3389/fpls.2018.01770
M3 - Short survey
AN - SCOPUS:85058781835
SN - 1664-462X
VL - 871
JO - Frontiers in Plant Science
JF - Frontiers in Plant Science
M1 - 1770
ER -