基因调控网络
生物
计算生物学
基因
过程(计算)
新功能化
调节基因
梨
转录因子
集合(抽象数据类型)
染色质
基因表达调控
网络结构
遗传学
功能分歧
系统生物学
质量(理念)
网络分析
网络科学
生物技术
交互网络
遗传网络
分歧(语言学)
中心性
计算机科学
生物网络
作者
Hongxiang Li,Xin Qiao,Yuanpeng Huo,Lanqing Li,Kaijie Qi,Zhihua Xie,Weikang Rui,Yuhang Yang,Qionghou Li,Ying Zou,Libin Wang,Shaoling Zhang
摘要
The burgeoning multi-omics data have provided deep insights into the regulatory mechanisms underlying plant growth and development. However, revealing the complete landscape of gene regulatory networks underpinning various developmental processes remains challenging. Here, a multi-omics integrative gene network of the pear fruit development process was constructed through integrating 3D genomic, transcriptomic, transcription factor (TF) binding, chromatin accessibility, protein structure, and proteomic data. This integrative network comprises over 45,678 elements interconnected by more than 3.15 million edges and exhibits great potential in predicting regulatory and interactive relationships involved in the formation of key fruit quality traits (e.g., sugar, stone cell). In particular, the integrative network was applied to predict interactors of PbrII5, an inhibitor of vacuolar sucrose hydrolysis, and the predicted interactors were further validated through molecular experiments. Moreover, the network showed good performance in automatically predicting fruit trait-related genes by leveraging machine learning models. Specifically, a set of sugar metabolism-related genes was newly predicted, and their functions were verified through overexpression in pear fruit. In addition, extensive regulatory network divergence was observed between duplicated genes, with neofunctionalization being the dominant evolutionary process reshaping network connections of duplicated genes. Lastly, a multi-omics network database, pearGRN (http://peargrn.njau.edu.cn), was developed to facilitate further research for resolving complex gene regulatory relationships. This study lays a strong foundation for revealing novel regulatory mechanisms underlying fruit development and quality formation.
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