BACKGROUND: Identifying transcriptional cis-regulatory elements (CREs) and understanding their role in gene expression are essential for the precise manipulation of gene expression and associated phenotypes. This knowledge is fundamental for advancing genetic engineering and improving crop traits. RESULTS: We here demonstrate that CREs can be accurately predicted and utilized to precisely regulate gene expression beyond the range of natural variation. We firstly build two sequence-to-expression deep learning models to respectively identify distal and proximal CREs by combining them with interpretability methods in multiple crops. A large number of distal CREs are verified for enhancer activity in vitro using UMI-STARR-seq on 12,000 synthesized sequences. These comprehensively characterized CREs and their precisely predicted effects further contribute to the design of in silico editing schemes for precise engineering of gene expression. We introduce a novel concept of "editingplasticity" to evaluate the potential of promoter editing to alter expression of each gene. As a proof of concept, both exhaustive prediction and random knockout mutants are analyzed within the promoter region of ZmVTE4, a key gene affecting α-tocopherol content in maize. A high degree of agreement between predicted and observed expression is observed, extending the range of natural variation and thereby allowing the creation of an optimal phenotype. CONCLUSIONS: Our study provides a robust computational framework that advances knowledge-guided gene editing for precise regulation of gene expression and crop improvement. By reliably predicting and validating CREs, we offer a tool for targeted genetic modifications, enhancing desirable traits in crops.
Precise engineering of gene expression by editing plasticity.
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作者:Qiu Yang, Liu Lifen, Yan Jiali, Xiang Xianglei, Wang Shouzhe, Luo Yun, Deng Kaixuan, Xu Jieting, Jin Minliang, Wu Xiaoyu, Liwei Cheng, Zhou Ying, Xie Weibo, Liu Hai-Jun, Fernie Alisdair R, Hu Xuehai, Yan Jianbing
| 期刊: | Genome Biology | 影响因子: | 9.400 |
| 时间: | 2025 | 起止号: | 2025 Mar 10; 26(1):51 |
| doi: | 10.1186/s13059-025-03516-7 | ||
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