增强子
计算生物学
集合(抽象数据类型)
计算机科学
生物技术
生物
资源(消歧)
基因
合成生物学
数据挖掘
生化工程
调节顺序
生物工程
基因组学
工程类
基因表达调控
数据科学
航程(航空)
人类疾病
自然资源
作者
Qi Yao,Jin Gao,Keling Wang,Yufeng Liu,Peijin Han,Hong Pan,Xiaofeng Yang,Qianlan Yin,Dating Zhong,Lu Ye,Qi Ming Deng,Lingling Gao,Xiaoyu Tu,Dequan Wang,Yuming Lu
标识
DOI:10.1002/advs.202516600
摘要
Precise transgene-free gene upregulation remains a challenge in crop biotechnology, as conventional enhancers often exceed CRISPR-mediated knock-in size constraints and face regulatory hurdles. Here we establish a foundational cross-species resource of compact transcriptional enhancers developed via STEM-seq, a high-throughput screening platform that systematically evaluated 81 475 genomic elements across maize, wheat, tomato, and soybean. This screen identified 6904 natural short transcriptional enhancers (STEs; 60-80 bp) exhibiting a broad range of activation efficiencies, with the most potent elements derived from wheat (up to 46.3-fold activation). Augmenting this resource, we developed BaseSearch, an AI-driven design framework, which computationally generated 5000 synthetic STE candidates and achieved a 9.1% success rate (11.4× higher than genome-wide screening). This set included ten ultra-potent enhancers outperforming natural counterparts by 2.27-fold (64.5-fold vs. 28.4-fold activation). Notably, the compact size of these STEs aligns with regulatory frameworks that favor endogenous sequence lengths, offering potential pathways for policy-compatible precision breeding. This integrated platform provides a substantial collection of functionally validated enhancers for crops, supplying the research community with immediately applicable elements for engineering agronomic traits while advancing the fundamental understanding of plant cis-regulation.
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