作者
Jiaqi Li,Jingjing Wang,Shouxin Zhang,Renying Wang,Yuqing Mei,Zhongyi Sun,Lijiang Fei,Mengmeng Jiang,Lifeng Ma,E Weigao,Haide Chen,Xinru Wang,Yuting Fu,Hanyu Wu,Daiyuan Liu,Xueyi Wang,Jingyu Li,Qile Guo,Yuan Liao,Chengxuan Yu,Danmei Jia,Jian Wu,Shibo He,Huanju Liu,Jun Ma,Kai Lei,Jiming Chen,Xiaoping Han,Guoji Guo
摘要
Despite extensive efforts to generate and analyze reference genomes, genetic models to predict gene regulation and cell fate decisions are lacking for most species. Here, we generated whole-body single-cell transcriptomic landscapes of zebrafish, Drosophila and earthworm. We then integrated cell landscapes from eight representative metazoan species to study gene regulation across evolution. Using these uniformly constructed cross-species landscapes, we developed a deep-learning-based strategy, Nvwa, to predict gene expression and identify regulatory sequences at the single-cell level. We systematically compared cell-type-specific transcription factors to reveal conserved genetic regulation in vertebrates and invertebrates. Our work provides a valuable resource and offers a new strategy for studying regulatory grammar in diverse biological systems.