Xiaoping Liao
Chinese Academy of Sciences
28 Papers
Xiaoping Liao is an academic researcher from Chinese Academy of Sciences. The author has contributed to research in topics: Medicine & Biology. The author has an hindex of 1, co-authored 1 publications.
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Papers
Artificial intelligence: a solution to involution of design-build-test-learn cycle.
Xiaoping Liao,Hong Ma,Yi Tang +2 more
TL;DR: In this article , the authors discuss the recent advances in ML applications, focusing on integrative metabolic models and knowledge engineering for guiding metabolic engineering and fermentation optimization, which can eventually improve DBTL cycles to facilitate moving synthetic strains from laboratories to industries.
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pUGTdb: a comprehensive plant UGTs database.
Yuqian Liu,Qian Wang,Xiaonan Liu,Jiyan Chen,Lei Zhang,Huanyu Chu,Ruoyu Wang,Haoran Li,Hong Chang,Nida Ahmed,Zhonghua Wang,Xiaoping Liao,Huifeng Jiang +12 more
TL;DR: In this article , the authors constructed a comprehensive plant UGT database from genomic annotation, and extracted the UGT-dependent glycosyltransferase (UGT-1) from UGTs in this article .
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CAVE: a cloud-based platform for analysis and visualization of metabolic pathways
Zhi-Tao Mao,Qianqian Yuan,Haoran Li,Ruoyu Wang,Yongfu Yang,Ya-lun Wu,Shihui Yang,Xiaoping Liao,Hong Ma +8 more
TL;DR: CAVE as mentioned in this paper is a cloud-based platform for the integrated calculation, visualization, examination and correction of metabolic pathways, which can be applied to a broader range of organisms for rational metabolic engineering.
ecBSU1: A Genome-Scale Enzyme-Constrained Model of Bacillus subtilis Based on the ECMpy Workflow
Ke Wu,Zhi-Tao Mao,Yufeng Mao,Jinhui Niu,Jingyi Cai,Qianqian Yuan,Lili Yun,Xiaoping Liao,Zhiwen Wang,Hong Ma +9 more
TL;DR: In this article , the first genome-scale ecModel of Bacillus subtilis (ecBSU1) was constructed using the ECMpy workflow. But the model was not applied to increase the production of commodity chemicals.
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Enzyme Commission Number Prediction and Benchmarking with Hierarchical Dual-core Multitask Learning Framework
TL;DR: Zhang et al. as discussed by the authors proposed a hierarchical dual-core multitask learning framework for enzyme number prediction based on novel deep learning techniques, which is composed of an embedding core and a learning core.
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