Author
Listed:
- Jiawei Zhu
(ShanghaiTech University)
- Yaru Meng
(ShanghaiTech University)
- Wenli Gao
(ShanghaiTech University)
- Shuo Yang
(ShanghaiTech University)
- Wenjie Zhu
(ShanghaiTech University)
- Xiangyang Ji
(ShanghaiTech University)
- Xuanpei Zhai
(ShanghaiTech University)
- Wan-Qiu Liu
(ShanghaiTech University)
- Yuan Luo
(Chinese Academy of Sciences)
- Shengjie Ling
(ShanghaiTech University
ShanghaiTech University
Shanghai Clinical Research and Trial Center
Fudan University)
- Jian Li
(ShanghaiTech University
ShanghaiTech University
Shanghai Clinical Research and Trial Center)
- Yifan Liu
(ShanghaiTech University
ShanghaiTech University
Shanghai Clinical Research and Trial Center)
Abstract
Cell-free gene expression (CFE) systems enable transcription and translation using crude cellular extracts, offering a versatile platform for synthetic biology by eliminating the need to maintain living cells. However, Such systems are constrained by cumbersome composition, high costs, and limited yields due to numerous additional components required to maintain biocatalytic efficiency. Here, we introduce DropAI, a droplet-based, AI-driven screening strategy designed to optimize CFE systems with high throughput and economic efficiency. DropAI employs microfluidics to generate picoliter reactors and utilizes a fluorescent color-coding system to address and screen massive chemical combinations. The in-droplet screening is complemented by in silico optimization, where experimental results train a machine-learning model to estimate the contribution of the components and predict high-yield combinations. By applying DropAI, we significantly simplified the composition of an Escherichia coli-based CFE system, achieving a fourfold reduction in the unit cost of expressed superfolder green fluorescent protein (sfGFP). This optimized formulation was further validated across 12 different proteins. Notably, the established E. coli model is successfully adapted to a Bacillus subtilis-based system through transfer learning, leading to doubled yield through prediction. Beyond CFE, DropAI offers a high-throughput and scalable solution for combinatorial screening and optimization of biochemical systems.
Suggested Citation
Jiawei Zhu & Yaru Meng & Wenli Gao & Shuo Yang & Wenjie Zhu & Xiangyang Ji & Xuanpei Zhai & Wan-Qiu Liu & Yuan Luo & Shengjie Ling & Jian Li & Yifan Liu, 2025.
"AI-driven high-throughput droplet screening of cell-free gene expression,"
Nature Communications, Nature, vol. 16(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58139-0
DOI: 10.1038/s41467-025-58139-0
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