Species-specific design of artificial promoters by transfer-learning based generative deep-learning model

Author:

Xia Yan1,Du Xiaowen1,Liu Bin2ORCID,Guo Shuyuan1ORCID,Huo Yi-Xin13ORCID

Affiliation:

1. Key Laboratory of Molecular Medicine and Biotherapy, School of Life Science, Beijing Institute of Technology , Beijing  100081 , China

2. School of Computer Science and Technology, Beijing Institute of Technology , Beijing , China

3. Tangshan Research Institute, Beijing Institute of Technology , Hebei  063611 , China

Abstract

Abstract Native prokaryotic promoters share common sequence patterns, but are species dependent. For understudied species with limited data, it is challenging to predict the strength of existing promoters and generate novel promoters. Here, we developed PromoGen, a collection of nucleotide language models to generate species-specific functional promoters, across dozens of species in a data and parameter efficient way. Twenty-seven species-specific models in this collection were finetuned from the pretrained model which was trained on multi-species promoters. When systematically compared with native promoters, the Escherichia coli- and Bacillus subtilis-specific artificial PromoGen-generated promoters (PGPs) were demonstrated to hold all distribution patterns of native promoters. A regression model was developed to score generated either by PromoGen or by another competitive neural network, and the overall score of PGPs is higher. Encouraged by in silico analysis, we further experimentally characterized twenty-two B. subtilis PGPs, results showed that four of tested PGPs reached the strong promoter level while all were active. Furthermore, we developed a user-friendly website to generate species-specific promoters for 27 different species by PromoGen. This work presented an efficient deep-learning strategy for de novo species-specific promoter generation even with limited datasets, providing valuable promoter toolboxes especially for the metabolic engineering of understudied microorganisms.

Funder

National Key R&D Program of China

National Natural Science Foundation of China

Science and Technology Program of Tangshan

Biological & Medical Engineering Core Facilities of the Beijing Institute of Technology

Publisher

Oxford University Press (OUP)

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