PLM_Sol: predicting protein solubility by benchmarking multiple protein language models with the updated Escherichia coli protein solubility dataset

Author:

Zhang Xuechun1234ORCID,Hu Xiaoxuan1234,Zhang Tongtong1234,Yang Ling1234,Liu Chunhong1234,Xu Ning1234,Wang Haoyi12345,Sun Wen1235

Affiliation:

1. Key Laboratory of Organ Regeneration and Reconstruction , State Key Laboratory of Stem Cell and Reproductive Biology, Institute of Zoology, , 1 Beichen West Road, Chaoyang District, Beijing 100101, China

2. Chinese Academy of Sciences , State Key Laboratory of Stem Cell and Reproductive Biology, Institute of Zoology, , 1 Beichen West Road, Chaoyang District, Beijing 100101, China

3. Institute for Stem Cell and Regeneration, Chinese Academy of Sciences , 1 Beichen West Road, Chaoyang District, Beijing 100101, China

4. University of Chinese Academy of Sciences , No. 1 Yanqihu East Rd, Huairou District, Beijing 101408, China

5. Beijing Institute for Stem Cell and Regenerative Medicine , A 3 Datun Road, Chaoyang District, Beijing 100100, China

Abstract

Abstract Protein solubility plays a crucial role in various biotechnological, industrial, and biomedical applications. With the reduction in sequencing and gene synthesis costs, the adoption of high-throughput experimental screening coupled with tailored bioinformatic prediction has witnessed a rapidly growing trend for the development of novel functional enzymes of interest (EOI). High protein solubility rates are essential in this process and accurate prediction of solubility is a challenging task. As deep learning technology continues to evolve, attention-based protein language models (PLMs) can extract intrinsic information from protein sequences to a greater extent. Leveraging these models along with the increasing availability of protein solubility data inferred from structural database like the Protein Data Bank holds great potential to enhance the prediction of protein solubility. In this study, we curated an Updated Escherichia coli protein Solubility DataSet (UESolDS) and employed a combination of multiple PLMs and classification layers to predict protein solubility. The resulting best-performing model, named Protein Language Model-based protein Solubility prediction model (PLM_Sol), demonstrated significant improvements over previous reported models, achieving a notable 6.4% increase in accuracy, 9.0% increase in F1_score, and 11.1% increase in Matthews correlation coefficient score on the independent test set. Moreover, additional evaluation utilizing our in-house synthesized protein resource as test data, encompassing diverse types of enzymes, also showcased the good performance of PLM_Sol. Overall, PLM_Sol exhibited consistent and promising performance across both independent test set and experimental set, thereby making it well suited for facilitating large-scale EOI studies. PLM_Sol is available as a standalone program and as an easy-to-use model at https://zenodo.org/doi/10.5281/zenodo.10675340.

Funder

Ministry of Agriculture and Rural Affairs of China, Biological Breeding-Major Projects

Strategic Priority Research Program of the Chinese Academy of Sciences

Beijing Institute for Stem Cell and Regenerative Medicine

National Natural Science Foundation of China

Initiative Scientific Research Program, Institute of Zoology, Chinese Academy of Sciences

Chinese Academy of Sciences

Publisher

Oxford University Press (OUP)

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