[AcidBasePred: a protein acid-base tolerance prediction platform based on deep learning]

Sheng Wu Gong Cheng Xue Bao. 2024 Dec 25;40(12):4670-4681. doi: 10.13345/j.cjb.240255.
[Article in Chinese]

Abstract

The structures and activities of enzymes are influenced by pH of the environment. Understanding and distinguishing the adaptation mechanisms of enzymes to extreme pH values is of great significance for elucidating the molecular mechanisms and promoting the industrial applications of enzymes. In this study, the ESM-2 protein language model was used to encode the secreted microbial proteins with the optimal performance above pH 9 and below pH 5, which yielded 47 725 high-pH protein sequences and 66 079 low-pH protein sequences, respectively. A deep learning model was constructed to identify protein acid-base tolerance based on amino acid sequences. The model showcased significantly higher accuracy than other methods, with the overall accuracy of 94.8%, precision of 91.8%, and a recall rate of 93.4% on the test set. Furthermore, we built a website (https://enzymepred.biodesign.ac.cn), which enabled users to predict the acid-base tolerance by submitting the protein sequences of enzymes. This study has accelerated the application of enzymes in various fields, including biotechnology, pharmaceuticals, and chemicals. It provides a powerful tool for the rapid screening and optimization of industrial enzymes.

Keywords: acid-base tolerance; deep learning; enzyme; prediction platform; protein sequence.

Publication types

  • English Abstract

MeSH terms

  • Amino Acid Sequence
  • Bacterial Proteins / metabolism
  • Deep Learning*
  • Enzymes / metabolism
  • Hydrogen-Ion Concentration
  • Proteins / metabolism
  • Sequence Analysis, Protein

Substances

  • Enzymes
  • Proteins
  • Bacterial Proteins