Title : Enhancement of protein thermostability by three consecutive mutations using loop-walking method and machine learning - Yoshida_2021_Sci.Rep_11_11883 |
Author(s) : Yoshida K , Kawai S , Fujitani M , Koikeda S , Kato R , Ema T |
Ref : Sci Rep , 11 :11883 , 2021 |
Abstract :
We developed a method to improve protein thermostability, "loop-walking method". Three consecutive positions in 12 loops of Burkholderia cepacia lipase were subjected to random mutagenesis to make 12 libraries. Screening allowed us to identify L7 as a hot-spot loop having an impact on thermostability, and the P233G/L234E/V235M mutant was found from 214 variants in the L7 library. Although a more excellent mutant might be discovered by screening all the 8000 P233X/L234X/V235X mutants, it was difficult to assay all of them. We therefore employed machine learning. Using thermostability data of the 214 mutants, a computational discrimination model was constructed to predict thermostability potentials. Among 7786 combinations ranked in silico, 20 promising candidates were selected and assayed. The P233D/L234P/V235S mutant retained 66% activity after heat treatment at 60 degreesC for 30 min, which was higher than those of the wild-type enzyme (5%) and the P233G/L234E/V235M mutant (35%). |
PubMedSearch : Yoshida_2021_Sci.Rep_11_11883 |
PubMedID: 34088952 |
Gene_locus related to this paper: burce-lipaa |
Gene_locus | burce-lipaa |
Yoshida K, Kawai S, Fujitani M, Koikeda S, Kato R, Ema T (2021)
Enhancement of protein thermostability by three consecutive mutations using loop-walking method and machine learning
Sci Rep
11 :11883
Yoshida K, Kawai S, Fujitani M, Koikeda S, Kato R, Ema T (2021)
Sci Rep
11 :11883