Computational design of conformation-biasing mutations to alter protein functions
Summary
Conformational biasing (CB) is a rapid and streamlined computational method that uses contrastive scoring by inverse folding models to predict protein variants biased toward desired conformational states. We successfully validated CB across seven diverse datasets, identifying variants of K-Ras, the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) spike protein, the β2 adrenergic receptor, and Src kinase with improved conformation-specific functions such as enhanced binding or e
Content
# Computational design of conformation-biasing mutations to alter protein functions
*Published: 2026 Mar 12*
Conformational biasing (CB) is a rapid and streamlined computational method that
uses contrastive scoring by inverse folding models to predict protein variants
biased toward desired conformational states. We successfully validated CB across
seven diverse datasets, identifying variants of K-Ras, the severe acute
respiratory syndrome coronavirus 2 (SARS-CoV-2) spike protein, the β2 adrenergic
receptor, and Src kinase with improved conformation-specific functions such as
enhanced binding or enzymatic activity. Applying CB to the enzyme lipoic acid
ligase (LplA), we uncovered a previously unknown mechanism controlling its
promiscuous activity. Variants biased toward an "open" conformation state became
more promiscuous, whereas "closed"-biased variants were more selective,
enhancing LplA's utility for site-specific protein labeling with fluorophores in
living cells. The speed and simplicity of CB make it a versatile tool for
engineering protein dynamics with broad applications in basic research,
biotechnology, and medicine.
DOI: 10.1126/science.adv7953