Proteins with alternative folds reveal blind spots in AlphaFold-based protein structure prediction

Curr Opin Struct Biol. 2025 Jan 4:90:102973. doi: 10.1016/j.sbi.2024.102973. Online ahead of print.

Abstract

In recent years, advances in artificial intelligence (AI) have transformed structural biology, particularly protein structure prediction. Though AI-based methods, such as AlphaFold (AF), often predict single conformations of proteins with high accuracy and confidence, predictions of alternative folds are often inaccurate, low-confidence, or simply not predicted at all. Here, we review three blind spots that alternative conformations reveal about AF-based protein structure prediction. First, proteins that assume conformations distinct from their training-set homologs can be mispredicted. Second, AF overrelies on its training set to predict alternative conformations. Third, degeneracies in pairwise representations can lead to high-confidence predictions inconsistent with experiment. These weaknesses suggest approaches to predict alternative folds more reliably.

Keywords: Alternative conformations; Deep learning; Fold-switching proteins; Machine learning; Metamorphic proteins; Protein structure prediction.

Publication types

  • Review