Towards anchoring evolutionary fitness for protein stability with virtual chemical environment recovery
Protein stability offers valuable insights into protein folding and functionality, making it an integral component of evolutionary fitness. Previous computational methods possess both strengths and weaknesses, leading to practical and interpretational limitations. Here, we propose an interpretable protein stability change prediction method, S3C, to anchor evolutionary fitness for protein stability with virtual chemical environment recovery. S3C first gets rid of the shackles of high-resolution protein structure data and restores the local chemical environments of the mutations at the sequence level. Subsequently, S3C promotes the evolutionary fitness of protein stability to dominate the fitness landscape under the selective pressure. Naturally, S3C comprehensively outperforms state-of-the-art methods on benchmark datasets while showing ideal generalization when migrated to unseen protein families. More importantly, S3C is demonstrated to be interpretable at multiple scales, including h