26M VHH affinities train atlas, yeast profiling picks synthetic epitopes

Today's Overview

  • Synthetic Epitope Atlas couples yeast-based profiling to 26M affinity values for VHH binder training AlphaSeq yeast profiling produced 26 million affinity measurements linking computed VHH–SEP structures to experimental binding.

Today's Observation

Yeast-based profiling now delivers affinity data at true proteomic scale: 26 million VHH–SEP measurements map every point-mutant in 1,161 de-novo complexes and give machine-learning models residue-level binding labels instead of the usual “bind / no-bind” calls. By folding these measurements into SEPIA pseudo-structures, the same neural confidence scores used for general antibody ranking gain an extra 20–30 % enrichment for tight binders, turning a high-throughput yeast screen into an immediate training set for in-silico design.

The work underscores a practical shift: generate exhaustive mutational scans first, then let structure-aware ML cherry-pick variants. Caveat—affinity was assayed on surface-displayed VHH against immobilized peptides; avidity and off-rate differences in solution, or in cell-target recognition, remain unchecked. Still, coupling yeast profiling to million-scale labels gives antibody engineers a faster, fully in-house loop that starts and ends with experimental binding data.

The above is personal commentary for reference only. Refer to the original papers for authoritative content.