ConfDENSE: A conformer aware electron density based machine learning paradigm for navigating the odorant landscape

Saha, Pinaki, Balaji, Sarabeshwar, Sharma, Mrityunjay, Barsainyan, Aryan Amit, Kumar, Ritesh, Steuber, Volker and Schmuker, Michael (2026) ConfDENSE: A conformer aware electron density based machine learning paradigm for navigating the odorant landscape. Working Paper. ChemRxiv.
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Olfaction arises from the interaction of odorants with olfactory receptors, a process shaped by molecular geometry, electron distribution, and conformational preference. We present ConfDENSE, a Set2Set enhanced PointNet model that learns directly from Hirshfeld promolecule electron-density point clouds, preserving full 3D electronic in- formation without downsampling.Despite using no receptor structural data, ConfDENSE accurately identifies bioac- tive conformers from ensemble inputs. For the only available human odorant receptor structures, the model’s selected conformers achieve sub-angstrom RMSDs to crystallo- graphic ligand poses and frequently outperform conventional docking. Combining ConfDENSE with explainability analysis further reveals the substruc- tures most responsible for receptor engagement, aligning with experimental interaction patterns. This ligand-centric and interpretable framework naturally supports phar- macophore extraction and scaffold-based design, enabling identification of conserved binding motifs even when receptor structures are missing. ConfDENSE thus provides a compact, physics-aware approach to computational olfaction, linking electron density, conformational preference, and odorant recognition in a structurally agnostic manner.


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