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📄 Abstract
Abstract: Mass spectrometry (MS) plays a critical role in molecular identification,
significantly advancing scientific discovery. However, structure elucidation
from MS data remains challenging due to the scarcity of annotated spectra.
While large-scale pretraining has proven effective in addressing data scarcity
in other domains, applying this paradigm to mass spectrometry is hindered by
the complexity and heterogeneity of raw spectral signals. To address this, we
propose MS-BART, a unified modeling framework that maps mass spectra and
molecular structures into a shared token vocabulary, enabling cross-modal
learning through large-scale pretraining on reliably computed
fingerprint-molecule datasets. Multi-task pretraining objectives further
enhance MS-BART's generalization by jointly optimizing denoising and
translation task. The pretrained model is subsequently transferred to
experimental spectra through finetuning on fingerprint predictions generated
with MIST, a pre-trained spectral inference model, thereby enhancing robustness
to real-world spectral variability. While finetuning alleviates the
distributional difference, MS-BART still suffers molecular hallucination and
requires further alignment. We therefore introduce a chemical feedback
mechanism that guides the model toward generating molecules closer to the
reference structure. Extensive evaluations demonstrate that MS-BART achieves
SOTA performance across 5/12 key metrics on MassSpecGym and NPLIB1 and is
faster by one order of magnitude than competing diffusion-based methods, while
comprehensive ablation studies systematically validate the model's
effectiveness and robustness.
Authors (5)
Yang Han
Pengyu Wang
Kai Yu
Xin Chen
Lu Chen
Submitted
October 23, 2025
Key Contributions
MS-BART is a unified framework for mass spectrometry and molecular structure modeling, enabling cross-modal learning via large-scale pretraining. It addresses data scarcity by mapping spectra and structures to a shared token vocabulary and uses multi-task objectives for better generalization.
Business Value
Accelerates molecular identification and structure elucidation, crucial for drug discovery, chemical analysis, and materials science, leading to faster research and development cycles.