FlowMS: Flow Matching for De Novo Structure Elucidation from Mass Spectra
arXiv cs.LG / 3/20/2026
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Key Points
- FlowMS is introduced as the first discrete flow matching framework for spectrum-conditioned de novo molecular generation.
- It performs iterative refinement in probability space while enforcing chemical formula constraints and uses spectral embeddings from a pretrained formula transformer encoder.
- It achieves state-of-the-art performance on 5 of 6 metrics on the NPLIB1 benchmark, including 9.15% top-1 accuracy (9.7% relative improvement over DiffMS) and 7.96 top-10 MCES (4.2% improvement over MS-BART).
- Visual analyses show the generated molecules are structurally plausible and closely resemble ground truth structures.
- The work positions discrete flow matching as a promising paradigm for MS-based structure elucidation in metabolomics and natural product discovery, addressing the computational demands of diffusion-based approaches.
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