bioRxiv (Bioinfo)
2026-06-15 00:00
DOI:
HASH:a2645eba07cb37eaf4a2b728c3d94ee4
SMLMFlow: Improving Structural Resolution in Single Molecule Localization Microscopy with Flow Matching
作者:
摘要 / Abstract
While Single Molecule Localization Microscopy (SMLM) aims to generate precise coordinates of molecular targets in cells, the resulting point clouds are inherently blurred by additive noise sources across the experimental, imaging, and processing workflow. This blurring often limits SMLM's ability to accurately quantify complex assembled structures required to address biological issues, despite reported localization precision down to a couple of nanometers. Here, we present SMLMFlow, a machine learning framework for improving structural resolution in SMLM datasets that combines a graph neural network and a hierarchical transformer with flow matching. We show that SMLMFlow improves structural resolution and downstream quantification across different structures, including filaments and protein nano-clusters, and generalizes to new unseen photophysics models.