Neural network informed photon filtering reduces fluorescence correlation spectroscopy artifacts

Biophys J. 2024 Mar 19;123(6):745-755. doi: 10.1016/j.bpj.2024.02.012. Epub 2024 Feb 20.

Abstract

Fluorescence correlation spectroscopy (FCS) techniques are well-established tools to investigate molecular dynamics in confocal and super-resolution microscopy. In practice, users often need to handle a variety of sample- or hardware-related artifacts, an example being peak artifacts created by bright, slow-moving clusters. Approaches to address peak artifacts exist, but measurements suffering from severe artifacts are typically nonanalyzable. Here, we trained a one-dimensional U-Net to automatically identify peak artifacts in fluorescence time series and then analyzed the purified, nonartifactual fluctuations by time-series editing. We show that, in samples with peak artifacts, the transit time and particle number distributions can be restored in simulations and validated the approach in two independent biological experiments. We propose that it is adaptable for other FCS artifacts, such as detector dropout, membrane movement, or photobleaching. In conclusion, this simulation-based, automated, open-source pipeline makes measurements analyzable that previously had to be discarded and extends every FCS user's experimental toolbox.

MeSH terms

  • Artifacts*
  • Molecular Dynamics Simulation
  • Neural Networks, Computer*
  • Photons
  • Spectrometry, Fluorescence / methods