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Combining deep learning with SUPPOSe and compressed sensing for SNR-enhanced localization of overlapping emitters

Abstract

We present gSUPPOSe, a novel, to the best of our knowledge, gradient-based implementation of the SUPPOSe algorithm that we have developed for the localization of single emitters. We study the performance of gSUPPOSe and compressed sensing STORM (CS-STORM) on simulations of single-molecule localization microscopy (SMLM) images at different fluorophore densities and in a wide range of signal-to-noise ratio conditions. We also study the combination of these methods with prior image denoising by means of a deep convolutional network. Our results show that gSUPPOSe can address the localization of multiple overlapping emitters even at a low number of acquired photons, outperforming CS-STORM in our quantitative analysis and having better computational times. We also demonstrate that image denoising greatly improves CS-STORM, showing the potential of deep learning enhanced localization on existing SMLM algorithms. The software developed in this work is available as open source Python libraries.

© 2022 Optica Publishing Group

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Supplementary Material (4)

NameDescription
Code 1       gSUPPOSe repository
Code 2       CaTMU repository
Dataset 1       Image datasets used in this work: sample dataset of simulated SMLM images used for testing the methods, train dataset used for model training an evaluation of the deep convolutional network.
Supplement 1       Supplemental figures showing the full set of results for all the images studied. Supplemental document with detailed description and analysis of the software and its implementation.

Data availability

All image datasets used in this work are available at Dataset 1, Ref. [43].

43. A. M. Lacapmesure, “Simulations of single molecule localization microscopy frames with scattered single emitters,” Zenodo (2022), https://doi.org/10.5281/zenodo.5528368.

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