Performance of deep learning restoration methods for the extraction of particle dynamics in noisy microscopy image sequences

dc.contributor.authorKefer, Paul
dc.contributor.authorIqbal, Fadil
dc.contributor.authorLocatelli, Maelle
dc.contributor.authorLawrimore, Josh
dc.contributor.authorZhang, Mengdi
dc.contributor.authorBloom, Kerry
dc.contributor.authorBonin, Keith
dc.contributor.authorVidi, Pierre-Alexandre
dc.contributor.authorLiu, Jing
dc.contributor.departmentPhysics, School of Scienceen_US
dc.date.accessioned2023-01-18T16:06:36Z
dc.date.available2023-01-18T16:06:36Z
dc.date.issued2021-04-19
dc.description.abstractParticle tracking in living systems requires low light exposure and short exposure times to avoid phototoxicity and photobleaching and to fully capture particle motion with high-speed imaging. Low-excitation light comes at the expense of tracking accuracy. Image restoration methods based on deep learning dramatically improve the signal-to-noise ratio in low-exposure data sets, qualitatively improving the images. However, it is not clear whether images generated by these methods yield accurate quantitative measurements such as diffusion parameters in (single) particle tracking experiments. Here, we evaluate the performance of two popular deep learning denoising software packages for particle tracking, using synthetic data sets and movies of diffusing chromatin as biological examples. With synthetic data, both supervised and unsupervised deep learning restored particle motions with high accuracy in two-dimensional data sets, whereas artifacts were introduced by the denoisers in three-dimensional data sets. Experimentally, we found that, while both supervised and unsupervised approaches improved tracking results compared with the original noisy images, supervised learning generally outperformed the unsupervised approach. We find that nicer-looking image sequences are not synonymous with more precise tracking results and highlight that deep learning algorithms can produce deceiving artifacts with extremely noisy images. Finally, we address the challenge of selecting parameters to train convolutional neural networks by implementing a frugal Bayesian optimizer that rapidly explores multidimensional parameter spaces, identifying networks yielding optimal particle tracking accuracy. Our study provides quantitative outcome measures of image restoration using deep learning. We anticipate broad application of this approach to critically evaluate artificial intelligence solutions for quantitative microscopy.en_US
dc.eprint.versionFinal published versionen_US
dc.identifier.citationKefer P, Iqbal F, Locatelli M, et al. Performance of deep learning restoration methods for the extraction of particle dynamics in noisy microscopy image sequences. Mol Biol Cell. 2021;32(9):903-914. doi:10.1091/mbc.E20-11-0689en_US
dc.identifier.urihttps://hdl.handle.net/1805/30951
dc.language.isoen_USen_US
dc.publisherAmerican Society for Cell Biologyen_US
dc.relation.isversionof10.1091/mbc.E20-11-0689en_US
dc.relation.journalMolecular Biology of the Cellen_US
dc.rightsAttribution 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.sourcePMCen_US
dc.subjectArtificial Intelligenceen_US
dc.subjectBayes theoremen_US
dc.subjectComputer-assisted image processingen_US
dc.subjectSignal-to-noise ratioen_US
dc.titlePerformance of deep learning restoration methods for the extraction of particle dynamics in noisy microscopy image sequencesen_US
dc.typeArticleen_US
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