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High-density volumetric super-resolution microscopy

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Peer-reviewed

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Abstract

Abstract

                Volumetric super-resolution microscopy typically encodes the 3D position of single-molecule fluorescence into a 2D image by changing the shape of the point spread function (PSF) as a function of depth. However, the resulting large and complex PSF spatial footprints reduce biological throughput and applicability by requiring lower labeling densities to avoid overlapping fluorescent signals. We quantitatively compare the density dependence of single-molecule light field microscopy (SMLFM) to other 3D PSFs (astigmatism, double helix and tetrapod) showing that SMLFM enables an order-of-magnitude speed improvement compared to the double helix PSF by resolving overlapping emitters through parallax. We demonstrate this optical robustness experimentally with high accuracy ( > 99.2 ± 0.1%, 0.1 locs μm
                −2
                ) and sensitivity ( > 86.6 ± 0.9%, 0.1 locs μm
                −2
                ) through whole-cell (scan-free) imaging and tracking of single membrane proteins in live primary B cells. We also exemplify high-density volumetric imaging (0.15 locs μm
                −2
                ) in dense cytosolic tubulin datasets.

Description

Acknowledgements: This work was supported by The Royal Society grant (SFL, RGF/EA/181021). We would like to thank Jeremy Graham at CAIRN Research for providing the hexagonal microlens array, Alexander Collins for useful discussions, and Gregory Chant and James McColl for optimizing the dSTORM buffer. We also thank Janelia Materials for providing the PA-JF646 Halo-Tag used for 3D-SPT.

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Journal Title

Nature Communications

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Journal ISSN

2041-1723

Volume Title

15

Publisher

Springer Science and Business Media LLC

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Except where otherwised noted, this item's license is described as Attribution 4.0 International
Sponsorship
Royal Society (RGF\EA\181021)

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