| Literature DB >> 32601431 |
Min Guo1, Yue Li2, Yijun Su1, Talley Lambert3,4, Damian Dalle Nogare5, Mark W Moyle6, Leighton H Duncan6, Richard Ikegami6, Anthony Santella7, Ivan Rey-Suarez1,8, Daniel Green9, Anastasia Beiriger10, Jiji Chen11, Harshad Vishwasrao11, Sundar Ganesan12, Victoria Prince10,13, Jennifer C Waters3, Christina M Annunziata9, Markus Hafner14, William A Mohler15, Ajay B Chitnis5, Arpita Upadhyaya8,16,17, Ted B Usdin18, Zhirong Bao7, Daniel Colón-Ramos6,19,20, Patrick La Riviere19,21, Huafeng Liu22, Yicong Wu23, Hari Shroff1,11,19.
Abstract
The contrast and resolution of images obtained with optical microscopes can be improved by deconvolution and computational fusion of multiple views of the same sample, but these methods are computationally expensive for large datasets. Here we describe theoretical and practical advances in algorithm and software design that result in image processing times that are tenfold to several thousand fold faster than with previous methods. First, we show that an 'unmatched back projector' accelerates deconvolution relative to the classic Richardson-Lucy algorithm by at least tenfold. Second, three-dimensional image-based registration with a graphics processing unit enhances processing speed 10- to 100-fold over CPU processing. Third, deep learning can provide further acceleration, particularly for deconvolution with spatially varying point spread functions. We illustrate our methods from the subcellular to millimeter spatial scale on diverse samples, including single cells, embryos and cleared tissue. Finally, we show performance enhancement on recently developed microscopes that have improved spatial resolution, including dual-view cleared-tissue light-sheet microscopes and reflective lattice light-sheet microscopes.Entities:
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Year: 2020 PMID: 32601431 PMCID: PMC7642198 DOI: 10.1038/s41587-020-0560-x
Source DB: PubMed Journal: Nat Biotechnol ISSN: 1087-0156 Impact factor: 68.164