SPITFIR(e): a supermaneuverable algorithm for fast denoising and deconvolution of 3D fluorescence microscopy images and videos

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作者
Sylvain Prigent
Hoai-Nam Nguyen
Ludovic Leconte
Cesar Augusto Valades-Cruz
Bassam Hajj
Jean Salamero
Charles Kervrann
机构
[1] SERPICO Project-Team,SERPICO/STED Team, UMR144 CNRS Institut Curie
[2] Inria Centre Rennes-Bretagne Atlantique,Laboratoire Physico
[3] PSL Research University,Chimie, Institut Curie
[4] Sorbonne Universités,undefined
[5] PSL Research University,undefined
[6] Sorbonne Universités,undefined
[7] CNRS UMR168,undefined
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摘要
Modern fluorescent microscopy imaging is still limited by the optical aberrations and the photon budget available in the specimen. A direct consequence is the necessity to develop flexible and “off-road” algorithms in order to recover structural details and improve spatial resolution, which is critical when restraining the illumination to low levels in order to limit photo-damages. Here, we report SPITFIR(e) a flexible method designed to accurately and quickly restore 2D–3D fluorescence microscopy images and videos (4D images). We designed a generic sparse-promoting regularizer to subtract undesirable out-of-focus background and we developed a primal-dual algorithm for fast optimization. SPITFIR(e) is a ”swiss-knife” method for practitioners as it adapts to any microscopy techniques, to various sources of signal degradation (noise, blur), to variable image contents, as well as to low signal-to-noise ratios. Our method outperforms existing state-of-the-art algorithms, and is more flexible than supervised deep-learning methods requiring ground truth datasets. The performance, the flexibility, and the ability to push the spatiotemporal resolution limit of sub-diffracted fluorescence microscopy techniques are demonstrated on experimental datasets acquired with various microscopy techniques from 3D spinning-disk confocal up to lattice light sheet microscopy.
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