| Literature DB >> 34059829 |
Jiji Chen1, Hideki Sasaki2,3, Hoyin Lai4,5, Yijun Su6,4,5,7, Jiamin Liu6, Yicong Wu7, Alexander Zhovmer8, Christian A Combs9, Ivan Rey-Suarez10,11, Hung-Yu Chang4,5, Chi Chou Huang4,5, Xuesong Li7, Min Guo7, Srineil Nizambad6, Arpita Upadhyaya10,11,12, Shih-Jong J Lee4,5, Luciano A G Lucas4,5, Hari Shroff6,7.
Abstract
We demonstrate residual channel attention networks (RCAN) for the restoration and enhancement of volumetric time-lapse (four-dimensional) fluorescence microscopy data. First we modify RCAN to handle image volumes, showing that our network enables denoising competitive with three other state-of-the-art neural networks. We use RCAN to restore noisy four-dimensional super-resolution data, enabling image capture of over tens of thousands of images (thousands of volumes) without apparent photobleaching. Second, using simulations we show that RCAN enables resolution enhancement equivalent to, or better than, other networks. Third, we exploit RCAN for denoising and resolution improvement in confocal microscopy, enabling ~2.5-fold lateral resolution enhancement using stimulated emission depletion microscopy ground truth. Fourth, we develop methods to improve spatial resolution in structured illumination microscopy using expansion microscopy data as ground truth, achieving improvements of ~1.9-fold laterally and ~3.6-fold axially. Finally, we characterize the limits of denoising and resolution enhancement, suggesting practical benchmarks for evaluation and further enhancement of network performance.Entities:
Year: 2021 PMID: 34059829 DOI: 10.1038/s41592-021-01155-x
Source DB: PubMed Journal: Nat Methods ISSN: 1548-7091 Impact factor: 28.547