Single-frame deep-learning super-resolution microscopy for intracellular dynamics imaging.
Rong ChenXiao TangYuxuan ZhaoZeyu ShenMeng ZhangYusheng ShenTiantian LiCasper Ho Yin ChungLijuan ZhangJi WangBinbin CuiPeng FeiYusong GuoShengwang DuShuhuai YaoPublished in: Nature communications (2023)
Single-molecule localization microscopy (SMLM) can be used to resolve subcellular structures and achieve a tenfold improvement in spatial resolution compared to that obtained by conventional fluorescence microscopy. However, the separation of single-molecule fluorescence events that requires thousands of frames dramatically increases the image acquisition time and phototoxicity, impeding the observation of instantaneous intracellular dynamics. Here we develop a deep-learning based single-frame super-resolution microscopy (SFSRM) method which utilizes a subpixel edge map and a multicomponent optimization strategy to guide the neural network to reconstruct a super-resolution image from a single frame of a diffraction-limited image. Under a tolerable signal density and an affordable signal-to-noise ratio, SFSRM enables high-fidelity live-cell imaging with spatiotemporal resolutions of 30 nm and 10 ms, allowing for prolonged monitoring of subcellular dynamics such as interplays between mitochondria and endoplasmic reticulum, the vesicle transport along microtubules, and the endosome fusion and fission. Moreover, its adaptability to different microscopes and spectra makes it a useful tool for various imaging systems.
Keyphrases
- fluorescence imaging
- single molecule
- deep learning
- photodynamic therapy
- endoplasmic reticulum
- living cells
- atomic force microscopy
- high resolution
- neural network
- artificial intelligence
- convolutional neural network
- reactive oxygen species
- mass spectrometry
- cell death
- air pollution
- high density
- liquid chromatography
- quantum dots
- single cell