Bio-friendly long-term subcellular dynamic recording by self-supervised image enhancement microscopy.
Guoxun ZhangXiaopeng LiYuanlong ZhangXiaofei HanXinyang LiJinqiang YuBoqi LiuJiamin WuLi YuQionghai DaiPublished in: Nature methods (2023)
Fluorescence microscopy has become an indispensable tool for revealing the dynamic regulation of cells and organelles. However, stochastic noise inherently restricts optical interrogation quality and exacerbates observation fidelity when balancing the joint demands of high frame rate, long-term recording and low phototoxicity. Here we propose DeepSeMi, a self-supervised-learning-based denoising framework capable of increasing signal-to-noise ratio by over 12 dB across various conditions. With the introduction of newly designed eccentric blind-spot convolution filters, DeepSeMi effectively denoises images with no loss of spatiotemporal resolution. In combination with confocal microscopy, DeepSeMi allows for recording organelle interactions in four colors at high frame rates across tens of thousands of frames, monitoring migrasomes and retractosomes over a half day, and imaging ultra-phototoxicity-sensitive Dictyostelium cells over thousands of frames. Through comprehensive validations across various samples and instruments, we prove DeepSeMi to be a versatile and biocompatible tool for breaking the shot-noise limit.
Keyphrases
- high resolution
- single molecule
- induced apoptosis
- cell cycle arrest
- air pollution
- machine learning
- high speed
- deep learning
- optical coherence tomography
- high throughput
- cell death
- endoplasmic reticulum stress
- oxidative stress
- signaling pathway
- quality improvement
- ionic liquid
- photodynamic therapy
- single cell
- low cost
- patient reported outcomes
- drug release
- neural network