Rationalized deep learning super-resolution microscopy for sustained live imaging of rapid subcellular processes.
Chang QiaoDi LiYong LiuSiwei ZhangKan LiuChong LiuYuting GuoTao JiangChuyu FangNan LiYunmin ZengKangmin HeXueliang ZhuJennifer Lippincott-SchwartzQionghai DaiDong LiPublished in: Nature biotechnology (2022)
The goal when imaging bioprocesses with optical microscopy is to acquire the most spatiotemporal information with the least invasiveness. Deep neural networks have substantially improved optical microscopy, including image super-resolution and restoration, but still have substantial potential for artifacts. In this study, we developed rationalized deep learning (rDL) for structured illumination microscopy and lattice light sheet microscopy (LLSM) by incorporating prior knowledge of illumination patterns and, thereby, rationally guiding the network to denoise raw images. Here we demonstrate that rDL structured illumination microscopy eliminates spectral bias-induced resolution degradation and reduces model uncertainty by five-fold, improving the super-resolution information by more than ten-fold over other computational approaches. Moreover, rDL applied to LLSM enables self-supervised training by using the spatial or temporal continuity of noisy data itself, yielding results similar to those of supervised methods. We demonstrate the utility of rDL by imaging the rapid kinetics of motile cilia, nucleolar protein condensation during light-sensitive mitosis and long-term interactions between membranous and membrane-less organelles.
Keyphrases
- high resolution
- deep learning
- single molecule
- high speed
- optical coherence tomography
- machine learning
- high throughput
- mass spectrometry
- convolutional neural network
- label free
- healthcare
- artificial intelligence
- neural network
- magnetic resonance imaging
- oxidative stress
- big data
- electronic health record
- diabetic rats
- magnetic resonance
- small molecule
- single cell
- amino acid
- social media
- drug induced