研究目的
To demonstrate how content-aware image restoration based on deep learning extends the range of biological phenomena observable by microscopy, overcoming limitations in imaging speed, spatial resolution, light exposure, and imaging depth.
研究成果
CARE networks significantly extend the capabilities of fluorescence microscopy by enabling higher frame rates, shorter exposures, lower light intensities, and higher resolution, thereby improving downstream analysis. The technology is accessible through open-source tools.
研究不足
The method relies on the assumption that structures of interest appear in arbitrary orientations and the PSF is constant throughout the image volume, which becomes less valid with increasing imaging depth. Not suitable for intensity-based quantifications like fluorophore counting.