CryoSamba: self-supervised deep volumetric denoising for cryo-electron tomography data
Jose Inacio Costa-Filho,
Liam Theveny,
Marilina de Sautu
et al.
Abstract:Cryogenic electron tomography (cryo-ET) has rapidly advanced as a high-resolution imaging tool for visualizing subcellular structures in 3D with molecular detail. Direct image inspection remains challenging due to inherent low signal-to-noise ratios (SNR). We introduce CryoSamba, a self-supervised deep learning-based model designed for denoising cryo-ET images. CryoSamba enhances single consecutive 2D planes in tomograms by averaging motion-compensated nearby planes through deep learning interpolation, effecti… Show more
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