DRACO: A Denoising-Reconstruction Autoencoder for Cryo-EM
Foundation models in computer vision have demonstrated exceptional performance in zero-shot and few-shot tasks by extracting multi-purpose features from large-scale datasets through self-supervised pre-training methods. However, these models often overlook the severe corruption in cryogenic electron...
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Zusammenfassung: | Foundation models in computer vision have demonstrated exceptional
performance in zero-shot and few-shot tasks by extracting multi-purpose
features from large-scale datasets through self-supervised pre-training
methods. However, these models often overlook the severe corruption in
cryogenic electron microscopy (cryo-EM) images by high-level noises. We
introduce DRACO, a Denoising-Reconstruction Autoencoder for CryO-EM, inspired
by the Noise2Noise (N2N) approach. By processing cryo-EM movies into odd and
even images and treating them as independent noisy observations, we apply a
denoising-reconstruction hybrid training scheme. We mask both images to create
denoising and reconstruction tasks. For DRACO's pre-training, the quality of
the dataset is essential, we hence build a high-quality, diverse dataset from
an uncurated public database, including over 270,000 movies or micrographs.
After pre-training, DRACO naturally serves as a generalizable cryo-EM image
denoiser and a foundation model for various cryo-EM downstream tasks. DRACO
demonstrates the best performance in denoising, micrograph curation, and
particle picking tasks compared to state-of-the-art baselines. |
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DOI: | 10.48550/arxiv.2410.11373 |