CryoSAMU: Enhancing 3D Cryo-EM Density Maps of Protein Structures at Intermediate Resolution with Structure-Aware Multimodal U-Nets
By: Chenwei Zhang, Khanh Dao Duc
Potential Business Impact:
Makes protein pictures clearer for scientists.
Enhancing cryogenic electron microscopy (cryo-EM) 3D density maps at intermediate resolution (4-8 {\AA}) is crucial in protein structure determination. Recent advances in deep learning have led to the development of automated approaches for enhancing experimental cryo-EM density maps. Yet, these methods are not optimized for intermediate-resolution maps and rely on map density features alone. To address this, we propose CryoSAMU, a novel method designed to enhance 3D cryo-EM density maps of protein structures using structure-aware multimodal U-Nets and trained on curated intermediate-resolution density maps. We comprehensively evaluate CryoSAMU across various metrics and demonstrate its competitive performance compared to state-of-the-art methods. Notably, CryoSAMU achieves significantly faster processing speed, showing promise for future practical applications. Our code is available at https://github.com/chenwei-zhang/CryoSAMU.
Similar Papers
Multiscale guidance of AlphaFold3 with heterogeneous cryo-EM data
Machine Learning (CS)
Helps scientists see how moving body parts work.
Application of Deep Learning in Biological Data Compression
Machine Learning (CS)
Shrinks big science pictures to save space.
GEM: 3D Gaussian Splatting for Efficient and Accurate Cryo-EM Reconstruction
CV and Pattern Recognition
Makes seeing tiny things faster and clearer.