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Continuous Modeling of Conformational Heterogeneity
Using a transformer-based neural representation built in the spatial domain, cryoFormer is capable of continuously modeling the conformational heterogeneity, while recovering fine details of structures.
Visualization of 3D Attention Maps
We map the value in the 3D attention map to the surface color of the reconstructed volume.
The displayed channel of the 3D attention map captures information about the flexible regions of the PEDV spike.
Comparison with Baselines on Synthetic Datasets
We compare CryoFormer with CryoDRGN and SFBP on PEDV. On CryoDRGN Synthetic Dataset, CryoFormer reconstructed volumes qualitatively match the ground truth and baselines' reconstructed
structures, with better recovery of details.
On PEDV spike synthetic dataset, with SNR = 0.01.
The volumes reconstructed by CryoFormer exhibit better restoration of details than the baselines.
Reconstruction on Real Experimental Datasets
We evaluate our approach on an experimental dataset of 80S ribosome from EMPIAR-10028.
Our method manages to recover the shape and integrity of detailed structures like the
α-helices in contrast to baseline approaches.
On EMPIAR-10180 (a pre-catalytic spliceosome), our method manages to maintain structural integrity
during dynamic processes, while our reconstructions exhibit a clear outline of the secondary structure.
Citation
Acknowledgements
The website template was borrowed from Michaël Gharbi.



