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CryoHype: Reconstructing a thousand cryo-EM structures with transformer-based hypernetworks

About

Cryo-electron microscopy (cryo-EM) is an indispensable technique for determining the 3D structures of dynamic biomolecular complexes. While typically applied to image a single molecular species, cryo-EM has the potential for structure determination of many targets simultaneously in a high-throughput fashion. However, existing methods typically focus on modeling conformational heterogeneity within a single or a few structures and are not designed to resolve compositional heterogeneity arising from mixtures of many distinct molecular species. To address this challenge, we propose CryoHype, a transformer-based hypernetwork for cryo-EM reconstruction that dynamically adjusts the weights of an implicit neural representation. Using CryoHype, we achieve state-of-the-art results on a challenging benchmark dataset containing 100 structures. We further demonstrate that CryoHype scales to the reconstruction of 1,000 distinct structures from unlabeled cryo-EM images in the fixed-pose setting.

Jeffrey Gu, Minkyu Jeon, Ambri Ma, Serena Yeung-Levy, Ellen D. Zhong• 2025

Related benchmarks

TaskDatasetResultRank
Cryo-EM ReconstructionTomotwin-100 Noisy
Mean FSCAUC0.346
9
Cryo-EM ReconstructionTomotwin-100 noiseless (full)
Mean FSCAUC38.4
3
Cryo-EM ReconstructionSim2Struct-1000 10 structures
Mean FSCAUC46.4
2
Cryo-EM ReconstructionSim2Struct-1000 100 structures
Mean FSCAUC40.9
2
Cryo-EM ReconstructionSim2Struct-1000 200 structures
Mean FSCAUC0.377
2
Cryo-EM ReconstructionSim2Struct-1000 500 structures
Mean FSCAUC0.305
2
Cryo-EM ReconstructionSim2Struct 1000
Mean FSCAUC0.232
2
Cryo-EM ReconstructionTomotwin-100
FSC @ 0.143 Mean2.03
2
Cryo-EM ReconstructionSim2Struct-10
FSC @ 0.143 (Mean)2
2
Cryo-EM ReconstructionSim2Struct-100
FSC Mean (0.143)2
2
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