Revealing biomolecular structure and motion with neural ab initio cryo-EM reconstruction.
Axel LevyMichal GrzadkowskiFrédéric P PoitevinFrancesca ValleseOliver Biggs ClarkeGordon WetzsteinEllen D ZhongPublished in: bioRxiv : the preprint server for biology (2024)
Proteins and other biomolecules form dynamic macromolecular machines that are tightly orchestrated to move, bind, and perform chemistry. Cryo-electron microscopy (cryo-EM) can access the intrinsic heterogeneity of these complexes and is therefore a key tool for understanding mechanism and function. However, 3D reconstruction of the resulting imaging data presents a challenging computational problem, especially without any starting information, a setting termed ab initio reconstruction. Here, we introduce a method, DRGN-AI, for ab initio heterogeneous cryo-EM reconstruction. With a two-step hybrid approach combining search and gradient-based optimization, DRGN-AI can reconstruct dynamic protein complexes from scratch without input poses or initial models. Using DRGN-AI, we reconstruct the compositional and conformational variability contained in a variety of benchmark datasets, process an unfiltered dataset of the DSL1/SNARE complex fully ab initio, and reveal a new "supercomplex" state of the human erythrocyte ankyrin-1 complex. With this expressive and scalable model for structure determination, we hope to unlock the full potential of cryo-EM as a high-throughput tool for structural biology and discovery.
Keyphrases
- electron microscopy
- high throughput
- artificial intelligence
- single cell
- high resolution
- endothelial cells
- big data
- rna seq
- small molecule
- genome wide
- machine learning
- electronic health record
- molecular dynamics simulations
- gene expression
- deep learning
- dna methylation
- healthcare
- protein protein
- pluripotent stem cells
- binding protein
- solid phase extraction
- single molecule
- risk assessment
- climate change
- health information
- simultaneous determination
- drug discovery
- data analysis