CryoTRANS: predicting high-resolution maps of rare conformations from self-supervised trajectories in cryo-EM.
Xiao FanQi ZhangHui ZhangJianying ZhuLili JuZuoqiang ShiMingxu HuChenglong BaoPublished in: Communications biology (2024)
Cryogenic electron microscopy (cryo-EM) has revolutionized structural biology, enabling efficient determination of structures at near-atomic resolutions. However, a common challenge arises from the severe imbalance among various conformations of vitrified particles, leading to low-resolution reconstructions in rare conformations due to a lack of particle images in these quasi-stable states. We introduce CryoTRANS, a method that predicts high-resolution maps of rare conformations by constructing a self-supervised pseudo-trajectory between density maps of varying resolutions. This trajectory is represented by an ordinary differential equation parameterized by a deep neural network, ensuring retention of detailed structures from high-resolution density maps. By leveraging a single high-resolution density map, CryoTRANS significantly improves the reconstruction of rare conformations and has been validated on four real-world datasets: alpha-2-macroglobulin, actin-binding protein complexes, SARS-CoV-2 spike glycoprotein, and the 70S ribosome. CryoTRANS can also predict high-resolution structures in cryogenic electron tomography maps using a high-resolution cryo-EM map.
Keyphrases
- high resolution
- electron microscopy
- sars cov
- mass spectrometry
- machine learning
- neural network
- binding protein
- high speed
- early onset
- computed tomography
- depressive symptoms
- magnetic resonance
- coronavirus disease
- optical coherence tomography
- respiratory syndrome coronavirus
- single molecule
- molecularly imprinted
- solid state