Automated model building and protein identification in cryo-EM maps.
Kiarash JamaliLukas KällRui ZhangAlan BrownDari KimaniusSjors H W ScheresPublished in: Nature (2024)
Interpreting electron cryo-microscopy (cryo-EM) maps with atomic models requires high levels of expertise and labour-intensive manual intervention in three-dimensional computer graphics programs 1,2 . We present ModelAngelo, a machine-learning approach for automated atomic model building in cryo-EM maps. By combining information from the cryo-EM map with information from protein sequence and structure in a single graph neural network, ModelAngelo builds atomic models for proteins that are of similar quality as those generated by human experts. For nucleotides, ModelAngelo builds backbones with similar accuracy as humans. By using its predicted amino acid probabilities for each residue in hidden Markov model sequence searches, ModelAngelo outperforms human experts in the identification of proteins with unknown sequences. ModelAngelo will thus remove bottlenecks and increase objectivity in cryo-EM structure determination.
Keyphrases
- amino acid
- machine learning
- neural network
- endothelial cells
- deep learning
- electron microscopy
- high throughput
- randomized controlled trial
- high resolution
- induced pluripotent stem cells
- public health
- pluripotent stem cells
- artificial intelligence
- protein protein
- healthcare
- mass spectrometry
- social media
- high speed
- solar cells