High-confidence 3D template matching for cryo-electron tomography.
Sergio Cruz-LeónTomas MajtnerPatrick C HoffmannJan Philipp KreysingSebastian KehlMaarten W TuijtelStefan L SchäferKatharina GeißlerMartin BeckBeata TuroňováGerhard HummerPublished in: Nature communications (2024)
Visual proteomics attempts to build atlases of the molecular content of cells but the automated annotation of cryo electron tomograms remains challenging. Template matching (TM) and methods based on machine learning detect structural signatures of macromolecules. However, their applicability remains limited in terms of both the abundance and size of the molecular targets. Here we show that the performance of TM is greatly improved by using template-specific search parameter optimization and by including higher-resolution information. We establish a TM pipeline with systematically tuned parameters for the automated, objective and comprehensive identification of structures with confidence 10 to 100-fold above the noise level. We demonstrate high-fidelity and high-confidence localizations of nuclear pore complexes, vaults, ribosomes, proteasomes, fatty acid synthases, lipid membranes and microtubules, and individual subunits inside crowded eukaryotic cells. We provide software tools for the generic implementation of our method that is broadly applicable towards realizing visual proteomics.
Keyphrases
- machine learning
- induced apoptosis
- electron microscopy
- fatty acid
- high resolution
- cell cycle arrest
- mass spectrometry
- deep learning
- high throughput
- molecularly imprinted
- single molecule
- primary care
- air pollution
- cell death
- artificial intelligence
- endoplasmic reticulum stress
- oxidative stress
- dna methylation
- wastewater treatment
- cell proliferation
- liquid chromatography
- simultaneous determination
- solar cells
- bioinformatics analysis