| Literature DB >> 33589717 |
Blesson George1,2, Anshul Assaiya3, Robin J Roy1, Ajit Kembhavi4, Radha Chauhan5, Geetha Paul1, Janesh Kumar6, Ninan S Philip7.
Abstract
Particle identification and selection, which is a prerequisite for high-resolution structure determination of biological macromolecules via single-particle cryo-electron microscopy poses a major bottleneck for automating the steps of structure determination. Here, we present a generalized deep learning tool, CASSPER, for the automated detection and isolation of protein particles in transmission microscope images. This deep learning tool uses Semantic Segmentation and a collection of visually prepared training samples to capture the differences in the transmission intensities of protein, ice, carbon, and other impurities found in the micrograph. CASSPER is a semantic segmentation based method that does pixel-level classification and completely eliminates the need for manual particle picking. Integration of Contrast Limited Adaptive Histogram Equalization (CLAHE) in CASSPER enables high-fidelity particle detection in micrographs with variable ice thickness and contrast. A generalized CASSPER model works with high efficiency on unseen datasets and can potentially pick particles on-the-fly, enabling data processing automation.Entities:
Year: 2021 PMID: 33589717 PMCID: PMC7884729 DOI: 10.1038/s42003-021-01721-1
Source DB: PubMed Journal: Commun Biol ISSN: 2399-3642