Litcius/Paper detail

CASSPER is a semantic segmentation-based particle picking algorithm for single-particle cryo-electron microscopy

Blesson George, Anshul Assaiya, Robin Jacob Roy, Ajit Kembhavi, Radha Chauhan, Geetha Paul, Janesh Kumar, Ninan Sajeeth Philip

2021Communications Biology39 citationsDOIOpen Access PDF

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.

Topics & Concepts

Single particle analysisSegmentationAdaptive histogram equalizationArtificial intelligenceParticle (ecology)Computer scienceCryo-electron microscopyResolution (logic)PixelComputer visionPattern recognition (psychology)HistogramAlgorithmHistogram equalizationChemistryImage (mathematics)GeologyBiochemistryAerosolOceanographyOrganic chemistryAdvanced Electron Microscopy Techniques and ApplicationsElectron and X-Ray Spectroscopy TechniquesGenomics and Phylogenetic Studies