Plot metrics from a Topaz training run
-
Updated
Oct 30, 2021 - Python
Plot metrics from a Topaz training run
Cellular content mining and particle localization
Open Source python module to enable batch gold particle picking, filtering, processing & statistical modelling of TEM images produced by IGEM (immunogold electron microscopy).
Data analysis scripts, patches, and installation guides for cryo-EM particle pickers.
2D NN-based particle picking from sparse labels
REliable PIcking by Consensus (REPIC)
KLT picker: Particle picking using data-driven optimal templates (Python version)
Web application in Dash and Plotly.js for displaying cryo-EM micrographs and visualizing coordinate overlays.
KLT picker: Particle picking using data-driven optimal templates (MATLAB version)
TomoNet is a GUI based pipeline package focusing on cryoET and STA data processing
REliable PIcking by Consensus (REPIC) - an ensemble learning methodology for cryo-EM particle picking
cryo-ET particle picking by representation and metric learning
TomoBEAR is a configurable and customizable modular pipeline for streamlined processing of cryo-electron tomographic data for subtomogram averaging.
Pipeline for particle picking in cryo-electron microscopy images using convolutional neural networks trained from positive and unlabeled examples. Also featuring micrograph and tomogram denoising with DNNs.
Add a description, image, and links to the particle-picking topic page so that developers can more easily learn about it.
To associate your repository with the particle-picking topic, visit your repo's landing page and select "manage topics."