MicrographCleaner: A python package for cryo-EM micrograph cleaning using deep learning

J Struct Biol. 2020 Jun 1;210(3):107498. doi: 10.1016/j.jsb.2020.107498. Epub 2020 Apr 7.

Abstract

Cryo-EM Single Particle Analysis workflows require tens of thousands of high-quality particle projections to unveil the three-dimensional structure of macromolecules. Conventional methods for automatic particle picking tend to suffer from high false-positive rates, hampering the reconstruction process. One common cause of this problem is the presence of carbon and different types of high-contrast contaminations. In order to overcome this limitation, we have developed MicrographCleaner, a deep learning package designed to discriminate, in an automated fashion, between regions of micrographs which are suitable for particle picking, and those which are not. MicrographCleaner implements a U-net-like deep learning model trained on a manually curated dataset compiled from over five hundred micrographs. The benchmarking, carried out on approximately one hundred independent micrographs, shows that MicrographCleaner is a very efficient approach for micrograph preprocessing. MicrographCleaner (micrograph_cleaner_em) package is available at PyPI and Anaconda Cloud and also as a Scipion/Xmipp protocol. Source code is available at https://github.com/rsanchezgarc/micrograph_cleaner_em.

Keywords: Carbon; Cleaning; Contaminants; Cryo-EM; Deep learning; Micrographs.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Cryoelectron Microscopy / methods*
  • Deep Learning*
  • Macromolecular Substances / metabolism
  • Software

Substances

  • Macromolecular Substances