ASOCEM: Automatic Segmentation Of Contaminations in cryo-EM
- URL: http://arxiv.org/abs/2201.06978v1
- Date: Tue, 18 Jan 2022 13:42:22 GMT
- Title: ASOCEM: Automatic Segmentation Of Contaminations in cryo-EM
- Authors: Amitay Eldar, Ido Amos and Yoel Shkolnisky
- Abstract summary: Contaminations in the acquired micrographs severely degrade the performance of particle pickers.
We present ASOCEM, an automatic method to detect and segment contaminations.
Our method is based on the observation that the statistical distribution of contaminated regions is different from that of the rest of the micrograph.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Particle picking is currently a critical step in the cryo-electron microscopy
single particle reconstruction pipeline. Contaminations in the acquired
micrographs severely degrade the performance of particle pickers, resulting is
many ``non-particles'' in the collected stack of particles. In this paper, we
present ASOCEM (Automatic Segmentation Of Contaminations in cryo-EM), an
automatic method to detect and segment contaminations, which requires as an
input only the approximated particle size. In particular, it does not require
any parameter tuning nor manual intervention. Our method is based on the
observation that the statistical distribution of contaminated regions is
different from that of the rest of the micrograph. This nonrestrictive
assumption allows to automatically detect various types of contaminations, from
the carbon edges of the supporting grid to high contrast blobs of different
sizes. We demonstrate the efficiency of our algorithm using various
experimental data sets containing various types of contaminations. ASOCEM is
integrated as part of the KLT picker \cite{ELDAR2020107473} and is available at
\url{https://github.com/ShkolniskyLab/kltpicker2}.
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