PickYOLO: Fast deep learning particle detector for annotation of cryo electron tomograms

  • Erik Genthe (Geteilte/r Erstautor/in)
  • Sean Miletic (Geteilte/r Erstautor/in)
  • Indira Tekkali
  • Rory Hennell James
  • Thomas C Marlovits (Geteilte/r Letztautor/in)
  • Philipp Heuser (Geteilte/r Letztautor/in)

Abstract

Particle localization (picking) in digital tomograms is a laborious and time-intensive step in cryogenic electron tomography (cryoET) analysis often requiring considerable user involvement, thus becoming a bottleneck for automated cryoET subtomogram averaging (STA) pipelines. In this paper, we introduce a deep learning framework called PickYOLO to tackle this problem. PickYOLO is a super-fast, universal particle detector based on the deep-learning real-time object recognition system YOLO (You Only Look Once), and tested on single particles, filamentous structures, and membrane-embedded particles. After training with the centre coordinates of a few hundred representative particles, the network automatically detects additional particles with high yield and reliability at a rate of 0.24-3.75 s per tomogram. PickYOLO can automatically detect number of particles comparable to those manually selected by experienced microscopists. This makes PickYOLO a valuable tool to substantially reduce the time and manual effort needed to analyse cryoET data for STA, greatly aiding in high-resolution cryoET structure determination.

Bibliografische Daten

OriginalspracheEnglisch
ISSN1047-8477
DOIs
StatusVeröffentlicht - 09.2023

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Copyright © 2023. Published by Elsevier Inc.

PubMed 37364763