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Central Feature Network Enables Accurate Detection of Both Small and Large Particles in Cryo-Electron Tomography

Published: 19 July 2024 Publication History

Abstract

The advancements in Cryo-Electron Tomography (cryo-ET) have made it possible to visualize molecules in their natural cellular settings in three-dimensional space. Such visualizations play a crucial role in investigating the functions of biological entities under native conditions. Recently, deep learning techniques have proven effective in addressing the challenge of detecting particles in cryo-ET data. Nevertheless, the task of precisely identifying and categorizing multi-class molecules remains difficult due to factors such as the low signal-to-noise ratio and the diverse range of sizes in particle selection. In this study, we present a new framework called Central Feature Network (CFN) for detecting objects in 3D and implement it in cryo-ET analysis. A key strength of CFN is its ability to integrate central features across different scales, enabling the accurate detection of both small and large molecules. In comparison to existing methods, CFN enhances the F1 score for classification by 3.6%, 7.3%, 6.6%, and 5.1% for the four smallest molecules tested, while maintaining similar or higher F1 scores for other molecules examined. Our code is available at https://github.com/Wangyaoyuu/cfn_scr.

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cover image Guide Proceedings
Bioinformatics Research and Applications: 20th International Symposium, ISBRA 2024, Kunming, China, July 19–21, 2024, Proceedings, Part I
Jul 2024
532 pages
ISBN:978-981-97-5127-3
DOI:10.1007/978-981-97-5128-0
  • Editors:
  • Wei Peng,
  • Zhipeng Cai,
  • Pavel Skums

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 19 July 2024

Author Tags

  1. Particle detection
  2. Cryo-electron tomography
  3. Pattern recognition
  4. Deep learning

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