English

SHREC 2021: Classification in cryo-electron tomograms

Image and Video Processing 2022-04-12 v1 Computer Vision and Pattern Recognition

Abstract

Cryo-electron tomography (cryo-ET) is an imaging technique that allows three-dimensional visualization of macro-molecular assemblies under near-native conditions. Cryo-ET comes with a number of challenges, mainly low signal-to-noise and inability to obtain images from all angles. Computational methods are key to analyze cryo-electron tomograms. To promote innovation in computational methods, we generate a novel simulated dataset to benchmark different methods of localization and classification of biological macromolecules in tomograms. Our publicly available dataset contains ten tomographic reconstructions of simulated cell-like volumes. Each volume contains twelve different types of complexes, varying in size, function and structure. In this paper, we have evaluated seven different methods of finding and classifying proteins. Seven research groups present results obtained with learning-based methods and trained on the simulated dataset, as well as a baseline template matching (TM), a traditional method widely used in cryo-ET research. We show that learning-based approaches can achieve notably better localization and classification performance than TM. We also experimentally confirm that there is a negative relationship between particle size and performance for all methods.

Keywords

Cite

@article{arxiv.2203.10035,
  title  = {SHREC 2021: Classification in cryo-electron tomograms},
  author = {Ilja Gubins and Marten L. Chaillet and Gijs van der Schot and M. Cristina Trueba and Remco C. Veltkamp and Friedrich Förster and Xiao Wang and Daisuke Kihara and Emmanuel Moebel and Nguyen P. Nguyen and Tommi White and Filiz Bunyak and Giorgos Papoulias and Stavros Gerolymatos and Evangelia I. Zacharaki and Konstantinos Moustakas and Xiangrui Zeng and Sinuo Liu and Min Xu and Yaoyu Wang and Cheng Chen and Xuefeng Cui and Fa Zhang},
  journal= {arXiv preprint arXiv:2203.10035},
  year   = {2022}
}

Comments

Workshop version of the paper can be found here: https://diglib.eg.org/handle/10.2312/3dor20211307

R2 v1 2026-06-24T10:18:35.084Z