Self-supervised learning for macromolecular structure classification based on cryo-electron tomograms

Macromolecular structure classification from cryo-electron tomography (cryo-ET) data is important for understanding macro-molecular dynamics. It has a wide range of applications and is essential in enhancing our knowledge of the sub-cellular environment. However, a major limitation has been insuffic...

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Veröffentlicht in:Frontiers in physiology 2022-08, Vol.13, p.957484-957484
Hauptverfasser: Gupta, Tarun, He, Xuehai, Uddin, Mostofa Rafid, Zeng, Xiangrui, Zhou, Andrew, Zhang, Jing, Freyberg, Zachary, Xu, Min
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Sprache:eng
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Zusammenfassung:Macromolecular structure classification from cryo-electron tomography (cryo-ET) data is important for understanding macro-molecular dynamics. It has a wide range of applications and is essential in enhancing our knowledge of the sub-cellular environment. However, a major limitation has been insufficient labelled cryo-ET data. In this work, we use Contrastive Self-supervised Learning (CSSL) to improve the previous approaches for macromolecular structure classification from cryo-ET data with limited labels. We first pretrain an encoder with unlabelled data using CSSL and then fine-tune the pretrained weights on the downstream classification task. To this end, we design a cryo-ET domain-specific data-augmentation pipeline. The benefit of augmenting cryo-ET datasets is most prominent when the original dataset is limited in size. Overall, extensive experiments performed on real and simulated cryo-ET data in the semi-supervised learning setting demonstrate the effectiveness of our approach in macromolecular labeling and classification.
ISSN:1664-042X
1664-042X
DOI:10.3389/fphys.2022.957484