Pre-pro is a fast pre-processor for single-particle cryo-EM by enhancing 2D classification
2D classification plays a pivotal role in analyzing single particle cryo-electron microscopy images. Here, we introduce a simple and loss-less pre-processor that incorporates a fast dimension-reduction (2SDR) de-noiser to enhance 2D classification. By implementing this 2SDR pre-processor prior to a...
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Veröffentlicht in: | Communications biology 2020-09, Vol.3 (1), p.508-508, Article 508 |
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Sprache: | eng |
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Zusammenfassung: | 2D classification plays a pivotal role in analyzing single particle cryo-electron microscopy images. Here, we introduce a simple and loss-less pre-processor that incorporates a fast dimension-reduction (2SDR) de-noiser to enhance 2D classification. By implementing this 2SDR pre-processor prior to a representative classification algorithm like RELION and ISAC, we compare the performances with and without the pre-processor. Tests on multiple cryo-EM experimental datasets show the pre-processor can make classification faster, improve yield of good particles and increase the number of class-average images to generate better initial models. Testing on the nanodisc-embedded TRPV1 dataset with high heterogeneity using a 3D reconstruction workflow with an initial model from class-average images highlights the pre-processor improves the final resolution to 2.82 Å, close to 0.9 Nyquist. Those findings and analyses suggest the 2SDR pre-processor, of minimal cost, is widely applicable for boosting 2D classification, while its generalization to accommodate neural network de-noisers is envisioned.
Chung et al. introduce Pre-Pro as a loss-less pre-processor incorporating a fast dimension-reduction (2SDR) de-noiser to enhance 2D classification. Implementing it in representative classification algorithm like RELION and ISAC, they further demonstrate faster classification, improved quality of class-average images and yield of good particles which improve the final resolution. |
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ISSN: | 2399-3642 2399-3642 |
DOI: | 10.1038/s42003-020-01229-0 |