# Swin-cryoEM: Multi-class cryo-electron micrographs single particle mixed detection method

**Authors:** Kun Fang, JinLing Wang, QingFeng Chen, Xian Feng, YouMing Qu, Jiachi Shi, Zhuomin Xu

PMC · DOI: 10.1371/journal.pone.0298287 · PLOS ONE · 2024-04-09

## TL;DR

This paper introduces Swin-cryoEM, a new method for detecting multiple types of single particles in cryo-electron micrographs, improving accuracy and adaptability.

## Contribution

The novel contribution is a cryo-EM single particle detection model using a Swin Transformer with channel self-attention and MixUp augmentation for better adaptability.

## Key findings

- Swin-cryoEM achieves an optimal Average Precision of 95.5% in training.
- The model outperforms Faster R-CNN and YOLOv5 in single particle detection on cryo-EM datasets.
- The method improves noise tolerance and generalization for mixed particle detection.

## Abstract

Cryo-electron micrograph images have various characteristics such as varying sizes, shapes, and distribution densities of individual particles, severe background noise, high levels of impurities, irregular shapes, blurred edges, and similar color to the background. How to demonstrate good adaptability in the field of image vision by picking up single particles from multiple types of cryo-electron micrographs is currently a challenge in the field of cryo-electron micrographs. This paper combines the characteristics of the MixUp hybrid enhancement algorithm, enhances the image feature information in the pre-processing stage, builds a feature perception network based on the channel self-attention mechanism in the forward network of the Swin Transformer model network, achieving adaptive adjustment of self-attention mechanism between different single particles, increasing the network’s tolerance to noise, Incorporating PReLU activation function to enhance information exchange between pixel blocks of different single particles, and combining the Cross-Entropy function with the softmax function to construct a classification network based on Swin Transformer suitable for cryo-electron micrograph single particle detection model (Swin-cryoEM), achieving mixed detection of multiple types of single particles. Swin-cryoEM algorithm can better solve the problem of good adaptability in picking single particles of many types of cryo-electron micrographs, improve the accuracy and generalization ability of the single particle picking method, and provide high-quality data support for the three-dimensional reconstruction of a single particle. In this paper, ablation experiments and comparison experiments were designed to evaluate and compare Swin-cryoEM algorithms in detail and comprehensively on multiple datasets. The Average Precision is an important evaluation index of the evaluation model, and the optimal Average Precision reached 95.5% in the training stage Swin-cryoEM, and the single particle picking performance was also superior in the prediction stage. This model inherits the advantages of the Swin Transformer detection model and is superior to mainstream models such as Faster R-CNN and YOLOv5 in terms of the single particle detection capability of cryo-electron micrographs.

## Full-text entities

- **Diseases:** Noise (MESH:D014012)
- **Chemicals:** EMPIAR-10088 (-)
- **Species:** Homo sapiens (human, species) [taxon 9606], Nora virus [taxon 363716], Plasmodium falciparum (malaria parasite P. falciparum, species) [taxon 5833]
- **Mutations:** T20S
- **Cell lines:** T20S proteasome — Homo sapiens (Human), Lung adenocarcinoma, Cancer cell line (CVCL_B1H2), EMPIAR-10153 — Homo sapiens (Human), Transformed cell line (CVCL_AJ23)

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## Figures

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## References

31 references — full list in the complete paper: https://tomesphere.com/paper/PMC11003668/full.md

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Source: https://tomesphere.com/paper/PMC11003668