Evaluation of Swin Transformer and knowledge transfer for denoising of super-resolution structured illumination microscopy data.

IF 11.8 2区 生物学 Q1 MULTIDISCIPLINARY SCIENCES GigaScience Pub Date : 2024-01-02 DOI:10.1093/gigascience/giad109
Zafran Hussain Shah, Marcel Müller, Wolfgang Hübner, Tung-Cheng Wang, Daniel Telman, Thomas Huser, Wolfram Schenck
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引用次数: 0

Abstract

Background: Convolutional neural network (CNN)-based methods have shown excellent performance in denoising and reconstruction of super-resolved structured illumination microscopy (SR-SIM) data. Therefore, CNN-based architectures have been the focus of existing studies. However, Swin Transformer, an alternative and recently proposed deep learning-based image restoration architecture, has not been fully investigated for denoising SR-SIM images. Furthermore, it has not been fully explored how well transfer learning strategies work for denoising SR-SIM images with different noise characteristics and recorded cell structures for these different types of deep learning-based methods. Currently, the scarcity of publicly available SR-SIM datasets limits the exploration of the performance and generalization capabilities of deep learning methods.

Results: In this work, we present SwinT-fairSIM, a novel method based on the Swin Transformer for restoring SR-SIM images with a low signal-to-noise ratio. The experimental results show that SwinT-fairSIM outperforms previous CNN-based denoising methods. Furthermore, as a second contribution, two types of transfer learning-namely, direct transfer and fine-tuning-were benchmarked in combination with SwinT-fairSIM and CNN-based methods for denoising SR-SIM data. Direct transfer did not prove to be a viable strategy, but fine-tuning produced results comparable to conventional training from scratch while saving computational time and potentially reducing the amount of training data required. As a third contribution, we publish four datasets of raw SIM images and already reconstructed SR-SIM images. These datasets cover two different types of cell structures, tubulin filaments and vesicle structures. Different noise levels are available for the tubulin filaments.

Conclusion: The SwinT-fairSIM method is well suited for denoising SR-SIM images. By fine-tuning, already trained models can be easily adapted to different noise characteristics and cell structures. Furthermore, the provided datasets are structured in a way that the research community can readily use them for research on denoising, super-resolution, and transfer learning strategies.

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评估用于超分辨率结构照明显微镜数据去噪的斯温变换器和知识转移。
背景:基于卷积神经网络(CNN)的方法在超分辨结构照明显微镜(SR-SIM)数据的去噪和重建方面表现出色。因此,基于 CNN 的架构一直是现有研究的重点。然而,最近提出的另一种基于深度学习的图像修复架构 Swin Transformer 还没有被充分研究用于 SR-SIM 图像的去噪。此外,对于这些不同类型的基于深度学习的方法,如何利用迁移学习策略对具有不同噪声特征和记录单元结构的 SR-SIM 图像进行去噪,还没有进行充分的探讨。目前,公开可用的 SR-SIM 数据集的稀缺性限制了对深度学习方法的性能和泛化能力的探索:在这项工作中,我们提出了 SwinT-fairSIM,这是一种基于 Swin 变换器的新方法,用于还原信噪比较低的 SR-SIM 图像。实验结果表明,SwinT-fairSIM 优于之前基于 CNN 的去噪方法。此外,作为第二项贡献,两种类型的迁移学习--即直接迁移和微调--与 SwinT-fairSIM 和基于 CNN 的 SR-SIM 数据去噪方法相结合进行了基准测试。事实证明,直接迁移不是一种可行的策略,但微调的结果与传统的从头开始训练的结果相当,同时节省了计算时间,并有可能减少所需的训练数据量。第三个贡献是,我们发布了四个原始 SIM 图像和已重建 SR-SIM 图像的数据集。这些数据集涵盖两种不同类型的细胞结构,即微管蛋白丝和囊泡结构。对于微管蛋白丝,有不同的噪声水平:结论:SwinT-fairSIM 方法非常适合 SR-SIM 图像去噪。通过微调,已经训练好的模型可以很容易地适应不同的噪声特征和细胞结构。此外,所提供的数据集结构合理,研究界可随时将其用于去噪、超分辨率和迁移学习策略的研究。
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来源期刊
GigaScience
GigaScience MULTIDISCIPLINARY SCIENCES-
CiteScore
15.50
自引率
1.10%
发文量
119
审稿时长
1 weeks
期刊介绍: GigaScience seeks to transform data dissemination and utilization in the life and biomedical sciences. As an online open-access open-data journal, it specializes in publishing "big-data" studies encompassing various fields. Its scope includes not only "omic" type data and the fields of high-throughput biology currently serviced by large public repositories, but also the growing range of more difficult-to-access data, such as imaging, neuroscience, ecology, cohort data, systems biology and other new types of large-scale shareable data.
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