• Media type: E-Article
  • Title: Evaluation of Swin Transformer and knowledge transfer for denoising of super-resolution structured illumination microscopy data
  • Contributor: Shah, Zafran Hussain; Müller, Marcel; Hübner, Wolfgang; Wang, Tung-Cheng; Telman, Daniel; Huser, Thomas; Schenck, Wolfram
  • Published: Oxford University Press (OUP), 2024
  • Published in: GigaScience, 13 (2024)
  • Language: English
  • DOI: 10.1093/gigascience/giad109
  • ISSN: 2047-217X
  • Keywords: Computer Science Applications ; Health Informatics
  • Origination:
  • Footnote:
  • Description: 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.
  • Access State: Open Access