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VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image.

Publication ,  Journal Article
Liu, J; Xu, S; He, P; Wu, S; Luo, X; Deng, Y; Huang, H
Published in: Biophysical journal
February 2024

In recent years, advancements in retinal image analysis, driven by machine learning and deep learning techniques, have enhanced disease detection and diagnosis through automated feature extraction. However, challenges persist, including limited data set diversity due to privacy concerns and imbalanced sample pairs, hindering effective model training. To address these issues, we introduce the vessel and style guided generative adversarial network (VSG-GAN), an innovative algorithm building upon the foundational concept of GAN. In VSG-GAN, a generator and discriminator engage in an adversarial process to produce realistic retinal images. Our approach decouples retinal image generation into distinct modules: the vascular skeleton and background style. Leveraging style transformation and GAN inversion, our proposed hierarchical variational autoencoder module generates retinal images with diverse morphological traits. In addition, the spatially adaptive denormalization module ensures consistency between input and generated images. We evaluate our model on MESSIDOR and RITE data sets using various metrics, including structural similarity index measure, inception score, Fréchet inception distance, and kernel inception distance. Our results demonstrate the superiority of VSG-GAN, outperforming existing methods across all evaluation assessments. This underscores its effectiveness in addressing data set limitations and imbalances. Our algorithm provides a novel solution to challenges in retinal image analysis by offering diverse and realistic retinal image generation. Implementing the VSG-GAN augmentation approach on downstream diabetic retinopathy classification tasks has shown enhanced disease diagnosis accuracy, further advancing the utility of machine learning in this domain.

Duke Scholars

Published In

Biophysical journal

DOI

EISSN

1542-0086

ISSN

0006-3495

Publication Date

February 2024

Start / End Page

S0006-3495(24)00139-5

Related Subject Headings

  • Biophysics
  • 51 Physical sciences
  • 34 Chemical sciences
  • 31 Biological sciences
  • 06 Biological Sciences
  • 03 Chemical Sciences
  • 02 Physical Sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Liu, J., Xu, S., He, P., Wu, S., Luo, X., Deng, Y., & Huang, H. (2024). VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image. Biophysical Journal, S0006-3495(24)00139-5. https://doi.org/10.1016/j.bpj.2024.02.019
Liu, Junjie, Shixin Xu, Ping He, Sirong Wu, Xi Luo, Yuhui Deng, and Huaxiong Huang. “VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image.Biophysical Journal, February 2024, S0006-3495(24)00139-5. https://doi.org/10.1016/j.bpj.2024.02.019.
Liu J, Xu S, He P, Wu S, Luo X, Deng Y, et al. VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image. Biophysical journal. 2024 Feb;S0006-3495(24)00139-5.
Liu, Junjie, et al. “VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image.Biophysical Journal, Feb. 2024, pp. S0006-3495(24)00139-5. Epmc, doi:10.1016/j.bpj.2024.02.019.
Liu J, Xu S, He P, Wu S, Luo X, Deng Y, Huang H. VSG-GAN: A high-fidelity image synthesis method with semantic manipulation in retinal fundus image. Biophysical journal. 2024 Feb;S0006-3495(24)00139–5.
Journal cover image

Published In

Biophysical journal

DOI

EISSN

1542-0086

ISSN

0006-3495

Publication Date

February 2024

Start / End Page

S0006-3495(24)00139-5

Related Subject Headings

  • Biophysics
  • 51 Physical sciences
  • 34 Chemical sciences
  • 31 Biological sciences
  • 06 Biological Sciences
  • 03 Chemical Sciences
  • 02 Physical Sciences