Bioengineering (Sep 2023)

Self-FI: Self-Supervised Learning for Disease Diagnosis in Fundus Images

  • Toan Duc Nguyen,
  • Duc-Tai Le,
  • Junghyun Bum,
  • Seongho Kim,
  • Su Jeong Song,
  • Hyunseung Choo

DOI
https://doi.org/10.3390/bioengineering10091089
Journal volume & issue
Vol. 10, no. 9
p. 1089

Abstract

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Self-supervised learning has been successful in computer vision, and its application to medical imaging has shown great promise. This study proposes a novel self-supervised learning method for medical image classification, specifically targeting ultra-wide-field fundus images (UFI). The proposed method utilizes contrastive learning to pre-train a deep learning model and then fine-tune it with a small set of labeled images. This approach reduces the reliance on labeled data, which is often limited and costly to obtain, and has the potential to improve disease detection in UFI. This method employs two contrastive learning techniques, namely bi-lateral contrastive learning and multi-modality pre-training, to form positive pairs using the data correlation. Bi-lateral learning fuses multiple views of the same patient’s images, and multi-modality pre-training leverages the complementary information between UFI and conventional fundus images (CFI) to form positive pairs. The results show that the proposed contrastive learning method achieves state-of-the-art performance with an area under the receiver operating characteristic curve (AUC) score of 86.96, outperforming other approaches. The findings suggest that self-supervised learning is a promising direction for medical image analysis, with potential applications in various clinical settings.

Keywords