Deep learning generalization for diabetic retinopathy staging from fundus images.

Journal: Physiological measurement
Published Date:

Abstract

. Diabetic retinopathy (DR) is a serious diabetes complication that can lead to vision loss, making timely identification crucial. Existing data-driven algorithms for DR staging from digital fundus images (DFIs) often struggle with generalization due to distribution shifts between training and target domains.. To address this, DRStageNet, a deep learning model, was developed using six public and independent datasets with 91 984 DFIs from diverse demographics. Five pretrained self-supervised vision transformers (ViTs) were benchmarked, with the best further trained using a multi-source domain (MSD) fine-tuning strategy.. DINOv2 showed a 27.4% improvement in L-Kappa versus other pretrained ViT. MSD fine-tuning improved performance in four of five target domains. The error analysis revealing 60% of errors due to incorrect labels, 77.5% of which were correctly classified by DRStageNet.. We developed DRStageNet, a DL model for DR, designed to accurately stage the condition while addressing the challenge of generalizing performance across target domains. The model and explainability heatmaps are available atwww.aimlab-technion.com/lirot-ai.

Authors

  • Yevgeniy Men
    Andrew and Erna Viterbi Faculty of Electrical & Computer Engineering, Technion, Israel Institute of Technology, Haifa 3200003, Israel.
  • Jonathan Fhima
    Faculty of Biomedical Engineering, Technion-IIT, Haifa, Israel.
  • Leo Anthony Celi
    Massachusetts Institute of Technology, Cambridge, MA, USA.
  • Lucas Zago Ribeiro
    São Paulo Federal University, São Paulo, SP, Brazil.
  • Luis Filipe Nakayama
    São Paulo Federal University, São Paulo, SP, Brazil nakayama.luis@gmail.com.
  • Joachim A Behar
    Faculty of Biomedical Engineering, Technion, Israel Institute of Technology, Haifa, Israel.