FundusQ-Net: A regression quality assessment deep learning algorithm for fundus images quality grading

Comput Methods Programs Biomed. 2023 Sep:239:107522. doi: 10.1016/j.cmpb.2023.107522. Epub 2023 May 26.

Abstract

Objective: Ophthalmological pathologies such as glaucoma, diabetic retinopathy and age-related macular degeneration are major causes of blindness and vision impairment. There is a need for novel decision support tools that can simplify and speed up the diagnosis of these pathologies. A key step in this process is to automatically estimate the quality of the fundus images to make sure these are interpretable by a human operator or a machine learning model. We present a novel fundus image quality scale and deep learning (DL) model that can estimate fundus image quality relative to this new scale.

Methods: A total of 1245 images were graded for quality by two ophthalmologists within the range 1-10, with a resolution of 0.5. A DL regression model was trained for fundus image quality assessment. The architecture used was Inception-V3. The model was developed using a total of 89,947 images from 6 databases, of which 1245 were labeled by the specialists and the remaining 88,702 images were used for pre-training and semi-supervised learning. The final DL model was evaluated on an internal test set (n=209) as well as an external test set (n=194).

Results: The final DL model, denoted FundusQ-Net, achieved a mean absolute error of 0.61 (0.54-0.68) on the internal test set. When evaluated as a binary classification model on the public DRIMDB database as an external test set the model obtained an accuracy of 99%.

Significance: the proposed algorithm provides a new robust tool for automated quality grading of fundus images.

Keywords: Deep learning; Fundus image; Quality assessment; Semi supervised learning.

MeSH terms

  • Algorithms
  • Deep Learning*
  • Fundus Oculi
  • Humans
  • Machine Learning
  • Macular Degeneration* / diagnostic imaging