Hybrid Deep Learning Gaussian Process for Diabetic Retinopathy Diagnosis and Uncertainty Quantification Chapter

abstract

  • Diabetic Retinopathy (DR) is one of the microvascular complications of Diabetes Mellitus, which remains as one of the leading causes of blindness worldwide. Computational models based on Convolutional Neural Networks represent the state of the art for the automatic detection of DR using eye fundus images. Most of the current work address this problem as a binary classification task. However, including the grade estimation and quantification of predictions uncertainty can potentially increase the robustness of the model. In this paper, a hybrid Deep Learning-Gaussian process method for DR diagnosis and uncertainty quantification is presented. This method combines the representational power of deep learning, with the ability to generalize from small datasets of Gaussian process models

publication date

  • 2020-11-20

keywords

  • Binary Classification
  • Complications
  • Computational Model
  • Deep learning
  • Diabetes Mellitus
  • Gaussian Model
  • Gaussian Process
  • Generalise
  • Hybrid Learning
  • Learning
  • Learning Process
  • Medical problems
  • Model
  • Model-based
  • Neural Networks
  • Neural networks
  • Prediction
  • Process Model
  • Quantification
  • Robustness
  • Uncertainty
  • Uncertainty Quantification

ISBN

  • 978-3-030-63418-6

number of pages

  • 10

start page

  • 206

end page

  • 215