Title of article :
An Active Learning Classifier for Further Reducing Diabetic Retinopathy Screening System Cost
Author/Authors :
Zhang, Yinan School of Computer Science and Technology - Beijing Institute of Technology - Beijing, China , An, Mingqiang Tianjin University of Science and Technology - Tianjin, China
Abstract :
Diabetic retinopathy (DR) screening system raises a financial problem. For further reducing DR screening cost, an active learning
classifier is proposed in this paper. Our approach identifies retinal images based on features extracted by anatomical part recognition
and lesion detection algorithms. Kernel extreme learning machine (KELM) is a rapid classifier for solving classification problems
in high dimensional space. Both active learning and ensemble technique elevate performance of KELM when using small training
dataset.The committee only proposes necessary manual work to doctor for saving cost. On the publicly available Messidor database,
our classifier is trained with 20%–35% of labeled retinal images and comparative classifiers are trained with 80% of labeled retinal
images. Results show that our classifier can achieve better classification accuracy than Classification and Regression Tree, radial
basis function SVM, Multilayer Perceptron SVM, Linear SVM, and 𝐾 Nearest Neighbor. Empirical experiments suggest that our
active learning classifier is efficient for further reducing DR screening cost.
Keywords :
System , Classifier , Retinopathy , KELM
Journal title :
Computational and Mathematical Methods in Medicine