Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Leveraging Undiagnosed Data for Glaucoma Classification with Teacher-Student Learning

About

Recently, deep learning has been adopted to the glaucoma classification task with performance comparable to that of human experts. However, a well trained deep learning model demands a large quantity of properly labeled data, which is relatively expensive since the accurate labeling of glaucoma requires years of specialist training. In order to alleviate this problem, we propose a glaucoma classification framework which takes advantage of not only the properly labeled images, but also undiagnosed images without glaucoma labels. To be more specific, the proposed framework is adapted from the teacher-student-learning paradigm. The teacher model encodes the wrapped information of undiagnosed images to a latent feature space, meanwhile the student model learns from the teacher through knowledge transfer to improve the glaucoma classification. For the model training procedure, we propose a novel training strategy that simulates the real-world teaching practice named as 'Learning To Teach with Knowledge Transfer (L2T-KT)', and establish a 'Quiz Pool' as the teacher's optimization target. Experiments show that the proposed framework is able to utilize the undiagnosed data effectively to improve the glaucoma prediction performance.

Junde Wu, Shuang Yu, Wenting Chen, Kai Ma, Rao Fu, Hanruo Liu, Xiaoguang Di, Yefeng Zheng• 2020

Related benchmarks

TaskDatasetResultRank
DiagnosisGlaucoma (hetero)
Accuracy79.95
10
DiagnosisGlaucoma homo
Accuracy80.2
10
DiagnosisThyroid Cancer (hetero)
Accuracy83.89
9
DiagnosisMelanoma (hetero)
Acc82.06
9
DiagnosisThyroid Cancer (homo)
Accuracy0.8149
9
DiagnosisMelanoma homo
Accuracy79.34
9
Showing 6 of 6 rows

Other info

Follow for update