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Deep Learning from Small Amount of Medical Data with Noisy Labels: A Meta-Learning Approach

2020-10-14 10:39:44
Görkem Algan, Ilkay Ulusoy, Şaban Gönül, Banu Turgut, Berker Bakbak

Abstract

Computer vision systems recently made a big leap thanks to deep neural networks. However, these systems require correctly labeled large datasets in order to be trained properly, which is very difficult to obtain for medical applications. Two main reasons for label noise in medical applications are the high complexity of the data and conflicting opinions of experts. Moreover, medical imaging datasets are commonly tiny, which makes each data very important in learning. As a result, if not handled properly, label noise significantly degrades the performance. Therefore, we propose a label-noise-robust learning algorithm that makes use of the meta-learning paradigm. We tested our proposed solution on retinopathy of prematurity (ROP) dataset with a very high label noise of 68%. Our results show that the proposed algorithm significantly improves the classification algorithm's performance in the presence of noisy labels.

Abstract (translated)

URL

https://arxiv.org/abs/2010.06939

PDF

https://arxiv.org/pdf/2010.06939.pdf


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