Collaborative Unsupervised Domain Adaptation for Medical Image Diagnosis
- URL: http://arxiv.org/abs/2007.07222v1
- Date: Sun, 5 Jul 2020 11:49:17 GMT
- Title: Collaborative Unsupervised Domain Adaptation for Medical Image Diagnosis
- Authors: Yifan Zhang, Ying Wei, Qingyao Wu, Peilin Zhao, Shuaicheng Niu,
Junzhou Huang, Mingkui Tan
- Abstract summary: We seek to exploit rich labeled data from relevant domains to help the learning in the target task via Unsupervised Domain Adaptation (UDA)
Unlike most UDA methods that rely on clean labeled data or assume samples are equally transferable, we innovatively propose a Collaborative Unsupervised Domain Adaptation algorithm.
We theoretically analyze the generalization performance of the proposed method, and also empirically evaluate it on both medical and general images.
- Score: 102.40869566439514
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning based medical image diagnosis has shown great potential in
clinical medicine. However, it often suffers two major difficulties in
real-world applications: 1) only limited labels are available for model
training, due to expensive annotation costs over medical images; 2) labeled
images may contain considerable label noise (e.g., mislabeling labels) due to
diagnostic difficulties of diseases. To address these, we seek to exploit rich
labeled data from relevant domains to help the learning in the target task via
{Unsupervised Domain Adaptation} (UDA). Unlike most UDA methods that rely on
clean labeled data or assume samples are equally transferable, we innovatively
propose a Collaborative Unsupervised Domain Adaptation algorithm, which
conducts transferability-aware adaptation and conquers label noise in a
collaborative way. We theoretically analyze the generalization performance of
the proposed method, and also empirically evaluate it on both medical and
general images. Promising experimental results demonstrate the superiority and
generalization of the proposed method.
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