Dual-Teacher: Integrating Intra-domain and Inter-domain Teachers for
Annotation-efficient Cardiac Segmentation
- URL: http://arxiv.org/abs/2007.06279v1
- Date: Mon, 13 Jul 2020 10:00:44 GMT
- Title: Dual-Teacher: Integrating Intra-domain and Inter-domain Teachers for
Annotation-efficient Cardiac Segmentation
- Authors: Kang Li, Shujun Wang, Lequan Yu, and Pheng-Ann Heng
- Abstract summary: We propose a novel semi-supervised domain adaptation approach, namely Dual-Teacher.
The student model learns the knowledge of unlabeled target data and labeled source data by two teacher models.
We demonstrate that our approach is able to concurrently utilize unlabeled data and cross-modality data with superior performance.
- Score: 65.81546955181781
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Medical image annotations are prohibitively time-consuming and expensive to
obtain. To alleviate annotation scarcity, many approaches have been developed
to efficiently utilize extra information, e.g.,semi-supervised learning further
exploring plentiful unlabeled data, domain adaptation including multi-modality
learning and unsupervised domain adaptation resorting to the prior knowledge
from additional modality. In this paper, we aim to investigate the feasibility
of simultaneously leveraging abundant unlabeled data and well-established
cross-modality data for annotation-efficient medical image segmentation. To
this end, we propose a novel semi-supervised domain adaptation approach, namely
Dual-Teacher, where the student model not only learns from labeled target data
(e.g., CT), but also explores unlabeled target data and labeled source data
(e.g., MR) by two teacher models. Specifically, the student model learns the
knowledge of unlabeled target data from intra-domain teacher by encouraging
prediction consistency, as well as the shape priors embedded in labeled source
data from inter-domain teacher via knowledge distillation. Consequently, the
student model can effectively exploit the information from all three data
resources and comprehensively integrate them to achieve improved performance.
We conduct extensive experiments on MM-WHS 2017 dataset and demonstrate that
our approach is able to concurrently utilize unlabeled data and cross-modality
data with superior performance, outperforming semi-supervised learning and
domain adaptation methods with a large margin.
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