Abstract

Since the brain is the human body’s primary command and control center, brain cancer is one of the most dangerous cancers. Automatic segmentation of brain tumors from multi-modal images is important in diagnosis and treatment. Due to the difficulties in obtaining multi-modal paired images in clinical practice, recent studies segment brain tumors solely relying on unpaired images and discarding the available paired images. Although these models solve the dependence on paired images, they cannot fully exploit the complementary information from different modalities, resulting in low unimodal segmentation accuracy. Hence, this work studies the unimodal segmentation with privileged semi-paired images, i.e., limited paired images are introduced to the training phase. Specifically, we present a novel two-step (intra-modality and inter-modality) curriculum disentanglement learning framework. The modality-specific style codes describe the attenuation of tissue features and image contrast, and modality-invariant content codes contain anatomical and functional information extracted from the input images. Besides, we address the problem of unthorough decoupling by introducing constraints on the style and content spaces. Experiments on the BraTS2020 dataset highlight that our model outperforms the competing models on unimodal segmentation, achieving average dice scores of 82.91%, 72.62%, and 54.80% for WT (the whole tumor), TC (the tumor core), and ET (the enhancing tumor), respectively. Finally, we further evaluate our model’s variable multi-modal brain tumor segmentation performance by introducing a fusion block (TFusion). The experimental results reveal that our model achieves the best WT segmentation performance for all 15 possible modality combinations with 87.31% average accuracy. In summary, we propose a curriculum disentanglement learning framework for unimodal segmentation with privileged semi-paired images. Moreover, the benefits of the improved unimodal segmentation extend to variable multi-modal segmentation, demonstrating that improving the unimodal segmentation performance is significant for brain tumor segmentation with missing modalities. Our code is available at https://github.com/scut-cszcl/SpBTS.

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