Brain tumor segmentation (BTS) in magnetic resonance image (MRI) is crucial for brain tumor diagnosis, cancer management and research purposes. With the great success of the ten-year BraTS challenges as well as the advances of CNN and Transformer algorithms, a lot of outstanding BTS models have been proposed to tackle the difficulties of BTS in different technical aspects. However, existing studies hardly consider how to fuse the multi-modality images in a reasonable manner. In this paper, we leverage the clinical knowledge of how radiologists diagnose brain tumors from multiple MRI modalities and propose a clinical knowledge-driven brain tumor segmentation model, called CKD-TransBTS. Instead of directly concatenating all the modalities, we re-organize the input modalities by separating them into two groups according to the imaging principle of MRI. A dual-branch hybrid encoder with the proposed modality-correlated cross-attention block (MCCA) is designed to extract the multi-modality image features. The proposed model inherits the strengths from both Transformer and CNN with the local feature representation ability for precise lesion boundaries and long-range feature extraction for 3D volumetric images. To bridge the gap between Transformer and CNN features, we propose a Trans&CNN Feature Calibration block (TCFC) in the decoder. We compare the proposed model with five CNN-based models and six transformer-based models on the BraTS 2021 challenge dataset. Extensive experiments demonstrate that the proposed model achieves state-of-the-art brain tumor segmentation performance compared with all the competitors.
翻译:磁共振图像(磁共振图像)中的脑肿瘤分解(BTS)对于脑肿瘤诊断、癌症管理和研究目的至关重要。随着十年的BATS挑战的极大成功以及CNN和变异算法的进步,我们提出了许多杰出的BTS模型,以解决BTS在不同技术方面的困难。然而,现有的研究很少考虑如何以合理的方式结合多式图像。在本文中,我们利用临床知识,了解放射学家如何从多种MRI模式中诊断脑肿瘤,并提出临床知识驱动脑肿瘤分解模型,称为CKD-TransBTS。我们不是直接整合所有模式,而是根据MRI的成像原则,将输入模式模式分为两个组。一个双层混合编码器,与拟议的模式或相关交叉保管区块(MCA)旨在提取基于多种模式的图像特征。所有拟议模型都继承了变换器和CNNMN的优势,同时具有本地特征代表功能模型,即CKCD-Transpecial模型,用以在精确的 IMIS-Creal变形模型和长级图像中,并用IM-Creal-Creal-real-real-traction-tradeal 3-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-tracal pral pral pral pral pral pral pral 3 practal prismal pral practal pral pral press pral 3 practal press press pral-romamentalmental practal practal-s practal practal 3 practal practal-