H-DenseFormer: An Efficient Hybrid Densely Connected Transformer for Multimodal Tumor Segmentation

Jun Shi, Hongyu Kan, Shulan Ruan, Ziqi Zhu, Minfan Zhao, Liang Qiao, Zhaohui Wang, Hong An, Xudong Xue
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引用次数: 1

Abstract

Recently, deep learning methods have been widely used for tumor segmentation of multimodal medical images with promising results. However, most existing methods are limited by insufficient representational ability, specific modality number and high computational complexity. In this paper, we propose a hybrid densely connected network for tumor segmentation, named H-DenseFormer, which combines the representational power of the Convolutional Neural Network (CNN) and the Transformer structures. Specifically, H-DenseFormer integrates a Transformer-based Multi-path Parallel Embedding (MPE) module that can take an arbitrary number of modalities as input to extract the fusion features from different modalities. Then, the multimodal fusion features are delivered to different levels of the encoder to enhance multimodal learning representation. Besides, we design a lightweight Densely Connected Transformer (DCT) block to replace the standard Transformer block, thus significantly reducing computational complexity. We conduct extensive experiments on two public multimodal datasets, HECKTOR21 and PI-CAI22. The experimental results show that our proposed method outperforms the existing state-of-the-art methods while having lower computational complexity. The source code is available at https://github.com/shijun18/H-DenseFormer.
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H-DenseFormer:一种高效的混合密集连接变压器用于多模态肿瘤分割
近年来,深度学习方法被广泛应用于多模态医学图像的肿瘤分割,并取得了良好的效果。然而,现有的方法大多存在表征能力不足、特定模态数和计算复杂度高等问题。在本文中,我们提出了一种混合密集连接网络用于肿瘤分割,称为H-DenseFormer,它结合了卷积神经网络(CNN)和Transformer结构的表示能力。具体来说,H-DenseFormer集成了一个基于变压器的多路径并行嵌入(MPE)模块,该模块可以将任意数量的模态作为输入,从不同的模态中提取融合特征。然后,将多模态融合特征传递到编码器的不同层次,以增强多模态学习表征。此外,我们设计了一个轻量级的密集连接变压器(DCT)模块来取代标准的变压器模块,从而大大降低了计算复杂度。我们在HECKTOR21和PI-CAI22两个公共多模态数据集上进行了广泛的实验。实验结果表明,该方法具有较低的计算复杂度,且性能优于现有的先进方法。源代码可从https://github.com/shijun18/H-DenseFormer获得。
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