HRCUNet: Hierarchical Region Contrastive Learning for Segmentation of Breast Tumors in DCE-MRI

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Jiezhou He, Zhiming Luo, Wei Peng, Songzhi Su, Xue Zhao, Guojun Zhang, Shaozi Li
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引用次数: 0

Abstract

Segmenting breast tumors from dynamic contrast-enhanced magnetic resonance images is a critical step in the early detection and diagnosis of breast cancer. However, this task becomes significantly more challenging due to the diverse shapes and sizes of tumors, which make it difficult to establish a unified perception field for modeling them. Moreover, tumor regions are often subtle or imperceptible during early detection, exacerbating the issue of extreme class imbalance. This imbalance can lead to biased training and challenge accurately segmenting tumor regions from the predominant normal tissues. To address these issues, we propose a hierarchical region contrastive learning approach for breast tumor segmentation. Our approach introduces a novel hierarchical region contrastive learning loss function that addresses the class imbalance problem. This loss function encourages the model to create a clear separation between feature embeddings by maximizing the inter-class margin and minimizing the intra-class distance across different levels of the feature space. In addition, we design a novel Attention-based 3D Multi-scale Feature Fusion Residual Module to explore more granular multi-scale representations to improve the feature learning ability of tumors. Extensive experiments on two breast DCE-MRI datasets demonstrate that the proposed algorithm is more competitive against several state-of-the-art approaches under different segmentation metrics.

HRCUNet:用于 DCE-MRI 中乳腺肿瘤分离的分层区域对比学习
从动态增强磁共振图像中分割乳腺肿瘤是早期发现和诊断乳腺癌的关键步骤。然而,由于肿瘤的形状和大小不同,很难建立统一的感知场来对其进行建模,因此这项任务变得更加具有挑战性。此外,在早期发现时,肿瘤区域往往是微妙的或难以察觉的,这加剧了极端类别不平衡的问题。这种不平衡会导致有偏差的训练和挑战准确分割肿瘤区域从主要的正常组织。为了解决这些问题,我们提出了一种分层区域对比学习方法用于乳腺肿瘤分割。我们的方法引入了一种新的分层区域对比学习损失函数来解决类不平衡问题。这个损失函数鼓励模型通过最大化类间边界和最小化跨不同级别特征空间的类内距离来创建特征嵌入之间的明确分离。此外,我们设计了一种新颖的基于注意力的三维多尺度特征融合残差模块,探索更细粒度的多尺度表征,以提高肿瘤的特征学习能力。在两个乳腺DCE-MRI数据集上的大量实验表明,该算法在不同的分割指标下比几种最先进的方法更具竞争力。
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来源期刊
Concurrency and Computation-Practice & Experience
Concurrency and Computation-Practice & Experience 工程技术-计算机:理论方法
CiteScore
5.00
自引率
10.00%
发文量
664
审稿时长
9.6 months
期刊介绍: Concurrency and Computation: Practice and Experience (CCPE) publishes high-quality, original research papers, and authoritative research review papers, in the overlapping fields of: Parallel and distributed computing; High-performance computing; Computational and data science; Artificial intelligence and machine learning; Big data applications, algorithms, and systems; Network science; Ontologies and semantics; Security and privacy; Cloud/edge/fog computing; Green computing; and Quantum computing.
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