School of Medicine, Shanghai University, Shanghai 200444, China.
School of Computer Engineering and Science, Shanghai University, Shanghai 200444, China.
Curr Oncol. 2024 Aug 28;31(9):5057-5079. doi: 10.3390/curroncol31090374.
Multi-task learning (MTL) methods are widely applied in breast imaging for lesion area perception and classification to assist in breast cancer diagnosis and personalized treatment. A typical paradigm of MTL is the shared-backbone network architecture, which can lead to information sharing conflicts and result in the decline or even failure of the main task's performance. Therefore, extracting richer lesion features and alleviating information-sharing conflicts has become a significant challenge for breast cancer classification. This study proposes a novel Multi-Feature Fusion Multi-Task (MFFMT) model to effectively address this issue. Firstly, in order to better capture the local and global feature relationships of lesion areas, a Contextual Lesion Enhancement Perception (CLEP) module is designed, which integrates channel attention mechanisms with detailed spatial positional information to extract more comprehensive lesion feature information. Secondly, a novel Multi-Feature Fusion (MFF) module is presented. The MFF module effectively extracts differential features that distinguish between lesion-specific characteristics and the semantic features used for tumor classification, and enhances the common feature information of them as well. Experimental results on two public breast ultrasound imaging datasets validate the effectiveness of our proposed method. Additionally, a comprehensive study on the impact of various factors on the model's performance is conducted to gain a deeper understanding of the working mechanism of the proposed framework.
多任务学习(MTL)方法广泛应用于乳腺成像中的病变区域感知和分类,以辅助乳腺癌诊断和个性化治疗。MTL 的典型范例是共享骨干网络架构,它可能导致信息共享冲突,导致主要任务性能下降甚至失败。因此,提取更丰富的病变特征和缓解信息共享冲突已成为乳腺癌分类的重大挑战。本研究提出了一种新的多特征融合多任务(MFFMT)模型来有效解决这个问题。首先,为了更好地捕捉病变区域的局部和全局特征关系,设计了上下文病变增强感知(CLEP)模块,该模块将通道注意力机制与详细的空间位置信息集成在一起,以提取更全面的病变特征信息。其次,提出了一种新的多特征融合(MFF)模块。MFF 模块有效地提取了区分病变特征和用于肿瘤分类的语义特征的差异特征,并增强了它们的公共特征信息。在两个公共乳腺超声成像数据集上的实验结果验证了我们提出的方法的有效性。此外,还进行了对模型性能的各种因素的综合研究,以更深入地了解所提出框架的工作机制。