论文标题
通过知识转移增强非质量乳房超声癌分类
Enhancing Non-mass Breast Ultrasound Cancer Classification With Knowledge Transfer
论文作者
论文摘要
在基于深度神经网络(DNN)的肿块乳房超声(BUS)图像的诊断中取得了很多进展。但是,由于数据有限,非质量病变的研究较少。基于这样的见解:质量数据足够,并且与基于超声图像的病变的非质量数据共享相同的知识结构,我们提出了一个新颖的传输学习框架,以增强DNN模型对非大型总线的普遍性。具体来说,我们使用共享的DNN培训了共享的非质量和质量数据。在输入和输出空间中不同边缘分布的先验之后,我们在拟议的转移学习框架中采用了两种域对齐策略,并以捕获特定领域的分布的洞察力来解决域转移问题。此外,我们提出了一个称为CrossMix的跨域语义通用数据生成模块,以恢复训练数据中未介绍的非质量和质量数据之间的缺失分布。内部数据集上的实验结果表明,通过我们的框架训练有组合数据的DNN模型与直接在非质量数据上进行培训相比,非质量总线的恶性预测任务提高了10%的AUC。
Much progress has been made in the deep neural network (DNN) based diagnosis of mass lesions breast ultrasound (BUS) images. However, the non-mass lesion is less investigated because of the limited data. Based on the insight that mass data is sufficient and shares the same knowledge structure with non-mass data of identifying the malignancy of a lesion based on the ultrasound image, we propose a novel transfer learning framework to enhance the generalizability of the DNN model for non-mass BUS with the help of mass BUS. Specifically, we train a shared DNN with combined non-mass and mass data. With the prior of different marginal distributions in input and output space, we employ two domain alignment strategies in the proposed transfer learning framework with the insight of capturing domain-specific distribution to address the issue of domain shift. Moreover, we propose a cross-domain semantic-preserve data generation module called CrossMix to recover the missing distribution between non-mass and mass data that is not presented in training data. Experimental results on an in-house dataset demonstrate that the DNN model trained with combined data by our framework achieves a 10% improvement in AUC on the malignancy prediction task of non-mass BUS compared to training directly on non-mass data.