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Breast tumor classification through learning from noisy labeled ultrasound images

机译:乳腺肿瘤分类通过从嘈杂的噪音标记的超声图像进行分类

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摘要

Purpose To train deep learning models to differentiate benign and malignant breast tumors in ultrasound images, we need to collect many training samples with clear labels. In general, biopsy results can be used as benign/malignant labels. However, most clinical samples generally do not have biopsy results. Previous works have proposed generating benign/malignant labels according to Breast Imaging, Reporting and Data System (BI‐RADS) ratings. However, this approach will cause noisy labels, which means that the benign/malignant labels produced from BI‐RADS diagnoses may be inconsistent with the ground truths. Consequently, deep models will overfit the noisy labels and hence obtain poor generalization performance. In this work, we mainly focus on how to reduce the negative effect of noisy labels when they are used to train breast tumor classification models. Methods We propose an effective approach called noise filter network (NF‐Net) to address the problem of noisy labels when training breast tumor classification models. Specifically, to prevent deep models from overfitting the noisy labels, we propose incorporating two softmax layers for classification. Additionally, to strengthen the effect of clean labels, we design a teacher–student module for distilling the knowledge of clean labels. Results We conduct extensive comparisons with the existing works on addressing noisy labels. Our method achieves a classification accuracy of 73%, with a precision of 69%, recall of 80%, and F1‐score of 0.74. This result is significantly better than those of the existing state‐of‐the‐art works on addressing noisy labels. Conclusions This work provides a means to overcome the label shortage problem in training breast tumor classification models. Specifically, we can generate benign/malignant labels according to the BI‐RADS ratings. Although this approach will cause noisy labels, the design of NF‐Net can effectively reduce the negative effect of such labels.
机译:目的要培训深入学习模型,以区分超声图像中的良性和恶性乳腺肿瘤,我们需要收集许多具有透明标签的培训样本。通常,活组织检查结果可用作良性/恶性标记。然而,大多数临床样本通常没有活组织检查结果。以前的作品提出了根据乳房成像,报告和数据系统(BI-RADS)评级产生良性/恶性标签。然而,这种方法将导致嘈杂的标签,这意味着由Bi-Rads诊断产生的良性/恶性标签可能与地面真理不一致。因此,深层模型将过度造成嘈杂的标签,因此获得较差的概括性表现。在这项工作中,我们主要关注如何在培训乳房肿瘤分类模型时减少嘈杂标签的负面影响。方法提出一种有效的方法,称为噪声滤波器网络(NF-NET)来解决培训乳房肿瘤分类模型时噪声标签的问题。具体而言,为了防止深度模型过度装过嘈杂的标签,我们建议包含两个Softmax层进行分类。此外,为了加强清洁标签的效果,我们设计一名教师学生模块,用于蒸馏清洁标签的知识。结果我们对现有的工作进行了广泛的比较,就解决了嘈杂的标签。我们的方法实现了73%的分类准确度,精度为69%,召回80%,F1分数为0.74。这一结果明显优于现有的现有工作原创性工作来解决嘈杂的标签。结论这项工作提供了一种克服乳房肿瘤分类模型中标签短缺问题的手段。具体地,我们可以根据Bi-RAD级别产生良性/恶性标签。虽然这种方法将导致嘈杂的标签,但NF-NET的设计可以有效地降低这些标签的负面影响。

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