Saini Manali, Hassanzadeh Sara, Musa Bushira, Fatemi Mostafa, Alizad Azra
Department of Radiology, Mayo Clinic College of Medicine and Science, Rochester, MN, 55905, USA.
Department of Physiology and Biomedical Engineering, Mayo Clinic College of Medicine and Science, Rochester, MN, 55905, USA.
Sci Rep. 2025 Apr 24;15(1):14300. doi: 10.1038/s41598-025-99009-5.
Breast cancer is the most prevalent cancer and the second cause of cancer related death among women in the United States. Accurate and early detection of breast cancer can reduce the number of mortalities. Recent works explore deep learning techniques with ultrasound for detecting malignant breast lesions. However, the lack of explanatory features, need for segmentation, and high computational complexity limit their applicability in this detection. Therefore, we propose a novel ultrasound-based breast lesion classification framework that utilizes two-dimensional variational mode decomposition (2D-VMD) which provides self-explanatory features for guiding a convolutional neural network (CNN) with mixed pooling and attention mechanisms. The visual inspection of these features demonstrates their explainability in terms of discriminative lesion-specific boundary and texture in the decomposed modes of benign and malignant images, which further guide the deep learning network for enhanced classification. The proposed framework can classify the lesions with accuracies of 98% and 93% in two public breast ultrasound datasets and 89% in an in-house dataset without having to segment the lesions unlike existing techniques, along with an optimal trade-off between the sensitivity and specificity. 2D-VMD improves the areas under the receiver operating characteristics and precision-recall curves by 5% and 10% respectively. The proposed method achieves relative improvement of 14.47%(8.42%) (mean (SD)) in accuracy over state-of-the-art methods for one public dataset, and 5.75%(4.52%) for another public dataset with comparable performance to two existing methods. Further, it is computationally efficient with a reduction of [Formula: see text] in floating point operations as compared to existing methods.
乳腺癌是美国女性中最常见的癌症,也是癌症相关死亡的第二大原因。准确早期检测乳腺癌可减少死亡人数。近期的研究探索了利用超声的深度学习技术来检测乳腺恶性病变。然而,缺乏可解释特征、需要进行分割以及计算复杂度高限制了它们在这种检测中的适用性。因此,我们提出了一种新颖的基于超声的乳腺病变分类框架,该框架利用二维变分模态分解(2D-VMD),它能提供可自我解释的特征,以指导带有混合池化和注意力机制的卷积神经网络(CNN)。对这些特征的视觉检查表明,它们在良性和恶性图像分解模式中具有区分性的病变特异性边界和纹理方面具有可解释性,这进一步指导深度学习网络进行增强分类。与现有技术不同,所提出的框架无需对病变进行分割,就能在两个公共乳腺超声数据集中以98%和93%的准确率对病变进行分类,在一个内部数据集中的准确率为89%,同时在敏感性和特异性之间实现了最佳平衡。2D-VMD分别将受试者工作特征曲线下面积和精确召回率曲线下面积提高了5%和10%。对于一个公共数据集,所提出的方法在准确率上相对于现有最先进方法实现了14.47%(8.42%)(均值(标准差))的相对提升,对于另一个公共数据集为5.75%(4.52%),性能与两种现有方法相当。此外,与现有方法相比,它在计算上效率更高,浮点运算减少了[公式:见原文] 。