IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Jan;69(1):222-232. doi: 10.1109/TUFFC.2021.3119251. Epub 2021 Dec 31.
Although accurate detection of breast cancer still poses significant challenges, deep learning (DL) can support more accurate image interpretation. In this study, we develop a highly robust DL model based on combined B-mode ultrasound (B-mode) and strain elastography ultrasound (SE) images for classifying benign and malignant breast tumors. This study retrospectively included 85 patients, including 42 with benign lesions and 43 with malignancies, all confirmed by biopsy. Two deep neural network models, AlexNet and ResNet, were separately trained on combined 205 B-mode and 205 SE images (80% for training and 20% for validation) from 67 patients with benign and malignant lesions. These two models were then configured to work as an ensemble using both image-wise and layer-wise and tested on a dataset of 56 images from the remaining 18 patients. The ensemble model captures the diverse features present in the B-mode and SE images and also combines semantic features from AlexNet and ResNet models to classify the benign from the malignant tumors. The experimental results demonstrate that the accuracy of the proposed ensemble model is 90%, which is better than the individual models and the model trained using B-mode or SE images alone. Moreover, some patients that were misclassified by the traditional methods were correctly classified by the proposed ensemble method. The proposed ensemble DL model will enable radiologists to achieve superior detection efficiency owing to enhance classification accuracy for breast cancers in ultrasound (US) images.
尽管准确检测乳腺癌仍然面临重大挑战,但深度学习 (DL) 可以支持更准确的图像解释。在这项研究中,我们开发了一种基于结合 B 模式超声 (B 模式) 和应变弹性成像超声 (SE) 图像的高度稳健的 DL 模型,用于对良性和恶性乳腺肿瘤进行分类。本研究回顾性纳入 85 例患者,其中良性病变 42 例,恶性病变 43 例,均经活检证实。分别使用来自 67 例良性和恶性病变患者的 205 张 B 模式和 205 张 SE 图像(80%用于训练,20%用于验证)对 AlexNet 和 ResNet 两个深度神经网络模型进行单独训练。然后,将这两种模型配置为使用图像级和层级的组合作为一个集合,并在来自其余 18 例患者的 56 张图像数据集上进行测试。集合模型捕捉到 B 模式和 SE 图像中存在的不同特征,并结合 AlexNet 和 ResNet 模型的语义特征对良性和恶性肿瘤进行分类。实验结果表明,所提出的集合模型的准确率为 90%,优于单个模型和仅使用 B 模式或 SE 图像训练的模型。此外,一些被传统方法错误分类的患者被提出的集合方法正确分类。所提出的集合 DL 模型将使放射科医生能够通过提高超声 (US) 图像中乳腺癌的分类准确性来实现更高的检测效率。