Yang Lei, Zhang Baichuan, Ren Fei, Gu Jianwen, Gao Jiao, Wu Jihua, Li Dan, Jia Huaping, Li Guangling, Zong Jing, Zhang Jing, Yang Xiaoman, Zhang Xueyuan, Du Baolin, Wang Xiaowen, Li Na
Strategic Support Force Medical Center, Beijing 100024, China.
Chongqing Zhijian Life Technology Co., Ltd., Chongqing 400039, China.
Bioengineering (Basel). 2023 Oct 19;10(10):1220. doi: 10.3390/bioengineering10101220.
Breast cancer is one of the most common malignant tumors in women. A noninvasive ultrasound examination can identify mammary-gland-related diseases and is well tolerated by dense breast, making it a preferred method for breast cancer screening and of significant clinical value. However, the diagnosis of breast nodules or masses via ultrasound is performed by a doctor in real time, which is time-consuming and subjective. Junior doctors are prone to missed diagnoses, especially in remote areas or grass-roots hospitals, due to limited medical resources and other factors, which bring great risks to a patient's health. Therefore, there is an urgent need to develop fast and accurate ultrasound image analysis algorithms to assist diagnoses.
We propose a breast ultrasound image-based assisted-diagnosis method based on convolutional neural networks, which can effectively improve the diagnostic speed and the early screening rate of breast cancer. Our method consists of two stages: tumor recognition and tumor classification. (1) Attention-based semantic segmentation is used to identify the location and size of the tumor; (2) the identified nodules are cropped to construct a training dataset. Then, a convolutional neural network for the diagnosis of benign and malignant breast nodules is trained on this dataset. We collected 2057 images from 1131 patients as the training and validation dataset, and 100 images of the patients with accurate pathological criteria were used as the test dataset.
The experimental results based on this dataset show that the MIoU of tumor location recognition is 0.89 and the average accuracy of benign and malignant diagnoses is 97%. The diagnosis performance of the developed diagnostic system is basically consistent with that of senior doctors and is superior to that of junior doctors. In addition, we can provide the doctor with a preliminary diagnosis so that it can be diagnosed quickly.
Our proposed method can effectively improve diagnostic speed and the early screening rate of breast cancer. The system provides a valuable aid for the ultrasonic diagnosis of breast cancer.
乳腺癌是女性最常见的恶性肿瘤之一。非侵入性超声检查可以识别乳腺相关疾病,并且对致密型乳腺耐受性良好,使其成为乳腺癌筛查的首选方法,具有重要的临床价值。然而,通过超声诊断乳腺结节或肿块是由医生实时进行的,这既耗时又主观。由于医疗资源有限等因素,初级医生容易漏诊,尤其是在偏远地区或基层医院,这给患者的健康带来了很大风险。因此,迫切需要开发快速准确的超声图像分析算法来辅助诊断。
我们提出了一种基于卷积神经网络的乳腺超声图像辅助诊断方法,该方法可以有效提高乳腺癌的诊断速度和早期筛查率。我们的方法包括两个阶段:肿瘤识别和肿瘤分类。(1)基于注意力的语义分割用于识别肿瘤的位置和大小;(2)将识别出的结节裁剪下来构建训练数据集。然后,在这个数据集上训练用于诊断乳腺良性和恶性结节的卷积神经网络。我们收集了来自1131名患者的2057张图像作为训练和验证数据集,并使用100名具有准确病理标准的患者的图像作为测试数据集。
基于该数据集的实验结果表明,肿瘤位置识别的交并比(MIoU)为0.89,良性和恶性诊断的平均准确率为97%。所开发诊断系统的诊断性能与资深医生的基本一致,且优于初级医生。此外,我们可以为医生提供初步诊断,以便能够快速进行诊断。
我们提出的方法可以有效提高乳腺癌的诊断速度和早期筛查率。该系统为乳腺癌的超声诊断提供了有价值的辅助。