Department of Electrical Engineering, City University of Hong Kong, Hong Kong.
Sensors (Basel). 2023 Sep 9;23(18):7772. doi: 10.3390/s23187772.
Breast cancer is the leading type of cancer in women, causing nearly 600,000 deaths every year, globally. Although the tumors can be localized within the breast, they can spread to other body parts, causing more harm. Therefore, early diagnosis can help reduce the risks of this cancer. However, a breast cancer diagnosis is complicated, requiring biopsy by various methods, such as MRI, ultrasound, BI-RADS, or even needle aspiration and cytology with the suggestions of specialists. On certain occasions, such as body examinations of a large number of people, it is also a large workload to check the images. Therefore, in this work, we present an efficient and automatic diagnosis system based on the hierarchical extreme learning machine (H-ELM) for breast cancer ultrasound results with high efficiency and make a primary diagnosis of the images. To make it compatible to use, this system consists of PNG images and general medical software within the H-ELM framework, which is easily trained and applied. Furthermore, this system only requires ultrasound images on a small scale, of 28×28 pixels, reducing the resources and fulfilling the application with low-resolution images. The experimental results show that the system can achieve 86.13% in the classification of breast cancer based on ultrasound images from the public breast ultrasound images (BUSI) dataset, without other relative information and supervision, which is higher than the conventional deep learning methods on the same dataset. Moreover, the training time is highly reduced, to only 5.31 s, and consumes few resources. The experimental results indicate that this system could be helpful for precise and efficient early diagnosis of breast cancers with primary examination results.
乳腺癌是女性中最常见的癌症类型,全球每年导致近 60 万人死亡。尽管肿瘤可以局限于乳房内,但它们可以扩散到身体的其他部位,造成更大的伤害。因此,早期诊断可以帮助降低这种癌症的风险。然而,乳腺癌的诊断很复杂,需要通过各种方法进行活检,如 MRI、超声、BI-RADS,甚至是专家建议的针吸和细胞学检查。在某些情况下,如对大量人群进行体检,检查图像也是一项工作量很大的工作。因此,在这项工作中,我们提出了一种基于分层极限学习机(H-ELM)的高效自动诊断系统,用于乳腺癌超声结果,具有高效率,并对图像进行初步诊断。为了使其兼容使用,该系统由 H-ELM 框架内的 PNG 图像和一般医疗软件组成,易于训练和应用。此外,该系统仅需要 28x28 像素的小规模超声图像,减少了资源,并使用低分辨率图像满足应用需求。实验结果表明,该系统在使用公共乳腺超声图像(BUSI)数据集的超声图像分类方面可以达到 86.13%的准确率,无需其他相关信息和监督,优于同一数据集上的传统深度学习方法。此外,训练时间大大减少,仅需 5.31 秒,并且消耗的资源很少。实验结果表明,该系统有助于对乳腺癌症进行精确和高效的早期诊断。