Yu Xiang, Ren Zeyu, Guttery David S, Zhang Yu-Dong
School of Computing and Mathematical Sciences, University of Leicester, University Road, Leicester, LE1 7RH Leicestershire UK.
Leicester Cancer Research Centre, University of Leicester, University Road, Leicester, LE2 7LX Leicestershire UK.
Multimed Tools Appl. 2024;83(5):14393-14422. doi: 10.1007/s11042-023-15864-2. Epub 2023 Jul 11.
Amongst all types of cancer, breast cancer has become one of the most common cancers in the UK threatening millions of people's health. Early detection of breast cancer plays a key role in timely treatment for morbidity reduction. Compared to biopsy, which takes tissues from the lesion for further analysis, image-based methods are less time-consuming and pain-free though they are hampered by lower accuracy due to high false positivity rates. Nevertheless, mammography has become a standard screening method due to its high efficiency and low cost with promising performance. Breast mass, as the most palpable symptom of breast cancer, has received wide attention from the community. As a result, the past decades have witnessed the speeding development of computer-aided systems that are aimed at providing radiologists with useful tools for breast mass analysis based on mammograms. However, the main issues of these systems include low accuracy and require enough computational power on a large scale of datasets. To solve these issues, we developed a novel breast mass classification system called DF-dRVFL. On the public dataset DDSM with more than 3500 images, our best model based on deep random vector functional link network showed promising results through five-cross validation with an averaged AUC of 0.93 and an average accuracy of . Compared to sole deep learning based methods, average accuracy has increased by 0.38. Compared with the state-of-the-art methods, our method showed better performance considering the number of images for evaluation and the overall accuracy.
在所有类型的癌症中,乳腺癌已成为英国最常见的癌症之一,威胁着数百万人的健康。乳腺癌的早期检测对于及时治疗以降低发病率起着关键作用。与从病变部位获取组织进行进一步分析的活检相比,基于图像的方法虽然由于高假阳性率导致准确性较低而受到阻碍,但耗时较少且无痛。尽管如此,乳腺钼靶摄影因其高效率、低成本以及良好的性能,已成为一种标准的筛查方法。乳房肿块作为乳腺癌最明显的症状,受到了社会的广泛关注。因此,在过去几十年中,旨在为放射科医生提供基于乳腺钼靶图像进行乳房肿块分析的有用工具的计算机辅助系统得到了快速发展。然而,这些系统的主要问题包括准确性低,并且在大规模数据集上需要足够的计算能力。为了解决这些问题,我们开发了一种名为DF-dRVFL的新型乳房肿块分类系统。在拥有超过3500张图像的公共数据集DDSM上,我们基于深度随机向量功能链接网络的最佳模型通过五折交叉验证显示出了有前景的结果,平均AUC为0.93,平均准确率为 。与仅基于深度学习的方法相比,平均准确率提高了0.38。与最先进的方法相比,考虑到用于评估的图像数量和整体准确率,我们的方法表现出了更好的性能。