Zakareya Salman, Izadkhah Habib, Karimpour Jaber
Department of Computer Science, University of Tabriz, Tabriz 5166616471, Iran.
Research Department of Computational Algorithms and Mathematical Models, University of Tabriz, Tabriz 5166616471, Iran.
Diagnostics (Basel). 2023 Jun 1;13(11):1944. doi: 10.3390/diagnostics13111944.
Breast cancer is one of the most prevalent cancers among women worldwide, and early detection of the disease can be lifesaving. Detecting breast cancer early allows for treatment to begin faster, increasing the chances of a successful outcome. Machine learning helps in the early detection of breast cancer even in places where there is no access to a specialist doctor. The rapid advancement of machine learning, and particularly deep learning, leads to an increase in the medical imaging community's interest in applying these techniques to improve the accuracy of cancer screening. Most of the data related to diseases is scarce. On the other hand, deep-learning models need much data to learn well. For this reason, the existing deep-learning models on medical images cannot work as well as other images. To overcome this limitation and improve breast cancer classification detection, inspired by two state-of-the-art deep networks, GoogLeNet and residual block, and developing several new features, this paper proposes a new deep model to classify breast cancer. Utilizing adopted granular computing, shortcut connection, two learnable activation functions instead of traditional activation functions, and an attention mechanism is expected to improve the accuracy of diagnosis and consequently decrease the load on doctors. Granular computing can improve diagnosis accuracy by capturing more detailed and fine-grained information about cancer images. The proposed model's superiority is demonstrated by comparing it to several state-of-the-art deep models and existing works using two case studies. The proposed model achieved an accuracy of 93% and 95% on ultrasound images and breast histopathology images, respectively.
乳腺癌是全球女性中最常见的癌症之一,早期发现这种疾病可以挽救生命。早期发现乳腺癌能够更快地开始治疗,增加成功治愈的几率。机器学习有助于早期发现乳腺癌,即使在无法获得专科医生的地区也是如此。机器学习,尤其是深度学习的迅速发展,使得医学影像界越来越有兴趣应用这些技术来提高癌症筛查的准确性。与疾病相关的大多数数据都很稀缺。另一方面,深度学习模型需要大量数据才能学好。因此,现有的医学图像深度学习模型的效果不如其他图像模型。为了克服这一局限性并改进乳腺癌分类检测,本文受两种先进的深度网络GoogLeNet和残差块的启发,并开发了几个新特征,提出了一种用于乳腺癌分类的新深度模型。采用粒度计算、捷径连接、两个可学习的激活函数代替传统激活函数以及注意力机制,有望提高诊断准确性,从而减轻医生的负担。粒度计算可以通过捕捉有关癌症图像的更详细、更细粒度的信息来提高诊断准确性。通过两个案例研究,将所提出的模型与几种先进的深度模型和现有研究进行比较,证明了该模型的优越性。所提出的模型在超声图像和乳腺组织病理学图像上的准确率分别达到了93%和95%。