基于注意力的集合网络可有效地对乳腺癌进行分类

Su Myat Thwin, S. Malebary, A. Abulfaraj, Hyun-Seok Park
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摘要

在全球范围内,乳腺癌(BC)被认为是女性死亡的主要原因。因此,研究人员使用各种基于机器学习和深度学习的方法,利用 X 射线、核磁共振成像和乳房 X 射线摄影图像模式对其进行早期准确检测。然而,机器学习模型需要领域专家来选择最佳特征,获得的准确率有限,而且由于手工特征提取,假阳性率较高。深度学习模型克服了这些局限性,但这些模型需要大量的训练数据和计算资源,因此需要进一步提高模型性能。为此,我们采用了一种名为 "基于集合的通道和空间注意网络(ECS-A-Net)"的新型框架,对 BC 图像中的感染区域进行自动分类。拟议的框架包括两个阶段:在第一阶段,我们采用不同的增强技术来增大输入数据的大小,而第二阶段则包括一种集合技术,它并行利用修改后的 SE-ResNet50 和 InceptionV3 作为特征提取的骨干,然后以串联的方式利用通道注意(CA)和空间注意(SA)模块来进行更主要的特征选择。为了进一步验证 ECS-A-Net 的有效性,我们在两个基准(包括 DDSM 和 MIAS)上对几种具有竞争力的最先进(SOTA)技术进行了广泛的实验,结果表明所提出的模型在 DDSM 数据集上的准确率达到 96.50%,在 MIAS 数据集上的准确率达到 95.33%。此外,实验结果表明,我们的网络在准确率、灵敏度和特异性等各种评估指标上都取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention-Based Ensemble Network for Effective Breast Cancer Classification over Benchmarks
Globally, breast cancer (BC) is considered a major cause of death among women. Therefore, researchers have used various machine and deep learning-based methods for its early and accurate detection using X-ray, MRI, and mammography image modalities. However, the machine learning model requires domain experts to select an optimal feature, obtains a limited accuracy, and has a high false positive rate due to handcrafting features extraction. The deep learning model overcomes these limitations, but these models require large amounts of training data and computation resources, and further improvement in the model performance is needed. To do this, we employ a novel framework called the Ensemble-based Channel and Spatial Attention Network (ECS-A-Net) to automatically classify infected regions within BC images. The proposed framework consists of two phases: in the first phase, we apply different augmentation techniques to enhance the size of the input data, while the second phase includes an ensemble technique that parallelly leverages modified SE-ResNet50 and InceptionV3 as a backbone for feature extraction, followed by Channel Attention (CA) and Spatial Attention (SA) modules in a series manner for more dominant feature selection. To further validate the ECS-A-Net, we conducted extensive experiments between several competitive state-of-the-art (SOTA) techniques over two benchmarks, including DDSM and MIAS, where the proposed model achieved 96.50% accuracy for the DDSM and 95.33% accuracy for the MIAS datasets. Additionally, the experimental results demonstrated that our network achieved a better performance using various evaluation indicators, including accuracy, sensitivity, and specificity among other methods.
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