论文标题
eSknet-a增强的自适应选择元素卷积用于乳腺肿瘤分割
ESKNet-An enhanced adaptive selection kernel convolution for breast tumors segmentation
论文作者
论文摘要
乳腺癌是危害全球妇女健康的常见癌症之一。准确的靶病变细分对于早期临床干预和术后随访至关重要。最近,已经提出了许多卷积神经网络(CNN)从超声图像中分割乳腺肿瘤。但是,复杂的超声模式和可变的肿瘤形状和大小为乳房病变的准确分割带来了挑战。由选择性内核卷积的动机,我们引入了增强的选择性内核卷积,用于乳腺肿瘤分割,该卷积整合了多个特征图区域表示,并自适应地重新校准了来自通道和空间维度的这些特征图区域的重量。该区域的重新校准策略使网络能够更多地专注于高位归因于区域的特征,并减轻较差区域的扰动。最后,增强的选择性内核卷积被整合到U-NET中,并具有深度的监督限制,以适应地捕获乳腺肿瘤的强大表示。在三个公共乳房超声数据集上使用十二种最先进的深度学习分割方法进行的广泛实验表明,我们的方法在乳房超声图像中具有更具竞争力的分割性能。
Breast cancer is one of the common cancers that endanger the health of women globally. Accurate target lesion segmentation is essential for early clinical intervention and postoperative follow-up. Recently, many convolutional neural networks (CNNs) have been proposed to segment breast tumors from ultrasound images. However, the complex ultrasound pattern and the variable tumor shape and size bring challenges to the accurate segmentation of the breast lesion. Motivated by the selective kernel convolution, we introduce an enhanced selective kernel convolution for breast tumor segmentation, which integrates multiple feature map region representations and adaptively recalibrates the weights of these feature map regions from the channel and spatial dimensions. This region recalibration strategy enables the network to focus more on high-contributing region features and mitigate the perturbation of less useful regions. Finally, the enhanced selective kernel convolution is integrated into U-net with deep supervision constraints to adaptively capture the robust representation of breast tumors. Extensive experiments with twelve state-of-the-art deep learning segmentation methods on three public breast ultrasound datasets demonstrate that our method has a more competitive segmentation performance in breast ultrasound images.