The advancements in deep learning technologies have produced immense contribution to biomedical image analysis applications. With breast cancer being the common deadliest disease among women, early detection is the key means to improve survivability. Medical imaging like ultrasound presents an excellent visual representation of the functioning of the organs; however, for any radiologist analysing such scans is challenging and time consuming which delays the diagnosis process. Although various deep learning based approaches are proposed that achieved promising results, the present article introduces an efficient residual cross-spatial attention guided inception U-Net (RCA-IUnet) model with minimal training parameters for tumor segmentation using breast ultrasound imaging to further improve the segmentation performance of varying tumor sizes. The RCA-IUnet model follows U-Net topology with residual inception depth-wise separable convolution and hybrid pooling (max pooling and spectral pooling) layers. In addition, cross-spatial attention filters are added to suppress the irrelevant features and focus on the target structure. The segmentation performance of the proposed model is validated on two publicly available datasets using standard segmentation evaluation metrics, where it outperformed the other state-of-the-art segmentation models.
翻译:深层学习技术的进步为生物医学图像分析应用作出了巨大贡献。乳腺癌是妇女常见的最致命疾病,因此早期发现是改善存活能力的关键手段。超声波等医学成像对器官的功能具有极好的视觉表现;然而,对于任何分析这种扫描的放射学家来说,具有挑战性和耗时性,因而拖延了诊断过程。虽然提出了各种基于深层学习的方法,取得了可喜的成果,但本文章引入了高效的残余跨空间关注引导初始 U-Net(RCA-IUnet)模型,该模型使用乳房超声成像进行肿瘤分解的最低限度培训参数,以进一步改善不同肿瘤大小的分解性能。RCMA-IUnet模型遵循U-Net型结构,其残留的初始深度为分解和混合(轴承合和光谱集合)层。此外,还添加了跨空间关注过滤器,以抑制不相干的特点和对目标结构的关注。拟议模型的分解性表现通过标准分解度评价度度度度度度度度度度度测量,对两种公开存在的数据集进行了验证,从而超越了其他状态。