Deep learning has made a breakthrough in medical image segmentation in recent years due to its ability to extract high-level features without the need for prior knowledge. In this context, U-Net is one of the most advanced medical image segmentation models, with promising results in mammography. Despite its excellent overall performance in segmenting multimodal medical images, the traditional U-Net structure appears to be inadequate in various ways. There are certain U-Net design modifications, such as MultiResUNet, Connected-UNets, and AU-Net, that have improved overall performance in areas where the conventional U-Net architecture appears to be deficient. Following the success of UNet and its variants, we have presented two enhanced versions of the Connected-UNets architecture: ConnectedUNets+ and ConnectedUNets++. In ConnectedUNets+, we have replaced the simple skip connections of Connected-UNets architecture with residual skip connections, while in ConnectedUNets++, we have modified the encoder-decoder structure along with employing residual skip connections. We have evaluated our proposed architectures on two publicly available datasets, the Curated Breast Imaging Subset of Digital Database for Screening Mammography (CBIS-DDSM) and INbreast.
翻译:近些年来,由于在不需要事先知识的情况下能够提取高层次的特征而无需事先了解,在医疗图像分割方面,深层的学习在医疗图像分割方面取得了突破。在这方面,U-Net是医学图像分割最先进的模型之一,在乳房X线摄影工作上取得了令人乐观的成果。尽管它在多式联运医疗图像分割方面总体表现优异,传统的U-Net结构在许多方面似乎不够完善。一些U-Net设计修改,如MultiResUNet、连接-UNets和AU-Net等,改善了传统U-Net结构似乎存在缺陷的领域的总体性能。UNet及其变异体取得成功后,我们提出了连接-UNets结构的两个强化版本:连接UNets+和连接的UNetes+++。在连接UNets+中,我们取代了连接-UNets结构与剩余跳线连接的简单跳线连接。在连接UNets+++的连接中,我们修改了编码交换机结构的结构,并使用了剩余跳线连接。我们评估了两个公开数据集上的拟议结构,即CREDMMA和数字数据库子数据库。