Deep Neural Networks (DNNs) have the potential for making various clinical procedures more time-efficient by automating medical image segmentation. Due to their strong, in some cases human-level, performance, they have become the standard approach in this field. The design of the best possible medical image segmentation DNNs, however, is task-specific. Neural Architecture Search (NAS), i.e., the automation of neural network design, has been shown to have the capability to outperform manually designed networks for various tasks. However, the existing NAS methods for medical image segmentation have explored a quite limited range of types of DNN architectures that can be discovered. In this work, we propose a novel NAS search space for medical image segmentation networks. This search space combines the strength of a generalised encoder-decoder structure, well known from U-Net, with network blocks that have proven to have a strong performance in image classification tasks. The search is performed by looking for the best topology of multiple cells simultaneously with the configuration of each cell within, allowing for interactions between topology and cell-level attributes. From experiments on two publicly available datasets, we find that the networks discovered by our proposed NAS method have better performance than well-known handcrafted segmentation networks, and outperform networks found with other NAS approaches that perform only topology search, and topology-level search followed by cell-level search.
翻译:深心神经网络(DNNS)有可能通过医疗图像分割的自动化使各种临床程序更具有时间效率,使医疗图像分割系统(DNNS)具有使各种临床程序更具有时间效率的潜力。由于它们强大,有时是人的性能,因此它们已成为这一领域的标准方法。但是,尽可能最佳的医学图像分割系统(DNNS)的设计是特定任务。神经结构搜索(NAS),即神经网络设计的自动化,已证明它们有能力超越各种任务所需的手工设计的网络。然而,现有的NAS医疗图像分割方法探索了数量非常有限的DNN结构类型。在这项工作中,我们提出了一个新的NAS搜索空间,用于医疗图像分割网络。这个搜索空间将通用的编码分解结构的强度结合起来,U-Net的网络和已证明在图像分类任务方面表现很强的网络区块进行搜索。通过搜索多细胞的顶层和每个细胞的配置,允许在表层和细胞结构上层之间进行互动。在这个搜索过程中,我们提出了一个新的NAS搜索空间搜索空间,从两个公开的状态中发现了比我们所发现的高级搜索网络的顶层结构。