Applying machine learning technologies, especially deep learning, into medical image segmentation is being widely studied because of its state-of-the-art performance and results. It can be a key step to provide a reliable basis for clinical diagnosis, such as 3D reconstruction of human tissues, image-guided interventions, image analyzing and visualization. In this review article, deep-learning-based methods for ultrasound image segmentation are categorized into six main groups according to their architectures and training at first. Secondly, for each group, several current representative algorithms are selected, introduced, analyzed and summarized in detail. In addition, common evaluation methods for image segmentation and ultrasound image segmentation datasets are summarized. Further, the performance of the current methods and their evaluations are reviewed. In the end, the challenges and potential research directions for medical ultrasound image segmentation are discussed.
翻译:应用机器学习技术,特别是深层学习技术,进入医学图像分割,正在广泛研究,因为其表现和结果最先进,可以成为为临床诊断提供可靠基础的关键步骤,如人体组织3D重建、图像制导干预、图像分析和可视化。在本审查文章中,超声波图像分割的深学习方法根据其结构和培训,首先分为六大类。第二,对于每个群体,选择、引入、分析和详细总结了几个现有具有代表性的算法。此外,还总结了图像分割和超声波图像分割的通用评价方法。此外,还审查了当前方法的绩效及其评估。最后,讨论了医学超声波图像分割的挑战和潜在研究方向。