Network and Data Security Key Laboratory of Sichuan Province, University of Electronic Science and Technology of China, 610054, Chengdu, China.
Department of Obstetrics and Gynaecology, Deyang People's Hospital, 618000, Deyang, China.
J Imaging Inform Med. 2024 Aug;37(4):1529-1547. doi: 10.1007/s10278-024-00981-7. Epub 2024 Mar 4.
Medical image segmentation is an important step in medical image analysis, especially as a crucial prerequisite for efficient disease diagnosis and treatment. The use of deep learning for image segmentation has become a prevalent trend. The widely adopted approach currently is U-Net and its variants. Moreover, with the remarkable success of pre-trained models in natural language processing tasks, transformer-based models like TransUNet have achieved desirable performance on multiple medical image segmentation datasets. Recently, the Segment Anything Model (SAM) and its variants have also been attempted for medical image segmentation. In this paper, we conduct a survey of the most representative seven medical image segmentation models in recent years. We theoretically analyze the characteristics of these models and quantitatively evaluate their performance on Tuberculosis Chest X-rays, Ovarian Tumors, and Liver Segmentation datasets. Finally, we discuss the main challenges and future trends in medical image segmentation. Our work can assist researchers in the related field to quickly establish medical segmentation models tailored to specific regions.
医学图像分割是医学图像分析的重要步骤,尤其是作为高效疾病诊断和治疗的关键前提。深度学习在图像分割中的应用已经成为一种流行趋势。目前广泛采用的方法是 U-Net 及其变体。此外,由于预训练模型在自然语言处理任务中取得了显著成功,基于转换器的模型(如 TransUNet)在多个医学图像分割数据集上取得了理想的性能。最近,Segment Anything Model(SAM)及其变体也被尝试用于医学图像分割。在本文中,我们对近年来最具代表性的七种医学图像分割模型进行了调查。我们从理论上分析了这些模型的特点,并在结核病 X 射线、卵巢肿瘤和肝脏分割数据集上对其性能进行了定量评估。最后,我们讨论了医学图像分割中的主要挑战和未来趋势。我们的工作可以帮助相关领域的研究人员快速建立针对特定区域的医学分割模型。