Minnesota Robotics Institute, University of Minnesota College of Science and Engineering, Minneapolis, MN, USA.
University of Minnesota Medical School, Twin Cities Campus, Minneapolis, MN, USA.
Eur Urol Focus. 2021 Jul;7(4):692-695. doi: 10.1016/j.euf.2021.07.017. Epub 2021 Aug 18.
As the quantity and quality of cross-sectional imaging data increase, it is important to be able to make efficient use of the information. Semantic segmentation is an emerging technology that promises to improve the speed, reproducibility, and accuracy of analysis of medical imaging, and to allow visualization methods that were previously impossible. Manual image segmentation often requires expert knowledge and is both time- and cost-prohibitive in many clinical situations. However, automated methods, especially those using deep learning, show promise in alleviating this burden to make segmentation a standard tool for clinical intervention in the future. It is therefore important for clinicians to have a functional understanding of what segmentation is and to be aware of its uses. Here we include a number of examples of ways in which semantic segmentation has been put into practice in urology. PATIENT SUMMARY: This mini-review highlights the growing role of segmentation methods for medical images in urology to inform clinical practice. Segmentation methods show promise in improving the reliability of diagnosis and aiding in visualization, which may become a tool for patient education.
随着横截面成像数据数量和质量的增加,能够有效地利用这些信息变得尤为重要。语义分割是一种新兴技术,有望提高医学成像分析的速度、可重复性和准确性,并允许以前不可能的可视化方法。手动图像分割通常需要专业知识,并且在许多临床情况下既耗时又昂贵。然而,自动化方法,特别是使用深度学习的方法,有望减轻这一负担,使分割成为未来临床干预的标准工具。因此,临床医生需要对分割的功能有一个基本的了解,并意识到它的用途。在这里,我们包括了语义分割在泌尿外科中实际应用的一些例子。
这篇小型综述强调了分割方法在泌尿外科医学图像中的作用日益重要,以便为临床实践提供信息。分割方法有望提高诊断的可靠性,并有助于可视化,这可能成为患者教育的工具。