Department of Radiation Oncology, Washington University School of Medicine, St. Louis, MO, USA.
J Digit Imaging. 2017 Dec;30(6):751-760. doi: 10.1007/s10278-017-9981-6.
A method was developed to recognize anatomical site and image acquisition view automatically in 2D X-ray images that are used in image-guided radiation therapy. The purpose is to enable site and view dependent automation and optimization in the image processing tasks including 2D-2D image registration, 2D image contrast enhancement, and independent treatment site confirmation. The X-ray images for 180 patients of six disease sites (the brain, head-neck, breast, lung, abdomen, and pelvis) were included in this study with 30 patients each site and two images of orthogonal views each patient. A hierarchical multiclass recognition model was developed to recognize general site first and then specific site. Each node of the hierarchical model recognized the images using a feature extraction step based on principal component analysis followed by a binary classification step based on support vector machine. Given two images in known orthogonal views, the site recognition model achieved a 99% average F1 score across the six sites. If the views were unknown in the images, the average F1 score was 97%. If only one image was taken either with or without view information, the average F1 score was 94%. The accuracy of the site-specific view recognition models was 100%.
开发了一种方法,可自动识别用于图像引导放射治疗的 2D X 射线图像中的解剖部位和图像采集视图。目的是实现基于部位和视图的自动化和优化,包括 2D-2D 图像配准、2D 图像对比度增强和独立治疗部位确认等图像处理任务。这项研究共纳入了 180 名患者的 6 个疾病部位(脑部、头颈部、乳房、肺部、腹部和骨盆)的 X 射线图像,每个部位有 30 名患者,每位患者有两张正交视图的图像。开发了一种分层多类识别模型,首先识别一般部位,然后识别特定部位。分层模型的每个节点都使用基于主成分分析的特征提取步骤识别图像,然后使用支持向量机进行基于二进制分类的步骤。对于已知正交视图的两张图像,该部位识别模型在六个部位的平均 F1 分数达到 99%。如果图像中不知道视图,则平均 F1 分数为 97%。如果仅拍摄一张图像,无论是否有视图信息,平均 F1 分数为 94%。部位特定视图识别模型的准确率为 100%。