Sun Changjin, Tong Fei, Luo Junjie, Wang Yuting, Ou Mingwen, Wu Yi, Qiu Mingguo, Wu Wenjing, Gong Yan, Luo Zhongwen, Qiao Liang
Department of Medical Image, College of Biomedical Engineering and Imaging Medicine, Army Medical University, Chongqing 400038, China.
Army Medical Center of PLA, Army Medical University, Chongqing 400010, China.
Bioengineering (Basel). 2024 Sep 1;11(9):891. doi: 10.3390/bioengineering11090891.
Rapid localization of ROI (Region of Interest) for tomographic medical images (TMIs) is an important foundation for efficient image reading, computer-aided education, and well-informed rights of patients. However, due to the multimodality of clinical TMIs, the complexity of anatomy, and the deformation of organs caused by diseases, it is difficult to have a universal and low-cost method for ROI organ localization. This article focuses on actual concerns of TMIs from medical students, engineers, interdisciplinary researchers, and patients, exploring a universal registration method between the clinical CT/MRI dataset and CVH (Chinese Visible Human) to locate the organ ROI in a low-cost and lightweight way. The proposed method is called Two-step Progressive Registration (TSPR), where the first registration adopts "eye-nose triangle" features to determine the spatial orientation, and the second registration adopts the circular contour to determine the spatial scale, ultimately achieving CVH anatomical knowledge automated mapping. Through experimentation with representative clinical TMIs, the registration results are capable of labeling the ROI in the images well and can adapt to the deformation problem of ROI, as well as local extremum problems that are prone to occur in inter-subject registration. Unlike the ideal requirements for TMIs' data quality in laboratory research, TSPR has good adaptability to incomplete and non-thin-layer quality in real clinical data in a low-cost and lightweight way. This helps medical students, engineers, and interdisciplinary researchers independently browse images, receive computer-aided education, and provide patients with better access to well-informed services, highlighting the potential of digital public health and medical education.
断层医学图像(TMI)中感兴趣区域(ROI)的快速定位是高效图像解读、计算机辅助教育以及患者知情权的重要基础。然而,由于临床TMI的多模态性、解剖结构的复杂性以及疾病导致的器官变形,很难有一种通用且低成本的方法来进行ROI器官定位。本文聚焦于医学生、工程师、跨学科研究人员和患者对TMI的实际关切,探索一种临床CT/MRI数据集与中国可视化人体(CVH)之间的通用配准方法,以低成本、轻量级的方式定位器官ROI。所提出的方法称为两步渐进配准(TSPR),其中第一次配准采用“眼鼻三角”特征来确定空间方向,第二次配准采用圆形轮廓来确定空间尺度,最终实现CVH解剖学知识的自动映射。通过对代表性临床TMI进行实验,配准结果能够很好地标记图像中的ROI,并且能够适应ROI的变形问题以及在个体间配准中容易出现的局部极值问题。与实验室研究中对TMI数据质量的理想要求不同,TSPR以低成本、轻量级的方式对真实临床数据中的不完整和非薄层质量具有良好的适应性。这有助于医学生、工程师和跨学科研究人员独立浏览图像并接受计算机辅助教育,为患者提供更好的知情权服务,凸显了数字公共卫生和医学教育的潜力。