Department of Computer Science, Solapur University, Solapur, MH, 413255, India.
Department of Computer Science, The University of South Dakota, 414 E Clark St, Vermillion, SD, 57069, USA.
J Med Syst. 2019 Feb 2;43(3):60. doi: 10.1007/s10916-019-1176-x.
Within the scope of education and training, automatic and accurate segmentation of fractured bones from Computed Tomographic (CT) images is the fundamental step in several different applications, such as trauma analysis, visualization, diagnosis, surgical planning and simulation. It helps physicians analyze the severity of injury by taking into account the following fracture features, such as location of the fracture, number of pieces and deviation from the original location. Besides, it helps provide accurate 3D visualization and decide optimal recovery plans/processes. To accurately segment fracture bones from CT images, in the paper, we introduce a segmentation technique that makes labeling process easier. Based on the patient-specific anatomy, unique labels are assigned. Unlike conventional techniques, it also includes the removal of unwanted artifacts, such as flesh. In our experiments, we have demonstrated our concept with real-world data (with an accuracy of 95.45%) and have compared with state-of-the-art techniques. For validation, our tests followed expert-based decisions i.e., clinical ground-truth. With the results, our collection of 8000 CT images will be available upon the request.
在教育和培训领域,从计算机断层扫描 (CT) 图像中自动、准确地分割骨折是许多不同应用的基本步骤,例如创伤分析、可视化、诊断、手术规划和模拟。它可以帮助医生通过考虑骨折的位置、碎片数量和偏离原始位置等骨折特征来分析损伤的严重程度。此外,它有助于提供准确的 3D 可视化并决定最佳的恢复计划/过程。为了从 CT 图像中准确地分割骨折骨骼,在本文中,我们引入了一种分割技术,使标记过程更加容易。基于患者特定的解剖结构,分配独特的标签。与传统技术不同,它还包括去除不需要的伪影,例如肉体。在我们的实验中,我们已经用真实数据(准确率为 95.45%)验证了我们的概念,并与最先进的技术进行了比较。为了验证,我们的测试遵循专家决策,即临床真实情况。根据结果,我们的 8000 张 CT 图像集可根据要求提供。