Horner Marc, Luke Stephen M, Genc Kerim O, Pietila Todd M, Cotton Ross T, Ache Benjamin A, Levine Zachary H, Townsend Kevin C
ANSYS, Inc., Evanston, IL.
Synopsys Inc., Exeter, UK.
J Verif Valid Uncertain Quantif. 2019;4(4). doi: https://doi.org/10.1115/1.4045487.
Patient-specific computational modeling is increasingly used to assist with visualization, planning, and execution of medical treatments. This trend is placing more reliance on medical imaging to provide accurate representations of anatomical structures. Digital image analysis is used to extract anatomical data for use in clinical assessment/planning. However, the presence of image artifacts, whether due to interactions between the physical object and the scanning modality or the scanning process, can degrade image accuracy. The process of extracting anatomical structures from the medical images introduces additional sources of variability, e.g., when thresholding or when eroding along apparent edges of biological structures. An estimate of the uncertainty associated with extracting anatomical data from medical images would therefore assist with assessing the reliability of patient-specific treatment plans. To this end, two image datasets were developed and analyzed using standard image analysis procedures. The first dataset was developed by performing a "virtual voxelization" of a CAD model of a sphere, representing the idealized scenario of no error in the image acquisition and reconstruction algorithms (i.e., a perfect scan). The second dataset was acquired by scanning three spherical balls using a laboratory-grade CT scanner. For the idealized sphere, the error in sphere diameter was less than or equal to 2% if 5 or more voxels were present across the diameter. The measurement error degraded to approximately 4% for a similar degree of voxelization of the physical phantom. The adaptation of established thresholding procedures to improve segmentation accuracy was also investigated.
针对患者的计算建模越来越多地用于辅助医疗治疗的可视化、规划和执行。这一趋势使得对医学成像的依赖度更高,以提供解剖结构的准确表示。数字图像分析用于提取解剖数据,以用于临床评估/规划。然而,图像伪影的存在,无论是由于物理对象与扫描方式之间的相互作用还是扫描过程,都可能降低图像的准确性。从医学图像中提取解剖结构的过程会引入额外的变异性来源,例如在进行阈值处理或沿生物结构的明显边缘进行腐蚀时。因此,估计从医学图像中提取解剖数据的不确定性将有助于评估针对患者的治疗计划的可靠性。为此目的,使用标准图像分析程序开发并分析了两个图像数据集。第一个数据集是通过对球体的CAD模型进行“虚拟体素化”而开发的,代表了图像采集和重建算法中无误差的理想化场景(即完美扫描)。第二个数据集是通过使用实验室级CT扫描仪扫描三个球形球获得的。对于理想化的球体,如果直径上存在5个或更多体素,则球体直径的误差小于或等于2%。对于物理模型类似程度的体素化,测量误差降至约4%。还研究了调整既定的阈值处理程序以提高分割精度。