Fang Raymond, Yang Jinzhong, Du Weiliang, Court Laurence
Department of Radiation Physics, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Deparmtent of Physics and Astronomy, Rice University, Houston, TX, USA.
J Appl Clin Med Phys. 2019 Apr;20(4):18-28. doi: 10.1002/acm2.12558. Epub 2019 Mar 6.
To automate the detection of isocenter and scale of the mechanical graticule on kilo-voltage (kV) or mega-voltage (MV) films or electronic portal imaging device (EPID) images.
We developed a robust image processing approach to automatically detect isocenter and scale of mechanical graticule from digitized kV or MV films and EPID images. After a series of preprocessing steps applied to the digital images, a combination of Hough transform and Radon transform was performed to detect the graticule axes and isocenter. The magnification of the graticule was automatically detected by solving an optimization problem using golden section search and parabolic interpolation algorithm. Tick marks of the graticule were then determined by extending from isocenter along the graticule axes with multiples of the magnification value. This approach was validated using 23 kV films, 26 MV films, and 91 EPID images in different anatomical sites (head-and-neck, thorax, and pelvis). Accuracy was measured by comparing computer detected results with manually selected results.
The proposed approach was robust for kV and MV films of varying image quality. The isocenter was detected within 1 mm for 98% of the images. The exceptions were three kV films where the graticule was not actually visible. Of all images with correct isocenter detection, 99% had a magnification detection error less than 1% and tick mark detection error less than 1 mm, with the exception of 1 kV film (magnification error: 3.17%; tick mark error: 1.29 mm) and 1 MV film (magnification error: 0.45%; tick mark error: 1.11 mm).
We developed an approach to robustly and automatically detect graticule isocenter and scale from two-dimensionla (2D) kV and MV films. This is a first step toward automated treatment planning based on 2D x-ray images.
实现千伏(kV)或兆伏(MV)胶片或电子射野影像装置(EPID)图像上机械十字线等中心及刻度的自动检测。
我们开发了一种强大的图像处理方法,用于从数字化的kV或MV胶片以及EPID图像中自动检测机械十字线的等中心和刻度。在对数字图像进行一系列预处理步骤后,结合霍夫变换和拉东变换来检测十字线轴和等中心。通过使用黄金分割搜索和抛物线插值算法解决优化问题,自动检测十字线的放大倍数。然后通过从等中心沿十字线轴以放大倍数的倍数延伸来确定十字线的刻度标记。该方法在不同解剖部位(头颈部、胸部和骨盆)的23张kV胶片、26张MV胶片和91张EPID图像上进行了验证。通过将计算机检测结果与手动选择结果进行比较来测量准确性。
所提出的方法对于不同图像质量的kV和MV胶片具有鲁棒性。98%的图像等中心检测误差在1毫米以内。例外情况是三张kV胶片,其十字线实际上不可见。在所有等中心检测正确的图像中,99%的放大倍数检测误差小于1%,刻度标记检测误差小于1毫米,但有一张kV胶片(放大倍数误差:3.17%;刻度标记误差:1.29毫米)和一张MV胶片(放大倍数误差:0.45%;刻度标记误差:1.11毫米)除外。
我们开发了一种方法,可从二维(2D)kV和MV胶片中稳健且自动地检测十字线等中心和刻度。这是迈向基于2D X射线图像的自动治疗计划的第一步。