Liu W, Lin W, Ahmad M, Nath R
Yale University School of Medicine, New Haven, CT.
National Chung Cheng University, Min-Hsiung, Taiwan, ROC.
Med Phys. 2012 Jun;39(6Part24):3911. doi: 10.1118/1.4735964.
Intrafraction motion tracking using beam-line MV images have gained much attention because no additional imaging dose is introduced. Since MV images have much lower contrast than kV images, a robust marker detection algorithm is a pre-requisite. In this work, we develop a novel, fast, and robust method to detect implanted markers in low-contrast cine-MV patient images.
Several marker detection methods have been proposed in the recent years. These methods are all based on template matching or its derivatives. Template matching needs to match object shape that changes significantly for different implantation and projection angle. While these methods require a large number of templates to cover the different situations, they are often forced to use a smaller number of templates to reduce the computation load because their methods all require exhaustive search in the ROI. We solve this problem by synergetic use of modern but well-tested computer vision and AI techniques - detect implanted markers utilizing discriminant analysis for initialization and mean-shift feature space analysis for sequential tracking. This novel approach avoids exhaustive search by exploiting the temporal correlation between consecutive frames and makes it possible to perform more sophisticated detection at the beginning to improve the accuracy, followed by ultrafast sequential tracking after the initialization. The method was evaluated using 1149 cine-MV images from 2 prostate IMRT patients and compared with manual marker detection results from 6 researchers. The average of the manual detection results is considered as the ground truth.
The average RMS errors of the automatic tracking from the ground truth are 1.9 and 2.1 pixels for the 2 patients (0.26mm/pixel). The standard deviations of the results from the 6 researchers are 2.3 and 2.6 pixels.
The proposed method can achieve similar marker detection accuracy to manual detection in low-contract cine-MV images.
利用射束方向的兆伏级(MV)图像进行分次内运动跟踪已备受关注,因为无需引入额外的成像剂量。由于MV图像的对比度远低于千伏级(kV)图像,因此需要一种强大的标记物检测算法。在本研究中,我们开发了一种新颖、快速且强大的方法,用于在低对比度的MV电影患者图像中检测植入的标记物。
近年来已提出了几种标记物检测方法。这些方法均基于模板匹配或其衍生方法。模板匹配需要匹配因不同植入和投影角度而显著变化的物体形状。虽然这些方法需要大量模板来覆盖不同情况,但由于其方法都需要在感兴趣区域(ROI)进行穷举搜索,所以往往被迫使用较少数量的模板以减少计算量。我们通过协同使用现代且经过充分测试的计算机视觉和人工智能技术来解决此问题——利用判别分析进行初始化来检测植入的标记物,并利用均值漂移特征空间分析进行序列跟踪。这种新颖的方法通过利用连续帧之间的时间相关性避免了穷举搜索,使得在开始时能够进行更精确的检测以提高准确性,初始化后进行超快速的序列跟踪。使用来自2例前列腺调强放疗(IMRT)患者的1149幅MV电影图像对该方法进行评估,并与6名研究人员的手动标记物检测结果进行比较。手动检测结果的平均值被视为真实值。
对于这2例患者,自动跟踪相对于真实值的平均均方根误差分别为1.9像素和2.1像素(0.26毫米/像素)。6名研究人员结果的标准差分别为2.3像素和2.6像素。
在低对比度的MV电影图像中,所提出的方法能够实现与手动检测相似的标记物检测精度。