Gou Shuiping, Lee Percy, Hu Peng, Rwigema Jean-Claude, Sheng Ke
Key Lab of Intelligent Perception and Image Understanding of Ministry of Education, Xidian University, Xi'an, Shanxi, China; Department of Radiation Oncology, University of California, Los Angeles, USA.
Department of Radiation Oncology, University of California, Los Angeles, USA.
Adv Radiat Oncol. 2016 Jul-Sep;1(3):182-193. doi: 10.1016/j.adro.2016.05.002. Epub 2016 May 30.
With the advent of MR guided radiotherapy, internal organ motion can be imaged simultaneously during treatment. In this study, we evaluate the feasibility of pancreas MRI segmentation using state-of-the-art segmentation methods.
T2 weighted HASTE and T1 weighted VIBE images were acquired on 3 patients and 2 healthy volunteers for a total of 12 imaging volumes. A novel dictionary learning (DL) method was used to segment the pancreas and compared to t mean-shift merging (MSM), distance regularized level set (DRLS), graph cuts (GC) and the segmentation results were compared to manual contours using Dice's index (DI), Hausdorff distance and shift of the-center-of-the-organ (SHIFT).
All VIBE images were successfully segmented by at least one of the auto-segmentation method with DI >0.83 and SHIFT ≤2 mm using the best automated segmentation method. The automated segmentation error of HASTE images was significantly greater. DL is statistically superior to the other methods in Dice's overlapping index. For the Hausdorff distance and SHIFT measurement, DRLS and DL performed slightly superior to the GC method, and substantially superior to MSM. DL required least human supervision and was faster to compute.
Our study demonstrated potential feasibility of automated segmentation of the pancreas on MRI images with minimal human supervision at the beginning of imaging acquisition. The achieved accuracy is promising for organ localization.
随着磁共振引导放疗的出现,可以在治疗过程中同时对内部器官运动进行成像。在本研究中,我们评估了使用先进分割方法进行胰腺MRI分割的可行性。
对3例患者和2名健康志愿者采集了T2加权HASTE图像和T1加权VIBE图像,共获得12个成像容积。使用一种新颖的字典学习(DL)方法对胰腺进行分割,并与均值漂移合并(MSM)、距离正则化水平集(DRLS)、图割(GC)进行比较,使用骰子系数(DI)、豪斯多夫距离和器官中心偏移(SHIFT)将分割结果与手动轮廓进行比较。
使用最佳自动分割方法时,所有VIBE图像至少通过一种自动分割方法成功分割,DI>0.83且SHIFT≤2mm。HASTE图像的自动分割误差明显更大。在骰子重叠指数方面,DL在统计学上优于其他方法。对于豪斯多夫距离和SHIFT测量,DRLS和DL的表现略优于GC方法,且显著优于MSM。DL所需的人工监督最少,计算速度更快。
我们的研究证明了在成像采集开始时以最少的人工监督对MRI图像上的胰腺进行自动分割的潜在可行性。所达到的准确性对于器官定位很有前景。