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SU‐C‐BRA‐01: Interactive Auto‐Segmentation for Bowel in Online Adaptive MRI‐Guided Radiation Therapy by Using a Multi‐Region Labeling Algorithm

机译:SU-C-BRA-01:使用多区域标记算法在线自适应MRI引导辐射治疗中排便的交互式自动分割

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Purpose: In MRI‐guided online adaptive radiation therapy, re‐contouring of bowel is time‐consuming and can impact the overall time of patients on table. The study aims to auto‐segment bowel on volumetric MR images by using an interactive multi‐region labeling algorithm. Methods: 5 Patients with locally advanced pancreatic cancer underwent fractionated radiotherapy (18–25 fractions each, total 118 fractions) on an MRI‐guided radiation therapy system with a 0.35 Tesla magnet and three Co‐60 sources. At each fraction, a volumetric MR image of the patient was acquired when the patient was in the treatment position. An interactive two‐dimensional multi‐region labeling technique based on graph cut solver was applied on several typical MRI images to segment the large bowel and small bowel, followed by a shape based contour interpolation for generating entire bowel contours along all image slices. The resulted contours were compared with the physician's manual contouring by using metrics of Dice coefficient and Hausdorff distance. Results: Image data sets from the first 5 fractions of each patient were selected (total of 25 image data sets) for the segmentation test. The algorithm segmented the large and small bowel effectively and efficiently. All bowel segments were successfully identified, auto‐contoured and matched with manual contours. The time cost by the algorithm for each image slice was within 30 seconds. For large bowel, the calculated Dice coefficients and Hausdorff distances (mean±std) were 0.77±0.07 and 13.13±5.01mm, respectively; for small bowel, the corresponding metrics were 0.73±0.08and 14.15±4.72mm, respectively. Conclusion: The preliminary results demonstrated the potential of the proposed algorithm in auto‐segmenting large and small bowel on low field MRI images in MRI‐guided adaptive radiation therapy. Further work will be focused on improving its segmentation accuracy and lessening human interaction.
机译:目的:在MRI引导的在线自适应放射治疗中,肠道重新轮廓是耗时的,可以影响患者在桌子上的总时间。该研究旨在通过使用交互式多区域标记算法在体积MR图像上自动分段排便。方法:5例局部晚期胰腺癌的患者接受分级放疗(18-25分数,共118分),MRI引导的放射治疗系统,具有0.35特斯拉磁铁和三个CO-60源。在每个级分中,当患者处于治疗位置时,获得患者的体积MR图像。基于曲线图剪切求解器的交互式二维多区域标记技术应用于几个典型的MRI图像以分割大肠和小肠,然后基于形状的轮廓插值,用于沿所有图像切片产生整个肠轮廓。通过使用骰子系数和Hausdorff距离的度量来将所产生的轮廓与医生的手动轮廓进行比较。结果:选择来自每位患者的前5分的图像数据集(总共25个图像数据集),用于分割测试。该算法有效且有效地分割了大小的肠道。所有肠道段都成功识别,自动轮廓和与手动轮廓相匹配。每个图像切片算法的时间成本在30秒内。对于大肠,计算的骰子系数和Hausdorff距离(平均±STD)分别为0.77±0.07和13.13±5.01mm;对于小肠,相应的度量分别为0.73±0.08和14.15±4.72mm。结论:初步结果证明了在MRI引导的适应性放射治疗中的低场MRI图像上的自动分段大小肠道算法的潜力。进一步的工作将侧重于提高其分割准确性和减少人类互动。

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