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Automatic Brain Arteriovenous Malformations Segmentation on Contrast CT Images Using Combined Region Proposal Network and V-Net

机译:使用组合区域提议网络和V-Net的CT图像自动进行脑动静脉畸形分割

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Stereotactic radiosurgery (SRS) is widely used to obliterate arteriovenous malformations (AVMs). Its performance relies on the accuracy of delineating the target AVM. Manual segmentation during a framed SRS procedure is time-consuming and subject to inter- and intra-observer variation. Therefore, it is important to develop an automatic segmentation method to delineate the AVM target from CT images. In this study, we retrospectively investigated 80 patients who were treated with SRS. Ground truth was manually generated by an experienced physician using both DSA and CT images. A fast region proposal network was first trained to propose a bounding box that contains the AVM lesion for detection. The bounding box was then used to guide image patch sampling process for V-Net training. In the testing stage, possible AVM locations were first proposed by the region proposal network. Subsequently, V-Net was used for the final label prediction. Both the region proposal network and V-Net were trained using 60 patients and tested using 20 patients. The mean Dice similarity coefficient (DSC) was calculated to evaluate the accuracy of the proposed method. The automatic contours were in very good agreement to the ground truth contours with an average DSC > 0.85.
机译:立体定向放射外科手术(SRS)被广泛用于消除动静脉畸形(AVM)。它的性能取决于描述目标AVM的准确性。在成帧的SRS过程中进行手动分段非常耗时,并且会因观察者之间和观察者内部的差异而异。因此,重要的是开发一种自动分割方法以从CT图像中划出AVM目标。在这项研究中,我们回顾性调查了80例接受SRS治疗的患者。地面真相是由经验丰富的医生使用DSA和CT图像手动生成的。快速区域建议网络首先经过培训,提出了一个包含要检测的AVM病变的边界框。然后将边界框用于指导V-Net训练的图像补丁采样过程。在测试阶段,可能的AVM位置首先由区域提议网络提出。随后,将V-Net用于最终标签预测。区域提案网络和V-Net均接受了60位患者的培训,并接受了20位患者的测试。计算平均骰子相似性系数(DSC)来评估所提出方法的准确性。自动轮廓线与地面真实轮廓线非常吻合,平均DSC> 0.85。

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