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Directional Local Mean Difference Level Set method with Reinforcement Learning

机译:钢筋学习的定向局部均值差分级别方法

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Directional Local Mean Difference Level Set method (DLMD-LS) is the segmentation method for a urinary bladder in an MR sequence used for planning the treatment of a cervical cancer by radiation. The blurred boundary of a bladder is segmented based on the judgment of a radiologist and can be differed among radiologists. In this paper, DLMD-LS with Reinforcement Learning (RL) is proposed. It is an interactive system, where the parameter is adjusted to reflect the individual judgment. The weighted average method is used to update the distance that the boundary will be expanded, after the level set contour finishes evolving. The experiment on 30 MR slices demonstrated that DLMD-LS with RL had high segmentation accuracy and was adaptable to the new radiologist. It was also robust to outliers.
机译:定向局部平均差异水平设定方法(DLMD-LS)是用于通过辐射计划治疗宫颈癌的MR序列中的尿膀胱的分段方法。基于放射科医师的判断,膀胱的模糊边界分段,并且可以在放射科学家之间不同。在本文中,提出了具有增强学习(RL)的DLMD-LS。它是一个交互式系统,其中调整参数以反映各个判断。在级别设置轮廓结束过程中,加权平均方法用于更新边界将扩展边界的距离。 30对MR切片的实验证明,具有RL的DLMD-LS具有高分割精度,适应新放射科医师。它对异常值也很强大。

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