脑肿瘤患者MR图像的交互式分割

S. Bauer, N. Porz, Raphael Meier, A. Pica, J. Slotboom, R. Wiest, M. Reyes
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引用次数: 3

摘要

医生通常不相信全自动分割的结果,因为他们没有可能在必要时进行纠正。另一方面,手动修正可能会引入用户偏见。在这项工作中,我们建议将快速手动校正的可能性集成到脑肿瘤图像的全自动分割方法中。这允许在保持高度客观性的同时进行必要的修正。其基本思想类似于众所周知的Grab-Cut算法,但这里我们将决策森林分类与条件随机场正则化相结合,用于3D医学图像的交互式分割。该方法已由两个不同的用户在BraTS2012数据集上进行了评估。与全自动方法相比,我们的交互式方法的准确性和鲁棒性都得到了提高。计算时间,包括人工交互,每个病人不到10分钟,这使得它有吸引力的临床应用。
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Interactive segmentation of MR images from brain tumor patients
Medical doctors often do not trust the result of fully automatic segmentations because they have no possibility to make corrections if necessary. On the other hand, manual corrections can introduce a user bias. In this work, we propose to integrate the possibility for quick manual corrections into a fully automatic segmentation method for brain tumor images. This allows for necessary corrections while maintaining a high objectiveness. The underlying idea is similar to the well-known Grab-Cut algorithm, but here we combine decision forest classification with conditional random field regularization for interactive segmentation of 3D medical images. The approach has been evaluated by two different users on the BraTS2012 dataset. Accuracy and robustness improved compared to a fully automatic method and our interactive approach was ranked among the top performing methods. Time for computation including manual interaction was less than 10 minutes per patient, which makes it attractive for clinical use.
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