Automatic segmentation of prostate in MR images using deep learning and multi-atlas techniques

H. Moradi, A. H. Foruzan, Yenwei Chen
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引用次数: 1

Abstract

Precise segmentation of prostate in magnetic resonance images is an essential step in treatment planning and a challenging task due to high variability in shape and size of the tissue. In this paper, we propose an automatic algorithm for accurate and robust segmentation of prostate in MR images. First, we employ a deep neural network to locate the prostate region of interest which removes background pixels and reduces the size of the image. Then, we obtain an initial segmentation of the tissue using a probabilistic atlas. Finally, we utilize statistical shape models to restrict the final contour inside the allowable shape domain. We performed a quantitative evaluation on 30 MR images and obtained a mean Dice similarity coefficient of 0.85±0.06. Compared to recent researches, our method is both robust and accurate.
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基于深度学习和多图谱技术的磁共振图像前列腺自动分割
磁共振图像中前列腺的精确分割是治疗计划的重要步骤,也是一项具有挑战性的任务,因为组织的形状和大小具有高度可变性。在本文中,我们提出了一种准确和鲁棒的自动分割前列腺图像的算法。首先,我们使用深度神经网络定位感兴趣的前列腺区域,从而去除背景像素并减小图像的大小。然后,我们使用概率图谱获得组织的初始分割。最后,利用统计形状模型将最终轮廓限制在允许形状域内。我们对30张MR图像进行了定量评价,得到Dice相似系数的平均值为0.85±0.06。与目前的研究结果相比,该方法具有鲁棒性和准确性。
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