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Optimal Search Guided by Partial Active Shape Model forProstate Segmentation in TRUS Images

机译:由部分主动形状模型引导的最佳搜索在TRUS图像中的分段

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Automatic prostate segmentation in transrectal ultrasound (TRUS) can be used to register TRUS with magnetic resonance (MR) images for TRUS/MR-guided prostate interventions. However, robust and automated prostate segmentation is challenging due to not only the low signal to noise ratio in TRUS but also the missing boundaries in shadow areas caused by calcifications or hyper-dense prostate tissue. Lack of image information in those areas is a barrier for most existing segmentation methods, which normally leads to user interaction for manual correction. This paper presents a novel method to utilize prior shapes estimated from partial contours to guide an optimal search for prostate segmentation. The proposed method is able to automatically extract prostate boundary from 2D TRUS images without user interaction for correcting shapes in shadow areas. In our approach, the point distribution model was first used to learn shape priors of prostate from manual segmentation results. During segmentation, the missing boundaries in shadow areas are estimated by using a new partial active shape model, which uses partial contour as input but returns complete estimated shape. Prostate boundary is then obtained by using a discrete deformable model with optimal search, which is implemented efficiently by using dynamic programming to produce robust segmentation results. The segmentation of each frame is performed in multi-scale for robustness and computational efficiency. In our experiments of segmenting 162 images grabbed from ultrasound video sequences of 10 patients, the average mean absolute distance was 1.79mm±0.95mm. The proposed method was implemented in C++ based on ITK and took about 0.3 seconds to segment the prostate from a 640x480 image on a Core2 1.86 GHz PC.
机译:经委托超声(TRUS)中的自动前列腺分段可用于将TRU注册到具有磁共振(MR)图像的TRUS / MR引导的前列腺干预。然而,由于TRUS中的低信号,而且因此,鲁棒和自动前列腺分割是挑战,而且由于TRUS中的低信号,而且是由钙化或超致致密前列腺组织引起的阴影区域中缺失的边界。这些区域中缺乏图像信息是大多数现有分割方法的障碍,通常导致用户交互进行手动校正。本文介绍了利用部分轮廓估计的先前形状的新方法,以指导最佳搜索前列腺分割。所提出的方法能够自动从2D TRU图像中提取前列腺边界,而无需用户交互以校正阴影区域中的形状。在我们的方法中,点分布模型首先用于从手动分割结果学习前列腺的形状前沿。在分割期间,通过使用新的部分活动形状模型来估计阴影区域中缺少的边界,该模型使用部分轮廓作为输入,但返回完整的估计形状。然后通过使用具有最佳搜索的离散可变形模型来获得前列腺边界,这通过使用动态编程来有效地实现鲁棒分段结果。每个帧的分割以多标尺进行,以实现鲁棒性和计算效率。在我们从10名患者的超声视频序列抓住的分割162图像的实验中,平均平均绝对距离为1.79mm±0.95mm。所提出的方法是基于ITK的C ++实现,大约需要0.3秒,以在Core2 1.86GHz PC上从640x480图像分段前列腺。

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