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An image segmentation approach to extract colon lumen through colonic material tagging and hidden Markov random field model for virtual colonoscopy

机译:通过结肠材料标记和隐马尔可夫随机现场模型提取结肠内腔的图像分割方法,虚拟结肠镜检查

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Virtual colonoscopy provides a safe, minimal-invasive approach to detect colonic polyps using medical imaging and computer graphics technologies Residual stool and fluid are problematic for optimal viewing of the colonic mucosa. Electronic cleansing techniques combining bowel preparation, oral contrast agents, and image segmentation were developed to extract the colon lumen from computed tomography (CT) images of the colon. In this paper, we present a new electronic colon cleansing technology, which employs a hidden Markov random field (MRF) model to integrate the neighborhood information for overcoming the non-uniformity problems within the tagged stool/fluid region. Prior to obtaining CT images, the patient undergoes a bowel preparation. A statistical method for maximum a posterior probability (MAP) was developed to identify the enhanced regions of residual stool/fluid. The method utilizes a hidden MRF Gibbs model to integrate the spatial information into the Expectation Maximization (EM) model-fitting MAP algorithm. The algorithm estimates the model parameters and segments the voxels iteratively in an interleaved manner, converging to a solution where the model parameters and voxel labels are stabilized within a specified criterion. Experimental results are promising.
机译:虚拟结肠镜检查提供安全,最小的侵入性方法来使用医学成像检测结肠息肉,计算机图形技术残留粪便和流体对于结肠粘膜的最佳观察是有问题的。开发了组合肠道制剂,口腔造影剂和图像分割的电子清洁技术,以从结肠的计算机断层扫描(CT)图像中提取结肠内腔。在本文中,我们提出了一种新的电子结肠清洁技术,该技术采用隐马尔可夫随机场(MRF)模型来集成邻域信息,以克服标记的粪便/流体区域内的非均匀性问题。在获得CT图像之前,患者经历肠道制剂。开发了一种最大概率(MAP)的统计方法以识别残留粪便/流体的增强区域。该方法利用隐藏的MRF GIBBS模型将空间信息集成到预期最大化(EM)模型拟合映射算法中。该算法估计模型参数并以交织方式迭代地将体素分段,并将其趋于模型参数和体素标签在指定标准内稳定的解决方案。实验结果很有前景。

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