首页> 外文会议>2011 IEEE International Conference on Bioinformatics and Biomedicine >Coupling Oriented Hidden Markov Random Field Model with Local Clustering for Segmenting Blood Vessels and Measuring Spatial Structures in Images of Tumor Microenvironment
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Coupling Oriented Hidden Markov Random Field Model with Local Clustering for Segmenting Blood Vessels and Measuring Spatial Structures in Images of Tumor Microenvironment

机译:局部聚类的定向耦合隐马尔可夫随机场模型用于分割血管和测量肿瘤微环境图像的空间结构

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Interactions between cancer cells and factors within the tumor microenvironment (mE) are essential for understanding tumor development. The spatial relationships between blood vessel cells and cancer cells, e.g. tumor initiating cells (TICs), are an important parameter. Accurate segmentation of blood vessel is necessary for the quantization of their spatial relationships. However, this remains an open problem due to uneven intensity and low signal to noise ratio (SNR). To overcome these challenges, we propose a novel approach that integrates an oriented hidden Markov random field model (Ori-HMRF) with local clustering. The local clustering delineates boundaries of blood vessel segments with low SNR. Then blood vessel segments are viewed as random variables in the Ori-HMRF and their spatial dependence is defined based on directional information. The Ori-HMRF model suppresses noise and generates accurate blood vessel segmentation results. Experimental validations were conducted on both normal mammary and breast cancer tissues.
机译:癌细胞与肿瘤微环境(ME)内的因素之间的相互作用对于了解肿瘤发育至关重要。例如,血管细胞和癌细胞之间的空间关系。肿瘤引发细胞(TICS)是一个重要参数。血管的精确分割是它们空间关系的量化是必要的。然而,这仍然是由于强度和低信噪比(SNR)的强度和低信号量而导致的开放问题。为了克服这些挑战,我们提出了一种新的方法,它与本地聚类集成了一个定向的隐马尔可夫随机字段模型(ORI-HMRF)。本地聚类描绘了低SNR血管段的边界。然后,血管段被视为ORI-HMRF中的随机变量,并且它们基于方向信息定义它们的空间依赖性。 ORI-HMRF模型抑制噪声并产生精确的血管分割结果。在正常乳腺癌和乳腺癌组织上进行了实验验证。

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