一种启发式图像滤波和分割框架:在血管免疫组织化学中的应用

Chi-Hsuan Tsou, Yi-chien Lu, A. Yuan, Yeun-Chung Chang, Chung-Ming Chen
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引用次数: 7

摘要

癌组织样本中的血管密度可能代表肿瘤生长水平的增加。然而,在组织学(组织)图像中识别血管是困难和耗时的,并且在很大程度上取决于观察者的经验。为了克服这一缺点,研究了计算机辅助图像分析框架,以提高组织图像中的目标识别。提出了一种血管图像中显著区域的自动提取算法。实验结果表明,即使在目标边界和背景杂波对比度较弱的血管区域,该框架也能得到与人工标定的血管边界相当的血管边界。
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A Heuristic Framework for Image Filtering and Segmentation: Application to Blood Vessel Immunohistochemistry
The blood vessel density in a cancerous tissue sample may represent increased levels of tumor growth. However, identifying blood vessels in the histological (tissue) image is difficult and time-consuming and depends heavily on the observer's experience. To overcome this drawback, computer-aided image analysis frameworks have been investigated in order to boost object identification in histological images. We present a novel algorithm to automatically abstract the salient regions in blood vessel images. Experimental results show that the proposed framework is capable of deriving vessel boundaries that are comparable to those demarcated manually, even for vessel regions with weak contrast between the object boundaries and background clutter.
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