Automatic Segmentation of Molecular Pathology Images Using a Robust Mixture Model with Markov Random Fields

S. Ng, A. Lam
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Abstract

The segmentation of molecular pathology images is important for the assessment of clinical behaviour of disease conditions. We consider a robust mixture model-based approach to segment pathology images into different tissue components, with the use of Markov random fields to account for the spatial continuity of image intensities. Segmentation and estimation of tissue parameters quantify the size of various tissue components and can be used to assess progression of disease or to evaluate effect of drug therapy. The method is illustrated using simulated data and pathology images of cancer patients.
基于马尔可夫随机场鲁棒混合模型的分子病理图像自动分割
分子病理图像的分割是重要的评估临床行为的疾病条件。我们考虑了一种基于混合模型的鲁棒方法,将病理图像分割成不同的组织成分,并使用马尔可夫随机场来考虑图像强度的空间连续性。组织参数的分割和估计量化了各种组织成分的大小,可用于评估疾病的进展或评估药物治疗的效果。该方法是用模拟数据和癌症患者的病理图像说明。
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