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A Circumscribing Active Contour Model for Delineation of Nuclei and Membranes of Megakaryocytes in Bone Marrow Trephine Biopsy Images

机译:骨髓内骨膜活检图像中甲基核细胞核划清核和膜的界定活性轮廓模型

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The assessment of megakaryocytes (MKs) in bone marrow trephine images is an important step in the classification of different subtypes of myeloproliferative neoplasms (MPNs). In general, bone marrow trephine images include several types of cells mixed together, which make it quite difficult to visually identify MKs. In order to aid hematopathologists in the identification and study of MKs, we develop an image processing framework with supervised machine learning approaches and a novel circumscribing active contour model to identify potential MKs and then to accurately delineate the corresponding nucleus and membrane. Specifically, a number of color and texture features are used in a nave Bayesian classifier and an Adaboost classifier to locate the regions with a high probability of depicting MKs. A region-based active contour is used on the candidate MKs to accurately delineate the boundaries of nucleus and membrane. The proposed circumscribing active contour model employs external forces not only based on pixel intensities, but also on the probabilities of depicting MKs as computed by the classifiers. Experimental results suggest that the machine learning approach can detect potential MKs with an accuracy of more than 75%. When our circumscribing active contour model is employed on the candidate MKs, the nucleus and membrane boundaries are segmented with an accuracy of more than 80% as measured by the Dice similarity coefficient. Compared to traditional region-based active contours, the use of additional external forces based on the probability of depicting MKs improves segmentation performance and computational time by an average 5%.
机译:骨髓内骨膜图像中巨核细胞(MKS)的评估是髓原瘤(MPN)不同亚型分类的重要步骤。通常,骨髓内部图像包括多种类型的细胞混合在一起,这使得在视觉上难以视识别MKS。为了帮助造血病例在MKS的鉴定和研究中,我们开发了一种与监督机器学习方法的图像处理框架和一个新颖的主动轮廓模型,以识别潜在的MK,然后精确描绘相应的核和膜。具体地,在Nave Bayesian分类器和Adaboost分类器中使用许多颜色和纹理特征,以定位具有描述MKS的高概率的区域。在候选MKS上使用基于区域的活性轮廓,以精确描绘核和膜的边界。所提出的外接的主动轮廓模型不仅基于像素强度而采用外力,而且还采用了描述由分类器计算的MK的概率。实验结果表明,机器学习方法可以检测潜在的MKS,精度超过75%。当在候选MKS上使用外接的主动轮廓模型时,通过骰子相似度系数测量,细胞核和膜边界被分段为大于80%的精度。与传统地区的活性轮廓相比,基于描绘MKS的概率的额外外力使用额外的外力将分段性能和计算时间提高了平均5%。

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