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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Dual-Channel Active Contour Model for Megakaryocytic Cell Segmentation in Bone Marrow Trephine Histology Images
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Dual-Channel Active Contour Model for Megakaryocytic Cell Segmentation in Bone Marrow Trephine Histology Images

机译:骨髓Trephine组织学图像中的巨核细胞分割的双通道主动轮廓模型。

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摘要

Assessment of morphological features of megakaryocytes (MKs) (special kind of cells) in bone marrow trephine biopsies play an important role in the classification of different subtypes of Philadelphia-chromosome-negative myeloproliferative neoplasms (Ph-negative MPNs). In order to aid hematopathologists in the study of MKs, we propose a novel framework that can efficiently delineate the nuclei and cytoplasm of these cells in digitized images of bone marrow trephine biopsies. The framework first employs a supervised machine learning approach that utilizes color and texture features to delineate megakaryocytic nuclei. It then employs a novel dual-channel active contour model to delineate the boundary of megakaryocytic cytoplasm by using different deconvolved stain channels. Compared to other recent models, the proposed framework achieves accurate results for both megakaryocytic nuclear and cytoplasmic delineation.
机译:评估肌钙蛋白活检中的巨核细胞(MKs)(特殊细胞)的形态学特征在费城染色体阴性骨髓增生性肿瘤(Ph阴性MPN)的不同亚型的分类中起着重要作用。为了帮助血液病理学家进行MKs的研究,我们提出了一种新颖的框架,该框架可以在骨髓环啡活检的数字化图像中有效描绘这些细胞的核和细胞质。该框架首先采用有监督的机器学习方法,该方法利用颜色和纹理特征来描绘巨核细胞核。然后,它采用一种新颖的双通道主动轮廓模型,通过使用不同的去卷积染色通道来描绘巨核细胞质的边界。与其他最近的模型相比,该提议的框架在巨核细胞核和细胞质描绘中均获得了准确的结果。

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