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On the Study of Childhood Medulloblastoma Auto Cell Segmentation from Histopathological Tissue Samples

机译:关于儿童Medulloblastoma从组织病理组织样品进行儿童髓细胞分段的研究

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Whole slide imaging in histopathology is one of the most important aspects of computational pathology. Nucleus identification and extraction can play a critical part in digital microscopic examination. This work is an extension of our previous published work on childhood medulloblastoma biopsy machine learning classification where the classifier was based on ground truth annotated data. However complete automation would entail automatic segmentation of the cells. The paper explores various segmentation techniques for cell identification from biopsy tissue samples of childhood medulloblastoma microscopic images based on conventional machine learning methods. The study is based on indigenous patient data collected from medical centers of the region. The performance of the segmentation algorithms was compared using Jaccard and Dice coefficient metric.
机译:组织病理学中的整个幻灯片成像是计算病理学最重要的方面之一。核鉴定和提取可以在数字微观检查中发挥关键部分。这项工作是我们之前发表的儿童Medulloblastoma活检机学习分类的延伸,其中分类器基于地面实事注释数据。但是,完整的自动化将需要自动分割细胞。本文探讨了基于传统机器学习方法对儿童髓质母细胞瘤微观图像的活组织检查组织样本中细胞识别的各种分段技术。该研究基于从该地区的医疗中心收集的土着患者数据。使用Jaccard和Dice系数度量进行比较分割算法的性能。

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