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Content-Based White Blood Cell Retrieval on Bright-field Pathology Images

机译:基于内容的白细胞检索在明亮场病理图像上

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The purpose of this work was to evaluate a newly developed content-based retrieval approach for characterizing a range of different white blood cells from a database of imaged peripheral blood smears. Specimens were imaged using a 20x magnification to provide adequate resolution and sufficiently large field of view. The resulting database included a test ensemble of 96 images (1000×1000 pixels each). In this work, we propose a four-step content-based retrieval method and evaluate its performance. The content-based image retrieval (CBIR) method starts from white blood cell identification, followed by three sequential steps including coarse-searching, refined searching, and finally mean-shift clustering using a hierarchical annular histogram (HAH). The prototype system was shown to reliably retrieve those candidate images exhibiting the highest-ranked (most similar) characteristics to the query. The results presented here show that the algorithm was able to parse out subtle staining differences and spatial patterns and distributions for the entire range of white blood cells under study. Central to the design of the system is that it capitalizes on lessons learned by our team while observing human experts when they are asked to carry out these same tasks.
机译:这项工作的目的是评估新开发的基于内容的检索方法,用于表征来自成像外周血涂片的数据库的不同白细胞。使用20倍放大率对标本进行成像,以提供足够的分辨率和足够大的视野。结果数据库包括96图像的测试集合(每个图像1000×1000像素)。在这项工作中,我们提出了一种四步基于内容的检索方法,并评估其性能。基于内容的图像检索(CBIR)方法从白细胞识别开始,其次是三个顺序步骤,包括使用分层环形直方图(HAH)的粗程,精制搜索和最终平均平均转换聚类。示出了原型系统可靠地检索对查询具有最高排名(最相似的)特征的候选图像。这里提出的结果表明,该算法能够解析在研究下整个白细胞范围的微妙染色差异和空间模式和分布。系统设计的核心是它在我们被要求执行相同任务时观察人类专家的同时利用我们团队的经验教训。

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