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Automatic zone identification in blood smear images using optimal set of features

机译:使用最优特征的血液涂抹图像中的自动区域识别

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Visual assessment of peripheral blood smears is an important diagnostic approach in the hematology. The first step in such analysis is to identify the appropriate regions on the slide for screening. However, observing numerous samples of blood slides under the microscope by a hematologist is a very slow, inconsistent and exhausting job that raises the error possibility. Digital microscopes with the help of image processing techniques can do this procedure automatically. We proposed an algorithm to automatically classify smear images into “Good”, “Clumped” or “Sparse” regions. We first segment the cells using an adaptive thresholding technique and then extract their central zone using two different approaches, then a total of 24 features is extracted from the segmented regions, three of them are newly introduced to better quantify the cell spreading and clumping. Unlike the other studies, to elevate the classification results we select an optimal subset of features through feature selection experiments. The experimental results on 2400 blood smear images show average classification accuracy of 98.5%. Also, sensitivity and specificity for finding “Good” working areas are gained to 97.6% and 99.0%, respectively. In comparison with the most state-of-the-art algorithms, our approach improves the evaluation measures and computation time dramatically.
机译:外周血涂片的视觉评估是血液学中的重要诊断方法。这种分析中的第一步是识别滑块上的适当区域以进行筛选。然而,观察血液学学者在显微镜下观察到的许多血液载玻片样品是一种非常缓慢,不一致的和排气的作业,从而提高了错误可能性。数字显微镜在图像处理技术的帮助下可以自动完成此过程。我们提出了一种算法,可以将污迹图像自动分类为“良好”,“丛生”或“稀疏”区域。我们首先使用自适应阈值化技术分段细胞,然后使用两种不同的方法提取它们的中心区,然后从分段区域中提取总共24个特征,新引入其中三个以更好地量化细胞扩散和块。与其他研究不同,提升分类结果,我们通过特征选择实验选择最佳特征子集。实验结果对2400血涂片图像显示平均分类精度为98.5%。此外,寻找“良好”工作区域的敏感性和特异性分别获得97.6%和99.0%。与最先进的算法相比,我们的方法急剧提高了评估措施和计算时间。

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