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首页> 外文期刊>International journal of computational systems engineering >Application of ensemble artificial neural network for the classification of white blood cells using microscopic blood images
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Application of ensemble artificial neural network for the classification of white blood cells using microscopic blood images

机译:集成人工神经网络在显微血液图像分类中对白细胞分类的应用

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In order to overcome the problems of manual diagnosis in recognising the morphology of blood cells, the automated analysis is frequently used by a pathologist. So this work gives a semi-automated technique to identify and classify white blood cell. In this work, a k-means clustering algorithm is used to segment the nucleus by upgrading the district of the white blood cell nucleus and stifling the other components of the blood smear images. From each cell, various shape, chromatic and texture features are extracted. This feature set was used to train the classifier to determine different classes of WBC. Performance of this model indicates that CAC system design based on the ensemble artificial neural network is the most suitable model for the four class white cell classification, with an accuracy of 95%. The proposed method represents a medicinal method to avoid the plentiful drawbacks associated with the labour-intensive examination of WBCs.
机译:为了克服识别血细胞形态的手动诊断问题,病理学家经常使用自动分析。因此,这项工作提供了一种半自动化技术来识别和分类白细胞。在这项工作中,使用k均值聚类算法通过升级白细胞核的区域并窒息血液涂片图像的其他成分来分割细胞核。从每个单元中提取各种形状,色度和纹理特征。此功能集用于训练分类器以确定WBC的不同类别。该模型的性能表明,基于集成人工神经网络的CAC系统设计是四类白细胞分类的最合适模型,准确度为95%。所提出的方法代表了一种医学方法,可以避免与白细胞劳动密集型检查相关的大量弊端。

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