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Expert knowledge for the recognition of leukemic cells

机译:识别白血病细胞的专家知识

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This work shows the advantage of expert knowledge for leukemic cell recognition. In the medical area, visual analysis of microscopic images has regularly used biological samples to recognize hematological disorders. Nowadays, techniques of image recognition are needed to achieve an adequate identification of blood tissues. This paper presents a procedure to acquire expert knowledge from blood cell images. We apply Gaussian mixtures, evolutionary computing, and standard techniques of image processing to extract knowledge. This information feeds a support vector machine or multilayer perceptron to classify healthy or leukemic cells. Additionally, convolutional neural networks are used as a benchmark to compare our proposed method with the state of the art. We use a public database of 260 healthy and leukemic cell images. Results show that our traditional pattern recognition methodology matches deep learning accuracy since the recognition of blood cells achieves 99.63%, whereas the convolutional neural networks reach 97.74% on average. Moreover, the computational effort of our approach is minimal, while meeting the requirement of being explainable. (C) 2020 Optical Society of America
机译:这项工作显示了白血病细胞识别专家知识的优势。在医疗区域,显微图像的视觉分析定期使用生物样品来识别血液疾病。如今,需要图像识别技术以实现血组的充分鉴定。本文介绍了从血细胞图像获取专家知识的程序。我们应用高斯混合,进化计算和图像处理的标准技术,以提取知识。该信息源给支持向量机或多层摄影师,以对健康或白血病细胞进行分类。另外,卷积神经网络用作基准测试,以比较与现有技术的提出方法。我们使用260个健康和白血病细胞图像的公共数据库。结果表明,由于对血细胞的识别实现了99.63%,我们传统的模式识别方法与深度学习准确性相匹配,而卷积神经网络平均达到97.74%。此外,我们方法的计算努力是最小的,同时满足可解释的要求。 (c)2020美国光学学会

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    《Applied optics》 |2020年第14期|共13页
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  • 正文语种 eng
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