自组织映射在生物医学图像分类中的应用

A. Bondarenko, A.V. Katsuk
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引用次数: 2

摘要

提出了一种利用多重分形分析和自组织图相结合的诊断系统,用于区分正常细胞和恶性细胞。该系统的输入包括常规处理后的宫颈涂片图像,这些图像是通过Papanicolaou技术染色的。对图像的分析提供了细胞特征的数据集。神经网络分类器是一种高效的模式识别方法,基于提取的多重分形特征对正常细胞和恶性细胞进行分类。自组织图谱的应用在细胞水平和患者水平上都产生了很高的正确分类率。这些结果表明,使用智能计算技术以及多重分形特征可以提供关于宫颈细胞恶性肿瘤潜力的非常有用的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Self-Organization Maps to the Biomedical Images Classification
A diagnostic system was presented that employs multifractal analysis combined with self-organization maps approach, for the discrimination normal cells from malignant. The input to the system consists of images of routine processed cervical smears stained by Papanicolaou technique. The analysis of the images provided a data set of cell features. The neural network classifier, an efficient pattern recognition approach, was used to classify normal and malignant cells based on the extracted multifractal features. The application of self-organization map yielded high rates of correct classification at both the cell level and the patient level. These results indicate that the use of intelligent computational techniques along with multifractal features may offer very useful information about the potential of malignancy of cervical cells.
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