用于细胞分类的计算智能系统

Wei Lin, Jianhong Xiao, E. Micheli-Tzanakou
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引用次数: 28

摘要

利用人工神经网络对血细胞进行分类。与现有方法相比,神经网络具有更高的准确性、效率、适应性和信息量。该系统在PC/Windows NT环境下使用图像处理技术和数据库管理实现,可以提取多种特征并使用多种训练算法。在这项初步研究中,血细胞图像被分割成单个细胞。提取单个细胞的特征,包括大小、颜色含量和形状相关矩,并将其用作多层神经网络的输入。采用反向传播和ALOPEX训练算法对神经网络进行训练。在使用95个训练集进行不到2000次的训练迭代后,该系统以100%的正确率识别了三种血细胞。该模块提供了一个平台,以建立一个更复杂的计算智能系统的细胞分类临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational intelligence system for cell classification
Artificial neural networks were used to classify blood cells. Compared with existing methods, neural networks are more accurate, efficient, adaptable and information-rich. The implementation of the system in a PC/Windows NT environment using image processing technology and database management allows for a variety of features to be extracted and a variety of training algorithms to be used. In this preliminary study, blood cell images are segmented to individual cells. Features for individual cells, including size, color content and shape related moments, are extracted and used as inputs to a multilayer neural network. Backpropagation and ALOPEX training algorithms were used to train the neural network. After less than 2000 training iterations using 95 training sets, the system recognized three kinds of blood cell in a correctness percentage of 100%. This module provides a platform to build a more sophisticated computational intelligent system for cell classification for clinical use.
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