Chromosome Classification Based on Wavelet Neural Network

Baharak Choudari Oskouei, J. Shanbehzadeh
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引用次数: 18

Abstract

Karyotyping, manual chromosome classification is a difficult and time consuming process. Many automated classifiers have been developed to overcome this problem. These classifiers either have high classification accuracy or high training speed. This paper proposes a classifier that performs well in both areas based on wavelet neural network (WNN), combining the wavelet into neural network for classification of chromosomes in group E (chromosomes 16, 17 and 18). The nonlinear characteristic of the network which is derived from wavelet specification improves the training speed and accuracy of the nonlinear chromosome classification. The network inputs are nine dimensional feature space extracted from the chromosome images and the outputs are three classes. The simulation result on the chromosomes in the Laboratory of Biomedical Imaging shows that the success rate of WNN was 0.93%, that is comparable to the traditional neural network (ANN) with 0.85% success rate. The number of iterations for training to reach 0.04% error rate is only 200 where it is 3500 iterations for ANN. According to the experimental results WNN achieves high accuracy with minimum training time, which makes it suitable for real-time chromosome classification in the laboratory.
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基于小波神经网络的染色体分类
人工染色体核型分类是一个困难而耗时的过程。为了克服这个问题,已经开发了许多自动分类器。这些分类器要么分类精度高,要么训练速度快。本文提出了一种基于小波神经网络(WNN)的分类器,将小波与神经网络相结合,对E组(16、17、18号染色体)的染色体进行分类。基于小波规范的神经网络的非线性特性提高了非线性染色体分类的训练速度和准确率。网络输入是从染色体图像中提取的九维特征空间,输出是三类特征空间。生物医学成像实验室对染色体的模拟结果表明,小波神经网络的成功率为0.93%,与传统神经网络(ANN)的0.85%成功率相当。训练达到0.04%错误率的迭代次数只有200次,而人工神经网络需要3500次迭代。实验结果表明,小波神经网络以最小的训练时间获得了较高的准确率,适用于实验室的实时染色体分类。
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