基于模糊神经网络的医学图像分类与诊断

Y. Zaychenko, Aghaei Agh Ghamish Ovi Nafas
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引用次数: 2

摘要

本文对宫颈上皮的医学图像分类问题进行了探讨,并对宫颈上皮的以下状态进行了识别和分类:正常状态-柱状上皮;鳞状上皮(正常);化生——子宫颈上皮的良性改变;轻程度的cin1病变、中度的CIN 2病变、高度的CIN 3病变-上皮内癌:建议应用模糊神经网络(FNN NEFClass M)解决。FNN的应用基于它的以下特性:它可以处理模糊的定性信息;与清晰的分类方法相比,它具有更快的收敛性;它能够获得比传统分类器更好的分类精度。介绍了模糊神经网络NEFClass的结构及其模型描述。研究并实现了模糊集隶属函数的随机梯度下降训练算法。本文描述了用专用装置阴道镜获得的宫颈上皮医学图像数据集,并给出了部分图像。在实际数据上对FNN NEFClass在医学图像识别中的应用进行了实验研究,并给出了实验结果。将该方法与神经网络反向传播、RBF神经网络和级联RBF神经网络进行了比较,并对该方法的有效性进行了估计。研究并实现了基于主成分法的分类任务特征数约简问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical Images Classification and Diagnostics Using Fuzzy Neural Networks
The problem of medical images of cervix epithelium classification for express diagnostics is considered…The following states of cervix epithelium are to be recognized and classified: normal state - columnar epithelium; squamous epithelium (normal state); metaplasia-benign changes of cervix uterus epithelium; CIN1-displasia of light degree, CIN 2-displasia of middle degree, CIN 3-displasia of high degree- intra-epithelium cancer: For its solution the application of fuzzy neural network (FNN NEFClass M) is suggested. The application of FNN is grounded by its following properties: it may work with fuzzy and qualitative information; it has accelerated convergence as compared with crisp classification methods; it enables to attain better classification accuracy than conventional classifiers. The structure of FNN NEFClass and its model description are presented. Training algorithm stochastic gradient descent for membership functions of fuzzy sets is considered and implemented. Data set of medical images of cervix epithelium which was obtained by special device colposcope is described and some images are presented. The experimental investigations of FNN NEFClass application for medical images recognition on real data are carried out, the results are presented. The comparison with NN Back Propagation, RBF NN and cascade RBF NN was made and estimation of efficiency of the suggested approach was performed. The problem of reduction of features number in classification tasks using principal component method (PCM) method is considered and implemented.
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