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Fuzzy cluster based neural network classifier for classifying breast tumors in ultrasound images

机译:基于模糊聚类的神经网络分类器在超声图像中对乳腺肿瘤进行分类

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The performance of supervised classification algorithms is highly dependent on the quality of training data. Ambiguous training patterns may misguide the classifier leading to poor classification performance. Further, the manual exploration of class labels is an expensive and time consuming process. An automatic method is needed to identify noisy samples in the training data to improve the decision making process. This article presents a new classification technique by combining an unsupervised learning technique (i.e. fuzzy c-means clustering (FCM)) and supervised learning technique (i.e. back-propagation artificial neural network (BPANN)) to categorize benign and malignant tumors in breast ultrasound images. Unsupervised learning is employed to identify ambiguous examples in the training data. Experiments were conducted on 178 B-mode breast ultrasound images containing 88 benign and 90 malignant cases on MATLAB software platform. A total of 457 features were extracted from ultrasound images followed by feature selection to determine the most significant features. Accuracy, sensitivity, specificity, area under the receiver operating characteristic curve (AUC) and Mathew's correlation coefficient (MCC) were used to access the performance of different classifiers. The result shows that the proposed approach achieves classification accuracy of 95.862% when all the 457 features were used for classification. However, the accuracy is reduced to 94.138% when only 19 most relevant features selected by multi-criterion feature selection approach were used for classification. The results were discussed in light of some recently reported studies. The empirical results suggest that eliminating doubtful training examples can improve the decision making performance of expert systems. The proposed approach show promising results and need further evaluation in other applications of expert and intelligent systems. (C) 2016 Elsevier Ltd. All rights reserved.
机译:监督分类算法的性能高度依赖于训练数据的质量。模糊的训练模式可能会误导分类器,从而导致分类性能不佳。此外,类别标签的手动探索是昂贵且耗时的过程。需要一种自动方法来识别训练数据中的嘈杂样本,以改善决策过程。本文结合无监督学习技术(即模糊c均值聚类(FCM))和有监督学习技术(即反向传播人工神经网络(BPANN))提出了一种新的分类技术,以对乳房超声图像中的良性和恶性肿瘤进行分类。采用无监督学习来识别训练数据中的歧义示例。在MATLAB软件平台上对178例B型乳房超声图像进行了实验,其中包含88例良性和90例恶性病例。从超声图像中总共提取了457个特征,然后进行特征选择以确定最重要的特征。准确度,灵敏度,特异性,接收器工作特性曲线下的面积(AUC)和Mathew的相关系数(MCC)用于访问不同分类器的性能。结果表明,该方法在全部457个特征都进行分类时,分类精度达到95.862%。但是,当仅使用多准则特征选择方法选择的19个最相关特征进行分类时,准确性会降低到94.138%。根据一些最近报道的研究讨论了结果。实证结果表明,消除可疑的训练示例可以提高专家系统的决策性能。所提出的方法显示出令人鼓舞的结果,并且需要在专家和智能系统的其他应用中进行进一步评估。 (C)2016 Elsevier Ltd.保留所有权利。

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