Kidney Stone Detection Using Neural Networks

M. Akshaya, R. Nithushaa, N. M. Raja, S. Padmapriya
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引用次数: 8

Abstract

Back Propagation Network is the most commonly used algorithm in training neural networks. It is employed in processing the image and data to implement an automated kidney stone classification. The conventional technique for medical resonance kidney images classification and stone detection is by human examination. This method is not accurate since it is impractical to handle large amount of data. Magnetic Resonance (MR) Images may inherently possess noise caused by operator errors. This causes earnest inaccuracies in classification features/ diseases in image processing. However, usage of artificial intelligent based methods along with neural networks and feature extraction has shown great potential in extracting the region of interest using back propagation network algorithm in this field. In this work, the Back Propagation Network was applied for the objective of kidney stone detection. Decision making is carried out in two stages: 1.Feature extraction 2.Image classification. The feature extraction is done using the principal component analysis and the image classification is done using Back Propagation Network (BPN). This work presents segmentation method using Fuzzy C-Mean (FCM) clustering algorithm. The performance of the BPN classifier was estimated in terms of training execution and classification accuracies. Back Propagation Network gives precise classification when compared to other methods based on neural networks.
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利用神经网络检测肾结石
反向传播网络是神经网络训练中最常用的算法。它被用于处理图像和数据,以实现自动肾结石分类。传统的医学磁共振肾图像分类和结石检测技术是通过人体检查。这种方法不准确,因为它不适合处理大量数据。磁共振(MR)图像可能固有地具有由操作员错误引起的噪声。这导致了图像处理中分类特征/疾病的严重不准确。然而,基于人工智能的方法以及神经网络和特征提取在该领域使用反向传播网络算法提取感兴趣区域方面显示出巨大的潜力。本研究将反向传播网络应用于肾结石的检测。决策分两个阶段进行:1。特征提取;图像分类。利用主成分分析进行特征提取,利用反向传播网络(BPN)进行图像分类。本文提出了基于模糊c均值(FCM)聚类算法的分割方法。从训练执行和分类准确率两方面对BPN分类器的性能进行了估计。与其他基于神经网络的分类方法相比,反向传播网络具有更精确的分类能力。
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