PNN-based analysis system to classify renal pathologies in Kidney Ultrasound Images

T. Mangayarkarasi, D. N. Jamal
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引用次数: 9

Abstract

In this paper, a computer assistive tool is proposed to Process and analyse ultrasound Kidney Images for the classification of Renal Pathologies. The Ultrasound Kidney Images are classified into four classes: Normal, Cyst, Calculi and Tumor. Scanned Kidney Ultra-Sound (US) Images are obtained and Knowledge pertaining to common Pathologies from an Urologist Perspective is utilized as inputs to carry out the classification. The Images are preprocessed for the removal of Speckle noises by applying Median and Gaussian filter. Optimal thresholding segmentation algorithm is used to obtain the region of Interest. A set of first order statistical features are extracted. These features are given as inputs for training and testing the probabilistic neural network classifier. Hold out method is adopted where in 50% images are used for training and remaining 50% images are used for testing. The efficiency of the classifier is finally evaluated. A classification rate of 93.5% is obtained. The results achieved, are based on performance metrics calculations and are highly satisfactory.
基于pnn的肾脏超声图像病理分类分析系统
本文提出了一种计算机辅助工具来处理和分析肾脏超声图像,用于肾脏病理分类。肾超声图像分为正常、囊肿、结石和肿瘤四类。获得肾脏超声扫描(US)图像,并从泌尿科医生的角度利用与常见病理相关的知识作为输入来进行分类。采用中值滤波和高斯滤波对图像进行预处理,去除散斑噪声。采用最优阈值分割算法获得感兴趣区域。提取了一组一阶统计特征。这些特征作为训练和测试概率神经网络分类器的输入。采用Hold out方法,其中50%的图像用于训练,其余50%的图像用于测试。最后对分类器的效率进行了评价。分类率为93.5%。实现的结果是基于性能度量计算的,并且非常令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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