基于数据挖掘技术的脑病理磁共振图像分类

R. Ramani, K. Sivaselvi
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引用次数: 10

摘要

医学图像分析是一个前沿的研究领域,由于不同类型的图像带来的挑战和实现异常存在的准确预测的复杂性。脑MRI的正常与异常分类因其处理难度大而越来越受到人们的关注。近年来,许多计算技术被广泛应用于正常图像和病理图像的分离。因此,本研究试图分析各种监督数据挖掘技术在脑磁共振图像分类中的能力。首先对图像进行预处理,提取体积特征。然后,将这些输入到特征选择技术中,即主成分分析、运行、Fisher滤波和ReliefF特征选择,以确定相关特征。选择的特征被用于监督数据挖掘技术,即朴素贝叶斯,支持向量机,随机树和C4.5来识别大脑的异常图像。其中,通过ReliefF特征选择和Leave-One-Out交叉验证提取的特征,SVM的准确率最高,达到71.33%。随机树在运行过滤特征时达到82%的准确率。通过消除正常切片,该分类将有助于从大量MRI切片中分割脑肿瘤。这大大减少了分割过程所需的计算时间和内存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Pathological Magnetic Resonance Images of Brain Using Data Mining Techniques
Medical image analysis is a pioneer research domain due to the challenges posed by different kinds of images and the complexities in attaining the accurate prediction of abnormalities presence. Brain MRI classification into normal and abnormal has received increasing attention because of the high level of difficulty in handling those huge numbers of images. Recently, many computational techniques are widely employed to segregate the normal images from pathological. Thus, this study has attempted to analyse the capability of various supervised data mining techniques in classifying the brain MR images. Initially, the images are pre-processed and the volumetric features are extracted. Then, these are fed into feature selection techniques viz. Principal Component Analysis, Runs, Fisher filtering and ReliefF feature selection to determine relevant features. The selected features are utilised for the supervised data mining techniques viz. Naive Bayes, Support Vector Machine, Random Tree and C4.5 to identify the abnormal images of brain. Among them, SVM has achieved highest accuracy of 71.33% with the features extracted through ReliefF feature selection with Leave-One-Out cross validation. Random Tree achieved accuracy of 82% with Runs filtered features. The classification will aid the segmentation of brain tumor from large set of MRI slices by eliminating the normal slices. This greatly reduces the computational time and memory required for the process of segmentation.
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