脑肿瘤检测的图像挖掘方法综述

Shinde Swapnil, V. Girish
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引用次数: 5

摘要

人的大脑包含许多组织,这些组织与大脑的正常功能有关。同时,这些组织的任何异常生长都可能改变其功能,这通常被称为脑肿瘤。脑肿瘤主要分为低级别或良性(1级和2级)和高级别或恶性(3级和4级)两种类型。通过应用图像处理步骤和一些机器学习算法,可以通过MRI图像检测到脑肿瘤。脑MRI图像通过图像增强、聚类和分类等不同的技术进行处理,以检测脑肿瘤的水平。研究表明,滤波运算、边缘检测算法、形态学运算和聚类是检测不同程度脑肿瘤的重要步骤。本文主要是在参考提出的方法、特征提取和分类方法及其结果、未来范围以及不同专业研究的优缺点的基础上,准备比较综述,并将其汇编成一篇论文。这有助于为今后脑肿瘤分类的研究方向提供空间。
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Image Mining Methodology for Detection of Brain Tumor: A Review
A human brain contains number of tissues that relate to achieving proper functioning of brain. Meanwhile, any abnormal growth in these tissues may change the functioning and this is generally referred as brain tumor. Brain tumor is mainly of two types low grade or benign (Grade 1 and Grade 2) and high grade or malignant (Grade 3 and Grade 4). Brain tumor can be detected with MRI images by applying image processing steps and some machine learning algorithms. Brain MRI images undergo processing by using different techniques such as image enhancement, clustering and classification for detecting the level of brain tumor. The study shows that the filtering operations, edge detection algorithms, morphological operations and clustering are some of the important steps employed for detecting the various levels of brain tumor. This paper mainly focuses on preparing the comparison review on the basis of the referenced proposed methodology, feature extraction and classification methods with its results, future scope along with the advantages and disadvantages of the research done by different professionals and compiling it into one paper. This helps to provide scope for future research directions in brain tumor classification.
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