脑膜瘤MR图像分割方法的比较研究

M. Alkhodari, O. Hassanin, S. Dhou
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引用次数: 2

摘要

从磁共振(MR)图像中分割脑肿瘤对提高诊断、生长速度预测和治疗计划有很大的影响。在本文中,我们提供了四种著名的分割算法,即k-均值聚类,直方图阈值(Otsu),模糊c-均值阈值和区域增长的比较研究。对于区域增长算法,种子选择过程是自动化的,并通过预处理图像和使用初始聚类和/或阈值方法逼近肿瘤区域来增强。使用t1加权对比增强磁共振成像(MRI)脑图像数据集对算法进行评估和比较。三位经验丰富的放射科医生提供了真实的肿瘤图像,并在评估过程中使用。结果表明,增强区域生长法的平均骰子相似系数最高,为0.87,未分割率最低,为17.46%。模糊c均值阈值法的过分割率最低(0.03%)。该研究为其他先进的肿瘤分割研究(如使用紧急机器学习方法的研究)提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study of Meningioma Tumors Segmentation Methods from MR Images
Brain tumor segmentation from magnetic resonance (MR) images can have a great impact on improving diagnostics, growth rate prediction, and treatment planning. In this paper, we provide a comparative study of four well-known segmentation algorithms, namely k-means clustering, histogram thresholding (Otsu), fuzzy c-means thresholding, and region growing. For the region growing algorithm, the seed selection process is automated and enhanced by preprocessing the images and approximating the tumor regions using initial clustering and/or thresholding approaches. The evaluation and comparison of the algorithms is conducted using a data-set of T1-Weighted Contrast-Enhanced magnetic resonance imaging (MRI) brain images. Ground truth tumor images were provided by three experienced radiologists and are used in the evaluation process. Results showed that the enhanced region growing method had the highest mean dice similarity coefficient with a score of 0.87, and the lowest under-segmentation rate (17.46%). The fuzzy c-means thresholding method had the lowest over-segmentation rate (0.03%). This study serves as a baseline for other advanced tumor segmentation studies such as the ones using the emergent machine learning approaches.
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