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Comparative Study of K-means, Gaussian Mixture Model, Fuzzy C-means algorithms for Brain Tumor Segmentation

机译:K平均值,高斯混合模型,模糊C型脑肿瘤细分算法的比较研究

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Magnetic Resonance Imaging (MRI) is one of the widely used imaging modality for visualizing and assessing the brain anatomy and its functions in non-invasive manner. The most challenging task in analysis of brain MRI images is image segmentation. Automatic and accurate detection of brain tumor is one of the major areas of research in medical image processing. Accurate segmentation of brain tumor helps radiologists for precise treatment planning. In this paper results of one hard clustering algorithm i.e. K-means clustering and two soft clustering algorithm, Gaussian Mixture Model (GMM) and Fuzzy C-means (FCM) clustering are compared. These algorithms are tested on BRATS 2012 training database of High Grade and Low Grade Glioma tumors. Various evaluation parameters like Dice index, Jaccard index, Sensitivity, Specificity are calculated for all the algorithms and comparative analysis is carried out. Experimental results state that Fuzzy C-means clustering outperforms K-means and Gaussian Mixture Model algorithm for brain tumor segmentation problem.
机译:磁共振成像(MRI)是用于可视化和评估脑解剖学及其以非侵入方式的脑解剖学及其功能的广泛使用的成像模态之一。脑MRI图像分析中最具挑战性的任务是图像分割。自动和准确地检测脑肿瘤是医学图像处理研究的主要研究领域之一。脑肿瘤的准确细分有助于放射学家进行精确治疗计划。在本文中,比较了一个硬簇算法的结果.K均值聚类和两个软聚类算法,高斯混合模型(GMM)和模糊C-Means(FCM)聚类。这些算法在Brats 2012高级和低级胶质瘤肿瘤训练数据库上进行了测试。为所有算法计算各种评估参数,如骰子指数,Jaccard指标,灵敏度,特异性进行了比较分析。实验结果表明模糊C型聚类优于K型脑肿瘤分割问题的k型和高斯混合模型算法。

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