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Medical Image Segmentation Using Independent Component Analysis-Based Kernelized Fuzzy c-Means Clustering

机译:基于独立成分分析的核模糊c-均值聚类的医学图像分割

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摘要

Segmentation of brain tissues is an important but inherently challenging task in that different brain tissues have similar grayscale values and the intensity of a brain tissue may be confused with that of another one. The paper accordingly develops an ICKFCM method based on kernelized fuzzy c-means clustering with ICA analysis for extracting regions of interest in MRI brain images. The proposed method first removes the skull region using a skull stripping algorithm. Through ICA, three independent components are then extracted from multimodal medical images containing T1-weighted, T2-weighted, and PD-weighted MRI images. As MRI signals can be regarded as a combination of the signals from brain matters, ICA can be used for contrast enhancement of MRI images. Finally, the three independent components are utilized as inputs by KFCM algorithm to extract different brain tissues. Relying on the decomposition of a multivariate signal into independent non-Gaussian components and using a more appropriate kernel-induced distance for fuzzy clustering, the proposed method is capable of achieving greater reliability in both theory and practice than other segmentation approaches. According to the experiment results, the proposed method is capable of accurately extracting the complicated shapes of brain tissues and still remaining robust against various types of noises.
机译:脑组织的分割是一项重要但固有的挑战性任务,因为不同的脑组织具有相似的灰度值,并且脑组织的强度可能与另一种组织的强度混淆。因此,本文开发了一种基于核模糊c均值聚类和ICA分析的ICKFCM方法,以提取MRI脑图像中的感兴趣区域。所提出的方法首先使用颅骨剥离算法去除颅骨区域。然后,通过ICA,从包含T1加权,T2加权和PD加权MRI图像的多模态医学图像中提取三个独立的分量。由于MRI信号可以看作是来自脑部物质的信号的组合,因此ICA可以用于增强MRI图像的对比度。最后,肯德基算法将这三个独立的成分用作输入,以提取不同的脑组织。依靠将多元信号分解为独立的非高斯分量,并使用更合适的核诱导距离进行模糊聚类,所提出的方法在理论和实践上都比其他分割方法具有更高的可靠性。根据实验结果,提出的方法能够准确地提取复杂形状的脑组织,并且仍然对各种类型的噪声保持鲁棒性。

著录项

  • 来源
    《Mathematical Problems in Engineering》 |2017年第2017期|5892039.1-5892039.21|共21页
  • 作者

    Chen Yao-Tien;

  • 作者单位

    Yuanpei Univ Med Technol, Dept Appl Mobile Technol, Hsinchu 30015, Taiwan;

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  • 原文格式 PDF
  • 正文语种 eng
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