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Segmentation of Brain MR Images by Using Fully Convolutional Network and Gaussian Mixture Model with Spatial Constraints

机译:通过使用空间限制的全卷积网络和高斯混合模型进行脑MR图像的分割

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摘要

Accurate segmentation of brain tissue from magnetic resonance images (MRIs) is a critical task for diagnosis, treatment, and clinical research. In this paper, a novel algorithm (GMMD-U) that incorporates the modified full convolutional neural network U-net and Gaussian-Dirichlet mixture model (GMMD) with spatial constraints is presented. The proposed GMMD-U considers the local spatial relationships by assuming that the prior probability obeys the Dirichlet distribution. Specifically, GMMD is applied for extracting brain tissue that has a distinct intensity region and modified U-net is exploited to correct the wrong-classification areas caused by GMMD or other conventional approaches. The proposed GMMD-U is designed to take advantage of the statistical model-based segmentation techniques and deep neural network. We evaluate the performance of GMMD-U on a publicly available brain MRI dataset by comparing it with several existing algorithms, and the results reported reveal that the proposed framework can accurately detect the brain tissue from MRIs. The proposed learning-based integrated framework could be effective for brain tissue segmentation, which will be helpful for surgeons in brain disease diagnosis.
机译:来自磁共振图像(MRIS)的脑组织的精确分割是诊断,治疗和临床研究的关键任务。在本文中,提出了一种新的算法(GMMD-U),其包含具有空间约束的改进的全卷积神经网络U-Net和Gaussian-dirichlet混合模型(GMMD)。建议的Gmmd-U通过假设现有概率遵守Dirichlet分布来考虑局部空间关系。具体地,GMMD用于提取具有不同强度区域的脑组织,并利用修改的U-NET来校正由GMMD或其他传统方法引起的错误分类区域。建议的Gmmd-U旨在利用基于统计模型的分段技术和深神经网络。通过将其与几种现有算法进行比较,我们评估GMMD-U在公共脑MRI数据集上的性能,结果表明,所提出的框架可以准确地检测来自MRI的脑组织。所提出的基于学习的综合框架可能对脑组织分割有效,这将有助于脑病诊断的外科医生。

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  • 来源
    《Mathematical Problems in Engineering》 |2019年第11期|4625371.1-4625371.14|共14页
  • 作者单位

    East China Univ Sci & Technol Sch Informat Sci & Engn Shanghai 200237 Peoples R China;

    East China Univ Sci & Technol Sch Informat Sci & Engn Shanghai 200237 Peoples R China;

    East China Univ Sci & Technol Sch Informat Sci & Engn Shanghai 200237 Peoples R China;

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