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孙少杰, 朱柳红, 罗述谦. 小波域功能磁共振图像的处理和功能区的检测[J]. 计算机辅助设计与图形学学报, 2010, 22(3): 553-558.
引用本文: 孙少杰, 朱柳红, 罗述谦. 小波域功能磁共振图像的处理和功能区的检测[J]. 计算机辅助设计与图形学学报, 2010, 22(3): 553-558.
Sun Shaojie, Zhu Liuhong, Luo Shuqian. fMRI Image Processing and Functional Region Detection in the Wavelet Domain[J]. Journal of Computer-Aided Design & Computer Graphics, 2010, 22(3): 553-558.
Citation: Sun Shaojie, Zhu Liuhong, Luo Shuqian. fMRI Image Processing and Functional Region Detection in the Wavelet Domain[J]. Journal of Computer-Aided Design & Computer Graphics, 2010, 22(3): 553-558.

小波域功能磁共振图像的处理和功能区的检测

fMRI Image Processing and Functional Region Detection in the Wavelet Domain

  • 摘要: 传统的Gaussian变换不能够很好地去除功能磁共振图像当中的相关性噪声,影响对功能区的检测结果.为了更准确地检测和定位功能区,提出了基于小波变换的方法对功能磁共振图像进行处理.首先采用非线性小波变换阈值法在小波域对功能磁共振图像进行降噪处理;然后结合小波域的错误发现率算法对脑激活区进行检验.多套数据的统计结果表明,与传统的Gaussian变换相比,文中方法在保持检出敏感性的同时减少检测结果中假阳性点的数量,具有较高的检出特异性和定位可靠性.

     

    Abstract: The traditional Gaussian smoothing usually cannot effectively reduce the correlated noise in fMRI data, which inevitably affects the final detection results.In order to detect and locate functional active regions more accurately, a method based on wavelet transform is proposed in this work.At first, fMRI data is de-noised in the wavelet domain by soft-thresholding.Then, the activated spots are detected on the de-noised simulated time series using the false discovery rate similarly in the wavelet domain.The detection results show that the proposed method can reduce the number of false positive spots while maintain the detection sensitivity, and manifests a better specificity and reliability than the traditional Gaussian smoothing does.

     

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