Sun Fengrong, Morris Drew, Lee Wayne, Taylor Margot J, Mills Travis, Babyn Paul S
School of Information Science and Engineering, Shandong University, Jinan, 250100, China.
IEEE Trans Inf Technol Biomed. 2010 Sep;14(5):1279-90. doi: 10.1109/TITB.2010.2055574.
The optimal linear transformation (OLT), an image analysis technique of feature space, was first presented in the field of MRI. This paper proposes a method of extending OLT from MRI to functional MRI (fMRI) to improve the activation-detection performance over conventional approaches of fMRI analysis. In this method, first, ideal hemodynamic response time series for different stimuli were generated by convolving the theoretical hemodynamic response model with the stimulus timing. Second, constructing hypothetical signature vectors for different activity patterns of interest by virtue of the ideal hemodynamic responses, OLT was used to extract features of fMRI data. The resultant feature space had particular geometric clustering properties. It was then classified into different groups, each pertaining to an activity pattern of interest; the applied signature vector for each group was obtained by averaging. Third, using the applied signature vectors, OLT was applied again to generate fMRI composite images with high SNRs for the desired activity patterns. Simulations and a blocked fMRI experiment were employed for the method to be verified and compared with the general linear model (GLM)-based analysis. The simulation studies and the experimental results indicated the superiority of the proposed method over the GLM-based analysis in detecting brain activities.
最优线性变换(OLT)是一种特征空间图像分析技术,最早出现在磁共振成像(MRI)领域。本文提出了一种将OLT从MRI扩展到功能磁共振成像(fMRI)的方法,以提高fMRI分析中激活检测性能,优于传统的fMRI分析方法。在该方法中,首先,通过将理论血流动力学响应模型与刺激时间进行卷积,生成不同刺激的理想血流动力学响应时间序列。其次,借助理想血流动力学响应,为不同的感兴趣活动模式构建假设特征向量,使用OLT提取fMRI数据的特征。所得特征空间具有特定的几何聚类特性。然后将其分为不同的组,每组对应一种感兴趣的活动模式;通过平均得到每组应用的特征向量。第三,使用应用的特征向量,再次应用OLT生成具有高信噪比的fMRI复合图像,用于所需的活动模式。采用模拟和fMRI组块实验对该方法进行验证,并与基于一般线性模型(GLM)的分析进行比较。模拟研究和实验结果表明,该方法在检测脑活动方面优于基于GLM的分析。