Cettolo V, Francescato M P, Zuiani C, Baraldi P, Woods R, Porro C A
Dipartimento di Scienze e Tecnologie Biomediche, Università degli Studi di Udine.
Radiol Med. 1996 Nov;92(5):554-61.
Functional Magnetic Resonance Imaging (fMRI) techniques to investigate brain function are now available on clinical MR systems. However, the software packages provided with the MR equipment to analyze the functional images are often inadequate. In the present study, two registration algorithms for correcting motion artifacts and three procedures of statistical analysis (t-test, correlation analysis, Kolmogorov-Smirnov test) were compared using programs implemented on a graphic workstation. For both registration algorithms, transformation parameters for in plane translations and rotation of images were significantly affected by the task, being higher during sequential finger movements than during the control (visual imagery) condition. Regions of interest were identified on the anatomical images and their boundaries automatically projected on functional images. The number of significantly activated pixels in the pre- and postcentral areas was not significantly different after the registration with the two procedures. The percentage of pixels of the pre- and postcentral areas whose signal intensity was significantly different between the two tasks decreased with respect to the adopted threshold of significance as a power function. For an area identified outside the brain, the same relation was linear: no activated pixel was found for p < 0.001. The application of the t-test or of the correlation analysis yielded similar results. The analysis of the profile of mean normalized signal intensity showed higher increases in signal intensities during the motor task in the precentral gyrus than in the postcentral gyrus. This appears to be due to a greater number of activated pixels during motor performance. The application of registration procedures, the identification of the regions of interest on the basis of the anatomical images and appropriate statistical analyses allow a more detailed characterization of task-related activation.
用于研究脑功能的功能磁共振成像(fMRI)技术现已应用于临床磁共振系统。然而,磁共振设备所配备的用于分析功能图像的软件包往往并不完善。在本研究中,使用图形工作站上实现的程序,比较了两种用于校正运动伪影的配准算法和三种统计分析程序(t检验、相关性分析、柯尔莫哥洛夫-斯米尔诺夫检验)。对于这两种配准算法,图像平面内平移和旋转的变换参数受任务影响显著,在顺序手指运动期间比在对照(视觉想象)条件下更高。在解剖图像上识别感兴趣区域,并将其边界自动投影到功能图像上。使用这两种程序进行配准后,中央前回和中央后回中显著激活像素的数量没有显著差异。中央前回和中央后回中信号强度在两项任务之间有显著差异的像素百分比相对于所采用的显著性阈值呈幂函数下降。对于在脑外识别的一个区域,相同的关系是线性的:当p < 0.001时未发现激活像素。t检验或相关性分析的应用产生了相似的结果。平均归一化信号强度曲线分析表明,中央前回在运动任务期间的信号强度增加高于中央后回。这似乎是由于运动表现期间激活像素数量更多。配准程序的应用、基于解剖图像识别感兴趣区域以及适当的统计分析能够更详细地描述与任务相关的激活情况。