Mishra Arabinda, Lu Yonggang, Choe Ann S, Aldroubi Akram, Gore John C, Anderson Adam W, Ding Zhaohua
Institute of Imaging Science, Vanderbilt University, Nashville, TN 37232-2657, USA.
Magn Reson Imaging. 2007 Apr;25(3):365-76. doi: 10.1016/j.mri.2006.10.006. Epub 2006 Nov 20.
Diffusion tensor imaging (DTI)-based fiber tractography holds great promise in delineating neuronal fiber tracts and, hence, providing connectivity maps of the neural networks in the human brain. An array of image-processing techniques has to be developed to turn DTI tractography into a practically useful tool. To this end, we have developed a suite of image-processing tools for fiber tractography with improved reliability. This article summarizes the main technical developments we have made to date, which include anisotropic smoothing, anisotropic interpolation, Bayesian fiber tracking and automatic fiber bundling. A primary focus of these techniques is the robustness to noise and partial volume averaging, the two major hurdles to reliable fiber tractography. Performance of these techniques has been comprehensively examined with simulated and in vivo DTI data, demonstrating improvements in the robustness and reliability of DTI tractography.
基于扩散张量成像(DTI)的纤维束成像在描绘神经元纤维束方面具有巨大潜力,从而能够提供人类大脑神经网络的连接图谱。必须开发一系列图像处理技术,才能将DTI纤维束成像转化为实用工具。为此,我们已经开发了一套用于纤维束成像的图像处理工具,提高了其可靠性。本文总结了我们迄今为止取得的主要技术进展,包括各向异性平滑、各向异性插值、贝叶斯纤维追踪和自动纤维束捆绑。这些技术的主要重点是对噪声和部分容积平均的鲁棒性,这是可靠的纤维束成像的两大障碍。已使用模拟和体内DTI数据全面检验了这些技术的性能,证明DTI纤维束成像的鲁棒性和可靠性得到了提高。