Tabelow Karsten, Polzehl Jörg, Spokoiny Vladimir, Voss Henning U
Weierstrass Institute for Applied Analysis and Stochastics, Mohrenstr 39, Berlin, Germany.
Neuroimage. 2008 Feb 15;39(4):1763-73. doi: 10.1016/j.neuroimage.2007.10.024. Epub 2007 Oct 28.
Diffusion Tensor Imaging (DTI) data is characterized by a high noise level. Thus, estimation errors of quantities like anisotropy indices or the main diffusion direction used for fiber tracking are relatively large and may significantly confound the accuracy of DTI in clinical or neuroscience applications. Besides pulse sequence optimization, noise reduction by smoothing the data can be pursued as a complementary approach to increase the accuracy of DTI. Here, we suggest an anisotropic structural adaptive smoothing procedure, which is based on the Propagation-Separation method and preserves the structures seen in DTI and their different sizes and shapes. It is applied to artificial phantom data and a brain scan. We show that this method significantly improves the quality of the estimate of the diffusion tensor, by means of both bias and variance reduction, and hence enables one either to reduce the number of scans or to enhance the input for subsequent analysis such as fiber tracking.
扩散张量成像(DTI)数据的特点是噪声水平高。因此,诸如各向异性指数或用于纤维追踪的主要扩散方向等数量的估计误差相对较大,这可能会严重混淆DTI在临床或神经科学应用中的准确性。除了脉冲序列优化外,通过对数据进行平滑处理来降噪可以作为一种补充方法,以提高DTI的准确性。在此,我们提出一种各向异性结构自适应平滑程序,该程序基于传播-分离方法,并保留DTI中可见的结构及其不同的大小和形状。它被应用于人工体模数据和脑部扫描。我们表明,该方法通过减少偏差和方差,显著提高了扩散张量估计的质量,从而使人们要么减少扫描次数,要么增强后续分析(如纤维追踪)的输入。