Vanderbilt University Institute of Imaging Science, Vanderbilt University, Nashville, TN, USA; Department of Biomedical Engineering, Vanderbilt University, Nashville, TN, USA.
Vanderbilt University Institute of Imaging Science, Vanderbilt University, Nashville, TN, USA; Department of Biomedical Engineering, Vanderbilt University, Nashville, TN, USA.
Neuroimage. 2018 Jan 15;165:200-221. doi: 10.1016/j.neuroimage.2017.10.046. Epub 2017 Oct 23.
Diffusion magnetic resonance imaging (dMRI) is widely used to probe tissue microstructure, and is currently the only non-invasive way to measure the brain's fiber architecture. While a large number of approaches to recover the intra-voxel fiber structure have been utilized in the scientific community, a direct, 3D, quantitative validation of these methods against relevant histological fiber geometries is lacking. In this study, we investigate how well different high angular resolution diffusion imaging (HARDI) models and reconstruction methods predict the ground-truth histologically defined fiber orientation distribution (FOD), as well as investigate their behavior over a range of physical and experimental conditions. The dMRI methods tested include constrained spherical deconvolution (CSD), Q-ball imaging (QBI), diffusion orientation transform (DOT), persistent angular structure (PAS), and neurite orientation dispersion and density imaging (NODDI) methods. Evaluation criteria focus on overall agreement in FOD shape, correct assessment of the number of fiber populations, and angular accuracy in orientation. In addition, we make comparisons of the histological orientation dispersion with the fiber spread determined from the dMRI methods. As a general result, no HARDI method outperformed others in all quality criteria, with many showing tradeoffs in reconstruction accuracy. All reconstruction techniques describe the overall continuous angular structure of the histological FOD quite well, with good to moderate correlation (median angular correlation coefficient > 0.70) in both single- and multiple-fiber voxels. However, no method is consistently successful at extracting discrete measures of the number and orientations of FOD peaks. The major inaccuracies of all techniques tend to be in extracting local maxima of the FOD, resulting in either false positive or false negative peaks. Median angular errors are ∼10° for the primary fiber direction and ∼20° for the secondary fiber, if present. For most methods, these results did not vary strongly over a wide range of acquisition parameters (number of diffusion weighting directions and b value). Regardless of acquisition parameters, all methods show improved successes at resolving multiple fiber compartments in a voxel when fiber populations cross at near-orthogonal angles, with no method adequately capturing low to moderate angle (<60°) crossing fibers. Finally, most methods are limited in their ability to capture orientation dispersion, resulting in low to moderate, yet statistically significant, correlation with histologically-derived dispersion with both HARDI and NODDI methodologies. Together, these results provide quantitative measures of the reliability and limitations of dMRI reconstruction methods and can be used to identify relative advantages of competing approaches as well as potential strategies for improving accuracy.
扩散磁共振成像(dMRI)被广泛用于探测组织微观结构,是目前唯一能够无创测量大脑纤维结构的方法。尽管科学界已经提出了大量恢复体素内纤维结构的方法,但缺乏对这些方法与相关组织学纤维几何结构的直接、三维、定量验证。在这项研究中,我们研究了不同的高角度分辨率扩散成像(HARDI)模型和重建方法在多大程度上可以预测组织学定义的纤维方向分布(FOD)的真实值,以及它们在一系列物理和实验条件下的行为。测试的 dMRI 方法包括约束球分解(CSD)、Q 球成像(QBI)、扩散方向变换(DOT)、持久角结构(PAS)和神经丝取向弥散和密度成像(NODDI)方法。评估标准侧重于 FOD 形状的总体一致性、纤维群数量的正确评估以及方向的角精度。此外,我们还比较了组织学取向弥散与从 dMRI 方法确定的纤维扩展。一般来说,没有一种 HARDI 方法在所有质量标准上都优于其他方法,许多方法在重建准确性上存在权衡。所有重建技术都很好地描述了组织学 FOD 的整体连续角结构,在单纤维和多纤维体素中都具有很好到中等的相关性(中位数角相关系数>0.70)。然而,没有一种方法能够始终如一地成功提取 FOD 峰的数量和方向的离散测量值。所有技术的主要误差往往在于提取 FOD 的局部最大值,导致假阳性或假阴性峰。主要纤维方向的平均角误差约为 10°,如果存在次纤维,则为 20°。对于大多数方法,如果扩散加权方向和 b 值的数量在较宽的范围内变化,这些结果不会有很大变化。无论采集参数如何,当纤维群以近正交角度交叉时,所有方法在解决体素中多个纤维隔室的分辨率方面都取得了更大的成功,没有一种方法能够充分捕捉低到中等角度(<60°)的交叉纤维。最后,大多数方法在捕获方向弥散方面受到限制,导致与 HARDI 和 NODDI 方法学相关的弥散具有低到中等但统计学上显著的相关性。总的来说,这些结果提供了对 dMRI 重建方法可靠性和局限性的定量衡量,可以用于确定竞争方法的相对优势以及提高准确性的潜在策略。