Descoteaux Maxime, Angelino Elaine, Fitzgibbons Shaun, Deriche Rachid
Odyssée Project Team, INRIA/ENPC/ENS, INRIA Sophia Antipolis, France.
Magn Reson Med. 2007 Sep;58(3):497-510. doi: 10.1002/mrm.21277.
We propose a regularized, fast, and robust analytical solution for the Q-ball imaging (QBI) reconstruction of the orientation distribution function (ODF) together with its detailed validation and a discussion on its benefits over the state-of-the-art. Our analytical solution is achieved by modeling the raw high angular resolution diffusion imaging signal with a spherical harmonic basis that incorporates a regularization term based on the Laplace-Beltrami operator defined on the unit sphere. This leads to an elegant mathematical simplification of the Funk-Radon transform which approximates the ODF. We prove a new corollary of the Funk-Hecke theorem to obtain this simplification. Then, we show that the Laplace-Beltrami regularization is theoretically and practically better than Tikhonov regularization. At the cost of slightly reducing angular resolution, the Laplace-Beltrami regularization reduces ODF estimation errors and improves fiber detection while reducing angular error in the ODF maxima detected. Finally, a careful quantitative validation is performed against ground truth from synthetic data and against real data from a biological phantom and a human brain dataset. We show that our technique is also able to recover known fiber crossings in the human brain and provides the practical advantage of being up to 15 times faster than original numerical QBI method.
我们提出了一种用于取向分布函数(ODF)的Q球成像(QBI)重建的正则化、快速且稳健的解析解,并对其进行了详细验证,还讨论了其相对于现有技术的优势。我们的解析解是通过用球谐基对原始高角分辨率扩散成像信号进行建模来实现的,该球谐基包含一个基于在单位球面上定义的拉普拉斯 - 贝尔特拉米算子的正则化项。这导致了对近似ODF的Funk - Radon变换进行了优雅的数学简化。我们证明了Funk - Hecke定理的一个新推论以获得这种简化。然后,我们表明拉普拉斯 - 贝尔特拉米正则化在理论和实践上都优于蒂霍诺夫正则化。以略微降低角分辨率为代价,拉普拉斯 - 贝尔特拉米正则化减少了ODF估计误差,改善了纤维检测,同时降低了检测到的ODF最大值中的角度误差。最后,针对合成数据的地面真值以及生物模型和人类大脑数据集的真实数据进行了仔细的定量验证。我们表明我们的技术还能够恢复人类大脑中已知的纤维交叉,并且具有比原始数值QBI方法快多达15倍的实际优势。