Institute for Applied Mathematics and Information Technologies (IMATI-CNR), Milan, Italy.
Institute of Biomedical Technologies (ITB-CNR), Segrate (MI), Italy.
NMR Biomed. 2020 Mar;33(3):e4201. doi: 10.1002/nbm.4201. Epub 2019 Dec 29.
The Intra-Voxel Incoherent Motion (IVIM) model is largely adopted to estimate slow and fast diffusion coefficients of water molecules in biological tissues, which are used in cancer applications. The most reported fitting approach is a voxel-wise segmented non-linear least square, whereas Bayesian approaches with a direct fit, also considering spatial regularization, were proposed too. In this work a novel segmented Bayesian method was proposed, also in combination with a spatial regularization through a Conditional Autoregressive (CAR) prior specification. The two segmented Bayesian approaches, with and without CAR specification, were compared with two standard least-square and a direct Bayesian fitting methods. All approaches were tested on simulated images and real data of patients with head-and-neck and rectal cancer. Estimation accuracy and maps noisiness were quantified on simulated images, whereas the coefficient of variation and the goodness of fit were evaluated for real data. Both versions of the segmented Bayesian approach outperformed the standard methods on simulated images for pseudo-diffusion (D ) and perfusion fraction (f), whilst the segmented least-square fitting remained the less biased for the diffusion coefficient (D). On real data, Bayesian approaches provided the less noisy maps, and the two Bayesian methods without CAR generally estimated lower values for f and D coefficients with respect to the other approaches. The proposed segmented Bayesian approaches were superior, in terms of estimation accuracy and maps quality, to the direct Bayesian model and the least-square fittings. The CAR method improved the estimation accuracy, especially for D .
体素内不相干运动(IVIM)模型广泛用于估计生物组织中水分子的慢扩散和快扩散系数,这些系数在癌症应用中非常重要。最常报道的拟合方法是基于体素的分段非线性最小二乘法,而直接拟合的贝叶斯方法也被提出,同时也考虑了空间正则化。在这项工作中,提出了一种新的分段贝叶斯方法,也与通过条件自回归(CAR)先验规范进行的空间正则化相结合。将两种分段贝叶斯方法(带和不带 CAR 规范)与两种标准最小二乘法和直接贝叶斯拟合方法进行了比较。所有方法都在头颈部和直肠癌患者的模拟图像和真实数据上进行了测试。在模拟图像上,对估计准确性和噪声图进行了量化,而在真实数据上,对变异系数和拟合优度进行了评估。对于模拟图像上的伪扩散(D)和灌注分数(f),两种分段贝叶斯方法的版本均优于标准方法,而分段最小二乘法拟合对于扩散系数(D)仍然是偏差最小的。在真实数据上,贝叶斯方法提供了噪声较小的图,并且没有 CAR 的两种贝叶斯方法通常相对于其他方法估计 f 和 D 系数的值较低。在估计准确性和图质量方面,所提出的分段贝叶斯方法优于直接贝叶斯模型和最小二乘法拟合。CAR 方法提高了估计的准确性,特别是对于 D。