Coll-Font Jaume, Afacan Onur, Chow Jeanne S, Lee Richard S, Warfield Simon K, Kurugol Sila
Department of Radiology, Boston Children's Hospital, 300 Longwood Ave., Boston MA 02115, USA; Harvard Medical School, 25 Shattuck St., Boston MA 02115, USA.
Department of Radiology, Boston Children's Hospital, 300 Longwood Ave., Boston MA 02115, USA; Harvard Medical School, 25 Shattuck St., Boston MA 02115, USA.
Med Image Anal. 2021 Jan;67:101880. doi: 10.1016/j.media.2020.101880. Epub 2020 Oct 17.
Early identification of kidney function deterioration is essential to determine which newborn patients with congenital kidney disease should be considered for surgical intervention as opposed to observation. Kidney function can be measured by fitting a tracer kinetic (TK) model onto a series of Dynamic Contrast Enhanced (DCE) MR images and estimating the filtration rate parameter from the model. Unfortunately, breathing and large bulk motion events due to patient movement in the scanner create outliers and misalignments that introduce large errors in the TK model parameter estimates even when using a motion-robust dynamic radial VIBE sequence for DCE-MR imaging. The misalignments between the series of volumes are difficult to correct using standard registration due to 1) the large differences in geometry and contrast between volumes of the dynamic sequence and 2) the requirement of fast dynamic imaging to achieve high temporal resolution and motion deteriorates image quality. These difficulties reduce the accuracy and stability of registration over the dynamic sequence. An alternative registration approach is to generate noise and motion free templates of the original data from the TK model and use them to register each volume to its contrast-matched template. However, the TK models used to characterize DCE-MRI are tissue specific, non-linear and sensitive to the same motion and sampling artifacts that hinder registration in the first place. Hence, these can only be applied to register accurately pre-segmented regions of interest, such as kidneys, and might converge to local minima under the presence of large artifacts. Here we introduce a novel linear time invariant (LTI) model to characterize DCE-MR data for different tissue types within a volume. We approximate the LTI model as a sparse sum of first order LTI functions to introduce robustness to motion and sampling artifacts. Hence, this model is well suited for registration of the entire field of view of DCE-MR data with artifacts and outliers. We incorporate this LTI model into a registration framework and evaluate it on both synthetic data and data from 20 children. For each subject, we reconstructed the sequence of DCE-MR images, detected corrupted volumes acquired during motion, aligned the sequence of volumes and recovered the corrupted volumes using the LTI model. The results show that our approach correctly aligned the volumes, provided the most stable registration in time and improved the tracer kinetic model fit.
早期识别肾功能恶化对于确定哪些患有先天性肾脏疾病的新生儿患者应考虑进行手术干预而非观察至关重要。肾功能可以通过将示踪剂动力学(TK)模型拟合到一系列动态对比增强(DCE)磁共振图像上,并从该模型估计滤过率参数来测量。不幸的是,由于患者在扫描仪中的移动导致的呼吸和大幅度身体运动事件会产生异常值和错位,即使在使用用于DCE-MR成像的运动稳健的动态径向VIBE序列时,也会在TK模型参数估计中引入大的误差。由于1)动态序列各体积之间在几何形状和对比度上存在巨大差异,以及2)需要快速动态成像以实现高时间分辨率,而运动会降低图像质量,所以使用标准配准很难校正各体积之间的错位。这些困难降低了动态序列上配准的准确性和稳定性。一种替代的配准方法是从TK模型生成原始数据的无噪声和无运动模板,并使用它们将每个体积配准到其对比度匹配的模板。然而,用于表征DCE-MRI的TK模型是组织特异性的、非线性的,并且对最初阻碍配准的相同运动和采样伪影敏感。因此,这些模型只能应用于准确配准预先分割的感兴趣区域,如肾脏,并且在存在大伪影的情况下可能会收敛到局部最小值。在此,我们引入一种新颖的线性时不变(LTI)模型来表征体积内不同组织类型的DCE-MR数据。我们将LTI模型近似为一阶LTI函数的稀疏和,以引入对运动和采样伪影的鲁棒性。因此,该模型非常适合对带有伪影和异常值的DCE-MR数据的整个视野进行配准。我们将此LTI模型纳入一个配准框架,并在合成数据和来自20名儿童的数据上对其进行评估。对于每个受试者,我们重建了DCE-MR图像序列,检测出运动期间采集的损坏体积,对齐体积序列,并使用LTI模型恢复损坏体积。结果表明,我们的方法正确对齐了体积,在时间上提供了最稳定的配准,并改善了示踪剂动力学模型拟合。