McKelvey School of Engineering, Washington University in St. Louis, St. Louis, Missouri, United States of America.
Department of Radiology, University of Chicago, Chicago, Illinois, United States of America.
PLoS One. 2021 Oct 28;16(10):e0258621. doi: 10.1371/journal.pone.0258621. eCollection 2021.
In patients with dense breasts or at high risk of breast cancer, dynamic contrast enhanced MRI (DCE-MRI) is a highly sensitive diagnostic tool. However, its specificity is highly variable and sometimes low; quantitative measurements of contrast uptake parameters may improve specificity and mitigate this issue. To improve diagnostic accuracy, data need to be captured at high spatial and temporal resolution. While many methods exist to accelerate MRI temporal resolution, not all are optimized to capture breast DCE-MRI dynamics. We propose a novel, flexible, and powerful framework for the reconstruction of highly-undersampled DCE-MRI data: enhancement-constrained acceleration (ECA). Enhancement-constrained acceleration uses an assumption of smooth enhancement at small time-scale to estimate points of smooth enhancement curves in small time intervals at each voxel. This method is tested in silico with physiologically realistic virtual phantoms, simulating state-of-the-art ultrafast acquisitions at 3.5s temporal resolution reconstructed at 0.25s temporal resolution (demo code available here). Virtual phantoms were developed from real patient data and parametrized in continuous time with arterial input function (AIF) models and lesion enhancement functions. Enhancement-constrained acceleration was compared to standard ultrafast reconstruction in estimating the bolus arrival time and initial slope of enhancement from reconstructed images. We found that the ECA method reconstructed images at 0.25s temporal resolution with no significant loss in image fidelity, a 4x reduction in the error of bolus arrival time estimation in lesions (p < 0.01) and 11x error reduction in blood vessels (p < 0.01). Our results suggest that ECA is a powerful and versatile tool for breast DCE-MRI.
在乳腺致密或乳腺癌高危患者中,动态对比增强磁共振成像(DCE-MRI)是一种高敏感的诊断工具。然而,其特异性具有高度可变性,有时较低;对比摄取参数的定量测量可能会提高特异性并减轻这个问题。为了提高诊断准确性,需要以高空间和时间分辨率捕获数据。虽然有许多方法可以加速 MRI 的时间分辨率,但并非所有方法都针对乳腺 DCE-MRI 动力学进行了优化。我们提出了一种新颖、灵活且强大的框架,用于重建高度欠采样的 DCE-MRI 数据:增强约束加速(ECA)。增强约束加速利用在小时间尺度上增强平滑的假设,在每个体素的小时间间隔内估计平滑增强曲线的点。该方法在具有生理现实虚拟体模的计算机模拟中进行了测试,模拟了在 3.5s 时间分辨率下进行的最先进的超快速采集,并在 0.25s 时间分辨率下进行了重建(此处提供演示代码)。虚拟体模是从真实患者数据中开发的,并使用动脉输入函数(AIF)模型和病变增强函数在连续时间内进行参数化。将增强约束加速与标准超快速重建进行比较,以从重建图像中估计示踪剂到达时间和增强初始斜率。我们发现,ECA 方法以 0.25s 的时间分辨率重建图像,而图像保真度没有明显损失,病变中示踪剂到达时间估计的误差降低了 4 倍(p<0.01),血管中的误差降低了 11 倍(p<0.01)。我们的结果表明,ECA 是乳腺 DCE-MRI 的一种强大而通用的工具。