Department of Radiation Oncology, University of Miami, Miami, FL 33136, United States.
Department of Radiation Oncology, University of Miami, Miami, FL 33136, United States.
Phys Med. 2018 Jun;50:26-36. doi: 10.1016/j.ejmp.2018.05.017. Epub 2018 May 22.
The purpose of this study was to examine the dependence of image texture features on MR acquisition parameters and reconstruction using a digital MR imaging phantom. MR signal was simulated in a parallel imaging radiofrequency coil setting as well as a single element volume coil setting, with varying levels of acquisition noise, three acceleration factors, and four image reconstruction algorithms. Twenty-six texture features were measured on the simulated images, ground truth images, and clinical brain images. Subtle algorithm-dependent errors were observed on reconstructed phantom images, even in the absence of added noise. Sources of image error include Gibbs ringing at image edge gradients (tissue interfaces) and well-known artifacts due to high acceleration; two of the iterative reconstruction algorithms studied were able to mitigate these image errors. The difference of the texture features from ground truth, and their variance over reconstruction algorithm and parallel imaging acceleration factor, were compared to the clinical "effect size", i.e., the feature difference between high- and low-grade tumors on T1- and T2-weighted brain MR images of twenty glioma patients. The measured feature error (difference from ground truth) was small for some features, but substantial for others. The feature variance due to reconstruction algorithm and acceleration factor were generally smaller than the clinical effect size. Certain texture features may be preserved by MR imaging, but adequate precautions need to be taken regarding their validity and reliability. We present a general simulation framework for assessing the robustness and accuracy of radiomic textural features under various MR acquisition/reconstruction scenarios.
本研究旨在通过数字磁共振成像体模检查图像纹理特征对磁共振采集参数和重建的依赖性。在并行成像射频线圈设置和单个单元容积线圈设置中模拟了磁共振信号,具有不同程度的采集噪声、三个加速因子和四种图像重建算法。在模拟图像、真实图像和临床脑部图像上测量了 26 个纹理特征。即使在没有添加噪声的情况下,也可以观察到重建体模图像上细微的、依赖于算法的误差。图像误差的来源包括在组织界面处的图像边缘梯度处的吉布斯振铃以及由于高加速而产生的众所周知的伪影;研究的两种迭代重建算法能够减轻这些图像误差。与临床“效应量”(即 20 名胶质瘤患者的 T1 和 T2 加权脑磁共振图像上高级别和低级别肿瘤之间的特征差异)相比,比较了重建算法和并行成像加速因子引起的纹理特征与真实值的差异及其方差。某些特征的测量特征误差(与真实值的差异)较小,但其他特征的误差较大。由于重建算法和加速因子引起的特征方差通常小于临床效应量。磁共振成像可以保留某些纹理特征,但需要充分注意其有效性和可靠性。我们提出了一种通用的模拟框架,用于在各种磁共振采集/重建情况下评估放射组学纹理特征的稳健性和准确性。