Department of Medical Imaging and Intervention, Chang Gung Memorial Hospital, Linkou, Taiwan.
Magn Reson Med. 2012 Nov;68(5):1439-49. doi: 10.1002/mrm.24144. Epub 2012 Mar 1.
Uncertainty in arterial input function (AIF) estimation is one of the major errors in the quantification of dynamic contrast-enhanced MRI. A blind source separation algorithm was proposed to determine the AIF by selecting the voxel time course with maximum purity, which represents a minimal contamination from partial volume effects. Simulations were performed to assess the partial volume effect on the purity of AIF, the estimation accuracy of the AIF, and the influence of purity on the derived kinetic parameters. In vivo data were acquired from six patients with hypopharyngeal cancer and eight rats with brain tumor. Results showed that in simulation the AIF with the highest purity is closest to the true AIF. In patients, the manually selection had reduced purity, which could lead to underestimations of K(trans) and V(e) and an overestimation of V(p) when compared with those obtained by the proposed blind source separation algorithm. The derived kinetic parameters in the tumor were more susceptible to the changes in purity when compared with those in the muscle. The animal experiment demonstrated good reproducibility in blind source separation-AIF derived parameters. In conclusion, the blind source separation method is feasible and reproducible to identify the voxel with the tracer concentration time course closest to the true AIF.
动脉输入函数(AIF)估计中的不确定性是动态对比增强 MRI 定量分析中的主要误差之一。本文提出了一种盲源分离算法,通过选择纯度最大的体素时程来确定 AIF,该时程表示最小的部分容积效应污染。通过模拟评估了部分容积效应对 AIF 纯度、AIF 估计准确性以及纯度对衍生动力学参数的影响。采集了 6 例下咽癌患者和 8 例脑肿瘤大鼠的体内数据。结果表明,在模拟中,纯度最高的 AIF 最接近真实 AIF。在患者中,手动选择的 AIF 纯度降低,与使用盲源分离算法获得的结果相比,这可能导致 K(trans)和 V(e)的低估以及 V(p)的高估。与肌肉相比,肿瘤中的衍生动力学参数对纯度变化更敏感。动物实验表明,盲源分离-AIF 衍生参数具有良好的可重复性。总之,盲源分离方法是可行且可重复的,可用于识别与真实 AIF 最接近的示踪剂浓度时程的体素。