Serrai H, Senhadji L, Clayton D B, Zuo C, Lenkinski R E
Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, Massachusetts 02215, USA.
J Magn Reson. 2001 Mar;149(1):45-51. doi: 10.1006/jmre.2001.2292.
We have previously shown the continuous wavelet transform (CWT), a signal-processing tool, which is based upon an iterative algorithm using a lorentzian signal model, to be useful as a postacquisition water suppression technique. To further exploit this tool we show its usefulness in accurately quantifying the signal metabolites after water removal. However, due to the static field inhomogeneities, eddy currents, and "radiation damping," the water signal and the metabolites may no longer have a lorentzian lineshape. Therefore, another signal model must be used. As the CWT is a flexible method, we have developed a new algorithm using a gaussian model and found that it fits the signal components, especially the water resonance, better than the lorentzian model in most cases. A new framework, which uses the two models, is proposed. The framework iteratively extracts each resonance, starting by the water peak, from the raw signal and adjusts its envelope to both the lorentzian and the gaussian models. The model giving the best fit is selected. As a consequence, the small signals originating from metabolites when selecting, removing, and quantifying the dominant water resonance from the raw time domain signal are preserved and an accurate estimation of their concentrations is obtained. This is demonstrated by analyzing (1H) magnetic resonance spectroscopy unsuppressed water data collected from a phantom with known concentrations at two different field strengths and data collected from normal volunteers using two different localization methods.
我们之前已经证明,连续小波变换(CWT)作为一种信号处理工具,基于使用洛伦兹信号模型的迭代算法,可用作采集后水抑制技术。为了进一步利用该工具,我们展示了其在准确量化除水后信号代谢物方面的有用性。然而,由于静磁场不均匀性、涡流和“辐射阻尼”,水信号和代谢物可能不再具有洛伦兹线形。因此,必须使用另一种信号模型。由于CWT是一种灵活的方法,我们开发了一种使用高斯模型的新算法,发现它在大多数情况下比洛伦兹模型更能拟合信号成分,尤其是水共振。提出了一个使用这两种模型的新框架。该框架从原始信号中迭代提取每个共振,从水峰开始,并将其包络调整为洛伦兹模型和高斯模型。选择拟合最佳的模型。结果,在从原始时域信号中选择、去除和量化主要水共振时,源自代谢物的小信号得以保留,并获得了它们浓度的准确估计。通过分析从具有已知浓度的体模在两种不同场强下收集的(1H)磁共振波谱未抑制水数据以及使用两种不同定位方法从正常志愿者收集的数据,证明了这一点。