Wen Zhifei, Reeder Scott B, Pineda Angel R, Pelc Norbert J
Department of Physics, Stanford University, Stanford, California 94305, USA.
Med Phys. 2008 Aug;35(8):3597-606. doi: 10.1118/1.2952644.
Separation of water from fat tissues in magnetic resonance imaging is important for many applications because signals from fat tissues often interfere with diagnoses that are usually based on water signal characteristics. Water and fat can be separated with images acquired at different echo time shifts. The three-point method solves for the unknown off-resonance frequency together with the water and fat densities. Noise performance of the method, quantified by the effective number of signals averaged (NSA), is an important metric of the water and fat images. The authors use error propagation theory and Monte Carlo simulation to investigate two common reconstructive approaches: an analytic-solution based estimation and a least-squares estimation. Two water-fat chemical shift (CS) encoding strategies, the symmetric (-theta, 0, theta) and the shifted (0, theta, 2theta) schemes are studied and compared. Results show that NSAs of water and fat can be different and they are dependent on the ratio of intensities of the two species and each of the echo time shifts. The NSA is particularly poor for the symmetric (-theta, 0, theta) CS encoding when the water and fat signals are comparable. This anomaly with equal amounts of water and fat is analyzed in a more intuitive geometric illustration. Theoretical prediction of NSA matches well with simulation results at high signal-to-noise ratio (SNR), while deviation arises at low SNR, which suggests that Monte Carlo simulation may be more appropriate to accurately predict noise performance of the algorithm when SNR is low.
在磁共振成像中,从脂肪组织中分离出水对于许多应用都很重要,因为脂肪组织的信号常常会干扰通常基于水信号特征的诊断。利用在不同回波时间偏移下采集的图像可以实现水和脂肪的分离。三点法用于求解未知的失谐频率以及水和脂肪的密度。该方法的噪声性能通过平均信号有效数量(NSA)来量化,它是水和脂肪图像的一个重要指标。作者运用误差传播理论和蒙特卡罗模拟来研究两种常见的重建方法:基于解析解的估计和最小二乘估计。研究并比较了两种水 - 脂肪化学位移(CS)编码策略,即对称(-θ,0,θ)和移位(0,θ,2θ)方案。结果表明,水和脂肪的NSA可能不同,并且它们取决于两种物质的强度比以及每个回波时间偏移。当水和脂肪信号相当时,对于对称(-θ,0,θ)CS编码,NSA特别差。在一个更直观的几何图示中分析了水和脂肪量相等时的这种异常情况。在高信噪比(SNR)下,NSA的理论预测与模拟结果匹配良好,而在低SNR时出现偏差,这表明当SNR较低时,蒙特卡罗模拟可能更适合准确预测算法的噪声性能。