Radiology, Stanford University, Stanford, California.
Electrical Engineering, Stanford University, Stanford, California.
Magn Reson Med. 2019 Oct;82(4):1438-1451. doi: 10.1002/mrm.27832. Epub 2019 May 26.
To investigate a computationally efficient method for optimizing the Cramér-Rao Lower Bound (CRLB) of quantitative sequences without using approximations or an analytical expression of the signal.
Automatic differentiation was applied to Bloch simulations and used to optimize several quantitative sequences without the need for approximations or an analytical expression. The results were validated with in vivo measurements and comparisons to prior art. Multi-echo spin echo and DESPO were used as benchmarks to verify the CRLB implementation. The CRLB of the Magnetic Resonance Fingerprinting (MRF) sequence, which has a complicated analytical formulation, was also optimized using automatic differentiation.
The sequence parameters obtained for multi-echo spin echo and DESPO matched results obtained using conventional methods. In vivo, MRF scans demonstrate that the CRLB optimization obtained with automatic differentiation can improve performance in presence of white noise. For MRF, the CRLB optimization converges in 1.1 CPU hours for = 400 and has asymptotic runtime scaling for the calculation of the CRLB objective and gradient.
Automatic differentiation can be used to optimize the CRLB of quantitative sequences without using approximations or analytical expressions. For MRF, the runtime is computationally efficient and can be used to investigate confounding factors as well as MRF sequences with a greater number of repetitions.
研究一种无需使用近似值或信号的解析表达式即可优化定量序列的克拉美罗下界(CRLB)的计算效率方法。
将自动微分应用于 Bloch 模拟,并用于优化几种定量序列,而无需使用近似值或解析表达式。通过体内测量和与现有技术的比较验证了结果。多回波自旋回波和 DESPO 被用作验证 CRLB 实现的基准。使用自动微分对具有复杂解析公式的磁共振指纹(MRF)序列的 CRLB 进行了优化。
多回波自旋回波和 DESPO 的序列参数与传统方法获得的结果匹配。在体内,MRF 扫描表明,使用自动微分获得的 CRLB 优化可以在存在白噪声的情况下提高性能。对于 MRF,自动微分的 CRLB 优化在 = 400 时收敛于 1.1 CPU 小时,并且对于 CRLB 目标和梯度的计算具有渐近的运行时缩放。
可以使用自动微分来优化定量序列的 CRLB,而无需使用近似值或解析表达式。对于 MRF,运行时间在计算上是高效的,可以用于研究混杂因素以及具有更多重复次数的 MRF 序列。