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Generalized parameter estimation in multi-echo gradient-echo-based chemical species separation

机译:基于多回波梯度回声的化学物种分离的广义参数估计

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To develop a generalized formulation for multi-echo gradient-echo-based chemical species separation for all MR signal models described by a weighted sum of complex exponentials with phases linear in the echo time. Constraints between estimation parameters in the signal model were abstracted into a matrix formulation of a generic parameter gradient. The signal model gradient was used in a parameter estimation algorithm and the Fisher information matrix. The general formulation was tested in numerical simulations and against literature and in vivo results. The proposed gradient-based parameter estimation and experimental design framework is universally applicable over the whole class of signal models using the matrix abstraction of the signal model-specific parameter constraints as input. Several previous results in magnetic-field mapping and water-fat imaging with different models could successfully be replicated with the same framework and only different input matrices. A framework for generalized parameter estimation in multi-echo gradient-echo MR signal models of multiple chemical species was developed and validated and its software version is freely available online.
机译:为了开发用于多回波梯度回波的化学物质的广义制剂,用于所有MR信号模型的分离,所述所有MR信号模型都是通过在回波时间内线性的相位线性的加权之和。信号模型中的估计参数之间的约束被抽象为仿制通用参数梯度的矩阵配方。信号模型梯度用于参数估计算法和Fisher信息矩阵。在数值模拟和文献中测试了一般的制剂和体内结果。所提出的基于梯度的参数估计和实验设计框架使用信号模型特定参数约束的矩阵抽象作为输入,普遍适用于整类信号模型。在磁场映射和具有不同模型的磁场映射和水脂肪成像的几个先前结果可以成功地用相同的框架和仅复制不同的输入矩阵来复制。开发并验证了多呼回梯度 - 回声MR信号模型中的广义参数估计框架,并验证了其软件版本在线自由获取。

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